Spring-IMU Fusion-Based Proprioception for Feedback Control of Soft Manipulators

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    Abstract

    This article presents a novel framework to realize proprioception and closed-loop control for soft manipulators. Deformations with large elongation and large bending can be precisely predicted using geometry-based sensor signals obtained from the inductive springs and the inertial measurement units (IMUs) with the help of machine learning techniques. Multiple geometric signals are fused into robust pose estimations, and a data-efficient training process is achieved after applying the strategy of sim-to-real transfer. As a result, we can achieve proprioception that is robust to the variation of external loading and has an average error of 0.7% across the workspace on a pneumatic-driven soft manipulator. The realized proprioception on soft manipulator is then contributed to building a sensor-space-based algorithm for closed-loop control. A gradient-descent solver is developed to drive the end-effector to achieve the required poses by iteratively computing a sequence of reference sensor signals. A conventional controller is employed in the inner loop of our algorithm to update actuators (i.e., the pressures in chambers) for approaching a reference signal in the sensor-space. The systematic function of closed-loop control has been demonstrated in tasks like path following and pick-and-place under different external loads.
    Original languageEnglish
    Number of pages11
    JournalIEEE/ASME Transactions on Mechatronics
    Early online date13 Oct 2023
    DOIs
    Publication statusE-pub ahead of print - 13 Oct 2023

    Keywords

    • Bending
    • End effectors
    • Feedback control
    • Inductance
    • proprioception
    • Robot sensing systems
    • sensor fusion
    • soft robotics
    • Springs
    • Task analysis
    • Training

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