Swarm-based optimizations in hexapod robot walking

I. Kecskés, E. Burkus, P. Odry
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引用次数: 7

Abstract

During previous research [1-7] and development several hexapod walking robots and its simulation model were built by the authors. The latest model called Szabad(ka)-II is a complex, servo motor driven, multiprocessor device. In parallel with the building of this hexapod robot, a simulation model was also built in order to help optimize the robot's structure, walking and driving [5]. The results of modeling and parameter optimizations can be used as a guideline during the design of a new and improved robot. The Particle Swarm Optimization (PSO) method was chosen because its simplicity and effectiveness [1, 2]. It has produced better and faster results compared to previously used Genetic Algorithm (GA) [3]. However, neither selected method is able to provide the global optimum in the case of one-time run. Using an optimization benchmark disclose the differences and help to get the best parameterized optimization method for a given problem.
六足机器人行走的群体优化
在以往的研究和开发过程中[1-7],作者建立了几种六足步行机器人及其仿真模型。最新型号称为Szabad(ka)-II是一种复杂的、伺服电机驱动的多处理器设备。在构建该六足机器人的同时,还建立了仿真模型,以优化机器人的结构、行走和驾驶[5]。建模和参数优化的结果可以作为一个新的和改进的机器人的设计指导。选择粒子群优化(Particle Swarm Optimization, PSO)方法是因为其简单有效[1,2]。与以前使用的遗传算法(Genetic Algorithm, GA)相比,它产生了更好更快的结果[3]。然而,所选择的两种方法都不能在一次运行的情况下提供全局最优。使用优化基准可以揭示其中的差异,并有助于获得针对给定问题的最佳参数化优化方法。
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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