A perspective on the neuromorphic control of legged locomotion in past, present, and future insect-like robots

N. Szczecinski, C. Goldsmith, W. Nourse, R. Quinn
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引用次数: 3

Abstract

This article is a historical perspective on how the study of the neuromechanics of insects and other arthropods has inspired the construction, and especially the control, of hexapod robots. Many hexapod robots’ control systems share common features, including: 1. Direction of motor output of each joint (i.e. to flex or extend) in the leg is gated by an oscillatory or bistable gating mechanism; 2. The relative phasing between each joint is influenced by proprioceptive feedback from the periphery (e.g. joint angles, leg load) or central connections between joint controllers; and 3. Behavior can be directed (e.g. transition from walking along a straight path to walking along a curve) via low-dimensional, broadly-acting descending inputs to the network. These distributed control schemes are inspired by, and in some robots, closely mimic the organization of the nervous systems of insects, the natural hexapods, as well as crustaceans. Nearly a century of research has revealed organizational principles such as central pattern generators, the role of proprioceptive feedback in control, and command neurons. These concepts have inspired the control systems of hexapod robots in the past, in which these structures were applied to robot controllers with neuromorphic (i.e. distributed) organization, but not neuromorphic computational units (i.e. neurons) or computational hardware (i.e. hardware-accelerated neurons). Presently, several hexapod robots are controlled with neuromorphic computational units with or without neuromorphic organization, almost always without neuromorphic hardware. In the near future, we expect to see hexapod robots whose controllers include neuromorphic organization, computational units, and hardware. Such robots may exhibit the full mobility of their insect counterparts thanks to a ‘biology-first’ approach to controller design. This perspective article is not a comprehensive review of the neuroscientific literature but is meant to give those with engineering backgrounds a gentle introduction into the neuroscientific principles that underlie models and inspire neuromorphic robot controllers. A historical summary of hexapod robots whose control systems and behaviors use neuromorphic elements is provided. Robots whose controllers closely model animals and may be used to generate concrete hypotheses for future animal experiments are of particular interest to the authors. The authors hope that by highlighting the decades of experimental research that has led to today’s accepted organization principles of arthropod nervous systems, engineers may better understand these systems and more fully apply biological details in their robots. To assist the interested reader, deeper reviews of particular topics from biology are suggested throughout.
在过去、现在和未来的类昆虫机器人的腿运动的神经形态控制的观点
这篇文章是从历史的角度来研究昆虫和其他节肢动物的神经力学如何启发了六足机器人的构造,特别是控制。许多六足机器人的控制系统都有共同的特点,包括:1。腿部每个关节的电机输出方向(即弯曲或伸展)由振荡或双稳态门控机构进行门控;2. 每个关节之间的相对相位受到来自周围(例如关节角度,腿部负荷)或关节控制器之间的中心连接的本体感觉反馈的影响;和3。行为可以通过网络的低维、广泛作用的下行输入来指导(例如,从沿着直线行走到沿着曲线行走)。这些分布式控制方案的灵感来自于,并且在一些机器人中,密切模仿昆虫、天然六足动物以及甲壳类动物的神经系统组织。近一个世纪的研究揭示了组织原理,如中枢模式发生器、本体感觉反馈在控制中的作用和命令神经元。这些概念启发了过去六足机器人的控制系统,其中这些结构应用于具有神经形态(即分布式)组织的机器人控制器,但不是神经形态计算单元(即神经元)或计算硬件(即硬件加速神经元)。目前,有几种六足机器人是用神经形态计算单元控制的,有或没有神经形态组织,几乎都没有神经形态硬件。在不久的将来,我们期望看到六足机器人的控制器包括神经形态组织、计算单元和硬件。由于采用了“生物学优先”的控制器设计方法,这种机器人可能会表现出昆虫同类的完全机动性。这篇透视文章并不是对神经科学文献的全面回顾,而是为了给那些有工程背景的人一个关于神经科学原理的温和介绍,这些原理是模型和启发神经形态机器人控制器的基础。对六足机器人的控制系统和行为使用神经形态元素进行了历史总结。作者特别感兴趣的是,机器人的控制器与动物密切相关,可以用来为未来的动物实验产生具体的假设。作者希望通过强调几十年的实验研究,这些研究已经导致了今天公认的节肢动物神经系统的组织原理,工程师们可以更好地理解这些系统,并更充分地将生物细节应用于他们的机器人。为了帮助感兴趣的读者,建议对生物学的特定主题进行更深入的回顾。
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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5.90
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