The paper presents the design and analysis of a 5-DOF flexible continuum manipulator for endoscopic surgery. The manipulator faces control challenges due to hysteresis from cable-driven actuation, which is difficult to model analytically.
To address this, the authors propose a data-driven approach using deep learning. They collect a dataset of command and physical joint configurations using RGBD sensing and fiducial markers. Four deep learning models (FNN, LSTM, TCN, TCN-LSTM) with varying input sequence lengths are trained to estimate the hysteresis behavior.
The results show that the Temporal Convolutional Network (TCN) model with an input sequence length of 80 exhibits the best performance in predicting the hysteresis. The authors then design a hysteresis compensation algorithm utilizing the trained TCN models.
Validation through unseen trajectory tracking tests demonstrates that the proposed calibrated controller can significantly reduce the average position error by 61.39% (from 13.7mm to 5.29mm) and the orientation error by 64.04% (from 31.17° to 11.21°) compared to the uncalibrated controller. This suggests the effectiveness of the data-driven approach in enhancing the control precision of the flexible continuum manipulator, with potential to improve surgical performance in real-world scenarios.
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