Biomorphic circuits and systems: Control of robotic and prosthetic limbs

F. Tenore, R. Etienne-Cummings
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引用次数: 4

Abstract

Rhythmic motions of lower and upper limb prostheses for patients suffering from spinal cord injury (SCI) and amputees can be controlled and modulated using silicon neurons, designed in very large scale integration (VLSI) technology, that mimic pattern generation circuits found in the human spinal cord. Furthermore, synchronized patterns with arbitrarily phase delays, can easily be implemented using this technology. This allows locomotory gaits of any kind to be programmed in silico to control bipedal robotic locomotion. We argue that it is possible to use these circuits to control hand movements in prosthetic upper limbs using the same approach: the neuronspsila oscillatory behavior can trigger rhythmic movements that can be started or stopped at any phase, thus enabling the production of discrete movements in upper limb prosthesis. The bold endeavor of discovering an all-encompassing solution for control of upper and lower limbs will open up new perspectives in the fields of both robotics and prosthetics. In the process of doing so, we have shown how to successfully decode myoelectric signals from able bodied subjects and a transradial amputee, and how the technology developed is suitable for real-time applications, particularly multi-DoF upper limb prostheses. The systems developed in this work have been validated on different platforms dependent on the type of prosthesis required. For lower limb prostheses, a bipedal robot with servomotors actuating its hips and knees was used to prototype walking motions generated by silicon neurons. Upper limb (finger) control was achieved on a Virtual Integration Environment (VIE), developed by JHU's Applied Physics Laboratory (JHUAPL), characterized by real-time processing and visualization of any upper limb motion.
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仿生电路和系统:机器人和假肢的控制
用于脊髓损伤(SCI)患者和截肢者的下肢和上肢假体的节律运动可以使用硅神经元进行控制和调节,硅神经元采用非常大规模集成(VLSI)技术设计,模仿人类脊髓中的模式生成电路。此外,使用该技术可以很容易地实现具有任意相位延迟的同步模式。这使得任何种类的运动步态都可以用计算机编程来控制双足机器人的运动。我们认为,使用相同的方法,可以使用这些电路来控制假肢上肢的手部运动:神经元的振荡行为可以触发有节奏的运动,这些运动可以在任何阶段开始或停止,从而使上肢假肢产生离散运动。这项大胆的努力将为上肢和下肢的控制提供一个全面的解决方案,这将为机器人和假肢领域开辟新的前景。在此过程中,我们展示了如何成功解码来自健全人和经桡骨截肢者的肌电信号,以及该技术如何适用于实时应用,特别是多自由度上肢假肢。在这项工作中开发的系统已经根据所需的假体类型在不同的平台上进行了验证。对于下肢假体,采用伺服马达驱动其臀部和膝盖的两足机器人来模拟由硅神经元产生的行走运动。上肢(手指)控制在虚拟集成环境(VIE)上实现,该环境由JHU应用物理实验室(JHUAPL)开发,其特点是实时处理和可视化任何上肢运动。
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