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Optimisation of a fuzzy logic-based local real-time control system for mitigation of sewer flooding using genetic algorithms

机译:基于模糊逻辑局部实时控制系统的优化利用遗传算法减轻下水道洪水

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摘要

Urban flooding damages properties, causes economic losses and can seriously threaten public health. An innovative, fuzzy logic (FL)-based, local autonomous real-time control (RTC) approach for mitigating this hazard utilising the existing spare capacity in urban drainage networks has been developed. The default parameters for the control algorithm, which uses water level-based data, were derived based on domain expert knowledge and optimised by linking the control algorithm programmatically to a hydrodynamic sewer network model. This paper describes a novel genetic algorithm (GA) optimisation of the FL membership functions (MFs) for the developed control algorithm. In order to provide the GA with strong training and test scenarios, the compiled rainfall time series based on recorded rainfall and incorporating multiple events were used in the optimisation. Both decimal and integer GA optimisations were carried out. The integer optimisation was shown to perform better on unseen events than the decimal version with considerably reduced computational run time. The optimised FL MFs result in an average 25% decrease in the flood volume compared to those selected by experts for unseen rainfall events. This distributed, autonomous control using GA optimisation offers significant benefits over traditional RTC approaches for flood risk management.
机译:城市洪水损害物业,导致经济损失,可以严重威胁公共卫生。已经开发出一种创新,模糊逻辑(FL),用于减轻利用城市排水网络现有备件的危险的局部自主实时控制(RTC)方法。基于域专家知识导出使用基于水位的数据的控制算法的默认参数,并通过以编程方式将控制算法与流体动力下水道网络模型连接来进行优化。本文介绍了开发控制算法的FL隶属函数(MFS)的新型遗传算法(GA)优化。为了提供强大的培训和测试场景,在优化中使用了基于记录的降雨和包含多个事件的编译降雨时间序列。执行十进制和整数GA优化。显示整数优化在不相当减少的计算运行时间内比小数版本更好地执行了更好的未经小姐事件。与专家选择的降雨事件选择的人相比,优化的FL MFS平均降低了洪水量。这种分布式,使用GA优化的自主控制提供了对传统RTC洪水风险管理方法的显着优势。

著录项

  • 来源
    《Journal of Hydroinformatics》 |2020年第2期|281-295|共15页
  • 作者单位

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

    Environm Monitoring Solut Unit 7 President Bldg Savile St East Sheffield S4 7UQ S Yorkshire England;

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

    Univ Sheffield Pennine Water Grp Dept Civil & Struct Engn Sheffield S1 3JD S Yorkshire England;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    fuzzy logic; genetic algorithm; real-time control; sewer flooding; urban flood risk;

    机译:模糊逻辑;遗传算法;实时控制;下水道洪水;城市洪水风险;

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