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首页> 外文期刊>Water Resources Management >Multiobjective Genetic Optimization Approach to Identify Pipe Segment Replacements and Inline Storages to Reduce Sanitary Sewer Overflows
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Multiobjective Genetic Optimization Approach to Identify Pipe Segment Replacements and Inline Storages to Reduce Sanitary Sewer Overflows

机译:多目标遗传优化方法,确定管段更换和管线内存储,以减少下水道污水过多

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摘要

Sanitary sewer overflows (SSOs) is the unintentional discharge of untreated sewage from the sanitary sewer system and pose serious risk to public health and to the environment. Rehabilitation plans to reduce SSOs involve increasing conveyance capacity and shaving peak flow using detention storages. Identifying the best location for rehabilitating the sanitary sewer network is a difficult task because of the great length of sanitary sewer systems. This study utilized single and multiobjective genetic algorithms (GAs) to design rehabilitation strategies for SSOs reduction in an existing sewer network. The Nondominated Sorting Genetic Algorithm II was linked to the EPA-SWMM to generate non-dominated sets of solutions that characterizes the tradeoffs between reduction in number of SSOs and cost (Case I), and the tradeoff between of volume of SSOs and cost (Case II). The results show that, when maximizing the reduction of number SSOs, the algorithm target first regions of the network with higher density of SSOs. When maximizing the reduction of volume of SSOs, the solutions prioritize the nodes with the largest overflow volumes. The tested approach provides a range of options to decision makers that seek to reduce or eliminate SSOs in an existing sanitary sewer system.
机译:污水管道下水道(SSO)是从污水管道系统中无意排放的未经处理的污水,对公众健康和环境构成严重威胁。减少SSO的修复计划包括增加运输能力和使用拘留设施削减流量高峰。由于卫生下水道系统的长度很大,因此确定修复卫生下水道网络的最佳位置是一项艰巨的任务。这项研究利用单目标和多目标遗传算法(GA)来设计用于减少现有下水道网络中SSO的恢复策略。非支配排序遗传算法II与EPA-SWMM链接以生成非支配的解决方案集,这些解决方案的特征是SSO数量减少与成本之间的权衡(案例I)以及SSO数量与成本之间的权衡(案例2)。 II)。结果表明,当最大化减少SSO数量时,该算法以SSO密度较高的网络为目标区域。当最大程度地减少SSO的数量时,解决方案将优先处理具有最大溢出量的节点。经过测试的方法为寻求减少或消除现有下水道系统中的SSO的决策者提供了一系列选择。

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