Comparative study of extraction features and regression algorithms for predicting drought rates

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Abstract

Rice is the primary staple food source for Indonesian people, with consumption increasing so that rice production needs to be increased. Rice drought is one of the problems that can hamper rice production. This research aims to determine the best extraction feature between the normalized difference vegetation index (NDVI) and the normalized difference water index (NDWI) in describing rice fields’ dryness. Moreover, using the random forest regression algorithm. This research compares NDVI with NDWI using data originating from Sentinel-2A and retrieved via the google earth engine. Regression algorithms are used in research to predict drought in paddy fields. This research shows that NDVI is better than NDWI in predicting drought using random forest regression algorithms and logistic regression algorithms. The random forest regression algorithm based on the results obtained shows that the average root mean square error (RMSE) on NDVI is 0.018, and NDWI is 0.012. Based on the logistic regression algorithm results, it was found that the average value of RMSE on NDVI was 0.346, and NDWI was 0.336. Based on the results of the RMSE, it shows that the forecasting ability of the random forest regression algorithm is better than the logistic regression

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APA

Rahmana, I. H., Febriyani, A. R., Ranggadara, I., Suhendra, & Karima, I. S. (2022). Comparative study of extraction features and regression algorithms for predicting drought rates. Telkomnika (Telecommunication Computing Electronics and Control), 20(3), 638–646. https://doi.org/10.12928/TELKOMNIKA.v20i3.23156

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