Please use this identifier to cite or link to this item: http://197.159.135.214/jspui/handle/123456789/1131
Title: Spatio-temporal land use and land cover change assessment: Insights from the Ou´em´e River Basin
Authors: Annan, Ernestina
Amponsah, William
Adjei, Kwaku Amaning
Disse, Markus
Hounkpe, Jean
Biney, Ernest
Agbenorhevi, Albert Elikplim
Agyare, Wilson Agyei
Keywords: Accuracy assessment
Google earth engine
Supervised classification
Image composition
Landsat
Tropical basin
Issue Date: 27-May-2024
Publisher: WASCAL
Citation: Ernestina Annan, William Amponsah, Kwaku Amaning Adjei, Markus Disse, Jean Hounkpè, Ernest Biney, Albert Elikplim Agbenorhevi, Wilson Agyei Agyare, Spatio-temporal land use and land cover change assessment: Insights from the Ouémé River Basin, Scientific African, Volume 25, 2024, e02262, ISSN 2468-2276, https://doi.org/10.1016/j.sciaf.2024.e02262.
Abstract: The rapid increase in population and urban development are exacerbating the transformation of natural environments into unnatural forms. While detailed assessment of the environment is beneficial for efficient ecosystem system management, it can also be time and resourcesconsuming. This study aimed to map and quantify the spatio-temporal changes in land use and land cover (LULC) using the Ou´em´e River Basin as a case study. The supervised classification in Google Earth Engine (GEE) cloud-computing platform was employed to distinguish Landsat images for 1986, 2000, 2015 and 2023 into forest areas, settlements/bare lands, savanna areas (woodlands), agricultural lands and water bodies. Analysis of the LULC changes revealed that savanna areas and woodlands which were predominant in the basin in 1986 have steadily declined by 24 % in area in 2023. Forest areas have diminished by 4.3 % at an annual rate of 4 %. Agricultural lands have however grown exponentially by 28 % since 1986, with a more rapid increase between 2015 and 2023 at an annual rate of 3.7 %, driven by rising food demand due to population growth within and around the basin. Settlements and bare areas tripled in area, reflecting a similar trend to Benin’s urban population growth. Accuracy statistics of the LULC classification showed overall accuracy and kappa statistic values above 90 % and 86 %, respectively, indicating the admirable performance and reliability of the Simple Composite Landsat algorithm for image composition, and the Random Forest Classifier for LULC classification approach applied in this study. The approach also demonstrates the robustness and potential of LULC mapping in large and complex ecosystems using the GEE cloud-based remote sensing tool, which is underutilized in the study area. Overall, the LULC trends provide beneficial insights useful to policy-makers and any other stakeholders involved in sustainable ecosystem management planning in the basin.
Description: A Publication submitted to the West African Science Service Centre on Climate Change and Adapted Land Use and the Kwame Nkrumah University of Science and Technology, Kumasi, Ghana, in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Climate Change and Land Use
URI: http://197.159.135.214/jspui/handle/123456789/1131
ISSN: 2468-2276
Appears in Collections:Climate Change and Disaster Risk Management

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