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Forecasting Water Main Failures in the City of Kingston Using Artificial Neural Networks.

机译:使用人工神经网络预测金斯敦市的供水干线故障。

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摘要

Water distribution utilities are responsible for supplying both clean and safe drinking water, while under constraints of operating at an efficient and acceptable performance level. The City of Kingston, Ontario is currently experiencing elevated costs to repair its aging buried water main assets. Utilities Kingston is opting for a more efficient and practical means of forecasting pipe breaks and the application of a predictive water main break models allows Utilities Kingston to forecast future pipe failures and plan accordingly.;The objective of this thesis is to develop an 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 ANN water main break model incorporating multiple variables including pipe age, diameter, length, and surrounding soil type. The constructed ANN model from historical break data was utilized to forecast pipe breaks for 1-year, 2-year, and 5-year planning periods. Simulated results were evaluated by statistical performance metrics, proving the overall model to be adequate for testing and forecasting. Predicted breaks were as follows, 33 breaks for 2011--2012, 22 breaks for 2012--2013 and 35 breaks for 2013--2016. Additionally, GIS plots were developed to highlight areas in need of potential rehabilitation for the distribution system. The goal of the model 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.
机译:供水公司负责提供清洁和安全的饮用水,同时要以高效和可接受的性能水平运行。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。金士顿公用事业公司选择了一种更有效,更实用的预测管道破裂的方法,并且预测性的水主管破裂模型的应用使金士顿公用事业可以预测未来的管道故障并做出相应的计划。;本论文的目的是开发一个人工神经网络(ANN)模型来预测金斯敦配水管网中的管道破裂。 Utilities Kingston提供的数据用于开发预测性ANN水主破坏模型,该模型结合了多个变量,包括管道寿命,直径,长度和周围的土壤类型。根据历史中断数据构建的ANN模型可用于预测1年,2年和5年计划周期的管道中断。通过统计性能指标评估模拟结果,证明整个模型足以进行测试和预测。预计的休息时间如下,2011--2012年有33个休息时间,2012--2013年有22个休息时间,2013--2016年有35个休息时间。此外,开发了GIS绘图以突出显示配电系统需要进行潜在修复的区域。该模型的目标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减少供水总修复成本并改善客户自来水的水质。

著录项

  • 作者

    Nishiyama, Michael Jeffrey.;

  • 作者单位

    Queen's University (Canada).;

  • 授予单位 Queen's University (Canada).;
  • 学科 Civil engineering.
  • 学位 M.S.
  • 年度 2013
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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