Information Science and Library
Vol. 5 No. 2 (2024): Desember

IMPLEMENTASI ALGORITMA BACKPROPAGATION UNTUK MEMPREDIKSI JUMLAH JIWA TERDAMPAK BANJIR DI DKI JAKARTA

Kartika, Mira (Unknown)
Sekarwati, Kemal Ade (Unknown)



Article Info

Publish Date
17 Dec 2024

Abstract

Floods are natural disasters that often occur in the DKI Jakarta area. DKI Jakarta government needs to anticipate the impact of the flood disaster by estimating the number of people affected by the flood. The number of people affected by floods that are uncertain every month can be predicted for the future. There are many ways that can be predict the number of people affected by floods, one of them is artificial neural network method. One of learning algorithms in artificial neural networks is backpropagation algorithm. This research applies an artificial neural network method with backpropagation algorithm to predict the number of people affected by floods in DKI Jakarta. In this research, training process was carried out 100 times on each network architecture (12-10-1, 12-12-1, 12-14-1) with several parameters such as epoch, momentum constant, and learning rate. The best results in the training process are carried out to testing process to test the network. In the testing process, the best results are 12-10-1 architecture with an accuracy rate 98.704%. Based on these results, it can be said that this network can predict well and can be implemented for forecasting the number of people affected by floods in DKI Jakarta.

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Journal Info

Abbrev

jisl

Publisher

Subject

Humanities Computer Science & IT

Description

Jurnal Information Science and Library e-ISSN : 2723-2778 DOI : http://dx.doi.org/10.26623/jisl.v1i1 adalah jurnal ilmiah yang dikelola oleh Perpustakaan Universitas Semarang, jurnal ini melingkupi bidang ilmu antara lain: Rekayasa perangkat lunak (Software Engineering) Pembelajaran Berbasis ...