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首页> 外文期刊>Environmental Science and Pollution Research >Performance evaluation of artificial intelligence paradigms-artificial neural networks, fuzzy logic, and adaptive neuro-fuzzy inference system for flood prediction
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Performance evaluation of artificial intelligence paradigms-artificial neural networks, fuzzy logic, and adaptive neuro-fuzzy inference system for flood prediction

机译:人工智能范式 - 人工神经网络,模糊逻辑和自适应神经模糊推理系统的洪水预测性能评价

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Flood prediction has gained prominence world over due to the calamitous socio-economic impacts this hazard has and the anticipated increase of its incidence in the near future. Artificial intelligence (AI) models have contributed significantly over the last few decades by providing improved accuracy and economical solutions to simulate physical flood processes. This study explores the potential of the AI computing paradigm to model the stream flow. Artificial neural network (ANN), fuzzy logic, and adaptive neuro-fuzzy inference system (ANFIS) algorithms are used to develop nine different flood prediction models using all the available training algorithms. The performance of the developed models is evaluated using multiple statistical performance evaluators. The predictability and robustness of the models are tested through the simulation of a major flood event in the study area. A total of 12 inputs were used in the development of the models. Five training algorithms were used to develop the ANN models (Bayesian regularization, Levenberg Marquardt, conjugate gradient, scaled conjugate gradient, and resilient backpropagation), two fuzzy inference systems to develop fuzzy models (Mamdani and Sugeno), and two training algorithms to develop the ANFIS models (hybrid and backpropagation). The ANFIS model developed using hybrid training algorithm gave the best performance metrics with Nash-Sutcliffe Model Efficiency (NSE) of 0.968, coefficient of correlation (R-2) of 97.066%, mean square error (MSE) of 0.00034, root mean square error (RMSE) of 0.018, mean absolute error (MAE) of 0.0073, and combined accuracy (CA) of 0.018, implying the potential of using the developed models for flood forecasting. The significance of this research lies in the fact that a combination of multiple inputs and AI algorithms has been used to develop the flood models. In summary, this research revealed the potential of AI algorithm-based models in predicting floods and also developed some useful techniques that can be used by the Flood Control Departments of various states/regions/countries for flood prognosis.
机译:由于这种灾害带来的灾难性社会经济影响,以及预计在不久的将来其发生率将增加,洪水预测在世界范围内得到了重视。人工智能(AI)模型在过去几十年中做出了重大贡献,为模拟物理洪水过程提供了更高的精度和经济的解决方案。这项研究探索了人工智能计算范式对流建模的潜力。使用人工神经网络(ANN)、模糊逻辑和自适应神经模糊推理系统(ANFIS)算法,使用所有可用的训练算法开发了九种不同的洪水预测模型。使用多个统计性能评估器评估所开发模型的性能。通过对研究区域重大洪水事件的模拟,验证了模型的可预测性和鲁棒性。在开发模型时,共使用了12种输入。五种训练算法用于开发ANN模型(贝叶斯正则化、Levenberg-Marquardt、共轭梯度、缩放共轭梯度和弹性反向传播),两种模糊推理系统用于开发模糊模型(Mamdani和Sugeno),两种训练算法用于开发ANFIS模型(混合和反向传播)。使用混合训练算法开发的ANFIS模型给出了最佳性能指标,纳什-萨特克利夫模型效率(NSE)为0.968,相关系数(R-2)为97.066%,均方误差(MSE)为0.00034,均方根误差(RMSE)为0.018,平均绝对误差(MAE)为0.0073,组合精度(CA)为0.018,这意味着将开发的模型用于洪水预报的潜力。这项研究的意义在于,多输入和人工智能算法的结合已被用于开发洪水模型。总之,本研究揭示了基于人工智能算法的模型在洪水预测中的潜力,并开发了一些有用的技术,可供各州/地区/国家的防洪部门用于洪水预测。

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