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Forecasting Water Main Failure using Artificial Neural Network and Generalized Linear Models

机译:使用人工神经网络和广义线性模型预测供水干线故障

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The city of Kingston, Ontario is currently experiencing elevated costs to repair its aging buried water main assets. The application of a predictive water main break models allow for the estimation of pipe condition and likelihood of failure. The objective of this paper is to develop a generalized linear model (GLM) and artificial neural network (ANN) model to forecast pipe breaks in the Kingston water distribution network. Data supplied by Utilities Kingston was used to develop the predictive water main break models, incorporating multiple variables, data history, calibration, and data prioritization. The goal of these models is to provide a practical means to assist in the management and development of Kingston's pipe rehabilitation program, and to enable Utilities Kingston to reduce water main repair costs and to improve water quality at the customer's tap. Models with acceptable precision will produce a reliable decision tool for future planning and budgeting.
机译:安大略省金斯敦市目前正在经历高昂的成本,以修复其老化的地下水主要资产。预测性的水主管破裂模型的应用可以估算管道状况和发生故障的可能性。本文的目的是开发一个广义线性模型(GLM)和人工神经网络(ANN)模型来预测金斯敦供水网络中的管道破裂。公用事业金斯敦提供的数据用于开发预测性的水主中断模型,其中包含多个变量,数据历史记录,校准和数据优先级。这些模型的目的是提供一种实用的手段,以协助金斯敦的管道修复计划的管理和开发,并使公用事业公司金斯敦降低供水总修理成本并改善客户自来水的水质。精度可接受的模型将为将来的计划和预算提供可靠的决策工具。

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