基于高斯核的柔性关节预设性能合规控制

Compliant Control of Flexible Joint Toward Prescribed Performance With Gaussian Kernels

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2025
被引 1
ABS 3

中文导读

针对人机交互中柔性关节的阻抗控制精度与冲击稳定性矛盾,提出引入高斯核的预设性能函数,并设计双自适应神经网络反步控制,实验验证了方法有效性。

Abstract

It remains a challenge to improve the accuracy of impedance rendering while ensuring stability under strong impacts during human-robot interaction. In this work, we aim to render the desired impedance for the flexible joint under an admittance control scheme with prescribed performance function (PPF). Specially, Gaussian kernels are introduced as the slack terms for PPF, so that the control stability can be maintained in the presence of abrupt external torques. Meanwhile, a narrower error envelope is yielded when such torques are absent, which also improves the fidelity of the desired impedance model. To achieve the prescribed tracking performance of the inner position loop, a two-stage backstepping control is proposed by defining two first-order composite error surfaces bridged by a second-order dynamic surface. This promulgates the minimum number of backstepping stages under the available state feedback, thus avoiding “explosion of terms.” In addition, dual-adaptive neural networks are incorporated into the backstepping control to compensate for the matched and unmatched disturbances. Real-time experiments are conducted to validate the appeal of the proposed method.

机器人控制人机交互阻抗控制自适应控制