12 results on '"Al-Hamdan, Mohammad Z"'
Search Results
2. Use of Remotely Sensed Data to Evaluate the Relationship between Living Environment and Blood Pressure
- Author
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Estes, Maurice G., Al-Hamdan, Mohammad Z., Crosson, William, Estes, Sue M., Quattrochi, Dale, Kent, Shia, and McClure, Leslie Ain
- Published
- 2009
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3. Relationship Between Watershed Land-Cover/Land-Use Change and Water Turbidity Status of Tampa Bay Major Tributaries, Florida, USA
- Author
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Moreno Madriñán, Max J., Al-Hamdan, Mohammad Z., Rickman, Douglas L., and Ye, Jun
- Published
- 2012
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4. Three-Dimensional Numerical Modeling of Flow Hydrodynamics and Cohesive Sediment Transport in Enid Lake, Mississippi.
- Author
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Chao, Xiaobo, Hossain, A. K. M. Azad, Al-Hamdan, Mohammad Z., Jia, Yafei, and Cizdziel, James V.
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SEDIMENT transport ,THREE-dimensional modeling ,LAKE sediments ,HYDRODYNAMICS ,FREE surfaces ,FLOCCULATION - Abstract
Enid Lake is one of the largest reservoirs located in Yazoo River Basin, the largest basin in the state of Mississippi. The lake was impounded by Enid Dam on the Yocona River in Yalobusha County and covers an area of 30 square kilometers. It provides significant natural and recreational resources. The soils in this region are highly erodible, resulting in a large amount of fine-grained cohesive sediment discharged into the lake. In this study, a 3D numerical model was developed to simulate the free surface hydrodynamics and transportation of cohesive sediment with a median diameter of 0.0025 to 0.003 mm in Enid Lake. Flow fields in the lake are generally induced by wind and upstream river inflow, and the sediment is also introduced from the inflow during storm events. The general processes of sediment flocculation and settling were considered in the model, and the erosion rate and deposition rate of cohesive sediment were calculated. In this model, the sediment simulation was coupled with flow simulation. In this research, remote sensing technology was applied to estimate the sediment concentration at the lake surface and provide validation data for numerical model simulation. The model results and remote sensing data help us to understand the transport, deposition and resuspension processes of cohesive sediment in large reservoirs due to wind-induced currents and upstream river flows. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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5. Reconnoitering the linkage between cardiovascular disease mortality and long-term exposures to outdoor environmental factors in the USA using remotely-sensed data.
- Author
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Al-Hamdan, Ashraf Z., Preetha, Pooja P., Al-Hamdan, Mohammad Z., Crosson, William L., and Albashaireh, Reem N.
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CARDIOVASCULAR disease related mortality ,REMOTE sensing ,HEAT index ,PARTICULATE matter ,SEDENTARY behavior ,SOCIOECONOMIC factors - Abstract
This ecological study aimed to assess the association between long-term exposures to outdoor environmental factors and mortality rate from cardiovascular disease (CVD) in a diverse and spatially distributed population from 3,094 counties within the U.S. (n > 3,780,000 CVD deaths) using satellite-derived data of PM
2.5 concentrations, sunlight, and maximum heat index. Multivariable logistic regression analyses were conducted to determine whether PM2.5 , sunlight and maximum heat index were related to the odds of the total CVD death rate based on gender, race, and age taking into consideration the confounding risk factors of diabetes, obesity, leisure- time physical inactivity, smoking and socioeconomic status. The study has shown that elevated levels of PM2.5 , sunlight and heat long-term exposures are significantly associated with an increase in the odds ratio of the total CVD mortality. The results suggest a 9.8% (95% CI = 6.3% - 13.4%), 0.9% (95% CI = 0.5% - 1.2%), and 0.7% (95% CI = 0.5% - 11.2%) increase in total CVD mortality associated with 10 μg/m3 increase in PM2.5 concentrations, 1,000 kJ/m2 increases in sunlight, and 1o F increase in heat index, respectively. The odds ratios for the CVD death rate due to long-term exposures of PM2.5 , sunlight, and heat index were significantly greater than 1.0 for all categories except for Asians, Hispanics, and American Indians, indicating that the effect of long-term exposures to particulate matter, sunlight radiation, and maximum heat on CVD mortality is trivial for Asians, Hispanics, and American Indians. Among the categories of age, the group of 65 years and older had the highest odds ratios, suggesting that the age group of 65 years and older are the most vulnerable group to the environmental exposures of PM2.5 (OR = 1.179, 95% CI = 1.124 - 1.237), sunlight (OR = 1.047, 95% CI = 1.041 - 1.053), and maximum heat (OR = 1.014, 95% CI = 1.011 - 1.016). The odds ratios of CVD mortality due to the environmental exposures were higher for Blacks than those for Whites. The odds ratios for all categories were attenuated with the inclusion of diabetes, obesity, leisure-time physical inactivity, smoking, and income covariates, reflecting the effect of other medical conditions, lifestyle, behavioral and socioeconomic factors on the CVD death rate besides the environmental factors. [ABSTRACT FROM AUTHOR]- Published
- 2018
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- View/download PDF
6. The association of remotely sensed outdoor fine particulate matter with cancer incidence of respiratory system in the USA.
- Author
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Al-Hamdan, Ashraf Z., Albashaireh, Reem N., Al-Hamdan, Mohammad Z., and Crosson, William L.
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PARTICULATE matter ,CANCER ,DISEASE incidence ,REMOTE sensing ,REGRESSION analysis - Abstract
This study aimed to assess the association between exposure to fine particulate matter (PM2.5) and respiratory system cancer incidence in the US population (n= 295,404,580) using a satellite-derived estimate of PM2.5concentrations. Linear and logistic regression analyses were performed to determine whether PM2.5was related to the odds of respiratory system cancer (RSC) incidence based on gender and race. Positive linear regressions were found between PM2.5concentrations and the age-adjusted RSC incidence rates for all groups (Males, Females, Whites, and Blacks) except for Asians and American Indians. The linear relationships between PM2.5and RSC incidence rate per 1 μg/m3PM2.5increase for Males, Females, Whites, Blacks, and all categories combined had slopes of, respectively, 7.02 (R2= 0.36), 2.14 (R2= 0.14), 3.92 (R2= 0.23), 5.02 (R2= 0.21), and 4.15 (R2= 0.28). Similarly, the logistic regression odds ratios per 10 μg/m3increase of PM2.5were greater than one for all categories except for Asians and American Indians, indicating that PM2.5is related to the odds of RSC incidence. The age-adjusted odds ratio for males (OR = 2.16, 95% CI = 1.56–3.01) was higher than that for females (OR = 1.50, 95% CI = 1.09–2.06), and it was higher for Blacks (OR = 2.12, 95% CI = 1.43–3.14) than for Whites (OR = 1.72, 95% CI = 1.23–2.42). The odds ratios for all categories were attenuated with the inclusion of the smoking covariate, reflecting the effect of smoking on RSC incidence besides PM2.5. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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7. Using Landsat, MODIS, and a Biophysical Model to Evaluate LST in Urban Centers.
- Author
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Al-Hamdan, Mohammad Z., Quattrochi, Dale A., Bounoua, Lahouari, Lachir, Asia, and Ping Zhang
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LAND surface temperature , *LANDSAT satellites , *MODIS (Spectroradiometer) , *URBAN heat islands , *GEOPHYSICAL surveying services , *REMOTE sensing - Abstract
In this paper, we assessed and compared land surface temperature (LST) in urban centers using data from Landsat, MODIS, and the Simple Biosphere model (SiB2). We also evaluated the sensitivity of the model's LST to different land cover types, fractions (percentages), and emissivities compared to reference points derived from Landsat thermal data. This was demonstrated in three climatologically- and morphologically-different cities of Atlanta, GA, New York, NY, andWashington, DC. Our results showed that in these cities SiB2 was sensitive to both the emissivity and the land cover type and fraction, but much more sensitive to the latter. The practical implications of these results are rather significant since they imply that the SiB2 model can be used to run different scenarios for evaluating urban heat island (UHI) mitigation strategies. This study also showed that using detailed emissivities per land cover type and fractions from Landsat-derived data caused a convergence of the model results towards the Landsat-derived LST for most of the studied cases. This study also showed that SiB2 LSTs are closer in magnitude to Landsat-derived LSTs than MODIS-derived LSTs. It is important, however, to emphasize that both Landsat and MODIS LSTs are not direct observations and, as such, do not represent a ground truth. More studies will be needed to compare these results to in situ LST data and provide further validation. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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8. Using remote sensing to monitor the influence of river discharge on watershed outlets and adjacent coral Reefs: Magdalena River and Rosario Islands, Colombia.
- Author
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Moreno-Madriñán, Max J., Rickman, Douglas L., Ogashawara, Igor, Irwin, Daniel E., Ye, Jun, and Al-Hamdan, Mohammad Z.
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REMOTE sensing ,ENVIRONMENTAL monitoring ,STREAM measurements ,ECOSYSTEMS ,CORAL reefs & islands - Abstract
Worldwide, coral reef ecosystems are being increasingly threatened by sediments loads from river discharges, which in turn are influenced by changing rainfall patterns due to climate change and by growing human activity in their watersheds. In this case study, we explored the applicability of using remote sensing (RS) technology to estimate and monitor the relationship between water quality at the coral reefs around the Rosario Islands, in the Caribbean Sea, and the rainfall patterns in the Magdalena River watershed. From the Moderate Resolution Imaging Spectroradiometer (MODIS), this study used the water surface reflectance product (MOD09GQ) to estimate water surface reflectance as a proxy for sediment concentration and the land cover product (MCD12Q1 V51) to characterize land cover of the watershed. Rainfall was estimated by using the 3B43 V7 product from the Tropical Rainforest Measuring Mission (TRMM). For the first trimester of each year, we investigated the inter-annual temporal variation in water surface reflectance at the Rosario Islands and at the three main mouths of the Magdalena River watershed. No increasing or decreasing trends of water surface reflectance were detected for any of the sites for the study period 2001–2014 ( p > 0.05) but significant correlations were detected among the trends of each site at the watershed mouths ( r = 0.57–0.90, p < 0.05) and between them and the inter-annual variation in rainfall on the watershed ( r = 0.63–0.67, p < 0.05). Those trimesters with above-normal water surface reflectance at the mouths and above-normal rainfall at the watershed coincided with La Niña conditions while the opposite was the case during El Niño conditions. Although, a preliminary analysis of inter-annual land cover trends found only cropland cover in the watershed to be significantly correlated with water surface reflectance at two of the watershed mouths ( r = 0.58 and 0.63, p < 0.05), the validation analysis draw only a 40.7% of accuracy in this land cover classification. This requires further analysis to confirm the impact of the cropland on the water quality at the watershed outlets. Spatial analysis with MOD09GQ imagery detected the overpass of river plumes from Barbacoas Bay over the Rosario Islands waters. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
9. Environmental public health applications using remotely sensed data.
- Author
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Al-Hamdan, Mohammad Z., Crosson, William L., Economou, Sigrid A., Estes, Maurice G., Estes, Sue M., Hemmings, Sarah N., Kent, Shia T., Puckett, Mark, Quattrochi, Dale A., Rickman, Douglas L., Wade, Gina M., and McClure, Leslie A.
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PUBLIC health , *REMOTE sensing , *GEOGRAPHIC information systems , *PARTICULATE matter , *ENVIRONMENTAL protection , *RACIAL differences - Abstract
We describe a remote sensing and geographic information system (GIS)-based study that has three objectives: (1) characterize fine particulate matter (PM2.5), insolation and land surface temperature (LST) using NASA satellite observations, Environmental Protection Agency (EPA) ground-level monitor data and North American Land Data Assimilation System (NLDAS) data products on a national scale; (2) link these data with public health data from the REasons for Geographic And Racial Differences in Stroke (REGARDS) national cohort study to determine whether these environmental risk factors are related to cognitive decline, stroke and other health outcomes and (3) disseminate the environmental datasets and public health linkage analyses to end users for decision-making through the Centers for Disease Control and Prevention (CDC) Wide-ranging Online Data for Epidemiologic Research (WONDER) system. This study directly addresses a public health focus of the NASA Applied Sciences Program, utilization of Earth Sciences products, by addressing issues of environmental health to enhance public health decision-making. [ABSTRACT FROM PUBLISHER]
- Published
- 2014
- Full Text
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10. Characterization of Forested Landscapes from Remotely Sensed Data Using Fractals and Spatial Autocorrelation.
- Author
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Al-Hamdan, Mohammad Z., Cruise, James F., Rickman, Douglas L., and Quattrochi, Dale A.
- Subjects
LANDSCAPES ,FORESTS & forestry ,REMOTE sensing ,CIVIL engineering ,ESTIMATION theory ,BODIES of water - Abstract
The characterization of forested landscapes is frequently required in civil engineering practice. In this study, some spatial analysis techniques are presented that might be employed with Landsat TM data to analyze forest structure characteristics. A case study is presented wherein fractal dimensions (FDs), along with a simple spatial autocorrelation technique (Moran's I), were related to stand density parameters of the Oakmulgee National Forest located in the southeastern United States (Alabama). The results indicate that when smaller trees do not dominate the landscape (<50%), forested areas can be differentiated according to breast sizes and thus important flood plain characteristics such as ratio of obstructed area to total area can be estimated from remotely sensed data using the studied indices. This would facilitate the estimation of hydraulic roughness coefficients for computation of flood profiles needed for bridge design. FD and Moran's I remained fairly constant around the values of 2.7 and 0.9 (resp.) for samples with either greater than 50% saplings or less than 50% sawtimber and with ranges of 2.7-2.9 and 0.6-0.9 as the saplings decreased or the sawtimber increased. Those indices can also distinguish hardwood and softwood species facilitating forested landscapes mapping for preliminary environmental impact analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2012
- Full Text
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11. Using the Surface Reflectance MODIS Terra Product to Estimate Turbidity in Tampa Bay, Florida.
- Author
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Moreno-Madrinan, Max J., Al-Hamdan, Mohammad Z., Rickman, Douglas L., and Muller-Karger, Frank E.
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WATER currents , *MODIS (Spectroradiometer) , *TURBIDITY , *REMOTE sensing - Abstract
Turbidity is a commonly-used index of the factors that determine light penetration in the water column. Consistent estimation of turbidity is crucial to design environmental and restoration management plans, to predict fate of possible pollutants, and to estimate sedimentary fluxes into the ocean. Traditional methods monitoring fixed geographical locations at fixed intervals may not be representative of the mean water turbidity in estuaries between intervals, and can be expensive and time consuming. Although remote sensing offers a good solution to this limitation, it is still not widely used due in part to required complex processing of imagery. There are satellite-derived products, including the Moderate Resolution Imaging Spectroradiometer (MODIS) Terra surface reflectance daily product (MOD09GQ) Band 1 (620-670 nm) which are now routinely available at 250 m spatial resolution and corrected for atmospheric effect. This study shows this product to be useful to estimate turbidity in Tampa Bay, Florida, after rainfall events (R2 = 0.76, n = 34). Within Tampa Bay, Hillsborough Bay (HB) and Old Tampa Bay (OTB) presented higher turbidity compared to Middle Tampa Bay (MTB) and Lower Tampa Bay (LTB). [ABSTRACT FROM AUTHOR]
- Published
- 2010
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12. Estimating ground-level PM2.5 concentrations in the southeastern U.S. using geographically weighted regression
- Author
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Hu, Xuefei, Waller, Lance A., Al-Hamdan, Mohammad Z., Crosson, William L., Estes, Maurice G., Estes, Sue M., Quattrochi, Dale A., Sarnat, Jeremy A., and Liu, Yang
- Subjects
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REGRESSION analysis , *PARTICULATE matter , *ESTIMATION theory , *AEROSOLS , *METEOROLOGY , *COMPARATIVE studies , *STANDARD deviations , *GEOGRAPHY - Abstract
Abstract: Most of currently reported models for predicting PM2.5 concentrations from satellite retrievals of aerosol optical depth are global methods without considering local variations, which might introduce significant biases into prediction results. In this paper, a geographically weighted regression model was developed to examine the relationship among PM2.5, aerosol optical depth, meteorological parameters, and land use information. Additionally, two meteorological datasets, North American Regional Reanalysis and North American Land Data Assimilation System, were fitted into the model separately to compare their performances. The study area is centered at the Atlanta Metro area, and data were collected from various sources for the year 2003. The results showed that the mean local R 2 of the models using North American Regional Reanalysis was 0.60 and those using North American Land Data Assimilation System reached 0.61. The root mean squared prediction error showed that the prediction accuracy was 82.7% and 83.0% for North American Regional Reanalysis and North American Land Data Assimilation System in model fitting, respectively, and 69.7% and 72.1% in cross validation. The results indicated that geographically weighted regression combined with aerosol optical depth, meteorological parameters, and land use information as the predictor variables could generate a better fit and achieve high accuracy in PM2.5 exposure estimation, and North American Land Data Assimilation System could be used as an alternative of North American Regional Reanalysis to provide some of the meteorological fields. [Copyright &y& Elsevier]
- Published
- 2013
- Full Text
- View/download PDF
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