Analisis Tingkat Kerawanan Banjir Menggunakan Machine Learning Artificial Neural Network (ANN) dan Geospasial
Analysis of Flood Vulnerability Using Machine Learning Artificial Neural Network (ANN) and Geospatial
Date
2025Author
SIMAMORA, AHMAD BAHREIN
Advisor(s)
Samsuri
Masruroh, Heni
Metadata
Show full item recordAbstract
Floods pose a significant threat to the Asahan Toba Watershed in North Sumatra,
primarily driven by high rainfall, land use changes, and geomorphological
conditions. This study aims to identify flood-prone areas and predict flood risk using
an Artificial Neural Network (ANN). Key parameters include rainfall, river
proximity, elevation, soil type, slope, and land cover. Data were processed with
Geographic Information Systems (GIS) and modeled in TensorFlow using Python.
The ANN achieved an accuracy of 85% and was validated against real flood events
in 2024. Flood risk zoning maps highlight high-risk areas, particularly in Bandar
Pulau and Simpang Empat sub-districts. The findings confirm that ANN is an
effective tool for spatial flood risk prediction and early warning, supporting disaster
mitigation and watershed management strategies.
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- Undergraduate Theses [2142]