8 results on '"Morton, R. Daniel"'
Search Results
2. LCM2021 – the UK Land Cover Map 2021
- Author
-
Marston, Christopher G., O'Neil, Aneurin W., Morton, R. Daniel, Wood, Claire M., Rowland, Clare S., Marston, Christopher G., O'Neil, Aneurin W., Morton, R. Daniel, Wood, Claire M., and Rowland, Clare S.
- Abstract
Land cover is a key environmental variable, underpinning widespread environmental research and decision-making. The UK Centre for Ecology and Hydrology (UKCEH) have provided reliable land cover information since the early 1990’s; this supports multiple scientific, government and commercial objectives. Recent advances in computation and satellite data availability have enabled annual UKCEH land cover maps since 2017. Here we introduce the latest, annual UK Land Cover Map, representing 2021 (LCM2021) and describe its production and validation. LCM2021 methods replicate those for LCM2017 to LCM2020 with minor deviations to enhance accuracy. LCM2021 is based on the classification of satellite and spatial context data into 21 land cover/habitat classes, from which a product suite is derived. The production of LCM2021 involved three highly automated key stages: pre-processing of input data, image classification and production of the final data products. Google Earth Engine scripts were used to create an input data stack of satellite and context data. A set of training areas was created, based on data harvested from historic UKCEH land cover maps. The training data were used to construct a Random Forest classifier, which yielded classified images. Compiled results were validated against 35,182 reference samples, with correspondence tables indicating variable class accuracy and an overall accuracy of 82.6 % for the 21-class data and 86.5 % at a 10 aggregated-class level. •The UK Land Cover Map product suite includes a set of raster products in various projections, thematic and spatial resolutions (10 m, 25 m and 1 km), and land–parcel or vector products. The data are provided in 21-class (all configurations) and aggregated 10-class (1 km raster products only) versions. All raster products are freely available for academic and non-commercial research. The data for Great Britain (GB) are provided in the British National Grid projection (EPSG: 27700) and the Northern Ireland (
- Published
- 2023
3. LCM2021 – the UK Land Cover Map 2021.
- Author
-
Marston, Christopher G., O'Neil, Aneurin W., Morton, R. Daniel, Wood, Claire M., and Rowland, Clare S.
- Subjects
LAND cover ,IMAGE recognition (Computer vision) ,ENVIRONMENTAL research ,RANDOM forest algorithms ,SPATIAL resolution - Abstract
Land cover is a key environmental variable, underpinning widespread environmental research and decision making. The UK Centre for Ecology and Hydrology (UKCEH) has provided reliable land cover information since the early 1990s; this supports multiple scientific, government and commercial objectives. Recent advances in computation and satellite data availability have enabled annual UKCEH land cover maps since 2017. Here, we introduce the latest, annual UK Land Cover Map representing 2021 (LCM2021), and we describe its production and validation. LCM2021 methods replicate those of LCM2017 to LCM2020 with minor deviations in cloud-masking processes and training data sourcing to enhance accuracy. LCM2021 is based on the classification of satellite and spatial context data into 21 land cover or habitat classes, from which a product suite is derived. The production of LCM2021 involved three highly automated key stages: pre-processing of input data, image classification and production of the final data products. Google Earth Engine scripts were used to create an input data stack of satellite and context data. A set of training areas was created based on data harvested from historic UKCEH land cover maps. The training data were used to construct a random forest classifier, which yielded classified images. Compiled results were validated against 35 182 reference samples, with correspondence tables indicating variable class accuracy and an overall accuracy of 82.6 % for the 21-class data and 86.5 % at a 10-aggregated-classes level. The UK Land Cover Map product suite includes a set of raster products in various projections, thematic and spatial resolutions (10 m, 25 m and 1 km), and land–parcel or vector products. The data are provided in 21-class (all configurations) and aggregated 10-class (1 km raster products only) versions. All raster products are freely available for academic and non-commercial research. The data for Great Britain (GB) are provided in the British National Grid projection (EPSG: 27700) and the Northern Ireland (NI) data are in the TM75 Irish Grid (EPSG: 29903). Information on how to access the data is given in the "Data availability" section of the paper. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
4. Landscape-scale drivers of pollinator communities may depend on land-use configuration
- Author
-
Gillespie, Mark A.K., Baude, Mathilde, Biesmeijer, Jacobus, Boatman, Nigel, Budge, Giles E., Crowe, Andrew, Davies, Nancy, Evans, Rebecca, Memmott, Jane, Morton, R. Daniel, Moss, Ellen, Murphy, Mark, Pietravalle, Stephane, Potts, Simon G., Roberts, Stuart P.M., Rowland, Clare, Senapathi, Deepa, Smart, Simon M., Wood, Claire, Kunin, William E., Gillespie, Mark A.K., Baude, Mathilde, Biesmeijer, Jacobus, Boatman, Nigel, Budge, Giles E., Crowe, Andrew, Davies, Nancy, Evans, Rebecca, Memmott, Jane, Morton, R. Daniel, Moss, Ellen, Murphy, Mark, Pietravalle, Stephane, Potts, Simon G., Roberts, Stuart P.M., Rowland, Clare, Senapathi, Deepa, Smart, Simon M., Wood, Claire, and Kunin, William E.
- Abstract
Research into pollinators in managed landscapes has recently combined approaches of pollination ecology and landscape ecology, because key stressors are likely to interact across wide areas. While laboratory and field experiments are valuable for furthering understanding, studies are required to investigate the interacting drivers of pollinator health and diversity across a broader range of landscapes and a wider array of taxa. Here, we use a network of 96 study landscapes in six topographically diverse regions of Britain, to test the combined importance of honeybee density, insecticide loadings, floral resource availability and habitat diversity to pollinator communities. We also explore the interactions between these drivers and the cover and proximity of semi-natural habitat. We found that among our four drivers, only honeybee density was positively related to wild pollinator abundance and diversity, and the positive association between abundance and floral resources depended on insecticide loadings and habitat diversity. By contrast, our exploratory models including habitat composition metrics revealed a complex suite of interactive effects. These results demonstrate that improving pollinator community composition and health is unlikely to be achieved with general resource enhancements only. Rather, local land-use context should be considered in fine-tuning pollinator management and conservation.
- Published
- 2022
5. LCM2021 1 - The UK Land Cover Map 2021.
- Author
-
Marston, Christopher G., O'Neil, Aneurin W., Morton, R. Daniel, Wood, Claire M., and Rowland, Clare S.
- Subjects
LAND cover ,IMAGE recognition (Computer vision) ,RANDOM forest algorithms ,SPATIAL resolution ,MAPS ,DECISION making - Abstract
Land cover is a key environmental variable, underpinning widespread environmental research and decision making. The UK Centre for Ecology and Hydrology (UKCEH) have provided reliable land cover information since the early 1990's; this supports multiple scientific, government and commercial objectives. Recent advances in computation and satellite data availability have enabled annual UKCEH land cover maps since 2017. Here we introduce the latest, annual UK Land Cover Map, representing 2021 (LCM2021) and describe its production and validation. LCM2021 methods replicate those for LCM2017 to LCM2020 with minor deviations to enhance accuracy. LCM2021 is based on the classification of satellite and spatial context data into 21 land cover/habitat classes, from which a product suite is derived. The production of LCM2021 involved three highly automated key stages: pre-processing of input data, image classification and production of the final data products. Google Earth Engine scripts were used to create an input data stack of satellite and context data. A set of training areas was created, based on data harvested from historic UKCEH land cover maps. The training data were used to construct a Random Forest classifier, which yielded classified images. Compiled results were validated against 35,182 reference samples, with correspondence tables indicating variable class accuracy and an overall accuracy of 82.6 % for the 21-class data and 86.5 % at a 10 aggregated-class level. The UK Land Cover Map product suite includes a set of raster products in various projections, thematic and spatial resolutions (10 m, 25 m and 1 km) and land-parcel/vector product. The data are provided in 21-class (all configurations) and aggregated 10-class versions (1 km raster products only). All raster products are freely available for academic and non commercial research. The data for Great Britain (GB) are provided in the British National Grid projection (https://epsg.io/27700) and the Northern Ireland (NI) data are in the TM75 Irish National Grid (https://epsg.io/29903). Information on how to access the data is given in the Data Availability section of the paper. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
6. Landscape-scale drivers of pollinator communities may depend on land-use configuration
- Author
-
Gillespie, Mark A. K., primary, Baude, Mathilde, additional, Biesmeijer, Jacobus, additional, Boatman, Nigel, additional, Budge, Giles E., additional, Crowe, Andrew, additional, Davies, Nancy, additional, Evans, Rebecca, additional, Memmott, Jane, additional, Morton, R. Daniel, additional, Moss, Ellen, additional, Murphy, Mark, additional, Pietravalle, Stephane, additional, Potts, Simon G., additional, Roberts, Stuart P. M., additional, Rowland, Clare, additional, Senapathi, Deepa, additional, Smart, Simon M., additional, Wood, Claire, additional, and Kunin, William E., additional
- Published
- 2022
- Full Text
- View/download PDF
7. Supplementary material from Landscape-scale drivers of pollinator communities may depend on land-use configuration
- Author
-
Gillespie, Mark A. K., Baude, Mathilde, Biesmeijer, Jacobus, Boatman, Nigel, Budge, Giles E., Crowe, Andrew, Davies, Nancy, Evans, Rebecca, Memmott, Jane, Morton, R. Daniel, Moss, Ellen, Murphy, Mark, Pietravalle, Stephane, Potts, Simon G., Roberts, Stuart P. M., Rowland, Clare, Senapathi, Deepa, Smart, Simon M., Wood, Claire, and Kunin, William E.
- Subjects
Computer Science::Symbolic Computation - Abstract
Map of field sites, full description of derivation of explanatory variables, model coefficients and additional graphs
- Published
- 2022
- Full Text
- View/download PDF
8. Flowering plant communities mediate the effects of habitat composition and configuration on wild pollinator communities.
- Author
-
Gillespie, Mark A. K., Baude, Mathilde, Biesmeijer, Jacobus, Boatman, Nigel, Budge, Giles E., Crowe, Andrew, Davies, Nancy, Evans, Rebecca, Memmott, Jane, Morton, R. Daniel, Moss, Ellen, Potts, Simon G., Roberts, Stuart P. M., Rowland, Clare, Senapathi, Deepa, Smart, Simon M., Wood, Claire, and Kunin, William E.
- Subjects
- *
BIOTIC communities , *FLOWERING of plants , *LANDSCAPE ecology , *COMPOSITION of flowers , *STRUCTURAL equation modeling - Abstract
There is strong evidence that landscape‐scale factors such as habitat diversity, composition and configuration are important drivers of declines in pollinators and pollination services. However, context and species‐specific responses make it challenging to draw general conclusions about the most important components of landscapes that support diverse and abundant pollinator communities. In this study, we took a functional‐traits approach to community assembly and tested the hypothesis that landscape properties act most strongly on pollinators indirectly, through their influence on flowering plant communities. Using plant and pollinator data from 96 landscapes in Britain, we tested the associations between plant and pollinator communities and local environmental factors, such as habitat cover and configuration, using path analysis based on Mantel and partial Mantel statistics. When all pollinators were considered, we found that the environmental factors had stronger links to the composition of flowering plant communities than to the composition of pollinator communities. Further, the flowering plant community was strongly linked to the pollinator community suggesting a mediating role between land use and pollinators. When separating the pollinator community into taxonomic groups, we found the same result for hoverflies, but wild bees were linked to both environmental factors and flowering plants. We further explored these links with structural equation models using the response‐effect trait framework as a guiding principle. We found strong evidence that land‐use composition and configuration influence the trait distribution and functional diversity of the pollinator community via plant community composition. These findings suggest that the indirect effect of land use on pollinators via flowering plants should be considered in informing the design of pollinator friendly landscapes and in future research of the effects of land use and management on wild pollinators. Read the free Plain Language Summary for this article on the Journal blog. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.