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.

Abstract

Operations in hazardous environments put humans, animals, and machines at high risk for physically damaging consequences. In contrast to humans and animals, quadruped robots cannot naturally identify and adjust their locomotion to a severely debilitated limb. The ability to detect limb damage and adjust movement to a new physical morphology is the difference between survival and death for humans and animals. The same can be said for quadruped robots autonomously carrying out remote assignments in dynamic, complex settings. This work presents the development and implementation of an off-line learning-based method to detect single limb faults from proprioceptive sensor data in a quadrupedal robot. The aim of the fault detection technique is to provide the correct output for the controller to select the appropriate tripedal gait to use given the robot's current physical morphology.