Optics and Precision Engineering, Volume. 30, Issue 24, 3139(2022)
Stiffness prediction-neural network based error compensation for attitude adjustment platform
The impact of deformation error on the end positioning accuracy of high-precision attitude adjustment equipment cannot be ignored. To improve the accuracy of a 2RRPU/2RPU/U two-axis parallel attitude platform, an error compensation model is proposed based on a stiffness model to predict the error trend and a neural network algorithm to improve the prediction accuracy. The theoretical stiffness model is first established based on the full Jacobi and elastic deformation matrices of the attitude-adjusting platform. The validity of the prediction of the loaded deformation trend is verified by comparing it with the prediction by the Ansys data stiffness model. Then, a Simulink-Adams-Ansys-OPC-based simulation environment is built, and the platform full attitude simulation data is collected under random load. Next, the attitude and drive error trends are predicted based on the stiffness model and velocity Jacobi matrix, and the mapping from end error to drive compensation is realized based on the velocity Jacobi. The accuracy of the error prediction is further improved by using a neural network algorithm. The simulation results show that the attitude accuracy of the platform is improved by 9% after adopting the error compensation model, which verifies the effectiveness of the “stiffness prediction-neural network” model in the improvement of the platform attitude accuracy.
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Yi LIU, Xiaoteng MA, Zongqiang FENG, Jiantao YAO, Yongsheng ZHAO. Stiffness prediction-neural network based error compensation for attitude adjustment platform[J]. Optics and Precision Engineering, 2022, 30(24): 3139
Category: Micro/Nano Technology and Fine Mechanics
Received: Jun. 23, 2022
Accepted: --
Published Online: Feb. 15, 2023
The Author Email: YAO Jiantao (jtyao@ysu.edu.cn)