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Orientador(es)
Resumo(s)
Crop yield predictions and monitoring are important in understanding key challenges
in crop production and management to ensure the effective utilization of resources to
enhance food security. Over the years remote sensing data and machine learning models
have been employed with the help of ground truth data as reference in the estimation of
crop yields across space and time. However, the common machine learning methods often
overlook the spatial heterogeneity inherent in regions leading to sub-optimal estimations.
Moreover, the transferability of the machine-learning model to new environments is rarely
addressed during spatial-temporal predictions.
This study integrates spatial heterogeneity by utilizing the Geographically weighted ran dom forest model(GWRF). It investigates whether accounting for heterogeneity can im prove spatial-temporal predictions of crop yields and estimate the area of applicability of
the models. The models are tested with maize yield data from farms practising conserva tion agriculture(CA) and another group applying the farmers’ conventional practices(CP)
in Zambia and Malawi. The GWRF is compared to the ordinary Random Forest(RF)
model using environmental blocking cross-validation.
The overall performance of the GWRF was better compared to the standard RF model
with RMSE of 1587.731 kg/ha and 1389.206 kg/ha for the CA and CP respectively. The
coefficient of determination (R2) was 0.171 and 0.234 for CA and CP respectively.
Descrição
Dissertation submitted in partial fulfilment of the requirements for the Degree of Master of Science in Geospatial Technologies
Palavras-chave
Spatial-temporal predictions Crop yields Spatial heterogeneity Conservation agriculture Environmental blocking Area of applicability Dissimilarity Index
