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A Robust Estimation of Distribution Algorithm for Power Electronic Circuits Design

机译:电力电子电路设计中分布算法的鲁棒估计

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The automated synthesis and optimization of power electronic circuits (PECs) is a significant and challenging task in the field of power electronics. Traditional methods such as the gradient-based methods, the hill-climbing techniques and the genetic algorithms (GA), are either prone to local optima or not efficient enough to find highly accurate solutions for this problem. To better optimize the design of PECs, this paper presents an extended histogram-based estimation of distribution algorithm with an adaptive refinement process (EDA/a-r). In the EDA/a-r, the histogram-based estimation of distribution algorithm is used to roughly locate the global optimum, while the adaptive refinement process is used to improve the accuracy of solutions. The adaptive refinement process, with its search radius adjusted adaptively during the evolution, is executed to search the surrounding region of the best-so-far solution in every generation. To maintain the diversity, a historic learning strategy is used in constructing the probabilistic model and a mutation strategy is hybridized in the sampling operation. The proposed EDA/a-r has been successfully used to optimize the design of a buck regulator. Experimental results show that compared with the GA and the particle swarm optimization (PSO), the EDA/a-r can obtain much better mean solution quality and is less likely to be trapped into local optima.
机译:电力电子电路(PEC)的自动综合和优化是电力电子领域中一项重大而具有挑战性的任务。传统方法(例如基于梯度的方法,爬山技术和遗传算法(GA))倾向于局部最优,或者效率不足以找到针对此问题的高精度解决方案。为了更好地优化PEC的设计,本文提出了一种基于直方图的扩展分布估计算法,并带有自适应细化过程(EDA / a-r)。在EDA / a-r中,使用基于直方图的分布估计算法来粗略地确定全局最优值,而使用自适应细化过程来提高解的准确性。执行自适应细化过程,其搜索半径在进化过程中进行自适应调整,以在每一代中搜索最佳解的周围区域。为了保持多样性,在构建概率模型时使用了历史学习策略,并在采样操作中混合了变异策略。提议的EDA / a-r已成功用于优化降压稳压器的设计。实验结果表明,与GA和粒子群优化(PSO)相比,EDA / a-r可以获得更好的平均解质量,并且不太可能陷入局部最优。

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