MBEANN for Robotic Swarm Controller Design and the Behavior Analysis for Cooperative Transport

Y. Katada, Takumi Hirokawa, Motoaki Hiraga, K. Ohkura
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Abstract

This study focuses on mutation-based evolving artificial neural network (MBEANN), a topology and weight evolving artificial neural network (TWEANN) algorithm. TWEANN optimizes both the connection weights and neural network structure. Primarily, MBEANN uses only mutations to evolve artificial neural networks. An individual in an MBEANN is designed to have a set of sub-networks called operons. Operons are expected to have functions during evolution because they do not recombine with other operons. In this study, we applied MBEANN to design a controller for a robotic swarm on cooperative transport, where the following canonical evolving artificial neural network (EANN) methods do not work well. For comparison with MBEANN, we used an EANN with a fixed network structure and neuroevolution of augmenting topologies (NEAT), which is a widely used TWEANN algorithm. We confirmed that the robot controller that evolved with the MBEANN outperformed the structure-fixed EANN and NEAT controllers. In addition, we investigated the behavior of the swarm robot obtained using the proposed method, in which we deactivated each operon to extract its function. The results show that operons could have their functions, and that several operons could strengthen one another’s functions.
基于MBEANN的机器人群控制器设计与协同运输行为分析
本文主要研究基于突变的进化人工神经网络(MBEANN),即一种拓扑和权重进化人工神经网络(TWEANN)算法。TWEANN对连接权值和神经网络结构进行了优化。首先,MBEANN只使用突变来进化人工神经网络。MBEANN中的个体被设计为具有一组称为操作子的子网络。由于操纵子不与其他操纵子重组,因此在进化过程中,操纵子被认为具有一定的功能。在本研究中,我们应用MBEANN设计了一个机器人群体的协同运输控制器,其中下列经典进化人工神经网络(EANN)方法不能很好地工作。为了与MBEANN进行比较,我们使用了一种具有固定网络结构和增强拓扑神经进化(NEAT)的EANN,这是一种广泛使用的TWEANN算法。我们证实了采用MBEANN进化的机器人控制器优于固定结构的EANN和NEAT控制器。此外,我们研究了使用该方法获得的群体机器人的行为,其中我们停用每个操纵子以提取其功能。结果表明,操纵子各有其功能,且多个操纵子之间可以相互增强。
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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