Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms

Abstract Flooding is a devastating natural disaster that causes fatalities and property damage worldwide. Effective flood susceptibility mapping (FSM) has become crucial for mitigating flood risks, especially in urban areas. This study evaluates the performance of artificial neural network (ANN) alg...

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Main Authors: Rana Muhammad Adnan Ikram, Mo Wang, Hossein Moayedi, Atefeh Ahmadi Dehrashid
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-04290-z
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author Rana Muhammad Adnan Ikram
Mo Wang
Hossein Moayedi
Atefeh Ahmadi Dehrashid
author_facet Rana Muhammad Adnan Ikram
Mo Wang
Hossein Moayedi
Atefeh Ahmadi Dehrashid
author_sort Rana Muhammad Adnan Ikram
collection DOAJ
description Abstract Flooding is a devastating natural disaster that causes fatalities and property damage worldwide. Effective flood susceptibility mapping (FSM) has become crucial for mitigating flood risks, especially in urban areas. This study evaluates the performance of artificial neural network (ANN) algorithms for FSM using machine learning classification. Traditional flood prediction models face limitations due to data complexity and computational constraints. This research incorporates artificial intelligence, particularly evolutionary algorithms, to create more adaptable and robust flood prediction models. Four specific algorithms—black hole algorithm (BHA), future search algorithm (FSA), heap-based optimization (HBO), and multiverse optimization (MVO)—were tested for predicting flood occurrences in the Fars region of Iran. These evolutionary algorithms simulate natural processes like selection, mutation, and crossover to optimize flood predictions and management strategies, improving adaptability in dynamic environments. The novelty of this study lies in using evolutionary AI algorithms to not only predict floods more accurately but also optimize flood management strategies. The ANN was trained with geographical data on eight flood-impacting factors, including elevation, rainfall, slope, NDVI, aspect, geology, land use, and river data. The models were validated with historical flood damage data from the Fars area using metrics like mean square error (MSE), mean absolute error (MAE), and the receiver operating characteristic (ROC) curve. Results showed significant improvements in accuracy for BHA–MLP, FSA–MLP, MVO–MLP, and HBO–MLP, with accuracy indices and AUC values increasing. The study concludes that hybridized models offer an effective and economically viable approach for urban flood vulnerability mapping, providing valuable insights for flood preparedness and emergency response strategies.
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spelling doaj-art-4cf7a2ca78d146b985d6d42182019f6b2025-08-20T03:03:28ZengNature PortfolioScientific Reports2045-23222025-07-0115113110.1038/s41598-025-04290-zManagement and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithmsRana Muhammad Adnan Ikram0Mo Wang1Hossein Moayedi2Atefeh Ahmadi Dehrashid3Water Science and Environmental Research Centre, College of Chemistry and Environmental Engineering, Shenzhen UniversityCollege of Architecture and Urban Planning, Guangzhou UniversityInstitute of Research and Development, Duy Tan UniversityDepartment of Climatology, Faculty of Natural Resources, University of KurdistanAbstract Flooding is a devastating natural disaster that causes fatalities and property damage worldwide. Effective flood susceptibility mapping (FSM) has become crucial for mitigating flood risks, especially in urban areas. This study evaluates the performance of artificial neural network (ANN) algorithms for FSM using machine learning classification. Traditional flood prediction models face limitations due to data complexity and computational constraints. This research incorporates artificial intelligence, particularly evolutionary algorithms, to create more adaptable and robust flood prediction models. Four specific algorithms—black hole algorithm (BHA), future search algorithm (FSA), heap-based optimization (HBO), and multiverse optimization (MVO)—were tested for predicting flood occurrences in the Fars region of Iran. These evolutionary algorithms simulate natural processes like selection, mutation, and crossover to optimize flood predictions and management strategies, improving adaptability in dynamic environments. The novelty of this study lies in using evolutionary AI algorithms to not only predict floods more accurately but also optimize flood management strategies. The ANN was trained with geographical data on eight flood-impacting factors, including elevation, rainfall, slope, NDVI, aspect, geology, land use, and river data. The models were validated with historical flood damage data from the Fars area using metrics like mean square error (MSE), mean absolute error (MAE), and the receiver operating characteristic (ROC) curve. Results showed significant improvements in accuracy for BHA–MLP, FSA–MLP, MVO–MLP, and HBO–MLP, with accuracy indices and AUC values increasing. The study concludes that hybridized models offer an effective and economically viable approach for urban flood vulnerability mapping, providing valuable insights for flood preparedness and emergency response strategies.https://doi.org/10.1038/s41598-025-04290-zSustainable developmentOptimized neural networkFlood susceptibility mapSpatial statistical analysisNovel and technical processes
spellingShingle Rana Muhammad Adnan Ikram
Mo Wang
Hossein Moayedi
Atefeh Ahmadi Dehrashid
Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
Scientific Reports
Sustainable development
Optimized neural network
Flood susceptibility map
Spatial statistical analysis
Novel and technical processes
title Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
title_full Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
title_fullStr Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
title_full_unstemmed Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
title_short Management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
title_sort management and prediction of river flood utilizing optimization approach of artificial intelligence evolutionary algorithms
topic Sustainable development
Optimized neural network
Flood susceptibility map
Spatial statistical analysis
Novel and technical processes
url https://doi.org/10.1038/s41598-025-04290-z
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AT hosseinmoayedi managementandpredictionofriverfloodutilizingoptimizationapproachofartificialintelligenceevolutionaryalgorithms
AT atefehahmadidehrashid managementandpredictionofriverfloodutilizingoptimizationapproachofartificialintelligenceevolutionaryalgorithms