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Ant Colony Optimization for Water Distribution Network Design: A Comparative Study

机译:配水网络设计的蚁群优化:比较研究

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The optimal design of looped water distribution networks is a major environmental and economic problem with applications in urban, industrial and irrigation water supply. Traditionally, this complex -problem has been solved by applying single-objective constrained formulations, where the goal is to minimize the network investment cost subject to pressure constraints. In order to solve this highly complex optimization problem some authors have therefore proposed using heuristic techniques for their solution. Ant Colony Optimization (ACO) is a meta-heuristic that uses strategies inspired by real ants to solve optimization problems. This paper presents and evaluates the performance of a new ACO implementation specially designed to solve this problem, which results in two benchmark networks outperform those obtained by genetic algorithms and scatter search.
机译:循环水分配网络的优化设计是一个主要的环境和经济问题,在城市,工业和灌溉供水中都有应用。传统上,这种复杂问题是通过应用单目标约束公式来解决的,其目标是在压力约束下将网络投资成本降至最低。为了解决这个高度复杂的优化问题,因此,一些作者提出使用启发式技术作为其解决方案。蚁群优化(ACO)是一种元启发法,它使用受实际蚂蚁启发的策略来解决优化问题。本文介绍并评估了专门为解决该问题而设计的新ACO实现的性能,该结果导致两个基准网络的性能优于通过遗传算法和散点搜索获得的基准网络。

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