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Optimal design of multi-storage network for combined sewer overflow management using a diversity-guided, cyclic-networking particle swarm optimizer - A case study in the Gunja subcatchment area, Korea

机译:使用多样性导向的循环网络粒子群优化器对污水管道溢流进行综合管理的多存储网络的优化设计-以韩国Gunja汇水区为例

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Multiple small-scale, distributed storage facilities have recently received much attention owing to their effectiveness for combined sewer overflow (CSO) mitigation. In this line of research, designing the optimal configuration of storage tanks in a sewer network is very challenging, and thus relatively few studies have been made to this day. To solve such a large-scale complex multimodal optimal design problem, a meta-heuristic particle swarm optimization-based design methodology of complex sewer networks for CSO management is developed. This search engine includes two mechanisms: a diversity-guided three-phase velocity update law and restricted social best searching based on the cyclic network structure. It allows regions of the design space to be explored efficiently by driving each particle to share information in switching the velocity update mechanism only with a set of neighboring particles via a fixed near-neighbor interaction structure. Therefore, the movement of a particle is no longer driven by the global best position of the entire swarm, which enhances the diversification attitude of the scheme. Its implementability under an actual environment is demonstrated by applying it to a combined sewer network case study of a complex large-scale multi-storage network in the Gunja subcatchment area located in Seoul, Republic of Korea. The simulation results indicate that the developed particle swarm optimization-based design methodology exhibits not only superior reliability but also high practicality, simplicity, and implementability for optimal planning of real-life CSO storage facilities. (C) 2015 Elsevier Ltd. All rights reserved.
机译:多个小规模的分布式存储设施最近因其减轻下水道溢流(CSO)的有效性而受到广泛关注。在这方面的研究中,设计下水道网络中储罐的最佳配置是非常具有挑战性的,因此,迄今为止,进行的研究相对较少。为解决此类大规模复杂的多模式优化设计问题,开发了一种基于元启发式粒子群优化的复杂下水道网络设计方法,用于CSO管理。该搜索引擎包括两种机制:分集制导的三相速度更新定律和基于循环网络结构的受限社会最佳搜索。通过驱动每个粒子通过固定的近邻交互结构仅与一组相邻粒子切换速度更新机制来共享信息时,它可以有效地探索设计空间的区域。因此,粒子的运动不再受整个群体的全局最佳位置驱动,这增强了该方案的多样化态度。通过将其应用于大韩民国首尔的Gunja子汇水区的复杂大型多存储网络的组合下水道网络案例研究,证明了其在实际环境中的可实施性。仿真结果表明,所开发的基于粒子群优化的设计方法不仅具有卓越的可靠性,而且还具有针对现实生活中的CSO存储设施进行最佳规划的高度实用性,简便性和可实施性。 (C)2015 Elsevier Ltd.保留所有权利。

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