Research on Decoupling Model of Six-Component Force Sensor Based on Artificial Neural Network and Polynomial Regression

Author:

Wang Shuyu1,Liu Hongyue1

Affiliation:

1. School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, China

Abstract

A two-stage decoupling model based on an artificial neural network with polynomial regression is proposed for the six-component force sensor load decoupling problem in the case of multidimensional mixed loading. The six-dimensional load categorization stage model constructed in the first stage combines 63 load category label sets with a deep BP neural network. The six-dimensional load regression stage model was constructed by combining polynomial regression with a BP neural network in the second stage. Meanwhile, the six-component force sensor with a fiber Bragg grating (FBG) sensor as the sensitive element was designed, and the elastomer simulation and calibration experimental dataset was established to realize the validation of the two-stage decoupling model. The results based on the simulation data show that the accuracy of the classification stage is 93.65%. The MAPE for the force channel in the regression stage is 6.29%, and 3.24% for the moment channel. The results based on experimental data show that the accuracy of the classification stage is 87.80%. The MAPE for the force channel in the regression phase is 5.63%, and 4.82% for the moment channel.

Funder

National Natural Science Foundation of China

Special support of China Postdoctoral Science Foundation

Class A support of China Postdoctoral Science Foundation

Hongyue Liu

Publisher

MDPI AG

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