神经形态工程学
反向动力学
PID控制器
计算机科学
运动学
机器人学
人工智能
控制工程
执行机构
反向
控制理论(社会学)
机械臂
稳健性(进化)
机器人
人工神经网络
控制(管理)
工程类
数学
物理
基因
几何学
经典力学
生物化学
化学
温度控制
作者
Yuval Zaidel,Albert Shalumov,Alex Volinski,Lazar Supic,Elishai Ezra Tsur
标识
DOI:10.3389/fnbot.2021.631159
摘要
Neuromorphic implementation of robotic control has been shown to outperform conventional control paradigms in terms of robustness to perturbations and adaptation to varying conditions. Two main ingredients of robotics are inverse kinematic and Proportional–Integral–Derivative (PID) control. Inverse kinematics is used to compute an appropriate state in a robot's configuration space, given a target position in task space. PID control applies responsive correction signals to a robot's actuators, allowing it to reach its target accurately. The Neural Engineering Framework (NEF) offers a theoretical framework for a neuromorphic encoding of mathematical constructs with spiking neurons for the implementation of functional large-scale neural networks. In this work, we developed NEF-based neuromorphic algorithms for inverse kinematics and PID control, which we used to manipulate 6 degrees of freedom robotic arm. We used online learning for inverse kinematics and signal integration and differentiation for PID, offering high performing and energy-efficient neuromorphic control. Algorithms were evaluated in simulation as well as on Intel's Loihi neuromorphic hardware.
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