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首页> 外文期刊>Journal of Management in Engineering >Evaluation and Prediction of the Hazard Potential Level of Dam Infrastructtres Using Computational Artifichal Intelligence Algorithms
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Evaluation and Prediction of the Hazard Potential Level of Dam Infrastructtres Using Computational Artifichal Intelligence Algorithms

机译:计算人工智能算法的水坝基础设施危害潜在水平的评价与预测

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Abstract Failures of dams cause immense property and environmental damages and take thousands of lives. As such, the goal of this paper is to evaluate and predict the hazard potential level of dams in the US using a comparative approach based on computational artificial intelligence (AI) algorithms. The research methodology comprised data collection from the National Inventory of Dams (NID); data preprocessing; data processing; and model selection and evaluation. To this end, the authors: (1) identified the best subset of variables that affect the prediction of the hazard potential level of dams in the US; (2) investigated the performance of two AI computational algorithms: artificial neural networks (ANNs) and k-nearest neighbors (KNNs) for the evaluation and prediction of the hazard potential levels of US dams; and (3) developed a decision support tool that could be used by the agencies responsible for the management of dams in the US with the capability to predict the hazard potential with good accuracy. The obtained results reflected that the ANN algorithm yielded better accuracy compared to the KNN algorithm. In addition, the conclusions indicated that 19 variables pertaining to dams in the US could affect the hazard potential level of dams. The output is a decision support system that is able to evaluate the hazard potential of dams with a prediction accuracy of 85.70%. This study contributes to the management in engineering’s body of knowledge by devising a data-driven framework that is valuable for dams’ owners and authorities. Ultimately, the developed computational AI algorithm could be used to evaluate and predict the hazard potential level of US dams with good accuracy while minimizing the efforts, time, and costs associated with formal inspection of the dams.
机译:抽象的坝体失败导致巨大的财产和环境损害,花费成千上万的生命。因此,本文的目标是利用基于计算人工智能(AI)算法的比较方法来评估和预测美国的危险潜在水平。研究方法包括来自国家库存的数据收集(NID);数据预处理;数据处理;和模型选择和评估。为此,作者:(1)确定了影响对美国水坝危险潜在水平的预测的最佳变量子集; (2)研究了两个AI计算算法的性能:人工神经网络(ANNS)和K最近邻居(KNNN),用于评估和预测美国水坝的危险潜在水平; (3)制定了一个决策支持工具,可由负责在美国的大坝管理的机构使用的机构能够以良好的准确性预测危险潜力。与KNN算法相比,所获得的结果反映了ANN算法产生了更好的精度。此外,结论表明,与美国水坝有关的19个变量可能影响水坝的危险潜在水平。该输出是一种决策支持系统,能够评估水坝的危险潜力,预测精度为85.70%。本研究通过设计数据驱动的框架对工程知识体系的管理有所帮助,这些框架对水坝所有者和当局有价值。最终,开发的计算AI算法可用于评估和预测良好准确性的美国大坝的危险潜在水平,同时最小化与水坝正式检查相关的努力,时间和成本。

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