Development and Calibration of Large Deformation-Compliant Six-Axis Force Sensor

Xiaoming Huang, Zhongjun Yin, Mingge Li, Quan Liu
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Abstract

Improving the measurement accuracy and minimising the coupling between directions are the keys to researching the compliant six-axis force sensors. The use of a six-axis force sensor to accurately monitor the ground reaction force (GRF) and centre of pressure (COP) during human motion is of great significance in the fields of biomechanics and pathological gait diagnosis. Although complete force information can be obtained using a commercial six-axis force sensor, its high stiffness affects the natural gait and easily leads to human fatigue. A compliant six-axis force sensor based on a flexible optical waveguide is proposed, in which the force and torque of six dimensions are detected by reasonably arranging six modular sensing units, and the mechanical decoupling of some dimensions is realised in theory. For the interdimensional coupling and error caused by machining process factors, as well as the nonlinear relationship between the input and output of the proposed compliant six-axis force sensor, a DE-RBF decoupling algorithm is proposed to decouple the calibration data. Compared with the least squares method (LSM) and the radial basis function (RBF) neural network decoupling algorithm, the obtained type-I errors were reduced by 87.7629%, 43.6265%, respectively, and type-II errors by 35.3312%, 56.9162%, respectively. The decoupling result's maximum type-I and type-II errors were reduced from 7.7125% and 2.7382% in LSM and 3.1029% and 2.8917% in RBF to 0.5916% and 0.9558%, respectively. The measurement accuracy of the compliant six-axis force sensor was significantly higher; however, the time effectiveness of the proposed DE-RBF decoupling algorithm was slightly lower than that of the RBF neural network by 2.47%. In conclusion, the decoupling accuracy and timeliness of the proposed DE-RBF decoupling algorithm can satisfy the requirements of compliant six-axis force sensors to monitor low-frequency biomechanical signals, such as human motion.
大变形兼容六轴力传感器的开发与校准
提高测量精度和最大限度地减少方向之间的耦合是研究顺应式六轴力传感器的关键。使用六轴力传感器精确监测人体运动过程中的地面反作用力(GRF)和压力中心(COP),在生物力学和病理步态诊断领域具有重要意义。虽然使用商用六轴力传感器可以获得完整的力信息,但其高硬度会影响自然步态,并容易导致人体疲劳。本文提出了一种基于柔性光波导的顺应式六轴力传感器,通过合理布置六个模块化传感单元来检测六个维度的力和力矩,并在理论上实现了部分维度的机械解耦。针对加工工艺因素引起的维间耦合和误差,以及所提出的顺应式六轴力传感器输入和输出之间的非线性关系,提出了一种 DE-RBF 解耦算法来对标定数据进行解耦。与最小二乘法(LSM)和径向基函数(RBF)神经网络解耦算法相比,得到的 I 类误差分别降低了 87.7629%和 43.6265%,II 类误差分别降低了 35.3312%和 56.9162%。解耦结果的最大 I 类和 II 类误差分别从 LSM 的 7.7125% 和 2.7382% 以及 RBF 的 3.1029% 和 2.8917% 降至 0.5916% 和 0.9558%。顺应式六轴力传感器的测量精度明显更高;然而,所提出的 DE-RBF 解耦算法的时间有效性比 RBF 神经网络略低 2.47%。总之,所提出的 DE-RBF 去耦算法的去耦精度和及时性可以满足顺应式六轴力传感器监测低频生物力学信号(如人体运动)的要求。
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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