247 results on '"Lemmetyinen, Juha"'
Search Results
202. Lignin release and photomixotrophism in suspension cultures of Picea abies
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Simola, Liisa Kaarina, primary, Lemmetyinen, Juha, additional, and Santanen, Arja, additional
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- 1992
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203. Multiple-Layer Adaptation of HUT Snow Emission Model: Comparison With Experimental Data.
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Lemmetyinen, Juha, Pulliainen, Jouni, Rees, Andrew, Kontu, Anna, Yubao Qiu, and Derksen, Chris
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MATHEMATICAL models , *MICROWAVES , *RADIOMETERS , *SNOW , *RADIO frequency discharges - Abstract
Modeling of snow emission at microwave frequencies is necessary in order to understand the complex relations between the emitted brightness temperature and snowpack characteristics such as density, grain size, moisture content, and vertical structure. Several empirical, semiempirical, and purely theoretical models for the prediction of snow emission properties have been developed in recent years. In this paper, we investigate the capability of one such model to simulate snow emission during the peak snow season--a new multilayer version of the Helsinki University of Technology (HUT) snow model. Developed with a single layer, the original HUT model was easily applied over large geographic areas for the estimation of snow cover characteristics by model inversion. A single homogenous layer, however, may not accurately allow the simulation of vertically structured natural snowpacks. The new modification to the model allows the simulation of emission from a snowpack with several snow or ice layers, with the individual component layers treated as in the original HUT model. The results of modeled snowpack emission, using both the original model and the new multilayer modification, are compared with reference measurements made using ground-based radiometers deployed in Finland and Canada. Detailed in situ measurements of the snowpack are used to set the model inputs.We show that, in most cases, use of the multiple-layer model improves estimates for the higher frequencies tested, with up to 38% improvement in rms error. In some cases, however, the use of the multiple-layer model weakens model performance particularly at lower frequencies. [ABSTRACT FROM AUTHOR]
- Published
- 2010
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204. Sensitivity of Airborne 36.5-GHz Polarimetric Radiometer's Wind-Speed Measurement to Incidence Angle.
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Colliander, Andreas, Lahtinen, Janne, Tauriainen, Simo, Pihlflyckt, Jorgen, Lemmetyinen, Juha, and Hallikainen, Martti T.
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RADIOMETERS ,WIND speed ,MEASUREMENT ,MOTION ,FOURIER analysis - Abstract
The Helsinki University of Technology's airborne fully polarimetric profiling radiometer at 36.5 GHz has been used for wind-vector measurements over the Gulf of Finland. The results, collected in a series of measurements over a period of two years, are presented in this paper. The Fourier coefficients of the harmonics of the first three modified Stokes parameters (in brightness temperature) have been solved, and their behavior as a function of the measurement incidence angle and the wind speed has been examined, resulting in a linear model in the measurement range. In this paper, we show a clear relationship between the incidence angle and the third modified Stokes parameter (in brightness temperature), which has been used to compensate for aircraft motion during measurements. Furthermore, the sensitivity of the wind-speed measurement to the incidence angle has been studied, and a model for wind-speed retrieval as a function of the harmonic coefficients and incidence angle was developed. [ABSTRACT FROM AUTHOR]
- Published
- 2007
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205. Lignins released from Picea abies suspension cultures—true native spruce lignins?
- Author
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Brunow, Gösta, primary, Ede, Richard M., additional, Simola, Liisa Kaarina, additional, and Lemmetyinen, Juha, additional
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- 1990
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206. Prevention of the flowering of a tree, silver birch.
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Lemmetyinen, Juha, Keinonen, Kaija, and Sopanen, Tuomas
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BETULACEAE , *REJUVENESCENCE (Botany) , *PLANT growth-promoting rhizobacteria , *EUROPEAN white birch , *SMOKABLE plants , *TOBACCO - Abstract
Genetic modification of trees presents great advantages but it is hampered by the possible spread of introduced genes to native populations. However, the spread would be prevented if the modified trees would be sterile. We have previously shown that the induction of sterility by the prevention of flowering is possible in tobacco and Arabidopsis by introducing a gene construct composed of the ribonuclease gene BARNASE ligated to the flower-specific promoter of the birch gene BpMADS1. In the present study, we test this gene construct in silver birch (Betula pendula Roth). When this gene construct was introduced into very early-flowering birch clones, 81 kanamycin resistant lines were obtained. In 38 lines, the vegetative development was disturbed, e.g., the leaves were small and the plants were short and bushy or the growth of plants was weak. More importantly, in 7 other lines no male inflorescences formed or they aborted early. If male inflorescences were formed, they did not contain any stamens. The initial growth of these lines was similar to the non-transgenic control lines. Later, however, the growth of the non-flowering lines differed from that of the controls in showing some dichotomic branching and a reduced number of branches. Preliminary results showed that the gene construct can prevent the development of female inflorescences as well. The results show clearly that BpMADS1::BARNASE can prevent the flowering in a tree but the prevention of flowering may cause some side effects. Studies with ordinary birch clones will show whether the side effects are a property of the early flowering clones or all birches. [ABSTRACT FROM AUTHOR]
- Published
- 2004
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207. DNA sequence variation in BpMADS2 gene in two populations ofBetula pendula.
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Järvinen, Pia, Lemmetyinen, Juha, Savolainen, Outi, and Sopanen, Tuomas
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EUROPEAN white birch , *ARABIDOPSIS thaliana - Abstract
The PISTILLATA (PI) homologue, BpMADS2, was isolated from silver birch (Betula pendula Roth) and used to study nucleotide polymorphism. Two regions (together about 2450 bp) comprising mainly untranslated sequences were sequenced from 10 individuals from each of two populations in Finland. The nucleotide polymorphism was low in the BpMADS2 locus, especially in the coding region. The synonymous site overall nucleotide diversity (π[SUBs]) was 0.0043 and the nonsynonymous nucleotide diversity (π[SUBa]) was only 0.000052. For the whole region, the π values for the two populations were 0.0039 and 0.0045, (and for the coding regions, the π values were only 0 and 0.00066 (for the corresponding coding regions of Arabidopsis thaliana PI world-wide π was 0.0021). Estimates of π or θ did not differ significantly between the two populations, and the two populations were not diverged from each other. Two classes of BpMADS2 alleles were present in both populations, suggesting that this gene exhibits allelic dimorphism. In addition to the nucleotide site variation, two microsatellites were also associated within the haplotypes. This allelic dimorphism might be the result of postglacial re-colonization partly from northwestern, partly from southeastern/eastern refugia. The sequence comparison detected five recombination events in the regions studied. The large number of microsatellites in all of the three introns studied suggests that BpMADS2 is a hotspot for microsatellite formation. [ABSTRACT FROM AUTHOR]
- Published
- 2003
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208. Prevention of flower formation in dicotyledons.
- Author
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Lemmetyinen, Juha, Pennanen, Tuija, Lännenpää, Mika, and Sopanen, Tuomas
- Abstract
Prevention of flower formation is important, for example for preventing the spread of transgenes from genetically modified plants or the spread of non-native species, for increasing vegetative growth or preventing the formation of allergenic pollen. The aim of this study was to determine whether flowering of dicotyledonous plants can be prevented by genetic manipulation without harmful effects on vegetative growth. Here we describe isolation of the BpMADS1 gene (similar to SEP3, formerly AGL9) from birch and show that it is expressed only in the inflorescences. In tobacco and Arabidopsis, the expression of BpMADS1::GUS was also virtually inflorescence-specific. Transgenic tobacco and Arabidopsis containing a BpMADS1::BARNASE construct grew well. In one tobacco line the formation of the inflorescence was completely prevented; in several other lines the flowers lacked stamens and carpels and therefore were sterile. The final dry weights of the shoots of the sterile tobacco lines were 140–200% of those of controls. In Arabidopsis, some of the transgenic lines containing the BpMADS1::BARNASE construct formed inflorescences. Some of these lines formed never flowers and some others formed occasionally single fertile flowers. Some other lines did not form inflorescences, but formed up to about one hundred leaves, even in long-day conditions. These results suggest that formation of flowers or inflorescences in widely different dicotyledonous plants could be prevented using the BpMADS1::BARNASE construct and that prevention of flowering may lead to increased vegetative mass. [ABSTRACT FROM AUTHOR]
- Published
- 2001
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209. Three MADS-box genes similar to APETALA1 and FRUITFULL from silver birch (Betula pendula).
- Author
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Elo, Annakaisa, Lemmetyinen, Juha, Turunen, Marja-Leena, Tikka, Liisa, and Sopanen, Tuomas
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EUROPEAN white birch , *BIRDS , *GENE expression , *ANTISENSE DNA , *GENETICS - Abstract
Despite intensive research on genetic regulation of flower development there are still only a few studies on the early phases of this process in perennial plants like trees. The aim of this study has been to identify genes that regulate early stages of inflorescence development in silver birch (Betula pendula Roth) and to follow the expression of these genes during development of the unisexual birch inflorescences. Here we describe the cloning and characterization of 3 cDNAs representing MADS-box genes designated BpMADS3, BpMADS4 and BpMADS5, all belonging to the AP1/SQUA group of plant MADS-box genes. According to RNA blot analysis, all 3 genes are active during the development of both male and female inflorescences. However, differences in patterns of expression suggest that they play different roles. BpMADS3 is most similar in sequence to AP1 and SQUA, but it seems to have the highest expression at late developmental stages. BpMADS4 is most similar in sequence to the Arabidopsis gene FRUITFULL, but is expressed, in addition to developing inflorescences, in shoots and roots. BpMADS5 is also similar to FRUITFULL; its expression seems to be inflorescence-specific and continues during fruit development. Ectopic expression of either BpMADS3, BpMADS4 or BpMADS5 with the CaMV 35S promoter in tobacco results in extremely early flowering. All of these birch genes seem to act early during the transition to reproductive phase and might be involved in the determination of the identity of the inflorescence or flower meristem. They could apparently be used to accelerate flowering in various plant species. [ABSTRACT FROM AUTHOR]
- Published
- 2001
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210. Solving Challenges of Assimilating Microwave Remote Sensing Signatures With a Physical Model to Estimate Snow Water Equivalent
- Author
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Merkouriadi, Ioanna, Lemmetyinen, Juha, Liston, Glen E., and Pulliainen, Jouni
- Abstract
Global monitoring of seasonal snow water equivalent (SWE) has advanced significantly over the past decades. However, challenges remain when estimating SWE from passive and active microwave signatures, because a priori characterization of snow properties is required for SWE retrievals. Numerical experiments have shown that utilizing physical snow models to acquire snowpack characterization can potentially improve microwave‐based SWE retrievals. This study aims to identify the challenges of assimilating active and passive microwave signatures with physical snow models, and to examine solutions to those challenges. Guided by observations from a point‐based study, we designed a sensitivity experiment to quantify the effects of changes in the physically modeled SWE—and of corresponding changes to other snowpack properties—to the microwave‐based SWE retrievals. The results indicate that assimilating microwave signatures with physical snow models face some critical challenges associated with the physical relationship between SWE and snow microstructure. We demonstrate these challenges can be overcome if the microwave algorithms account for these relationships. Simulated snow properties from SnowModel are used in microwave‐based snow water equivalent (SWE) retrievals by MEMLS3&aBiases in physically modeled SWE can induce larger biases in microwave‐based SWE retrievalsThe challenges can be mitigated when microwave algorithms account for the physical relationship of snow properties Simulated snow properties from SnowModel are used in microwave‐based snow water equivalent (SWE) retrievals by MEMLS3&a Biases in physically modeled SWE can induce larger biases in microwave‐based SWE retrievals The challenges can be mitigated when microwave algorithms account for the physical relationship of snow properties
- Published
- 2021
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211. Foreword to the Special Issue on MicroRad 2018.
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Misra, Sidharth, Lemmetyinen, Juha, and Entekhabi, Dara
- Published
- 2019
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212. SodSAR: A Tower-Based 1–10 GHz SAR System for Snow, Soil and Vegetation Studies.
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Jorge Ruiz, Jorge, Vehmas, Risto, Lemmetyinen, Juha, Uusitalo, Josu, Lahtinen, Janne, Lehtinen, Kari, Kontu, Anna, Rautiainen, Kimmo, Tarvainen, Riku, Pulliainen, Jouni, and Praks, Jaan
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SYNTHETIC aperture radar ,RADAR cross sections ,RADAR targets ,TAIGAS ,SNOW - Abstract
We introduce SodSAR, a fully polarimetric tower-based wide frequency (1–10 GHz) range Synthetic Aperture Radar (SAR) aimed at snow, soil and vegetation studies. The instrument is located in the Arctic Space Centre of the Finnish Meteorological Institute in Sodankylä, Finland. The system is based on a Vector Network Analyzer (VNA)-operated scatterometer mounted on a rail allowing the formation of SAR images, including interferometric pairs separated by a temporal baseline. We present the description of the radar, the applied SAR focusing technique, the radar calibration and measurement stability analysis. Measured stability of the backscattering intensity over a three-month period was observed to be better than 0.5 dB, when measuring a target with a known radar cross section. Deviations of the estimated target range were in the order of a few cm over the same period, indicating also good stability of the measured phase. Interforometric SAR (InSAR) capabilities are also discussed, and as a example, the coherence of subsequent SAR acquisitions over the observed boreal forest stand are analyzed over increasing temporal baselines. The analysis shows good conservation of coherence in particular at L-band, while higher frequencies are susceptible to loss of coherence in particular for dense vegetation. The potential of the instrument for satellite calibration and validation activities is also discussed. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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213. Publisher Correction: Patterns and trends of Northern Hemisphere snow mass from 1980 to 2018.
- Author
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Pulliainen, Jouni, Luojus, Kari, Derksen, Chris, Mudryk, Lawrence, Lemmetyinen, Juha, Salminen, Miia, Ikonen, Jaakko, Takala, Matias, Cohen, Juval, Smolander, Tuomo, and Norberg, Johannes
- Abstract
An amendment to this paper has been published and can be accessed via a link at the top of the paper. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
214. The influence of tree transmissivity variations in winter on satellite snow parameter observations.
- Author
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Li, Qinghuan, Kelly, Richard, Lemmetyinen, Juha, De Roo, Roger D., Pan, Jinmei, and Qiu, Yubao
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MICROWAVE remote sensing , *BRIGHTNESS temperature , *ATMOSPHERIC temperature , *TAIGAS , *TREES , *SOIL moisture , *SNOW cover - Abstract
The ability to correct for the influence of forest cover is crucial for retrieval of surface geophysical parameters such as snow cover and soil properties from microwave remote sensing. Existing correction approaches to brightness temperatures for northern boreal forest regions consider forest transmissivity constant during wintertime. However, due to biophysical protection mechanisms, below freezing air temperatures freeze the water content of northern tree species only gradually. As a consequence, the permittivity of many northern tree species decreases with the decrease of air temperature under sub-zero temperature conditions. This results in a monotonic increase of the tree vegetation transmissivity, as the permittivity contrast to the surrounding air decreases. The influence of this tree temperature-transmissivity relationship on the performance of the frequency difference passive microwave snow retrieval algorithms has not been considered. Using ground-based observations and an analytical model simulation based on Mätzler's approach (1994), the influence of the temperature-transmissivity relationship on the snow retrieval algorithms, based on the spectral difference of two microwave channels, is characterized. A simple approximation approach is then developed to successfully characterize this influence (the RMSE between the analytical model simulation and the approximation approach estimation is below 0.3 K). The approximation is applied to spaceborne observations, and demonstrates the capacity to reduce the influence of the forest temperature-transmissivity relationship on passive microwave frequency difference brightness temperature. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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215. Atmospheric Correction to Passive Microwave Brightness Temperature in Snow Cover Mapping Over China.
- Author
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Qiu, Yubao, Shi, Lijuan, Lemmetyinen, Juha, Shi, Jiancheng, and Wang, Robert Yu
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PRECIPITABLE water , *BRIGHTNESS temperature , *SNOW cover , *WEATHER , *MICROWAVES , *SURFACE of the earth - Abstract
Variable atmospheric conditions are typically ignored in the retrieval of geophysical parameters of the Earth’s surface when using spaceborne passive microwave observations. However, high frequencies, for example, 91.7 GHz, are sensitive to variable atmospheric absorption, even in winter’s dry conditions. In this article, the influence of variable atmospheric absorption on snow cover extent (SCE) mapping was quantitatively investigated. A physical method was derived to enable atmospheric correction for variable atmospheric conditions. The total column precipitable water vapor (TPWV) from Moderate Resolution Imaging Spectroradiometer (MODIS) was parametrized into transmittances in this correction method. The corrected brightness temperature at 19 and 91.7 GHz from the Special Sensor Microwave Imager Sounder (SSMIS) was applied to the threshold algorithm for snow mapping over China. Compared with the Interactive Multisensor Snow and Ice Mapping System (IMS) data in winter from 2012 to 2013, for Qinghai–Tibet plateau (QTP), a significant improvement after correction was obtained from February to March over ephemeral and shallow snow, where the largest daily improvement of accuracy is up to 20%. The accuracy (incl. precision, recall, and F1 index) improved on average is from 0.77 (0.60, 0.68, and 0.63) to 0.79 (0.69, 0.7, and 0.68) over the full winter time from December to March. Over forest-rich Northeast China, where snow in winter is thicker, small improvement was observed at the onset of the snow season and over snow margin area. It was evidenced that high frequency is a promising way of snow cover mapping with the proposed atmospheric correction method. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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- View/download PDF
216. Observations of seasonal snow cover at X and Ku bands during the NoSREx campaign
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Kern, Michael, Lin, Chung-Chi, Schuttemeyer, Dirk, Davidson, Malcolm, Proksch, Martin, Schneebeli, Martin, Coccia, Alex, Meta, Adriano, Nagler, Thomas, Voglmeier, Karl, Rott, Helmut, Maetzler, Christian, Wiesmann, Andreas, Kontu, Anna, Jouni Pulliainen, and Lemmetyinen, Juha
217. Impact of dynamic snow density on GlobSnow snow water equivalent retrieval accuracy.
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Venäläinen, Pinja, Luojus, Kari, Lemmetyinen, Juha, Pulliainen, Jouni, Moisander, Mikko, and Takala, Matias
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METEOROLOGICAL stations , *SNOW accumulation , *MICROWAVE radiometers , *DENSITY , *SNOW cover , *SEASONS , *WATER vapor - Abstract
Snow water equivalent (SWE) is an important variable in describing global seasonal snow cover. Traditionally, SWE has been measured manually at snow transects or using observations from weather stations. However, these measurements have a poor spatial coverage, and a good alternative to in situ measurements is to use spaceborne passive microwave observations, which can provide global coverage at daily timescales. The reliability and accuracy of SWE estimates made using spaceborne microwave radiometer data can be improved by assimilating radiometer observations with weather station snow depth observations as done in the GlobSnow SWE retrieval methodology. However, one possible source of uncertainty in the GlobSnow SWE retrieval approach is the constant snow density used in modelling emission of snow. In this paper, three versions of spatially and temporally varying snow density fields were implemented using snow transect data from Eurasia and Canada and automated snow observations from the United States. Snow density fields were used to post-process the baseline GlobSnow v.3.0 SWE product. Decadal snow density information, i.e. fields where snow density for each day of the year was taken as the mean calculated for the corresponding day over 10 years, was found to produce the best results. Overall, post-processing GlobSnow SWE retrieval with dynamic snow density information improved overestimation of small SWE values and underestimation of large SWE values, though underestimation of SWE values larger than 175 mm was still significant. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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218. Forward modelling of synthetic-aperture radar (SAR) backscatter during lake ice melt conditions using the Snow Microwave Radiative Transfer (SMRT) model.
- Author
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Murfitt, Justin, Duguay, Claude, Picard, Ghislain, and Lemmetyinen, Juha
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ICE on rivers, lakes, etc. , *BACKSCATTERING , *RADIATIVE transfer , *RADAR , *SURFACE scattering , *SUBGLACIAL lakes , *MELTWATER , *SPACE-based radar - Abstract
Monitoring of lake ice is important to maintain transportation routes, but in recent decades the number of in situ observations have declined. Remote sensing has worked to fill this gap in observations, with active microwave sensors, particularly synthetic-aperture radar (SAR), being a crucial technology. However, the impact of wet conditions on radar and how interactions change under these conditions have been largely ignored. It is important to understand these interactions as warming conditions are likely to lead to an increase in the occurrence of slush layers. This study works to address this gap using the Snow Microwave Radiative Transfer (SMRT) model to conduct forward-modelling experiments of backscatter for Lake Oulujärvi in Finland. Experiments were conducted under dry conditions, under moderate wet conditions, and under saturated conditions. These experiments reflected field observations during the 2020–2021 ice season. Results of the dry-snow experiments support the dominance of surface scattering from the ice–water interface. However, conditions where layers of wet snow are introduced show that the primary scattering interface changes depending on the location of the wet layer. The addition of a saturated layer at the ice surface results in the highest backscatter values due to the larger dielectric contrast created between the overlying dry snow and the slush layer. Improving the representation of these conditions in SMRT can also aid in more accurate retrievals of lake ice properties such as roughness, which is key for inversion modelling of other properties such as ice thickness. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
219. X- and Ku-Band SAR Backscattering Signatures of Snow-Covered Lake Ice and Sea Ice.
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Veijola, Katriina, Cohen, Juval, Mäkynen, Marko, Lemmetyinen, Juha, Praks, Jaan, and Cheng, Bin
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ICE on rivers, lakes, etc. , *SEA ice , *BACKSCATTERING , *SYNTHETIC aperture radar , *SNOW accumulation , *SNOW surveys - Abstract
In this work, backscattering signatures of snow-covered lake ice and sea ice from X- and Ku-band synthetic aperture radar (SAR) data are investigated. The SAR data were acquired with the ESA airborne SnowSAR sensor in winter 2012 over Lake Orajärvi in northern Finland and over landfast ice in the Bay of Bothnia of the Baltic Sea. Co-incident with the SnowSAR acquisitions, in situ snow and ice data were measured. In addition, time series of TerraSAR-X images and ice mass balance buoy data were acquired for Lake Orajärvi in 2011–2012. The main objective of our study was to investigate relationships between SAR backscattering signatures and snow depth over lake and sea ice, with the ultimate objective of assessing the feasibility of retrieval of snow characteristics using X- and Ku-band dual-polarization (VV and VH) SAR over freshwater or sea ice. This study constitutes the first comprehensive survey of snow backscattering signatures at these two combined frequencies over both lake and sea ice. For lake ice, we show that X-band VH-polarized backscattering coefficient ( σ o ) and the Ku-band VV/VH-ratio exhibited the highest sensitivity to the snow depth. For sea ice, the highest sensitivity to the snow depth was found from the Ku-band VV-polarized σ o and the Ku-band VV/VH-ratio. However, the observed relations were relatively weak, indicating that at least for the prevailing snow conditions, obtaining reliable estimates of snow depth over lake and sea ice would be challenging using only X- and Ku-band backscattering information. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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220. A Lake Ice Phenology Dataset for the Northern Hemisphere based on Passive Microwave Remote Sensing
- Author
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Xingxing Wang, Xingxing Wang, primary, Yubao Qiu, Yubao Qiu, additional, Yixiao Zhang, Yixiao Zhang, additional, Juha Lemmetyinen, Juha Lemmetyinen, additional, Bin Cheng, Bin Cheng, additional, Wenshan Liang, Wenshan Liang, additional, and Matti Leppäranta, Matti Leppäranta, additional
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221. Modelling the L-Band Snow-Covered Surface Emission in a Winter Canadian Prairie Environment.
- Author
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Roy, Alexandre, Leduc-Leballeur, Marion, Picard, Ghislain, Royer, Alain, Toose, Peter, Derksen, Chris, Lemmetyinen, Juha, Berg, Aaron, Rowlandson, Tracy, and Schwank, Mike
- Subjects
BRIGHTNESS temperature ,FROZEN ground ,WAVELENGTHS ,RADIOMETERS ,STANDARD deviations - Abstract
Detailed angular ground-based L-band brightness temperature (T
B ) measurements over snow covered frozen soil in a prairie environment were used to parameterize and evaluate an electromagnetic model, the Wave Approach for LOw-frequency MIcrowave emission in Snow (WALOMIS), for seasonal snow. WALOMIS, initially developed for Antarctic applications, was extended with a soil interface model. A Gaussian noise on snow layer thickness was implemented to account for natural variability and thus improve the TB simulations compared to observations. The model performance was compared with two radiative transfer models, the Dense Media Radiative Transfer-Multi Layer incoherent model (DMRT-ML) and a version of the Microwave Emission Model for Layered Snowpacks (MEMLS) adapted specifically for use at L-band in the original one-layer configuration (LS-MEMLS-1L). Angular radiometer measurements (30°, 40°, 50°, and 60°) were acquired at six snow pits. The root-mean-square error (RMSE) between simulated and measured TB at vertical and horizontal polarizations were similar for the three models, with overall RMSE between 7.2 and 10.5 K. However, WALOMIS and DMRT-ML were able to better reproduce the observed TB at higher incidence angles (50° and 60°) and at horizontal polarization. The similar results obtained between WALOMIS and DMRT-ML suggests that the interference phenomena are weak in the case of shallow seasonal snow despite the presence of visible layers with thicknesses smaller than the wavelength, and the radiative transfer model can thus be used to compute L-band brightness temperature. [ABSTRACT FROM AUTHOR]- Published
- 2018
- Full Text
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222. Comparison of Gene Expression in the Gill of Salmon (Salmo salar) Smolts from Anadromous and Landlocked Populations
- Author
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Lemmetyinen, Juha, Piironen, Jorma, Kiiskinen, Päivi, Hassinen, Minna, and Vornanen, Matti
- Published
- 2013
- Full Text
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223. Implementing spatially and temporally varying snow densities into the GlobSnow snow water equivalent retrieval.
- Author
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Venäläinen, Pinja, Luojus, Kari, Mortimer, Colleen, Lemmetyinen, Juha, Pulliainen, Jouni, Takala, Matias, Moisander, Mikko, and Zschenderlein, Lina
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STANDARD deviations , *SNOW cover , *SNOW accumulation , *METEOROLOGICAL stations - Abstract
Snow water equivalent (SWE) is a valuable characteristic of snow cover, and it can be estimated using passive spaceborne radiometer measurements. The radiometer-based GlobSnow SWE retrieval methodology, which assimilates weather station snow depth observations into the retrieval, has improved the reliability and accuracy of SWE retrieval when compared to stand-alone radiometer SWE retrievals. To further improve the GlobSnow SWE retrieval methodology, we investigate implementing spatially and temporally varying snow densities into the retrieval procedure. Thus far, the GlobSnow SWE retrieval has used a constant snow density throughout the retrieval despite differing locations, snow depth, or time of winter. This constant snow density is a known source of inaccuracy in the retrieval. Four different versions of spatially and temporally varying snow densities are tested over a 10-year period (2000–2009). These versions use two different spatial interpolation techniques: ordinary Kriging interpolation and inverse distance weighted regression (IDWR). All versions were found to improve the SWE retrieval compared to the baseline GlobSnow v3.0 product, although differences between versions are small. Overall, the best results were obtained by implementing IDWR-interpolated densities into the algorithm, which reduced RMSE (root mean square error) and MAE (mean absolute error) by about 4 mm (8 % improvement) and 5 mm (16 % improvement) when compared to the baseline GlobSnow product, respectively. Furthermore, implementing varying snow densities into the SWE retrieval improves the magnitude and seasonal evolution of the Northern Hemisphere snow mass estimate compared to the baseline product and a product post-processed with varying snow densities. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
224. SMOS prototype algorithm for detecting autumn soil freezing.
- Author
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Rautiainen, Kimmo, Parkkinen, Tiina, Lemmetyinen, Juha, Schwank, Mike, Wiesmann, Andreas, Ikonen, Jaakko, Derksen, Chris, Davydov, Sergei, Davydova, Anna, Boike, Julia, Langer, Moritz, Drusch, Matthias, and Pulliainen, Jouni
- Subjects
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SOIL moisture , *SEAWATER salinity , *AUTUMN , *SOIL freezing , *SOIL depth - Abstract
A prototype algorithm for hemispheric scale detection of autumn soil freezing using space-borne L-band passive microwave observations is presented. The methodology is based on earlier empirical and theoretical studies of L-band emission properties of freezing and thawing soils. We expand a method originally developed for soil freeze–thaw (F/T) state detection from L-band tower based observations to satellite scale, applying observations from the European Space Agency's Soil Moisture and Ocean Salinity (SMOS) mission. The developed algorithm is based on first establishing spatially variable thresholds for L-band brightness temperatures representing frozen and thawed states of soil, and comparing these to current values of different indicators of soil freezing, calculated based on observed brightness temperature at different polarizations and incidence angles. An exponential relation between the freezing indicators and the depth of soil frost is developed based on a large amount of manual soil frost tube observations across Finland. An additional processing filter based on observed physical temperature and snow cover information is used to flag obvious F/T detection errors. The estimated soil F/T-states provided in this study are limited to the autumn freezing period, as melting snow in spring effectively prevents acquisition of information from the soil surface using microwaves for large areas in Northern latitudes. The F/T estimate is produced as daily information and provided in the equal-area scalable Earth (EASE) grid. Soil F/T-state is categorized into three discrete levels: ‘frozen’, ‘partially frozen’, and ‘thawed’, and accompanied with a quality data matrix estimating the data reliability for each freezing season separately. Comparisons to in situ data were conducted at 10 different locations in Finland, Northern America and Siberia. These comparison results indicate that the onset of autumn soil freezing can be estimated from SMOS observations to within 1 to 14 days, depending on the freezing indicator applied and the in situ data used in comparison. Although the initial results are encouraging, more comprehensive assessment of SMOS based soil F/T estimates still requires further comparison to other reference sites, particularly to sites with measurements available for all locally representative land cover types, as well as other satellite-based soil freezing products. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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225. Review article: Global monitoring of snow water equivalent using high-frequency radar remote sensing.
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Tsang, Leung, Durand, Michael, Derksen, Chris, Barros, Ana P., Kang, Do-Hyuk, Lievens, Hans, Marshall, Hans-Peter, Zhu, Jiyue, Johnson, Joel, King, Joshua, Lemmetyinen, Juha, Sandells, Melody, Rutter, Nick, Siqueira, Paul, Nolin, Anne, Osmanoglu, Batu, Vuyovich, Carrie, Kim, Edward, Taylor, Drew, and Merkouriadi, Ioanna
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REMOTE sensing by radar , *MICROWAVE remote sensing , *SYNTHETIC aperture radar , *WATER management , *CLOUDINESS , *SEA ice , *SNOW cover - Abstract
Seasonal snow cover is the largest single component of the cryosphere in areal extent, covering an average of 46×106 km 2 of Earth's surface (31 % of the land area) each year, and is thus an important expression and driver of the Earth's climate. In recent years, Northern Hemisphere spring snow cover has been declining at about the same rate (∼ -13 % per decade) as Arctic summer sea ice. More than one-sixth of the world's population relies on seasonal snowpack and glaciers for a water supply that is likely to decrease this century. Snow is also a critical component of Earth's cold regions' ecosystems, in which wildlife, vegetation, and snow are strongly interconnected. Snow water equivalent (SWE) describes the quantity of water stored as snow on the land surface and is of fundamental importance to water, energy, and geochemical cycles. Quality global SWE estimates are lacking. Given the vast seasonal extent combined with the spatially variable nature of snow distribution at regional and local scales, surface observations are not able to provide sufficient SWE information. Satellite observations presently cannot provide SWE information at the spatial and temporal resolutions required to address science and high-socio-economic-value applications such as water resource management and streamflow forecasting. In this paper, we review the potential contribution of X- and Ku-band synthetic aperture radar (SAR) for global monitoring of SWE. SAR can image the surface during both day and night regardless of cloud cover, allowing high-frequency revisit at high spatial resolution as demonstrated by missions such as Sentinel-1. The physical basis for estimating SWE from X- and Ku-band radar measurements at local scales is volume scattering by millimeter-scale snow grains. Inference of global snow properties from SAR requires an interdisciplinary approach based on field observations of snow microstructure, physical snow modeling, electromagnetic theory, and retrieval strategies over a range of scales. New field measurement capabilities have enabled significant advances in understanding snow microstructure such as grain size, density, and layering. We describe radar interactions with snow-covered landscapes, the small but rapidly growing number of field datasets used to evaluate retrieval algorithms, the characterization of snowpack properties using radar measurements, and the refinement of retrieval algorithms via synergy with other microwave remote sensing approaches. This review serves to inform the broader snow research, monitoring, and application communities on progress made in recent decades and sets the stage for a new era in SWE remote sensing from SAR measurements. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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226. Increase in gross primary production of boreal forests balanced out by increase in ecosystem respiration.
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Pulliainen, Jouni, Aurela, Mika, Aalto, Tuula, Böttcher, Kristin, Cohen, Juval, Derksen, Chris, Heimann, Martin, Helbig, Manuel, Kolari, Pasi, Kontu, Anna, Krasnova, Alisa, Launiainen, Samuli, Lemmetyinen, Juha, Lindqvist, Hannakaisa, Lindroth, Anders, Lohila, Annalea, Luojus, Kari, Mammarella, Ivan, Markkanen, Tiina, and Nevala, Elma
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MICROWAVE remote sensing , *TAIGAS , *NORMALIZED difference vegetation index , *REMOTE sensing , *CARBON dioxide - Abstract
Changes in the net carbon sink of boreal forests constitute a major source of uncertainty in the future global carbon budget and, hence, climate change projections. The annual net ecosystem exchange of carbon dioxide (CO 2) controlling the terrestrial carbon stock results from the small difference between respiratory CO 2 release and the photosynthetic CO 2 uptake by vegetation. The boreal forest, and the boreal biome in general, is regarded as a persistent and even increasing net carbon sink. However, decreases in photosynthetic CO 2 uptake and/or concurrent increases in respiratory CO 2 release under a changing climate may turn boreal forests from a net sink to a net source of CO 2. Here, we assessed the interannual variability of the boreal forest net CO 2 sink-source strength and its two component fluxes from 1981 to 2018. Our remote sensing approach - trained by net CO 2 flux observations at eddy covariance sites across the circumpolar boreal forests - employs satellite-derived retrievals of snowmelt timing, landscape freeze-thaw status, and yearly maximum estimates of the normalized difference vegetation index as a proxy for peak vegetation productivity. Our results suggest that for the period 2000–2018, the mean annual evergreen boreal forest CO 2 photosynthetic uptake (gross primary productivity) was 2.8 ± 0.2 Pg C y−1 (1.6 ± 0.1 Pg C y−1 for Eurasia and 1.2 ± 0.1 Pg C y−1 for North America). In contrast to earlier studies results obtained here do not indicate a clear increasing trend in the circumpolar evergreen boreal forest CO 2 sink. The increase in photosynthetic CO 2 uptake is compensated by increasing respiratory releases with both component fluxes showing considerable interannual variabilities. • New approach to estimate the interannual dynamics carbon exchange. • Using CO 2 flux observations and satellite data on cryosphere. • Estimates on hemispheric net ecosystem CO 2 uptake and respiration for 1981–2018. • Producing estimates independent of terrestrial biosphere model predictions. • Showing that increases in CO 2 uptake compensated by increased respiratory releases. [ABSTRACT FROM AUTHOR]
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- 2024
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227. Effects of Arctic Wetland Dynamics on Tower-Based GNSS Reflectometry Observations.
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Steiner, Ladina, Fabra, Fran, Rautiainen, Kimmo, Lemmetyinen, Juha, Cohen, Juval, and Cardellach, Estel
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GLOBAL Positioning System , *WETLANDS , *REFLECTOMETRY , *TUNDRAS , *WETLANDS monitoring , *SNOW cover - Abstract
A tower-based global navigation satellite system reflectometry (GNSS-R) experiment is set up in an Arctic wetland environment for investigating the possibility of monitoring wetland inundation and freeze/thaw (FT) dynamics which are additionally impacted by snow on the ground. Effects of inundation, snow cover, and soil FT state on observed GNSS-R signal-to-noise ratios (SNRs) are analyzed for horizontal (H) and vertical (V) polarizations. A simple classification approach is suggested to detect the inundated, frozen, or thawed soil state. A simple forward reflectivity model is formulated to evaluate the influence of snow cover, overlying frozen, or thawed soil, on the reflected GNSS signals. Reflectivity time series are simulated in H- and V-polarizations using in situ observations of the Arctic wetland site. The simulations are used to verify the tower-based observations, which show a significant impact of wet snow on reflectivity during melting conditions in spring. The observed SNR is strongly correlated with the Sentinel-1 backscatter coefficient. Generally, soil states detected by GNSS-R are in high agreement with ground truth soil states, especially for inundated and frozen soils. Wet snow conditions, however, complicate the correct timing estimation of soil thawing by inducing reflectivities of a similar order as thawing soil. It is recommended that GNSS-R land application models and retrieval algorithms consider snow cover effects to reduce false classification, especially in FT detection. Overall, the outcome of this study is relevant to the upcoming ESA HydroGNSS mission. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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228. Exploiting the ANN Potential in Estimating Snow Depth and Snow Water Equivalent From the Airborne SnowSAR Data at X- and Ku-Bands.
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Santi, Emanuele, Brogioni, Marco, Leduc-Leballeur, Marion, Macelloni, Giovanni, Montomoli, Francesco, Pampaloni, Paolo, Lemmetyinen, Juha, Cohen, Juval, Rott, Helmut, Nagler, Thomas, Derksen, Chris, King, Joshua, Rutter, Nick, Essery, Richard, Menard, Cecile, Sandells, Melody, and Kern, Michael
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SNOW accumulation , *SYNTHETIC aperture radar , *ARTIFICIAL neural networks , *WATER depth , *RADIATIVE transfer , *AIRBORNE lasers , *STOCHASTIC dominance - Abstract
Within the framework of European Space Agency (ESA) activities, several campaigns were carried out in the last decade with the purpose of exploiting the capabilities of multifrequency synthetic aperture radar (SAR) data to retrieve snow information. This article presents the results obtained from the ESA SnowSAR airborne campaigns, carried out between 2011 and 2013 on boreal forest, tundra and alpine environments, selected as representative of different snow regimes. The aim of this study was to assess the capability of X- and Ku-bands SAR in retrieving the snow parameters, namely snow depth (SD) and snow water equivalent (SWE). The retrieval was based on machine learning (ML) techniques and, in particular, of artificial neural networks (ANNs). ANNs have been selected among other ML approaches since they are capable to offer a good compromise between retrieval accuracy and computational cost. Two approaches were evaluated, the first based on the experimental data (data driven) and the second based on data simulated by the dense medium radiative transfer (DMRT). The data driven algorithm was trained on half of the SnowSAR dataset and validated on the remaining half. The validation resulted in a correlation coefficient $R \simeq 0.77$ between estimated and target SD, a root-mean-square error (RMSE) $\simeq 13$ cm, and bias = 0.03 cm. ANN algorithms specific for each test site were also implemented, obtaining more accurate results, and the robustness of the data driven approach was evaluated over time and space. The algorithm trained with DMRT simulations and tested on the experimental dataset was able to estimate the target parameter (SWE in this case) with $R =0.74$ , RMSE = 34.8 mm, and bias = 1.8 mm. The model driven approach had the twofold advantage of reducing the amount of in situ data required for training the algorithm and of extending the algorithm exportability to other test sites. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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229. X-Ray Tomography-Based Microstructure Representation in the Snow Microwave Radiative Transfer Model.
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Sandells, Melody, Lowe, Henning, Picard, Ghislain, Dumont, Marie, Essery, Richard, Floury, Nicolas, Kontu, Anna, Lemmetyinen, Juha, Maslanka, William, Morin, Samuel, Wiesmann, Andreas, and Matzler, Christian
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RADIATIVE transfer , *MICROWAVE scattering , *X-rays , *MICROWAVES , *BRIGHTNESS temperature , *CHEMICAL ionization mass spectrometry - Abstract
The modular Snow Microwave Radiative Transfer (SMRT) model simulates microwave scattering behavior in snow via different selectable theories and snow microstructure representations, which is well suited to intercomparisons analyses. Here, five microstructure models were parameterized from X-ray tomography and thin-section images of snow samples and evaluated with SMRT. Three field experiments provided observations of scattering and absorption coefficients, brightness temperature, and/or backscatter with the increasing complexity of snowpack. These took place in Sodankylä, Finland, and Weissfluhjoch, Switzerland. Simulations of scattering and absorption coefficients agreed well with observations, with higher errors for snow with predominantly vertical structures. For simulation of brightness temperature, difficulty in retrieving stickiness with the Sticky Hard Sphere microstructure model resulted in relatively poor performance for two experiments, but good agreement for the third. Exponential microstructure gave generally good results, near to the best performing models for two field experiments. The Independent Sphere model gave intermediate results. New Teubner–Strey and Gaussian Random Field models demonstrated the advantages of SMRT over microwave models with restricted microstructural geometry. Relative model performance is assessed by the quality of the microstructure model fit to micro-computed tomography (CT) data and further improvements may be possible with different fitting techniques. Careful consideration of simulation stratigraphy is required in this new era of high-resolution microstructure measurement as layers thinner than the wavelength introduce artificial scattering boundaries not seen by the instrument. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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230. Inter-annual variation in lake ice composition in the European Arctic: observations based on high-resolution thermistor strings.
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Cheng, Bin, Cheng, Yubing, Vihma, Timo, Kontu, Anna, Zheng, Fei, Lemmetyinen, Juha, Qiu, Yubao, and Pulliainen, Jouni
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ICE on rivers, lakes, etc. , *SNOW accumulation , *THERMISTORS , *METEOROLOGICAL observations , *CLIMATE change , *WATER temperature - Abstract
Climate change and global warming strongly impact the cryosphere. The rise of air temperature and change of precipitation patterns lead to dramatic responses of snow and ice heat and mass balance. Sustainable field observations on lake air–snow–ice–water temperature regime have been carried out in Lake Orajärvi in the vicinity of the Finnish Space Centre, a Flagship Supersite in Sodankylä in Finnish Lapland since 2009. A thermistor-string-based snow and ice mass balance buoy called "Snow and ice mass balance apparatus (SIMBA)" was deployed in the lake at the beginning of each ice season. In this paper, we describe snow and ice temperature regimes, snow depth, ice thickness, and ice compositions retrieved from SIMBA observations as well as meteorological variables based on high-quality observations at the Finnish Space Centre. Ice thickness in Lake Orajärvi showed an increasing trend. During the decade of data collection (1) the November–May mean air temperature had an increasing trend of 0.16 ∘ C per year, and the interannual variations were highly correlated (r = 0.93) with the total seasonal accumulated precipitation; (2) the maximum granular ice thickness ranged from 15 % to 80 % of the maximum total ice thickness; and (3) the snow depth on lake ice was not correlated (r = 0.21) with the total precipitation. The data set can be applied to investigate the lake ice surface heat balance and the role of snow in lake ice mass balance and to improve the parameterization of snow to ice transformation in snow and ice models. The data are archived at 10.5281/zenodo.4559368 (Cheng et al., 2021). [ABSTRACT FROM AUTHOR]
- Published
- 2021
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231. Inter-annual variation of lake ice composition in European Arctic: observations based on high-resolution thermistor strings.
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Cheng, Bin, Cheng, Yubing, Vihma, Timo, Kontu, Anna, Zheng, Fei, Lemmetyinen, Juha, Qiu, Yubao, and Puliainen, Jouni
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ICE on rivers, lakes, etc. , *THERMISTORS , *METEOROLOGICAL observations , *CLIMATE change , *WATER temperature , *SNOW accumulation - Abstract
Climate change and global warming strongly impact the cryosphere. The rise of air temperature and change of precipitation patterns lead to dramatic responses of snow and ice heat and mass balance. Sustainable field observations on lake air-snow-ice-water temperature regime have been carried out in Lake Orajärvi in the vicinity of the Finnish Space Centre, a Flagship Supersite in Sodankylä in Finnish Lapland since 2009. A thermistor string-based snow and ice mass balance buoy called "Snow and ice mass balance apparatus (SIMBA)" was deployed in the lake at the beginning of each ice season. In this paper, we describe snow and ice temperature regimes, snow depth, ice thickness, and ice compositions retrieved from SIMBA observations as well as meteorological variables based on high-quality observations at the Finnish Space Centre. Ice thickness in Lake Orajärvi showed an increasing trend. During the decade of data collection: 1) The November-May mean air temperature had an increasing trend of 0.16ºC/year, and the interannual variations were highly correlated (r=0.93) with the total seasonal accumulated precipitation; 2) The maximum granular ice thickness ranged from 15 to 80% of the maximum total ice thickness; 3) The snow depth on lake ice was not correlated (r=0.21) with the total precipitation. The data set can be applied to investigate the lake ice surface heat balance and the role of snow on lake ice mass balance, and to improve the parameterization of snow to ice transformation in snow/ice models. The data are archived at https://zenodo.org/record/4559368#.YIKOOpAzZPZ (Cheng et al., 2021) [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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232. Sentinel-1 based soil freeze/thaw estimation in boreal forest environments.
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Cohen, Juval, Rautiainen, Kimmo, Lemmetyinen, Juha, Smolander, Tuomo, Vehviläinen, Juho, and Pulliainen, Jouni
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SOIL freezing , *TAIGAS , *FOREST canopies , *SEAWATER salinity , *THAWING , *TUNDRAS - Abstract
A method for the retrieval of soil freeze/thaw (F/T) state in the boreal forest region using SAR is presented in this paper. The method utilizes Sentinel-1 data and is thus suitable for continuous near real-time monitoring. The main challenge with the C-band VV-polarization signal is the sensitivity to vegetation and especially to forest canopies. A relatively simple zeroth-order model is used for the retrieval of the ground and the canopy backscatter contributions in 1 km cell size. These backscatter components are then used to identify the F/T state of the soil by comparing them to corresponding reference values representing frozen and thawed conditions. The classification algorithm is based on threshold values applied on the Euclidian distances between the retrieved backscatter and the reference values. The method is tested for three test areas across Finland, having different forest properties: Sodankylä, Nurmes and Tampere, located in northern, central and southern Finland, respectively. We first evaluated whether the use of canopy cover (CC) or stem volume (SV) as the parameter describing the forest conditions provide better model accuracy. We then assessed the Sentinel-1 based soil F/T estimates by comparing them to automatic in situ observations and the SMOS (Soil Moisture and Ocean Salinity) based soil F/T product. The model performance was generally better when SV was used as the forest parameter. Nevertheless, for both CC and SV, the RMSE between the modeled and the observed backscatter was considerably lower than the seasonal variation of the backscatter. In Sodankylä and Nurmes, the Sentinel-1 based F/T estimates were well in line with the in situ observations and the SMOS F/T product. The Sentinel-1 retrievals measuring the top soil layer were fast to react to air temperature changes between negative and positive Celsius degrees, showing similarity of 94–99% with the air temperature measurements. In Tampere the method showed weaker results; the similarity with the air temperature observations was 64%. Overall, a correct vertical freezing pattern of the soil was demonstrated in this study, with Sentinel-1 sensitive to the top soil layer, in situ sensors measuring at 5 cm depth, and SMOS reaching to 5–15 cm soil depth. Additional assessment should be conducted in southern Finland. • Soil freezing and thawing in boreal forests can be detected with C-band SAR • Backscatter of ground and canopy are retrieved using a zeroth order forward model • Stem volume is the preferred forest parameter, but also canopy cover is feasible • Sentinel-1 enables continuous near real-time monitoring of soil freeze/thaw state [ABSTRACT FROM AUTHOR]
- Published
- 2021
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233. Snow depth estimation and historical data reconstruction over China based on a random forest machine learning approach.
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Yang, Jianwei, Jiang, Lingmei, Luojus, Kari, Pan, Jinmei, Lemmetyinen, Juha, Takala, Matias, and Wu, Shengli
- Abstract
We investigated the potential capability of the random forest (RF) machine learning (ML) model to estimate snow depth in this work. Four combinations composed of critical predictor variables were used to train the RF model. Then, we utilized three validation datasets from out-of-bag (OOB) samples, a temporal subset, and a spatiotemporal subset to verify the fitted RF algorithms. The results indicated the following: (1) the accuracy of the RF model is greatly influenced by geographic location, elevation, and land cover fractions; (2) however, the redundant predictor variables (if highly correlated) slightly affect the RF model; and (3) the fitted RF algorithms perform better on temporal than spatial scales, with unbiased root-mean-square errors (RMSEs) of ∼4.4 and ∼7.3 cm, respectively. Finally, we used the fitted RF2 algorithm to retrieve a consistent 32-year daily snow depth dataset from 1987 to 2018. This product was evaluated against the independent station observations during the period 1987–2018. The mean unbiased RMSE and bias were 7.1 and -0.05 cm, respectively, indicating better performance than that of the former snow depth dataset (8.4 and -1.20 cm) from the Environmental and Ecological Science Data Center for West China (WESTDC). Although the RF product was superior to the WESTDC dataset, it still underestimated deep snow cover (>20 cm), with biases of -10.4 , -8.9 , and -34.1 cm for northeast China (NEC), northern Xinjiang (XJ), and the Qinghai–Tibetan Plateau (QTP), respectively. Additionally, the long-term snow depth datasets (station observations, RF estimates, and WESTDC product) were analyzed in terms of temporal and spatial variations over China. On a temporal scale, the ground truth snow depth presented a significant increasing trend from 1987 to 2018, especially in NEC. However, the RF and WESTDC products displayed no significant changing trends except on the QTP. The WESTDC product presented a significant decreasing trend on the QTP, with a correlation coefficient of -0.55 , whereas there were no significant trends for ground truth observations and the RF product. For the spatial characteristics, similar trend patterns were observed for RF and WESTDC products over China. These characteristics presented significant decreasing trends in most areas and a significant increasing trend in central NEC. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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234. Derivation and Evaluation of a New Extinction Coefficient for Use With the n-HUT Snow Emission Model.
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Maslanka, William, Sandells, Melody, Gurney, Robert, Lemmetyinen, Juha, Leppanen, Leena, Kontu, Anna, Matzl, Margret, Rutter, Nick, Watts, Tom, and Kelly, Richard
- Subjects
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SNOW , *BIOLOGICAL extinction , *BRIGHTNESS temperature , *PERMITTIVITY , *ABSORPTION coefficients , *INSULIN aspart - Abstract
In this study, snow slab data collected from the Arctic Snow Microstructure Experiment were used in conjunction with a six-directional flux coefficient model to calculate individual slab absorption and scattering coefficients. These coefficients formed the basis for a new semiempirical extinction coefficient model, using both frequency and optical diameter as input parameters, along with the complex dielectric constant of snow. Radiometric observations, at 18.7, 21.0, and 36.5 GHz at both horizontal polarization (H-Pol) and vertical polarization (V-Pol), and snowpit data collected as part of the Sodankylä Radiometer Experiment were used to compare and contrast the simulated brightness temperatures produced by the multi-layer Helsinki University of Technology snow emission model, utilizing both the original empirical model and the new semiempirical extinction coefficient model described here. The results show that the V-Pol RMSE and bias values decreased when using the semiempirical extinction coefficient; however, the H-Pol RMSE and bias values increased on two of the lower microwave bands tested. The unbiased RMSE was shown to decrease across all frequencies and polarizations when using the semiempirical extinction coefficient. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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- View/download PDF
235. The Influence of Thermal Properties and Canopy- Intercepted Snow on Passive Microwave Transmissivity of a Scots Pine.
- Author
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Li, Qinghuan, Kelly, Richard, Leppanen, Leena, Vehvilainen, Juho, Kontu, Anna, Lemmetyinen, Juha, and Pulliainen, Jouni
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THERMAL properties , *SCOTS pine , *SNOW accumulation , *SNOW cover , *MICROWAVES , *SKIN temperature - Abstract
While many microwave studies related to tree emission have been undertaken, a few have considered the effect of phenological change on the emission from coniferous trees. The permittivity of vegetation tissue is known to be influenced by water content, while the water content and phase is sensitive to temperature in particular at temperatures below freezing. In addition to temperature, canopy-intercepted snow might also modify the tree emission and transmissivity in the microwave range. In this paper, a season-long experiment was designed to quantify the effect of snow accumulation and temperature on the observed microwave transmissivity from tree. A ground-based, upward-pointing multifrequency radiometer was used to monitor the microwave emissivity of a single coniferous tree at a site in Northern Finland. Radiometer measurements were combined with measurements of the canopy-intercepted snow cover and tree skin temperature. This paper presents two important findings. First, the tree transmissivity was strongly correlated with tree skin temperature under subzero temperature conditions, but uncorrelated with skin temperature changes above freezing. Second, although the tree transmissivity was slightly affected by the snow accumulation on the tree canopy, the overall influence on tree emission was statistically insignificant in this paper. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
236. A Modeling-Based Approach for Soil Frost Detection in the Northern Boreal Forest Region With C-Band SAR.
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Cohen, Juval, Rautiainen, Kimmo, Ikonen, Jaakko, Lemmetyinen, Juha, Smolander, Tuomo, Vehvilainen, Juho, and Pulliainen, Jouni
- Subjects
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SYNTHETIC aperture radar , *TAIGAS , *FORESTS & forestry , *VEGETATION mapping , *CLASSIFICATION algorithms , *MICROWAVE imaging - Abstract
This paper presents a new approach for monitoring soil frost in the northern boreal forest region using co-polarized C-band synthetic aperture radar (SAR) data. Due to the high sensitivity of the C-band signal to vegetation, estimating the soil freeze/thaw (F/T) state directly from the measured backscatter is not feasible over dense vegetation, such as boreal forests. The presented method is based on applying a simple zeroth-order model to estimate the contribution of the ground and the forest canopy on the observed total backscatter. The retrieved ground and canopy backscatter values were compared with in situ information on soil F/T state. By using a linear least sum of square errors classification algorithm, the retrieved ground and canopy backscatter values representing frozen and thawed ground were successfully separated. The method was tested for various soil types and incidence angles. For soil types with higher water holding capacities and lower infiltration rates such as fine Haplic Podzol and Umbric Gleysol, the estimation accuracy of the F/T state was over 97%, whereas for drier, well-drained soil types such as Haplic Arenosol and Coarse Haplic Podzol it was over 94%. Estimation accuracy slightly increased with higher incidence angle. The method is not feasible in rocky terrain due to very low water content, or in wet snow conditions due to lack of penetration of the C-band SAR signal through wet snow. With low ancillary data and computational requirements, the proposed method is applicable for continuous near real-time monitoring of soil F/T state. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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237. Forward and Inverse Radar Modeling of Terrestrial Snow Using SnowSAR Data.
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Zhu, Jiyue, Tan, Shurun, King, Joshua, Derksen, Chris, Lemmetyinen, Juha, and Tsang, Leung
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MICROWAVE remote sensing , *RADIATIVE transfer , *SNOWPACK augmentation , *STANDARD deviations , *INFORMATION retrieval , *TUNDRAS - Abstract
In this paper, we develop a radar snow water equivalent (SWE) retrieval algorithm based on a parameterized forward model of bicontinuous dense media radiative transfer (Bic-DMRT). The algorithm is based on retrieving the absorption loss of the snowpack which is directly proportional to the SWE. In the algorithm, Bic-DMRT is first applied to generate a lookup table (LUT) of snowpack backscattering at X- and Ku-band. Regression training is applied to the LUT to transform the dual-frequency backscatter into functions of two parameters: the scattering albedo at X-band and SWE. The background scattering is subtracted from the SnowSAR data to give the volume scattering of snow. Classification of SnowSAR data is applied to provide a priori information. Based on the obtained volume scattering and the priori information, a cost function is established to find SWE. Performance of the retrieval algorithm was tested using three sets of airborne SnowSAR data acquired over mixed areas in Finland and open tundra landscape in Canada. It is shown that the retrieval algorithm has a root-mean-square error below 30 mm of SWE and a correlation coefficient above 0.64. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
238. The influence of snow microstructure on dual-frequency radar measurements in a tundra environment.
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King, Joshua, Derksen, Chris, Toose, Peter, Langlois, Alexandre, Larsen, Chris, Lemmetyinen, Juha, Marsh, Phil, Montpetit, Benoit, Roy, Alexandre, Rutter, Nick, and Sturm, Matthew
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SNOW , *SYNTHETIC aperture radar , *REMOTE sensing by radar , *TUNDRAS , *BACKSCATTERING - Abstract
Recent advancement in the understanding of snow-microwave interactions has helped to isolate the considerable potential for radar-based retrieval of snow water equivalent (SWE). There are however, few datasets available to address spatial uncertainties, such as the influence of snow microstructure, at scales relevant to space-borne application. In this study we introduce measurements from SnowSAR, an airborne, dual-frequency (9.6 and 17.2 GHz) synthetic aperture radar (SAR), to evaluate high resolution (10 m) backscatter within a snow-covered tundra basin. Coincident in situ surveys at two sites characterize a generally thin snowpack (50 cm) interspersed with deeper drift features. Structure of the snowpack is found to be predominantly wind slab (65%) with smaller proportions of depth hoar underlain (35%). Objective estimates of snow microstructure (exponential correlation length; l ex ), show the slab layers to be 2.8 times smaller than the basal depth hoar. In situ measurements are used to parametrize the Microwave Emission Model of Layered Snowpacks (MEMLS3&a) and compare against collocated SnowSAR backscatter. The evaluation shows a scaling factor (ϕ) between 1.37 and 1.08, when applied to input of l ex , minimizes MEMLS root mean squared error to <1.1 dB. Model sensitivity experiments demonstrate contrasting contributions from wind slab and depth hoar components, where wind rounded microstructures are identified as a strong control on observed backscatter. Weak sensitivity of SnowSAR to spatial variations in SWE is explained by the smaller contributing microstructures of the wind slab. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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239. Early snowmelt significantly enhances boreal springtime carbon uptake.
- Author
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Pulliainen, Jouni, Aurela, Mika, Laurila, Tuomas, Aalto, Tuula, Takala, Matias, Salminen, Miia, Kulmala, Markku, Barr, Alan, Heimann, Martin, Lindroth, Anders, Laaksonen, Ari, Derksen, Chris, Mäkelä, Annikki, Markkanen, Tiina, Lemmetyinen, Juha, Susiluoto, Jouni, Dengel, Sigrid, Mammarella, Ivan, Tuovinen, Juha-Pekka, and Vesala, Timo
- Subjects
- *
SNOWMELT , *CARBON , *MICROWAVE radiometers , *COMPUTER simulation , *FORESTS & forestry - Abstract
We determine the annual timing of spring recovery from spaceborne microwave radiometer observations across northern hemisphere boreal evergreen forests for 1979-2014. We find a trend of advanced spring recovery of carbon uptake for this period, with a total average shift of 8.1 d (2.3 d/decade). We use this trend to estimate the corresponding changes in gross primary production (GPP) by applying in situ carbon flux observations. Micrometeorological CO2 measurements at four sites in northern Europe and North America indicate that such an advance in spring recovery would have increased the January-June GPP sum by 29 g.C.m-2 [8.4 g.C.m-2 (3.7%)/decade]. We find this sensitivity of the measured springtime GPP to the spring recovery to be in accordance with the corresponding sensitivity derived from simulations with a land ecosystem model coupled to a global circulation model. The model-predicted increase in springtime cumulative GPP was 0.035 Pg/decade [15.5 g.C.m-2 (6.8%)/decade] for Eurasian forests and 0.017 Pg/decade for forests in North America [9.8 g.C.m-2 (4.4%)/decade]. This change in the springtime sum of GPP related to the timing of spring snowmelt is quantified here for boreal evergreen forests. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
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240. Response of L-Band brightness temperatures to freeze/thaw and snow dynamics in a prairie environment from ground-based radiometer measurements.
- Author
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Roy, Alexandre, Toose, Peter, Williamson, Matthew, Rowlandson, Tracy, Derksen, Chris, Royer, Alain, Berg, Aaron A., Lemmetyinen, Juha, and Arnold, Lauren
- Subjects
- *
BRIGHTNESS temperature , *SNOW cover , *RADIOMETERS , *LAND surface temperature , *SURFACE energy - Abstract
Land surface freeze/thaw (F/T) dynamics impact the surface energy balance, carbon fluxes, and hydrologic processes. Recent and on-going L-Band (≈ 1.4 GHz) spaceborne missions have the potential to provide enhanced information on F/T state over large geographic regions with rapid revisit time. However, the low spatial resolution of these spaceborne observations (≈ 45 km) makes it difficult to isolate the primary contributions to the F/T signal, including the soil, snow, and vegetation states. A ground-based L-Band radiometer measurement campaign was conducted in Saskatchewan, Canada during the winter of 2014–2015 to evaluate brightness temperature sensitivity to F/T processes, snow, liquid water in snow and assess theoretical retrievals of soil permittivity (ε G ), and snow density from experimental data. The ground-based radiometer was run in multiple configurations. First, temporally continuous measurements were conducted through the winter over an agricultural field, with a comprehensive network of reference snow and soil observations characterizing the F/T state of the soils within or adjacent to the radiometer footprint. Secondly, weekly multi-angular L-Band measurements were made at an undisturbed site of naturally accumulating snow cover, over a site that was kept snow free, and a site with artificially compacted snow. Results from the assessment of the land surface F/T retrieval algorithm showed that L-Band measurements are sensitive to the near surface F/T state of the soil, with the highest level of agreement found between the near surface (2.5 cm) F/T reference measurements of soil temperature and ε G (accuracies of 91.1% and 92.9%, respectively). Several mid-winter melt events with air temperatures (T air ) above 0°, and soil temperatures below 0 °C, illustrated that liquid water within the snow dramatically increase the T B , resulting in false retrievals of soil thaw events using existing L-Band F/T retrieval algorithms. However, T air was also shown to have a high commission errors compared to radiometer observations in detecting snow melt, because of the delay between T air > 0 °C and the onset of melt resulting in a measurable wet snow signal at L-Band. The retrieval of snow density (ρ s ), of the bottom 10 cm of the snowpack tended to underestimate high ρ s (> 400 kg m − 3 ), and agreed well for lower ρ s (< 400 kg m − 3 ). The paper gives important information on different contributions to the L-Band F/T signal in a prairie environment, which will help improving satellite-based F/T retrieval algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
241. Implications of boreal forest stand characteristics for X-band SAR flood mapping accuracy.
- Author
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Cohen, Juval, Riihimäki, Henri, Pulliainen, Jouni, Lemmetyinen, Juha, and Heilimo, Jyri
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- *
TAIGA ecology , *SYNTHETIC aperture radar , *FLOOD forecasting , *BACKSCATTERING , *DIGITAL elevation models - Abstract
Synthetic aperture radar (SAR) enables the mapping of flooding over large areas, regardless of cloud and weather conditions. Simplified classification approaches based on threshold levels of backscattering intensity are typical in operational flood monitoring. Backscattering intensity from floods over open non-forested areas is typically lower, whereas backscatter from forest floods is higher compared to non-flooded areas. However, distinction of flooded areas from non-flooded surface in semi-forested areas with low canopy closure (CC) or low tree height (TH) is expected to be difficult due to confounding effects of the different scattering mechanisms. The aim of this study was to investigate X-band SAR backscattering in flooded boreal forests with varying TH and CC, and to quantify in which cases floods would be difficult to detect with typical threshold-based classification methods. To further understand the SAR signal behavior in flooded forests, the total backscatter was modeled using the HUT (Helsinki University of Technology) semi-empirical forest backscattering model. HH-polarized Cosmo Sky-Med acquisitions from four different locations in Finland were analyzed against airborne LiDAR based forest data, ground observations and a high resolution digital elevation model. Floods were well detected in open areas and dense forests. However, as hypothesized, when TH was higher than zero but lower than 4–5 m, or when CC was higher than zero but lower than 15–20%, the detection was less successful. TH was found to have slightly more influence on the capability of X-band SAR to detect floods than CC. In our four test areas, namely Kittilä, Kolari, Pudasjärvi and Evo, 85.3%, 89.1%, 82.7% and 73.9% of the total floods were detected, respectively, by a simple threshold value method. The model was able to successfully estimate the different backscattering components of the flooded forests in Kittilä and Pudasjärvi, where the number of observations from all forest conditions was sufficient. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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242. Model for microwave emission of a snow-covered ground with focus on L band.
- Author
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Schwank, Mike, Rautiainen, Kimmo, Mätzler, Christian, Stähli, Manfred, Lemmetyinen, Juha, Pulliainen, Jouni, Vehviläinen, Juho, Kontu, Anna, Ikonen, Jaakko, Ménard, Cécile B., Drusch, Matthias, Wiesmann, Andreas, and Wegmüller, Urs
- Subjects
- *
SNOW cover , *SOIL moisture , *SEAWATER salinity , *MICROWAVE radiometry , *RADIATIVE transfer - Abstract
Passive L-band (1–2 GHz) observables are sensitive to surface soil moisture and ocean salinity, which is the core of the “soil moisture and ocean salinity” (SMOS) mission of the European Space Agency (ESA). This work investigates microwave emission processes that are important to link L-band brightness temperatures with soil freeze/thaw states and the presence and the state of snow. To this end, a ground snow radiative transfer (GS RT) model has been developed on the basis of the “Microwave Emission Model of Layered Snowpacks” (MEMLS). Our model sensitivity study revealed that L-band emission of a freezing ground can be affected significantly by dry snow, which has been mostly disregarded in previous studies. Simulations suggest that even dry snow with mostly negligible absorption at the L-band can impact L-band emission of winter landscapes significantly. We found that impedance matching and refraction caused by a dry snowpack can increase or decrease L-band emission depending on the polarization and the observation angle. Based on the performed sensitivity study, these RT processes can be compensatory at vertical polarization and the observation angle of 50°. This suggests the use of vertical polarized brightness temperatures measured at around 50° in order to achieve segregated information on soil-frost. Furthermore, our simulations demonstrate a significant sensitivity of L-band emission at horizontal polarization with respect to the density of the lowest snow layer as the result of refraction and impedance matching by the snowpack. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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243. Temperature effects on L-band vegetation optical depth of a boreal forest.
- Author
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Schwank, Mike, Kontu, Anna, Mialon, Arnaud, Naderpour, Reza, Houtz, Derek, Lemmetyinen, Juha, Rautiainen, Kimmo, Li, Qinghuan, Richaume, Philippe, Kerr, Yann, and Mätzler, Christian
- Subjects
- *
TAIGAS , *TEMPERATURE effect , *BIOSPHERE , *SEAWATER salinity , *MICROWAVE remote sensing , *WATER temperature - Abstract
ElectroMagnetic (EM) reasons resulting in temperature dependence of L-band Vegetation Optical Depth (L-VOD) are currently overlooked in remote sensing products. Discrepancies in retrievals of geophysical surface properties over vegetated areas can result from this incompleteness. This perception motivated to explore EM considerations in how temperature drives L-VOD of a boreal forest. Thereto, a novel physics-based model is developed and evaluated to assess L-VOD sensitivities to canopy temperature and some other model parameters. The L-VOD model is compared to L-VOD derived from close-range L-band brightness temperatures measured through the tree canopy at the Finnish Meteorological Institute's Arctic Research Center (FMI-ARC) in Sodankylä (Finland) during a 4-week and a 1-day period in 2019. Furthermore, the model's ability to explain L-VOD retrieved from brightness temperatures of the "Soil Moisture and Ocean Salinity" (SMOS) satellite over the "Sodankylä grid cell" is investigated. Experimental L-VOD are maximal at around 0 °C and decrease when canopy temperature is moving away from zero degree Celsius. This temperature response, observed at different temporal- and spatial scales, is captured by the proposed L-VOD model and explained by freezing tree sap-water and the dependence of water permittivity on temperature. The demonstrated EM-induced temperature dependence suggest caution with interpreting satellite-based L-VOD, because increased L-VOD around the freezing point is not solely due to increased biomass or rehydration of the vegetation. Further, our study can find future application to compensate L-VOD for EM-induced temperature sensitivity. This potentially leads to improved explanatory power of temperature normalized L-VOD for characterization of forest phenology. Furthermore, we suggest examining the presence and strength of the demonstrated L-VOD temperature response as a practical L-VOD retrieval quality assessment method under steady forest phenology. • A model is developed for L-Band Vegetation Optical Depth (L-VOD) τC of a Boreal Forest. • L-VOD τC(T C) of a boreal forest is largest at Canopy temperature T C ≈ 0 °C. • L-VOD τC(T C) decreases with increasing T C > 0 °C due to temperature response of water permittivity. • Characteristic temperature response τC(T C) is observed at the local scale and the scale of SMOS. • Freeze of boreal forests explains their large seasonal dynamics in L-VOD. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
244. Improving flood forecasting using multi-source remote sensing data together with in situ measurements:Report of the Floodfore project
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Kärnä, Juha-Petri, Kolhinen, Vesa, Metsämäki, Sari, Vehviläinen, Bertel, Kuitunen, Timo, Lemmetyinen, Juha, Pulliainen, Jouni, Rautiainen, Kimmo, Smolander, Tuomo, Antropov, Oleg, Berglund, Robin, Kiviniemi, Jukka, and Rauste, Yrjö
- Subjects
remote sensing ,snow ,precipitation ,Floods - Abstract
Current remote sensing satellites can provide valuable information relevant to hydrological monitoring. And by using available in situ measurements together with the satellite data the information can be even more valuable.The FloodFore project developed new methods to estimate hydrological parameters from multi source remote sensing and in situ data. These hydrological parameters are important input to the watershed simulation model in order to improve the accuracy of its forecasts.In the project several new methods were either developed or demonstrated: satellite based snow water equivalent (SWE) estimation, weather radar based accumulated precipitation estimation, satellite based soil freezing state determination, and SWE estimation with high spatial resolution using both microwave radiometer and SAR data. Also a visualisation system for multi source information was developed to demonstrate the new products to users.The effect of the snow remote sensing estimates to the hydrological forecasting accuracy was studied for the Kemijoki river basin. The commercialisation possibilities of the results of the project were also studied.
- Published
- 2012
245. GlobSnow v3.0 Northern Hemisphere snow water equivalent dataset.
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Luojus K, Pulliainen J, Takala M, Lemmetyinen J, Mortimer C, Derksen C, Mudryk L, Moisander M, Hiltunen M, Smolander T, Ikonen J, Cohen J, Salminen M, Norberg J, Veijola K, and Venäläinen P
- Abstract
We describe the Northern Hemisphere terrestrial snow water equivalent (SWE) time series covering 1979-2018, containing daily, monthly and monthly bias-corrected SWE estimates. The GlobSnow v3.0 SWE dataset combines satellite-based passive microwave radiometer data (Nimbus-7 SMMR, DMSP SSM/I and DMSP SSMIS) with ground based synoptic snow depth observations using bayesian data assimilation, incorporating the HUT Snow Emission model. The original GlobSnow SWE retrieval methodology has been further developed and is presented in its current form in this publication. The described GlobSnow v3.0 monthly bias-corrected dataset was applied to provide continental scale estimates on the annual maximum snow mass and its trend during the period 1980 to 2018.
- Published
- 2021
- Full Text
- View/download PDF
246. Patterns and trends of Northern Hemisphere snow mass from 1980 to 2018.
- Author
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Pulliainen J, Luojus K, Derksen C, Mudryk L, Lemmetyinen J, Salminen M, Ikonen J, Takala M, Cohen J, Smolander T, and Norberg J
- Subjects
- Bias, Carbon analysis, Earth, Planet, Global Warming statistics & numerical data, History, 20th Century, History, 21st Century, North America, Seasons, Siberia, Temperature, Uncertainty, Water analysis, Geographic Mapping, Snow chemistry, Spatio-Temporal Analysis
- Abstract
Warming surface temperatures have driven a substantial reduction in the extent and duration of Northern Hemisphere snow cover
1-3 . These changes in snow cover affect Earth's climate system via the surface energy budget, and influence freshwater resources across a large proportion of the Northern Hemisphere4-6 . In contrast to snow extent, reliable quantitative knowledge on seasonal snow mass and its trend is lacking7-9 . Here we use the new GlobSnow 3.0 dataset to show that the 1980-2018 annual maximum snow mass in the Northern Hemisphere was, on average, 3,062 ± 35 billion tonnes (gigatonnes). Our quantification is for March (the month that most closely corresponds to peak snow mass), covers non-alpine regions above 40° N and, crucially, includes a bias correction based on in-field snow observations. We compare our GlobSnow 3.0 estimates with three independent estimates of snow mass, each with and without the bias correction. Across the four datasets, the bias correction decreased the range from 2,433-3,380 gigatonnes (mean 2,867) to 2,846-3,062 gigatonnes (mean 2,938)-a reduction in uncertainty from 33% to 7.4%. On the basis of our bias-corrected GlobSnow 3.0 estimates, we find different continental trends over the 39-year satellite record. For example, snow mass decreased by 46 gigatonnes per decade across North America but had a negligible trend across Eurasia; both continents exhibit high regional variability. Our results enable a better estimation of the role of seasonal snow mass in Earth's energy, water and carbon budgets.- Published
- 2020
- Full Text
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247. Response of Lumbriculus variegatus transcriptome and metabolites to model chemical contaminants.
- Author
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Agbo SO, Lemmetyinen J, Keinänen M, Keski-Saari S, Akkanen J, Leppänen MT, Wang Z, Wang H, Price DA, and Kukkonen JV
- Subjects
- 7,8-Dihydro-7,8-dihydroxybenzo(a)pyrene 9,10-oxide metabolism, Animals, Antioxidants metabolism, Cholecalciferol metabolism, Cluster Analysis, DNA Adducts metabolism, Electrophoresis, Capillary methods, Energy Metabolism drug effects, Gas Chromatography-Mass Spectrometry, Immunoassay methods, Oligochaeta metabolism, Oligonucleotide Array Sequence Analysis, Reverse Transcriptase Polymerase Chain Reaction, alpha-Tocopherol metabolism, Benzo(a)pyrene toxicity, Cadmium toxicity, Oligochaeta genetics, Pentachlorophenol toxicity, Transcriptome drug effects, Water Pollutants, Chemical toxicity
- Abstract
Assessment of the underlying molecular events leading to xenobiotic toxicity is challenging especially when techniques are applied in isolation. We examined transcriptional and metabolic changes in Lumbriculus variegatus exposed to benzo(a)pyrene (B(a)P), cadmium (Cd) or pentachlorophenol (PCP) by DNA microarrays (7422 ESTs) and gas chromatography-mass spectrometry (GC-MS), respectively. In addition, the DNA damage response of worms exposed to B(a)P was assessed by a capillary electrophoresis laser induced fluorescence (CE-LIF) immunoassay. We found elevated expression of oxidative stress responsive genes, which correlated positively with the changes in antioxidant vitamin precursors including alpha-tocopherol and cholecalciferol. Other genes with strong differential expressions were mostly involved in actin related processes and proteolysis, despite an apparent delayed Cd response. Phosphates, sugars and fatty acids were effectively reduced and suggested that chemical treatments may have interfered with energy metabolism. The increased amount of B(a)P diol-epoxide (BPDE)-DNA adducts in exposed worms appeared to correlate with the variability in uridine, inosine and xanthine, which are key components of nucleoside metabolism. This suggests that DNA damage was imminent or peaked within 6h. The results conformed to transcriptional changes in B(a)P exposed worms and compliment other approaches to elucidate underlying molecular changes., (Copyright © 2012 Elsevier Inc. All rights reserved.)
- Published
- 2013
- Full Text
- View/download PDF
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