The Utilization of Satellite Data and Machine Learning for Predicting the Inundation Height in the Majalaya Watershed
Abstract
:1. Introduction
2. Study Area
2.1. Area Orientation
2.2. River System
3. Materials and Methods
3.1. General Procedure
3.2. Materials
3.2.1. Rainfall Data
3.2.2. Water Level Data
3.2.3. Topography Data
3.3. Modeling and Simulation
3.3.1. HEC-RAS Simulation and Flood Event Selection
3.3.2. Artificial Neural Network (ANN)
4. Results
4.1. Flood Inundation Height
4.2. Variable Correlation
4.3. Neural Network Model
4.4. Testing
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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River | Area (km2) |
---|---|
Citangkurak | 1.29 |
Cipalemahan | 7.69 |
Cihampelas | 3.47 |
Cikaro | 30.95 |
Cisunggalah | 45.83 |
Citarum | 165.09 |
Total | 207 |
Data Name | Data Year | Source |
---|---|---|
Majalaya area DEM | 2018 | DEMNAS (Indonesian National DEM data) from BIG |
River bathymetry | 2018 | Primary survey data |
Flood event boundaries | 2018 | Crowdsourced data |
RBI land cover map | 2006 | BIG |
Satellite rainfall | 2014–2022 | JAXA (Japan Aerospace Exploration Agency) |
Rain gauge precipitation | 2014–2022 | BMKG (Indonesian Meteorology, Climatology, and Geophysics Agency) |
Citarum River discharge | 2017–2022 | BBWS Citarum (Citarum River Authority) |
No. | X (m) | Y (m) | Rainfall (Hourly) | Distance to Inflow (m) | Distance to River (m) | Elevation (m) | Inundation Height Prediction (m) |
---|---|---|---|---|---|---|---|
1 | 805,914.90 | 9,223,578.28 | 5.64 | 3044.16 | 14.66 | 662.15 | 0.83 |
2 | 806,487.38 | 9,222,003.97 | 6.87 | 1472.41 | 6.90 | 666.47 | 0.69 |
3 | 806,000.78 | 9,223,492.41 | 31.23 | 2959.83 | 37.49 | 662.44 | 0.80 |
4 | 805,829.03 | 9,219,799.95 | 4.50 | 169.87 | 883.42 | 675.69 | 0.75 |
5 | 805,628.67 | 9,219,599.58 | 9.33 | 438.76 | 621.37 | 676.03 | 0.30 |
6 | 804,455.09 | 9,218,855.36 | 4.73 | 891.40 | 480.27 | 672.05 | 2.66 |
7 | 804,340.60 | 9,220,143.43 | 47.84 | 1487.54 | 7.29 | 670.08 | 1.85 |
8 | 806,458.75 | 9,221,889.48 | 8.08 | 1360.26 | 91.94 | 666.00 | 0.96 |
9 | 806,258.39 | 9,222,175.72 | 7.83 | 1660.24 | 53.87 | 666.00 | 0.72 |
10 | 805,027.57 | 9,218,111.14 | 2.80 | 27.39 | 345.42 | 683.87 | 1.13 |
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Burnama, N.S.; Rohmat, F.I.W.; Farid, M.; Kuntoro, A.A.; Kardhana, H.; Rohmat, F.I.W.; Wijayasari, W. The Utilization of Satellite Data and Machine Learning for Predicting the Inundation Height in the Majalaya Watershed. Water 2023, 15, 3026. https://doi.org/10.3390/w15173026
Burnama NS, Rohmat FIW, Farid M, Kuntoro AA, Kardhana H, Rohmat FIW, Wijayasari W. The Utilization of Satellite Data and Machine Learning for Predicting the Inundation Height in the Majalaya Watershed. Water. 2023; 15(17):3026. https://doi.org/10.3390/w15173026
Chicago/Turabian StyleBurnama, Nabila Siti, Faizal Immaddudin Wira Rohmat, Mohammad Farid, Arno Adi Kuntoro, Hadi Kardhana, Fauzan Ikhlas Wira Rohmat, and Winda Wijayasari. 2023. "The Utilization of Satellite Data and Machine Learning for Predicting the Inundation Height in the Majalaya Watershed" Water 15, no. 17: 3026. https://doi.org/10.3390/w15173026
APA StyleBurnama, N. S., Rohmat, F. I. W., Farid, M., Kuntoro, A. A., Kardhana, H., Rohmat, F. I. W., & Wijayasari, W. (2023). The Utilization of Satellite Data and Machine Learning for Predicting the Inundation Height in the Majalaya Watershed. Water, 15(17), 3026. https://doi.org/10.3390/w15173026