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Parametric study for an ant algorithm applied to water distribution system optimization

机译:蚂蚁算法在供水系统优化中的参数研究

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Much research has been carried out on the optimization of water distribution systems (WDSs). Within the last decade, the focus has shifted from the use of traditional optimization methods, such as linear and nonlinear programming, to the use of heuristics derived from nature (HDNs), namely, genetic algorithms, simulated annealing and more recently, ant colony optimization (ACO), an optimization algorithm based on the foraging behavior of ants. HDNs have been seen to perform better than more traditional optimization methods and amongst the HDNs applied to WDS optimization, a recent study found ACO to outperform other HDNs for two well-known case studies. One of the major problems that exists with the use of HDNs, particularly ACO, is that their searching behavior and, hence, performance, is governed by a set of user-selected parameters. Consequently, a large calibration phase is required for successful application to new problems. The aim of this paper is to provide a deeper understanding of ACO parameters and to develop parametric guidelines for the application of ACO to WDS optimization. For the adopted ACO algorithm, called AS/sub i-best/ (as it uses an iteration-best pheromone updating scheme), seven parameters are used: two decision policy control parameters /spl alpha/ and /spl beta/, initial pheromone value /spl tau//sub 0/, pheromone persistence factor /spl rho/, number of ants m, pheromone addition factor Q, and the penalty factor (PEN). Deterministic and semi-deterministic expressions for Q and PEN are developed. For the remaining parameters, a parametric study is performed, from which guidelines for appropriate parameter settings are developed. Based on the use of these heuristics, the performance of AS/sub i-best/ was assessed for two case studies from the literature (the New York Tunnels Problem, and the Hanoi Problem) and an additional larger case study (the Doubled New York Tunnels Problem). The results show that AS/sub i-best/ achieves the best performance presented in the literature, in terms of efficiency and solution quality, for the New York Tunnels Problem. Although AS/sub i-best/ does not perform as well as other algorithms from the literature for the Hanoi Problem (a notably difficult problem), it successfully finds the known least cost -solution for the larger Doubled New York Tunnels Problem.
机译:关于水分配系统(WDS)的优化已经进行了很多研究。在过去的十年中,重点已从使用传统的优化方法(例如线性和非线性编程)转移到使用自然界的启发式方法(HDN),即遗传算法,模拟退火以及最近的蚁群优化(ACO),一种基于蚂蚁觅食行为的优化算法。人们已经发现HDN的性能要优于传统的优化方法,并且在应用于WDS优化的HDN中,最近的一项研究发现,在两个著名的案例研究中,ACO的性能要优于其他HDN。使用HDN(尤其是ACO)存在的主要问题之一是,其搜索行为以及因此的性能受一组用户选择的参数支配。因此,成功应用新问题需要一个较大的校准阶段。本文的目的是提供对ACO参数的更深入了解,并开发出将ACO应用到WDS优化中的参数准则。对于被采用的称为AS / sub i-best /的ACO算法(因为它使用了迭代最佳信息素更新方案),使用了七个参数:两个决策策略控制参数/ spl alpha /和/ spl beta /,初始信息素值/ spl tau // sub 0 /,信息素持久因子/ spl rho /,蚂蚁数m,信息素加成因子Q和罚分因子(PEN)。开发了Q和PEN的确定性和半确定性表达式。对于其余参数,将进行参数研究,并据此制定适当参数设置的准则。基于这些启发式方法,针对文献中的两个案例研究(纽约隧道问题和河内问题)和另一个较大的案例研究(Doubleed New York)评估了AS / sub i-best /的性能。隧道问题)。结果表明,就效率和解决方案质量而言,AS / sub i-best /达到了纽约隧道问题的最佳性能。尽管AS / sub i-best /的性能不及文献中针对河内问题(一个非常困难的问题)的其他算法,但它成功地找到了较大的Doubleed New York隧道问题的已知最低成本解决方案。

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