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A Hybridized Vector Optimal Algorithm for Multi-Objective Optimal Designs of Electromagnetic Devices

机译:电磁设备多目标优化设计的混合矢量优化算法

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摘要

Multiple-objective designs exist in most real-world engineering problems in different disciplines. A multi-objective evolutionary algorithm will face a challenge to obtain a series of compromises of different objectives, called Pareto optimal solutions, and to distribute them uniformly. In this regard, it is essential to keep the balance of local and global search abilities of such algorithms. Quantum-behaved particle swarm optimization (QPSO) is a population-based swarm intelligence algorithm, and differential evolutionary (DE) is another simple population-based stochastic search one for global optimization with real-valued parameters. Although the two optimizers have been successfully employed to solve a wide range of design problems, they also suffer from premature convergence and insufficient diversity in the later searching stages. This is probably due to the insufficient dimensional searching strength, especially for problems with many decision parameters. In this paper, a new multi-objective non-dominated optimal methodology combining QPSO, DE, and tabu search algorithm (QPSO-DET) is proposed to guarantee the balance between the local and global searches. The performances of the proposed QPSO-DET are compared with those of other two widely recognized vector optimizers using different case studies.
机译:多学科设计存在于不同学科的大多数实际工程问题中。多目标进化算法将面临一个挑战,即获得一系列不同目标的折衷方案,称为帕累托最优解,并将它们统一分配。在这方面,必须保持这种算法的本地和全局搜索能力之间的平衡。量子行为粒子群优化(QPSO)是一种基于种群的种群智能算法,而差分进化(DE)是另一种基于种群的随机搜索,用于使用实值参数进行全局优化。尽管两个优化器已成功用于解决各种设计问题,但它们在后续搜索阶段还存在过早收敛和多样性不足的问题。这可能是由于尺寸搜索强度不足,尤其是对于具有许多决策参数的问题而言。本文提出了一种结合了QPSO,DE和禁忌搜索算法(QPSO-DET)的多目标非支配最优方法,以保证局部搜索和全局搜索之间的平衡。使用不同的案例研究,将拟议的QPSO-DET的性能与其他两个广为接受的矢量优化器的性能进行了比较。

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