Classification of Exogenous Anomalies and Self-Diagnosis in Autonomous Robots

G. Schleyer, A. Russell
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引用次数: 1

Abstract

This paper presents methods for the autonomous identification and classification of disturbances that have negative effects on a robot's performance. The proposed methods have been implemented in a walking hexapod robot provided with a number of sensors. Both, the robot's sensorial information and a quantitative measure of the robot's performance are obtained. This information is used for detecting, identifying and classifying obstructive conditions that have a strong impact on the robot's performance. Once the cause of a lack of progress in the robot's mission has been identified, suitable compensatory actions are found, executed and recorded. Then, when previously experienced detrimental situations arise, the associated compensatory measures are immediately taken without involving a searching process. As a result, the recovery from abnormal conditions is accelerated and the robot can promptly continue with its mission. In order to evaluate the performance of the proposed methods, a number of different sets of experiments addressing the robot's hardware faults, abnormal situations generated in the robot's environment and a combination of both, were conducted. In this process, two indicators were utilized: the number of attempts before a correct identification of the robot's hardware fault was achieved, and a discrepancy measure. Results showed a good identification rate inside the range of considered abnormal situations.
自主机器人外源异常分类与自我诊断
本文提出了对影响机器人性能的干扰进行自主识别和分类的方法。所提出的方法已在具有多个传感器的步行六足机器人中实现。得到了机器人的感官信息和机器人性能的定量度量。这些信息用于检测、识别和分类对机器人性能有强烈影响的阻碍条件。一旦确定了机器人任务中缺乏进展的原因,就会找到合适的补偿措施,执行并记录。然后,当先前经历的有害情况出现时,立即采取相关的补偿措施,而不涉及搜索过程。因此,从异常情况中恢复的速度加快,机器人可以迅速继续执行任务。为了评估所提出方法的性能,针对机器人硬件故障、机器人环境中产生的异常情况以及两者的结合进行了一系列不同的实验。在这个过程中,使用了两个指标:在正确识别机器人硬件故障之前的尝试次数和差异度量。结果表明,在考虑的异常情况范围内,具有良好的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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