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首页> 外文期刊>Journal of Water Resources Planning and Management >Use of Domain Knowledge to Increase the Convergence Rate of Evolutionary Algorithms for Optimizing the Cost and Resilience of Water Distribution Systems
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Use of Domain Knowledge to Increase the Convergence Rate of Evolutionary Algorithms for Optimizing the Cost and Resilience of Water Distribution Systems

机译:利用领域知识提高进化算法的收敛速度,以优化配水系统的成本和弹性

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摘要

Evolutionary algorithms (EAs) have been used extensively for the optimization of water distribution systems (WDSs) over the last two decades. However, computational efficiency can be a problem, especially when EAs are applied to complex problems that have multiple competing objectives. In order to address this issue, there has been a move toward developing EAs that identify near-optimal solutions within acceptable computational budgets, rather than necessarily identifying globally optimal solutions. This paper contributes to this work by developing and testing a method for identifying high-quality initial populations for multiobjective EAs (MOEAs) for WDS design problems aimed at minimizing cost and maximizing network resilience. This is achieved by considering the relationship between pipe size and distance to the source(s) of water, as well as the relationship between flow velocities and network resilience. The benefit of using the proposed approach compared with randomly generating initial populations in relation to finding near-optimal solutions more efficiently is tested on five WDS optimization case studies of varying complexity with two different MOEAs. The results indicate that there are considerable benefits in using the proposed initialization method in terms of being able to identify near-optimal solutions more quickly. These benefits are independent of MOEA type and are more pronounced for larger problems and smaller computational budgets.
机译:在过去的二十年中,进化算法(EA)已广泛用于优化供水系统(WDS)。但是,计算效率可能是个问题,尤其是当EA用于具有多个竞争目标的复杂问题时。为了解决此问题,已经朝着开发EA的方向发展,这些EA在可接受的计算预算内确定了近乎最佳的解决方案,而不是必须确定全局最优的解决方案。本文通过开发和测试一种方法来为WDS设计问题识别多目标EA(MOEA)的高质量初始种群,从而为该工作做出贡献,该方法旨在最小化成本并最大化网络弹性。这是通过考虑管道尺寸和到水源的距离之间的关系,以及流速和网络弹性之间的关系来实现的。在五个复杂度不同的WDS优化案例研究(使用两个不同的MOEA)上,测试了与随机生成初始种群相比,与更有效地找到近似最优解相比,使用提议的方法的好处。结果表明,在使用建议的初始化方法方面,可以更快地识别出接近最优的解决方案具有很大的优势。这些好处与MOEA类型无关,并且对于较大的问题和较小的计算预算尤其明显。

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