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      Linear and stratified sampling-based deep learning models for improving the river streamflow forecasting to mitigate flooding disaster

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          Flood Prediction Using Machine Learning Models: Literature Review

          Floods are among the most destructive natural disasters, which are highly complex to model. The research on the advancement of flood prediction models contributed to risk reduction, policy suggestion, minimization of the loss of human life, and reduction of the property damage associated with floods. To mimic the complex mathematical expressions of physical processes of floods, during the past two decades, machine learning (ML) methods contributed highly in the advancement of prediction systems providing better performance and cost-effective solutions. Due to the vast benefits and potential of ML, its popularity dramatically increased among hydrologists. Researchers through introducing novel ML methods and hybridizing of the existing ones aim at discovering more accurate and efficient prediction models. The main contribution of this paper is to demonstrate the state of the art of ML models in flood prediction and to give insight into the most suitable models. In this paper, the literature where ML models were benchmarked through a qualitative analysis of robustness, accuracy, effectiveness, and speed are particularly investigated to provide an extensive overview on the various ML algorithms used in the field. The performance comparison of ML models presents an in-depth understanding of the different techniques within the framework of a comprehensive evaluation and discussion. As a result, this paper introduces the most promising prediction methods for both long-term and short-term floods. Furthermore, the major trends in improving the quality of the flood prediction models are investigated. Among them, hybridization, data decomposition, algorithm ensemble, and model optimization are reported as the most effective strategies for the improvement of ML methods. This survey can be used as a guideline for hydrologists as well as climate scientists in choosing the proper ML method according to the prediction task.
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            Improving artificial intelligence models accuracy for monthly streamflow forecasting using grey Wolf optimization (GWO) algorithm

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              Survey of computational intelligence as basis to big flood management: challenges, research directions and future work

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                Author and article information

                Contributors
                Journal
                Natural Hazards
                Nat Hazards
                Springer Science and Business Media LLC
                0921-030X
                1573-0840
                June 2022
                February 18 2022
                June 2022
                : 112
                : 2
                : 1527-1545
                Article
                10.1007/s11069-022-05237-7
                49bcb8bd-93c1-4a37-b559-cdfcfb99dd0e
                © 2022

                https://www.springer.com/tdm

                https://www.springer.com/tdm

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