APLIKASI BERBASIS WEBSITE UNTUK PREDIKSI KEJADIAN BANJIR MENGGUNAKAN METODE MACHINE LEARNING DI KABUPATEN CILACAP

Jaya, Faiz Ichsan (2020) APLIKASI BERBASIS WEBSITE UNTUK PREDIKSI KEJADIAN BANJIR MENGGUNAKAN METODE MACHINE LEARNING DI KABUPATEN CILACAP. Other thesis, Universitas Amikom Purwokerto.

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Abstract

Floods are the most common natural disasters, both in terms of their intensity at a place and the number of locations of events in the amount of 40% among other natural disasters. The impact of flooding on the area in general is temporary housing in rural areas caused by flooding in addition to settlement as well as agriculture which can have an impact on the food security of the area and also a national level that is higher than the magnitude of the country. Based on data from the Central Statistics Agency of Cilacap Regency, the number of flood victims in Cilacap Regency in 2018 reached 771 people (BPS Cilacap Regency, 2018) and arranged for them to flee from the flood. To solve this problem, do research to create a web-based application using the classification of the Vector Engine or Random Forest to predict flood events and compare the accuracy values of the two algorithms to get better prediction results. The accuracy of the SVM results in a value of 98.15% while Random Forest only produces a value of 1.5% with 98% and 2% respectively precision and recall.
Item Type: Thesis (Other)
Additional Information: Dosen Pembimbing: Dr. Eng. Imam Tahyudin, M.M.
Uncontrolled Keywords: Application, Website, Python, Prediction, Machine Learning
Subjects: N Fine Arts > N Visual arts (General) For photography, see TR
T Technology > T Technology (General)
T Technology > TJ Mechanical engineering and machinery
Depositing User: UPT Perpustakaan Pusat Universitas Amikom Purwokerto
Date Deposited: 30 Nov 2020 07:08
Last Modified: 30 Nov 2020 07:08
URI: https://eprints.amikompurwokerto.ac.id/id/eprint/437

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