NP-MBO: A newton predictor-based momentum observer for interaction force estimation of legged robots

Zhengguo Zhu, Weikai Ding, Weiliang Zhu, Daoling Qin, Teng Chen, Xuewen Rong, Guoteng Zhang
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引用次数: 0

Abstract

Swift perception of interaction forces is a crucial skill required for legged robots to ensure safe human–robot interaction and dynamic contact management. Proprioceptive-based interactive force is widely applied due to its outstanding cross-platform versatility. In this paper, we present a novel interactive force observer, which possesses superior dynamic tracking performance. We propose a dynamic cutoff frequency configuration method to replace the conventional fixed cutoff frequency setting in the traditional momentum-based observer (MBO). This method achieves a balance between rapid tracking and noise suppression. Moreover, to mitigate the phase lag introduced by the low-pass filtering, we cascaded a Newton Predictor (NP) after MBO, which features simple computation and adaptability. The precision analysis of this method has been presented. We conducted extensive experiments on the point-foot biped robot BRAVER to validate the performance of the proposed algorithm in both simulation and physical prototype.

NP-MBO:基于牛顿预测器的动量观测器,用于估算腿部机器人的相互作用力
快速感知交互力是有腿机器人所需的一项关键技能,可确保安全的人机交互和动态接触管理。基于直觉的交互力因其出色的跨平台通用性而被广泛应用。在本文中,我们提出了一种新型交互力观测器,它具有卓越的动态跟踪性能。我们提出了一种动态截止频率配置方法,以取代传统的基于动量的观测器(MBO)中的固定截止频率设置。这种方法实现了快速跟踪和噪声抑制之间的平衡。此外,为了减轻低通滤波带来的相位滞后,我们在 MBO 之后级联了牛顿预测器(NP),其特点是计算简单、适应性强。我们对该方法进行了精度分析。我们在点足式双足机器人 BRAVER 上进行了大量实验,以验证所提算法在模拟和物理原型中的性能。
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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