4.1 Article

In-Situ Sensing and Dynamics Predictions for Electrothermally-Actuated Soft Robot Limbs

Journal

FRONTIERS IN ROBOTICS AND AI
Volume 9, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/frobt.2022.888261

Keywords

soft robot control; soft robot sensing; soft robot dynamics; soft robot modeling; machine learning; sensor design; shape memory alloy; artificial muscle

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This article presents a framework for detecting and modeling the actuator states of untethered soft robots. The framework includes compact and robust sensors and uses a neural network model to accurately predict the robot's motion.
Untethered soft robots that locomote using electrothermally-responsive materials like shape memory alloy (SMA) face challenging design constraints for sensing actuator states. At the same time, modeling of actuator behaviors faces steep challenges, even with available sensor data, due to complex electrical-thermal-mechanical interactions and hysteresis. This article proposes a framework for in-situ sensing and dynamics modeling of actuator states, particularly temperature of SMA wires, which is used to predict robot motions. A planar soft limb is developed, actuated by a pair of SMA coils, that includes compact and robust sensors for temperature and angular deflection. Data from these sensors are used to train a neural network-based on the long short-term memory (LSTM) architecture to model both unidirectional (single SMA) and bidirectional (both SMAs) motion. Predictions from the model demonstrate that data from the temperature sensor, combined with control inputs, allow for dynamics predictions over extraordinarily long open-loop timescales (10 min) with little drift. Prediction errors are on the order of the soft deflection sensor's accuracy. This architecture allows for compact designs of electrothermally-actuated soft robots that include sensing sufficient for motion predictions, helping to bring these robots into practical application.

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