基于不同代理模型优化方法的微刚毛机器人设计

Yifan Shi, Xiao Jing, Lushi Liu
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摘要

本文采用Kriging方法、贝叶斯方法和深度神经网络三种代理模型优化方法对微猪鬃机器人的运动速度进行优化。并以目前微机器人优化领域最流行的优化算法——遗传算法作为基准方法进行比较。在MATLAB中对四种方法的性能进行了测试,测试过程中使用了最先进的动态模型。然后对这些方法得到的机器人设计进行了3D打印,并对这些机器人设计的实际性能进行了测试。这是首次将代理模型优化方法应用于微型机器人设计领域。MATLAB优化结果和机器人实验结果表明,采用合适的代理模型优化方法,特别是贝叶斯方法,可以比采用遗传算法的时间快5-6倍,获得满意的机器人设计结果。本文为微机器人优化领域提供了有效的指导。
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Micro-Bristle Robot Design Via Different Surrogate Model Optimization Methods
In this paper, we optimize the locomotion speed of a micro-bristle robot using three surrogate model optimization methods: Kriging method, Bayesian method, and Deep Neural Network. Moreover, the current most popular optimization algorithm in the micro-robot optimization field, the genetic algorithm, is used as the baseline method for comparison. The four methods’ performances are tested in MATLAB, during which a state-of-art dynamic model is used. Then we 3D print the robot designs obtained from these methods and test these robot designs’ real performances. This is the first time that surrogate model optimization methods are applied on micro-robot design field. The MATLAB optimization results and the robot experimental results show that applying proper surrogate model optimization methods, especially Bayesian method will be able to obtain a satisfying robot design 5-6 times faster than the time spent by genetic algorithm. The paper provides an efficient guidance on micro-robot optimization field.
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