Lihang Feng,Lixin Jia,Dong Wang,Hao Wang,Sui Wang,Pengwen Xiong,Aiguo Song
出处
期刊:IEEE Sensors Journal [Institute of Electrical and Electronics Engineers] 日期:2024-02-14卷期号:24 (7): 9514-9522被引量:1
标识
DOI:10.1109/jsen.2024.3361457
摘要
Precise decoupling and calibration of multiaxis force sensor (MFS) is crucial in engineering applications. This work presents a novel nonlinear decoupling and calibration approach to meet the physical coupling characteristics of the structural strain-deformation transducers. It deals with the most force–voltage responses by the linear prime modeling and the gross error deviation by the nonlinear error modeling. Such a prime-error framework is naturally derived from the conventional least-square (LS) decoupling model with the delicate nonlinear error modeling by the multivariate Bernstein polynomials. The two- and three-axis force sensors are tested and compared with the proposed Bernstein-based prime-error model (BPEM), the LS decoupling model (LSM), and error-based neural network (eNN) learning model, extreme learning machine (ELM), as well as the error-based support vector machine (e-SVM), the interpretable nonlinear decoupling model (IND). Results demonstrate that the proposed BPEM provides an accurate, practical, and effective scheme for modeling and calibrating MFSs.