For legged robots to operate in complex terrains, they must be robust to the disturbances and uncertainties they encounter. This paper contributes to enhancing robustness through the design of fall detection/prediction algorithms that will provide sufficient lead time for corrective motions to be taken. Falls can be caused by abrupt (fast-acting), incipient (slow-acting), or intermittent (non-continuous) faults. Early fall detection is a challenging task due to the masking effects of controllers (through their disturbance attenuation actions), the inverse relationship between lead time and false positive rates, and the temporal behavior of the faults/underlying factors. In this paper, we propose a fall detection algorithm that is capable of detecting both incipient and abrupt faults while maximizing lead time and meeting desired thresholds on the false positive and negative rates.
翻译:为了使两足机器人能够在复杂的地形中运作,它们必须具备抵御干扰和不确定性的能力。本文通过设计降落检测/预测算法来提高其稳健性,从而为纠正动作提供足够的提前时间。降落可以由突然(快速作用)、潜在(缓慢作用)或间歇性(非连续性)故障引起。由于控制器通过干扰衰减措施存在掩盖效应、提前时间和误报率之间存在负相关关系以及故障/潜在因素的时间行为,因此早期降落检测是一个具有挑战性的任务。在本文中,我们提出了一种降落检测算法,既能够检测出潜在故障又能够检测出突发故障,同时最大化提前时间并满足误报率和误检率要求的阈值。