Physical Reservoir Computing in Hook-Shaped Rover Wheel Spokes for Real-Time Terrain Identification
Physical Reservoir Computing in Hook-Shaped Rover Wheel Spokes for Real-Time Terrain Identification
Effective terrain detection in unknown environments is crucial for safe and efficient robotic navigation. Traditional methods often rely on computationally intensive data processing, requiring extensive onboard computational capacity and limiting real-time performance for rovers. This study presents a novel approach that combines physical reservoir computing with piezoelectric sensors embedded in rover wheel spokes for real-time terrain identification. By leveraging wheel dynamics, terrain-induced vibrations are transformed into high-dimensional features for machine learning-based classification. Experimental results show that strategically placing three sensors on the wheel spokes achieves 90$\%$ classification accuracy, which demonstrates the accuracy and feasibility of the proposed method. The experiment results also showed that the system can effectively distinguish known terrains and identify unknown terrains by analyzing their similarity to learned categories. This method provides a robust, low-power framework for real-time terrain classification and roughness estimation in unstructured environments, enhancing rover autonomy and adaptability.
Xiao Jin、Zihan Wang、Zhenhua Yu、Changrak Choi、Kalind Carpenter、Thrishantha Nanayakkara
自动化技术、自动化技术设备
Xiao Jin,Zihan Wang,Zhenhua Yu,Changrak Choi,Kalind Carpenter,Thrishantha Nanayakkara.Physical Reservoir Computing in Hook-Shaped Rover Wheel Spokes for Real-Time Terrain Identification[EB/OL].(2025-04-17)[2025-05-08].https://arxiv.org/abs/2504.13348.点此复制
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