Extreme weather events pose high risks for agricultural production and cause yield losses in South and Southeast Asia. Tropical cyclones frequently cause significant yield losses in Bangladesh. In this regard, a fuzzy approach for satellite-derived normalized difference vegetation index was used to classify rice yield losses in a coastal region of Bangladesh adjacent to the Bay of Bengal. We used different fuzzy membership functions and overlaid a fuzzification gamma to calculate the expected crisp set to develop the classifiers for yield losses. There were five classes of yield loss: marginal, slight, moderate, very, and extreme. The natural breaks (Jenks) method was used to classify losses as marginal on 461 ha (1.5% of total), 2661 ha (8.6%), moderate 11811 ha (38.2%), very 5814 ha (18.8%), and extreme 10160 ha (32.9%). Field validation identified 29.5% of the reference yield information points in the moderate yield loss class, and 45.2% in extreme. These similarities indicate that the method can be used to estimate yield losses in South and Southeast Asian areas affected by cyclones.
CITATION STYLE
Shamsuzzoha, M., Noguchi, R., & Ahamed, T. (2022). Rice Yield Loss Area Assessment from Satellite-derived NDVI after Extreme Climatic Events Using a Fuzzy Approach. Agricultural Information Research, 31(1), 32–46. https://doi.org/10.3173/air.31.32
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