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Incremental embodied chaotic exploration of self-organized motor behaviors with proprioceptor adaptation

机译:对本体感受器适应的自组织运动行为的增量体现的混乱探索

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摘要

This paper presents a general and fully dynamic embodied artificial neural system, which incrementally explores and learns motor behaviors through an integrated combination of chaotic search and reflex learning. The former uses adaptive bifurcation to exploit theudintrinsic chaotic dynamics arising from neuro-body-environment interactions, while the latter is based around proprioceptor adaptation. The overall iterative search process formed from this combination is shown to have a close relationship to evolutionary methods. Theudarchitecture developed here allows realtime goal-directed exploration and learning of the possible motor patterns (e.g., for locomotion) of embodied systems of arbitrary morphology. Examples of its successful application to a simple biomechanical model, a simulated swimming robot, and a simulated quadruped robot are given. The tractability of the biomechanical systems allows detailed analysis of the overall dynamics of the search process.udThis analysis sheds light on the strong parallels with evolutionary search.
机译:本文提出了一个通用的,完全动态的体现人工神经系统,该系统通过混沌搜索和反射学习的集成组合逐步探索和学习运动行为。前者使用自适应分叉来开发由神经-身体-环境相互作用引起的本征混沌动力学,而后者则基于本体感受器适应。由这种组合形成的整体迭代搜索过程显示出与进化方法密切相关。在此开发的体系结构允许实时目标定向的探索和学习任意形态的具体化系统的可能的运动模式(例如,运动)。给出了将其成功应用于简单生物力学模型,模拟游泳机器人和模拟四足机器人的示例。生物力学系统的可处理性允许对搜索过程的整体动力学进行详细分析。 ud此分析揭示了与进化搜索的强烈相似之处。

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  • 作者

    Shim Yoonsik; Husbands Phil;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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