Performance Comparisons of Evolutionary Algorithms for Walking Gait Optimization

C. Cai, Hong Jiang
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引用次数: 10

Abstract

To investigate the performance of different evolutionary algorithms on walking gait optimization, we designed an optimization framework. There are four bio-inspired methods in the framework, which include Genetic Algorithm (GA), Covariance Matrix Adaption Evolution Strategy (CMA-ES), Particle Swarm Optimization (PSO) and Differential Evolution (DE). In the learning process of each method, we employed three learning tasks to optimize the walking gait, which are aiming at generating a gait with higher speed, stability and flexibility respectively. We analyzed the gaits optimized by each four methods separately. According to the comparison of these results, it indicates that DE performs better than the other three algorithms. The comparison also shows that the gaits learned by CMA-ES and PSO are acceptable, but there exist drawbacks compared to DE. And among these methods, GA presents weak performance on gait optimization.
步行步态优化的进化算法性能比较
为了研究不同进化算法在步态优化中的性能,设计了一个优化框架。该框架包括遗传算法(GA)、协方差矩阵自适应进化策略(CMA-ES)、粒子群优化(PSO)和差分进化(DE)四种生物启发方法。在每种方法的学习过程中,我们采用了三个学习任务来优化步行步态,这三个任务的目标分别是生成更高的速度、稳定性和灵活性的步态。分别对四种方法优化后的步态进行了分析。通过对这些结果的比较,可以看出DE算法的性能优于其他三种算法。对比还表明,CMA-ES和PSO学习的步态是可以接受的,但与DE相比存在不足。其中,遗传算法在步态优化方面表现较弱。
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