PSO with Predatory Escaping Behavior and Its Application on Shortest Path Routing Problems

Jintao Yao, Bo-Seok Yang, Mingwu Zhang, Yuyan Kong
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引用次数: 5

Abstract

Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have been extended to solve various types of optimization problems. However, straightforward application of PSO suffers from premature convergence and lacks of intensification around the local best locations. In this paper, we propose a new particle swarm optimization strategy, namely, particle swarm optimization with predatory escaping behavior (PSO-PE), to solve shortest path routing problems (SPR). PSO-PE uses the predatory particles to enlarge the escaping particles' predation risk. After taking a tradeoff between predation risk and their energy, escaping particles would take different escaping behaviors. This disturbance makes particle swarm achieve social cognition symmetrically, keep the diversity, balance the exploration and exploitation, and avoid the premature convergence. Simulation experiments of solving SPR using PSO-PE have been carried out on the different network topologies consisting of 15-50 nodes. Our approach can find out the optimal path with high success rates. The performance of proposed PSO-PE-based searching method surpasses the straightforward application of PSO and genetic algorithm (GA) for this problem.
具有掠夺性逃逸行为的粒子群算法及其在最短路径路由问题中的应用
粒子群优化(PSO)算法已经被实践了十多年,并且已经扩展到解决各种类型的优化问题。然而,直接应用粒子群算法存在过早收敛和局部最佳位置附近缺乏强化的问题。本文提出了一种新的粒子群优化策略,即具有掠夺性逃逸行为的粒子群优化(PSO-PE)来解决最短路径路由问题。PSO-PE利用掠食性粒子增大了逃逸粒子的捕食风险。在捕食风险和能量之间进行权衡后,逃逸粒子会采取不同的逃逸行为。这种扰动使粒子群实现对称的社会认知,保持多样性,平衡探索和开发,避免过早收敛。利用PSO-PE在15-50个节点组成的不同网络拓扑上进行了求解SPR的仿真实验。该方法能够以较高的成功率找到最优路径。提出的基于PSO- pe的搜索方法的性能优于直接应用PSO和遗传算法(GA)来解决该问题。
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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