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Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas

Crop models (CMs) can be a key component in addressing issues of global food security as they can be used to monitor and improve crop production. Regardless of their wide utilization, the employment of these models, particularly in isolated and rural areas, is often limited by the lack of reliable i...

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Main Author: Dlamini, Luleka
Other Authors: Crespo, Olivier
Format: Thesis
Language:English
Published: Department of Environmental and Geographical Science 2020
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access_status_str Open Access
author Dlamini, Luleka
author2 Crespo, Olivier
author_browse Crespo, Olivier
Dlamini, Luleka
author_facet Crespo, Olivier
Dlamini, Luleka
author_sort Dlamini, Luleka
collection Thesis
description Crop models (CMs) can be a key component in addressing issues of global food security as they can be used to monitor and improve crop production. Regardless of their wide utilization, the employment of these models, particularly in isolated and rural areas, is often limited by the lack of reliable input data. This data scarcity increases uncertainties in model outputs. Nevertheless, some of these uncertainties can be mitigated by integrating remotely sensed data into the CMs. As such, increasing efforts are being made globally to integrate remotely sensed data into CMs to improve their overall performance and use. However, very few such studies have been done in South Africa. Therefore, this research assesses how well a crop model assimilated with remotely sensed data compares with a model calibrated with actual ground data (Maize_control). Ultimately leading to improved local cropping systems knowledge and the capacity to use CMs. As such, the study calibrated the DSSAT-CERES-Maize model using two generic soils (i.e. heavy clay soil and medium sandy soil) which were selected based on literature, to measure soil moisture from 1985 to 2015 in Bloemfontein. Using the data assimilation approach, the model's soil parameters were then adjusted based on remotely sensed soil moisture (SM) observations. The observed improvement was mainly assessed through the lens of SM simulations from the original generic set up to the final remotely sensed informed soil profile set up. The study also gave some measure of comparison with Maize_control and finally explored the impacts of this specific SM improvement on evapotranspiration (ET) and maize yield. The result shows that when compared to the observed data, assimilating remotely sensed data with the model significantly improved the mean simulation of SM while maintaining the representation of its variability. The improved SM, as a result of assimilation of remotely sensed data, closely compares with the Maize_control in terms of mean but there was no improvement in terms of variability. Data assimilation also improved the mean and variability of ET simulation when compared that of Maize_control, but only with heavy clay soil. However, maize yield was not improved in comparison. This confirms that these outputs were influenced by other factors aside from SM or the soil profile parameters. It was concluded that remote sensing data can be used to bias correct model inputs, thus improve certain model outputs.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:48:12.522Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2020
publishDateRange 2020
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publisher Department of Environmental and Geographical Science
publisherStr Department of Environmental and Geographical Science
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spelling oai:open.uct.ac.za:11427/32239 Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas Dlamini, Luleka Crespo, Olivier Environmental and Geographical Science Crop models (CMs) can be a key component in addressing issues of global food security as they can be used to monitor and improve crop production. Regardless of their wide utilization, the employment of these models, particularly in isolated and rural areas, is often limited by the lack of reliable input data. This data scarcity increases uncertainties in model outputs. Nevertheless, some of these uncertainties can be mitigated by integrating remotely sensed data into the CMs. As such, increasing efforts are being made globally to integrate remotely sensed data into CMs to improve their overall performance and use. However, very few such studies have been done in South Africa. Therefore, this research assesses how well a crop model assimilated with remotely sensed data compares with a model calibrated with actual ground data (Maize_control). Ultimately leading to improved local cropping systems knowledge and the capacity to use CMs. As such, the study calibrated the DSSAT-CERES-Maize model using two generic soils (i.e. heavy clay soil and medium sandy soil) which were selected based on literature, to measure soil moisture from 1985 to 2015 in Bloemfontein. Using the data assimilation approach, the model's soil parameters were then adjusted based on remotely sensed soil moisture (SM) observations. The observed improvement was mainly assessed through the lens of SM simulations from the original generic set up to the final remotely sensed informed soil profile set up. The study also gave some measure of comparison with Maize_control and finally explored the impacts of this specific SM improvement on evapotranspiration (ET) and maize yield. The result shows that when compared to the observed data, assimilating remotely sensed data with the model significantly improved the mean simulation of SM while maintaining the representation of its variability. The improved SM, as a result of assimilation of remotely sensed data, closely compares with the Maize_control in terms of mean but there was no improvement in terms of variability. Data assimilation also improved the mean and variability of ET simulation when compared that of Maize_control, but only with heavy clay soil. However, maize yield was not improved in comparison. This confirms that these outputs were influenced by other factors aside from SM or the soil profile parameters. It was concluded that remote sensing data can be used to bias correct model inputs, thus improve certain model outputs. 2020-09-11T15:19:37Z 2020-09-11T15:19:37Z 2020 2020-09-11T13:55:48Z Master Thesis Masters MSc http://hdl.handle.net/11427/32239 eng application/pdf Department of Environmental and Geographical Science Faculty of Science
spellingShingle Environmental and Geographical Science
Dlamini, Luleka
Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
thesis_degree_str Master's
title Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
title_full Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
title_fullStr Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
title_full_unstemmed Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
title_short Exploring the potential of using remote sensing data to model agricultural systems in data-limited areas
title_sort exploring the potential of using remote sensing data to model agricultural systems in data limited areas
topic Environmental and Geographical Science
url http://hdl.handle.net/11427/32239
work_keys_str_mv AT dlaminiluleka exploringthepotentialofusingremotesensingdatatomodelagriculturalsystemsindatalimitedareas