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异步主从差分进化并行算法及其在多目标优化中的应用。

Asynchronous master-slave parallelization of differential evolution for multi-objective optimization.

机构信息

Department of Communication Systems, Jožef Stefan Institute, SI-1000, Ljubljana, Slovenia.

出版信息

Evol Comput. 2013 Summer;21(2):261-91. doi: 10.1162/EVCO_a_00076. Epub 2012 Jun 12.

Abstract

In this paper, we present AMS-DEMO, an asynchronous master-slave implementation of DEMO, an evolutionary algorithm for multi-objective optimization. AMS-DEMO was designed for solving time-intensive problems efficiently on both homogeneous and heterogeneous parallel computer architectures. The algorithm is used as a test case for the asynchronous master-slave parallelization of multi-objective optimization that has not yet been thoroughly investigated. Selection lag is identified as the key property of the parallelization method, which explains how its behavior depends on the type of computer architecture and the number of processors. It is arrived at analytically and from the empirical results. AMS-DEMO is tested on a benchmark problem and a time-intensive industrial optimization problem, on homogeneous and heterogeneous parallel setups, providing performance results for the algorithm and an insight into the parallelization method. A comparison is also performed between AMS-DEMO and generational master-slave DEMO to demonstrate how the asynchronous parallelization method enhances the algorithm and what benefits it brings compared to the synchronous method.

摘要

本文介绍了 AMS-DEMO,这是一种用于多目标优化的进化算法 DEMO 的异步主从式实现。AMS-DEMO 的设计目的是在同质和异构并行计算机架构上高效解决时间密集型问题。该算法被用作多目标优化异步主从式并行化的测试用例,这方面的研究还不够深入。选择滞后被确定为并行化方法的关键特性,它解释了其行为如何取决于计算机架构的类型和处理器的数量。这是通过分析和经验结果得出的。我们在基准问题和时间密集型工业优化问题上,在同质和异构并行设置上对 AMS-DEMO 进行了测试,为算法提供了性能结果,并深入了解了并行化方法。我们还对 AMS-DEMO 和生成式主从式 DEMO 进行了比较,以展示异步并行化方法如何增强算法,以及与同步方法相比,它带来了哪些好处。

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