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An Improved PID Controller for the Compliant Constant-Force Actuator Based on BP Neural Network and Smith Predictor

Guojin Pei, Ming Yu, Yaohui Xu, Cui Ma, Houhu Lai, Fokui Chen, Hui Lin

Year
2021
Citations
30
Access
Open access

Abstract

A compliant constant-force actuator based on the cylinder is an important tool for the contact operation of robots. Due to the nonlinearity and time delay of the pneumatic system, the traditional proportional–integral–derivative (PID) method for constant force control does not work so well. In this paper, an improved PID control method combining a backpropagation (BP) neural network and the Smith predictor is proposed. Through MATLAB simulation and experimental validation, the results show that the proposed method can shorten the maximum overshoot and the adjustment time compared with traditional the PID method.

Keywords

PID controllerControl theory (sociology)Overshoot (microwave communication)Artificial neural networkMATLABConstant (computer programming)BackpropagationActuatorNonlinear systemComputer science

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