洪水预报的先进人工智能技术评估

M. Waqas, S. Bonnet, Usa Humphries Wannasing, Phyo Thandar Hlaing, Hnin Aye Lin, Sarfraz Hashim
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引用次数: 0

摘要

洪水是一种自然灾害,可以摧毁人们的生命、基础设施和经济。预测洪水对于为人们提供长期洪水风险管理至关重要。洪水预报对于为决策者提供早期信息和知识以减少洪水的影响至关重要。警报还可以向潜在的洪水受害者和地点发出,并采取必要的行动,如减灾和疏散。由于目前的估计显示未来的情景越来越多,因此需要采取全面的洪水风险管理措施,包括洪水建模。本出版物旨在分析世界范围内的洪水风险。已经开发和部署了各种人工智能技术来预测洪水并采取预防措施。本研究的主要目的是评估目前利用人工神经网络(ann)、自适应神经模糊推理系统(ANFIS)、支持向量机(svm)和k近邻(KNN)进行洪水预报的改进,从而提出最有效的短期和长期洪水建模技术。ann、ANFIS和svm是预测洪水最成功的解决方案。最后,提出了新的研究和发展方向,以预测洪水和采取预防措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Advanced Artificial Intelligence Techniques for Flood Forecasting
Flooding is a natural calamity that can destroy people's lives, infrastructure, and the economy. Forecasting floods is critical for providing people with long-term flood risk management. Flood forecasting is essential in providing early information and knowledge to decision-makers to reduce the impact of flooding. The warning can also be given to potential flood victims and locations, and necessary action, such as mitigation and evacuation, can be taken. With current estimates showing increasing future scenarios, comprehensive flood risk management measures, including flood modelling, are needed. This publication aims to analyses flood risks worldwide. Various AI techniques have been developed and deployed to predict floods and take preventative actions. The primary goal of this study is to assess current improvements in flood forecasting utilizing artificial neural networks (ANNs), adaptive neuro-fuzzy inference systems (ANFIS), support vector machines (SVMs), and k-nearest neighbors (KNN s), As a result, this research presents the most effective short and long-term flood modelling techniques. ANNs, ANFIS, and SVMs are the most successful solutions for forecasting floods. Finally, new research and development directions are suggested to predict floods and take preventative actions.
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