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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Decentralizing and coevolving differential evolution for large-scale global optimization problems
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Decentralizing and coevolving differential evolution for large-scale global optimization problems

机译:大规模全球优化问题的分散和共度差分演变

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This paper presents a novel decentralizing and coevolving differential evolution (DCDE) algorithm to address the issue of scaling up differential evolution (DE) algorithms to solve large-scale global optimization (LSGO) problems. As most evolutionary algorithms (EAs) display their weaknesses on LSGO problems due to the exponentially increasing complexity, the cooperative coevolution (CC) framework is often used to overcome such weaknesses. However, the cooperative but greedy coevolution of CC sometimes gives inferior performance, especially on non-separable and multimodal problems. In the proposed DCDE algorithm, to balance the search behavior between exploitation and exploration, the original population is decomposed into several subpopulations in ring connection, and the multi-context vectors according to this connection are introduced into the coevolution. Moreover, a novel "DE/current-to-SP-best-ring/1" mutation operation is also adopted in the DCDE. On a comprehensive set of 1000- dimensional benchmarks, the performance of DCDE compared favorably against several state-of-the-art LSGO algorithms. The experimental analysis results suggest that DCDE is a highly competitive optimization algorithm on LSGO problems, especially on some non-separable and multimodal problems.
机译:本文提出了一种新颖的分散和共同差分演进(DCDE)算法,用于解决缩放差分演进(DE)算法来解决大规模全球优化(LSGO)问题的问题。由于大多数进化算法(EAS)由于呈指数增加的复杂性而在LSGO问题上显示出对LSGO问题的弱点,并且通常用于克服这种弱点的合作协会(CC)框架。然而,CC的合作但贪婪的参数有时会产生较差的性能,特别是在不可分离和多模式问题上。在所提出的DCDE算法中,为了平衡开发和探索之间的搜索行为,原始群体被分解成环形连接中的几个子步骤,并且根据该连接的多上下文向量被引入参数中。此外,在DCDE中还采用了一种新颖的“de / current-to-sp-best-环/ 1”突变操作。在一整套1000维基准测试中,DCDE的性能有利地对抗几种最先进的LSGO算法。实验分析结果表明,DCDE是LSGO问题的高竞争优化算法,尤其是在一些不可分离和多模式问题上。

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