Learning-Based Fault Detection for Legged Robots in Remote Dynamic Environments
arXiv cs.RO / 4/7/2026
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Key Points
- The paper proposes an offline, learning-based method to detect single-limb faults in quadruped robots using only proprioceptive sensor data.
- The detected fault information is intended to let the robot switch to a correct tripedal gait that matches its altered physical morphology.
- The approach targets remote, dynamic, and complex environments where limb damage would otherwise prevent safe autonomous locomotion.
- The work frames fault detection as a key capability for enabling quadruped robots to continue operating after severe unilateral limb impairment, improving survival-like robustness for autonomy.
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