预测水管状况的机器学习模型比较

N. Elshaboury, M. Marzouk
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引用次数: 7

摘要

大多数输水管道都面临着严重的老化和退化问题。因此,本研究旨在开发预测输水管道结构状况的机器学习模型。模型采用多种技术实现,包括多元线性回归、前馈神经网络、一般回归神经网络和支持向量回归模型。通过交叉验证测量决定系数和均方根误差来评估上述模型的性能。结果表明,广义回归神经网络模型在应用指标方面优于其他模型。这些模型是利用从埃及Qalyubia省Shaker Al-Bahery供水网络收集的数据开发的。开发的模型预计将协助水务市政当局有效地分配预算以及安排所需的干预策略。
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Comparing Machine Learning Models For Predicting Water Pipelines Condition
The majority of water pipelines suffer severe deterioration and degradation challenges. Therefore, this research aims at developing machine learning models that forecast the structural condition of water pipelines. The models are implemented using several techniques, including multiple linear regression, feed-forward neural network, general regression neural network, and support vector regression models. The performance of the aforementioned models is evaluated by measuring the coefficient of determination and root mean squared error using cross-validation. The results show that the general regression neural network model outperforms the other models with respect to the applied metrics. The models are developed using data collected from a water distribution network in Shaker Al-Bahery, Qalyubia Governorate, Egypt. The developed model is expected to assist the water municipality in allocating budget efficiently as well as scheduling of the needed intervention strategies.
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