Optimal design of sewer network by tabu search and simulated annealing

Shung-Fu Yeh, Y-J. Chang, M. Lin
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引用次数: 6

Abstract

Optimal sewer network designs are NP-hard and highly complicated nonlinear problems. Conventional optimization techniques often easily get bogged down in local optima and cannot successfully address such problems. In the past decades, heuristic algorithms with robust and efficient global-search capabilities have helped to solve continuous and discrete optimization problems and have demonstrated considerable promise. This study applied tabu search (TS) and simulated annealing (SA) to the optimization of sewer-network designs. As a case study, it applied to solve a benchmark sewer network optimization problem reported in the literature. The optimal configuration of TS and SA parameters were determined by systematically evaluating the relative computational performance of TS and SA. Characteristic analysis was undertaken and solution qualities from different algorithms were also compared. The results show that SA is able to obtain optimal sewer network designs better than those methods previously reported in the literature.
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基于禁忌搜索和模拟退火的污水管网优化设计
污水管网优化设计是np困难的、高度复杂的非线性问题。传统的优化技术往往容易陷入局部最优,不能成功地解决这类问题。在过去的几十年里,具有鲁棒和高效的全局搜索能力的启发式算法已经帮助解决了连续和离散优化问题,并显示出相当大的前景。本文将禁忌搜索(TS)和模拟退火(SA)方法应用于污水管网优化设计。作为案例研究,将其应用于解决文献中报道的一个基准管网优化问题。通过系统评价TS和SA的相对计算性能,确定了TS和SA参数的最优配置。进行了特征分析,并比较了不同算法的求解质量。结果表明,与先前文献报道的方法相比,SA能够更好地获得最优下水道网络设计。
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