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Model Learning With Backlash Compensation for a Tendon-Driven Surgical Robot

Francesco Cursi, Weibang Bai, Eric M. Yeatman, Petar Kormushev

Year
2022
Citations
20
Access
Open access

Abstract

Robots for minimally invasive surgery are becoming more and more complex, due to miniaturization and flexibility requirements. The vast majority of surgical robots are tendon-driven and this, along with the complex design, causes high nonlinearities in the system which are difficult to model analytically. In this work we analyse how incorporating a backlash model and compensation can improve model learning and control. We combine a backlash compensation technique and a Feedforward Artificial Neural Network (ANN) with differential relationships to learn the kinematics at position and velocity level of highly articulated tendon-driven robots. Experimental results show that the proposed backlash compensation is effective in reducing nonlinearities in the system, that compensating for backlash improves model learning and control, and that our proposed ANN outperforms traditional ANN in terms of path tracking accuracy.

Keywords

BacklashCompensation (psychology)Flexibility (engineering)Control theory (sociology)Feed forwardRobotKinematicsControl engineeringArtificial neural networkComputer science

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