Design of Combinational Digital Circuits Optimized with Ising Model and PSO Algorithm

Ying Li, Penglei Zhao, Bingrui Guo, Chenhui Zhao, Xiaojie Liu, Shan He, Donghui Guo
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引用次数: 1

Abstract

Evolutionary circuit is an important part of electronic design automation. It is a kind of automatic circuit design system by intelligent algorithm, widely used in robot controller design, circuit design and other fields. Compared with other intelligent algorithms, Particle Swarm Optimization (PSO) has better performance in the process of circuit evolution, but it has the disadvantage of falling into local optimum easily during evolution, resulting in meaningless increase of computing resources. This paper proposes a hybrid algorithm based on Ising model and PSO algorithm for optimizing combinational logic circuits. The Ising model is a kind of stochastic process model describing the material phase transition and has the property that it can accept a worse solution than the current one with a certain probability, which can increase the diversity of particles and avoid particles trapped in local optima point during the evolutionary process. Experimental results show that the hybrid algorithm has better performance in terms of computational complexity and circuit area.
用Ising模型和粒子群算法优化组合数字电路的设计
进化电路是电子设计自动化的重要组成部分。它是一种通过智能算法实现的自动电路设计系统,广泛应用于机器人控制器设计、电路设计等领域。与其他智能算法相比,粒子群算法在电路进化过程中具有更好的性能,但其缺点是在进化过程中容易陷入局部最优,导致计算资源的无谓增加。提出了一种基于Ising模型和粒子群算法的组合逻辑电路优化混合算法。Ising模型是一种描述材料相变的随机过程模型,具有可以以一定概率接受比当前解差的解的特性,可以增加粒子的多样性,避免粒子在进化过程中被困在局部最优点。实验结果表明,该混合算法在计算复杂度和电路面积方面具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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