Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan
Floods are among the major natural disasters that cause loss of life and economic damage worldwide. Floods damage homes, crops, roads, and basic infrastructure, forcing people to migrate from high flood-risk areas. However, due to a lack of information about the effective variables in forecasting, t...
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sg-ntu-dr.10356-1652372023-03-21T15:36:21Z Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan Ahmed, Fahad Loc, Ho Huu Park, Edward Hassan, Muhammad Joyklad, Panuwat National Institute of Education Earth Observatory of Singapore Engineering::Environmental engineering Flood Forecasting Jhelum River Floods are among the major natural disasters that cause loss of life and economic damage worldwide. Floods damage homes, crops, roads, and basic infrastructure, forcing people to migrate from high flood-risk areas. However, due to a lack of information about the effective variables in forecasting, the development of an accurate flood forecasting system remains difficult. The flooding process is quite complex as it has a nonlinear relationship with various meteorological and topographic parameters. Therefore, there is always a need to develop regional models that could be used effectively for water resource management in a particular locality. This study aims to establish and evaluate various data-driven flood forecasting models in the Jhelum River, Punjab, Pakistan. The performance of Local Linear Regression (LLR), Dynamic Local Linear Regression (DLLR), Two Layer Back Propagation (TLBP), Conjugate Gradient (CG), and Broyden–Fletcher–Goldfarb–Shanno (BFGS)-based ANN models were evaluated using R2, variance, bias, RMSE and MSE. The R2, bias, and RMSE values of the best-performing LLR model were 0.908, 0.009205, and 1.018017 for training and 0.831, −0.05344, and 0.919695 for testing. Overall, the LLR model performed best for both the training and validation periods and can be used for the prediction of floods in the Jhelum River. Moreover, the model provides a baseline to develop an early warning system for floods in the study area. Ministry of Education (MOE) Published version This research was funded by the Ministry of Education of Singapore (#Tier1 2021-T1-001-056 and #Tier2 MOE-T2EP402A20-0001). 2023-03-21T04:33:15Z 2023-03-21T04:33:15Z 2022 Journal Article Ahmed, F., Loc, H. H., Park, E., Hassan, M. & Joyklad, P. (2022). Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan. Water, 14(21), 3533-. https://dx.doi.org/10.3390/w14213533 2073-4441 https://hdl.handle.net/10356/165237 10.3390/w14213533 2-s2.0-85141883133 21 14 3533 en #Tier1 2021-T1-001-056 #Tier2 MOE-T2EP402A20-0001 Water © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/). application/pdf |
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Engineering::Environmental engineering Flood Forecasting Jhelum River Ahmed, Fahad Loc, Ho Huu Park, Edward Hassan, Muhammad Joyklad, Panuwat Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
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Floods are among the major natural disasters that cause loss of life and economic damage worldwide. Floods damage homes, crops, roads, and basic infrastructure, forcing people to migrate from high flood-risk areas. However, due to a lack of information about the effective variables in forecasting, the development of an accurate flood forecasting system remains difficult. The flooding process is quite complex as it has a nonlinear relationship with various meteorological and topographic parameters. Therefore, there is always a need to develop regional models that could be used effectively for water resource management in a particular locality. This study aims to establish and evaluate various data-driven flood forecasting models in the Jhelum River, Punjab, Pakistan. The performance of Local Linear Regression (LLR), Dynamic Local Linear Regression (DLLR), Two Layer Back Propagation (TLBP), Conjugate Gradient (CG), and Broyden–Fletcher–Goldfarb–Shanno (BFGS)-based ANN models were evaluated using R2, variance, bias, RMSE and MSE. The R2, bias, and RMSE values of the best-performing LLR model were 0.908, 0.009205, and 1.018017 for training and 0.831, −0.05344, and 0.919695 for testing. Overall, the LLR model performed best for both the training and validation periods and can be used for the prediction of floods in the Jhelum River. Moreover, the model provides a baseline to develop an early warning system for floods in the study area. |
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National Institute of Education |
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National Institute of Education Ahmed, Fahad Loc, Ho Huu Park, Edward Hassan, Muhammad Joyklad, Panuwat |
format |
Article |
author |
Ahmed, Fahad Loc, Ho Huu Park, Edward Hassan, Muhammad Joyklad, Panuwat |
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Ahmed, Fahad |
title |
Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
title_short |
Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
title_full |
Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
title_fullStr |
Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
title_full_unstemmed |
Comparison of different artificial intelligence techniques to predict floods in Jhelum River, Pakistan |
title_sort |
comparison of different artificial intelligence techniques to predict floods in jhelum river, pakistan |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/165237 |
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1761781182239866880 |