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A novel joint external torque estimate model of the lightweight robot’s joint based on a BP neural network

Tao Zhang, Hao Li, Yongping Shi, Lei Wang, Xuanchen Zhang, Jun Zhang, Huapeng Wu

Year
2025
Citations
3

Abstract

Abstract The safety of human-collaborative operations with robots depends on monitoring the external torque of the robot, in which there are toque sensor-based and torque sensor-free methods. Economically, the classic method for estimating joint external torque is the first-order momentum observer (MOB) based on a physic model without torque sensors. However, uncertainties in the dynamic model, which encompasses parameters identification error and joint friction, affect the torque estimation accuracy. To address this issue, this paper proposes using the backpropagation neural network (BPNN) method to estimate joint external torque without the delicate physical model by utilizing the powerful machine learning ability to handle the uncertainties of the MOB method and improve the accuracy of torque estimation. Using data obtained from the torque sensor to train the BPNN to build up a digital torque model, the trained BPNN can perceive force in practical applications without relying on the torque sensor. In the end, by contrast to the classic first-order MOB, the result demonstrates that BPNN achieves higher estimation accuracy compared to the MOB.

Keywords

Joint (building)Artificial neural networkTorqueComputer scienceRobotArtificial intelligenceControl theory (sociology)EngineeringControl (management)Physics

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