Hardware Software Partitioning using Particle Swarm Optimization Technique

Mohamed B. Abdelhalim, A. E. Salama, S.E.-D. Habib
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引用次数: 2

Abstract

In this paper the authors investigate the application of the particle swarm optimization (PSO) technique for solving the hardware/software partitioning problem. The PSO is attractive for the hardware/software partitioning problem as it offers reasonable coverage of the design space together with O(n) main loop's execution time, where n is the number of proposed solutions that will evolve to provide the final solution. The authors carried out several tests on a hypothetical, relatively-large hardware/software partitioning problem using the PSO algorithm as well as the genetic algorithm (GA), which is another evolutionary technique. The authors found that PSO outperforms GA in the cost function and the execution time. For the case of unconstrained design problem, the authors tested several hybrid combinations of PSO and GA algorithm; including PSO then GA, GA then PSO, GA followed by GA, and finally PSO followed by PSO. We found that a PSO followed by GA algorithm gives small or no improvement at all, while a GA then PSO algorithm gives the same results as the PSO alone. The PSO algorithm followed by another PSO round gave the best result as it allows another round of domain exploration. The second PSO round assign new randomized velocities to the particles, while keeping best particle positions obtained in the first round. The paper proposes to name this successive PSO algorithm as the re-excited PSO algorithm
基于粒子群优化技术的硬件软件划分
本文研究了粒子群优化(PSO)技术在硬件/软件划分问题中的应用。PSO对于硬件/软件分区问题很有吸引力,因为它提供了合理的设计空间覆盖以及O(n)主循环的执行时间,其中n是将演变为提供最终解决方案的建议解决方案的数量。作者使用PSO算法和另一种进化技术遗传算法(GA)对一个假设的、相对较大的硬件/软件划分问题进行了几次测试。结果表明,粒子群算法在成本函数和执行时间上优于遗传算法。针对无约束设计问题,作者测试了几种粒子群算法和遗传算法的混合组合;包括PSO→GA、GA→PSO、GA→GA、最后PSO→PSO。我们发现,粒子群算法和遗传算法的改进很小或根本没有改进,而遗传算法和粒子群算法的改进结果与单独的粒子群算法相同。由于粒子群算法允许再进行一轮域探索,因此得到了最好的结果。第二轮粒子群算法为粒子分配新的随机速度,同时保持第一轮中获得的最佳粒子位置。本文提出将这种逐次PSO算法命名为重激励PSO算法
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