Publication: Diagnosis of action execution failures for cognitive robots
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Execution failures are likely in robotic applications due to dynamic and partially observable structure of the physical world. These failures should be detected by the robot, and a reasoning procedure should take place to diagnose the causes of the failures. In this paper, we propose a Hierarchical Hidden Markov Model (HHMM) based failure diagnosis method to identify the cause of a failure. Parallel HHMMs are used in the proposed method in order to track different type of failures. The performance of the proposed method is evaluated on our Pioneer 3-AT robot in several failure scenarios. The results reveal that using a probabilistic method ensures diagnosing multiple failures when there are more than one cause of a failure. Furthermore, using relations between the failure types and actions decreases memory requirements of the method by reducing the state space.