Flood Prediction with Ensemble Machine Learning using BP-NN and SVM

  • Fitriyaningsih I
  • Basani Y
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Abstract

This study aims to examine the prediction of rainfall and river water debit using the Back Propagation Neural Network (BP-NN) method. Prediction results are classified using the Support Vector Machine (SVM) method to predict flooding. The parameters used to predict rainfall with BP-NN are minimum, maximum and average temperature, average relative humidity, sunshine duration, and average wind speed. The debit of Ular Pulau Tagor river is predicted by BP-NN. BPNN and SVM modeling using software R. Daily climate data from 2015-2017 were taken from three stations, namely Sampali climatology station, Kualanamu meteorological station, and Tuntung geophysics station. Prediction of river water debit is for 6 days and 30 days in the future. The best dataset is a 6 day prediction with a combination of 60% training and 40% testing. Flood prediction accuracy with SVM was 100% in predicting flood events for the next 6 days.

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Fitriyaningsih, I., & Basani, Y. (2019). Flood Prediction with Ensemble Machine Learning using BP-NN and SVM. Jurnal Teknologi Dan Sistem Komputer, 7(3), 93–97. https://doi.org/10.14710/jtsiskom.7.3.2019.93-97

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