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首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Sensor Fault Tolerance Method by Using a Bayesian Network for Robot Behavior
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Sensor Fault Tolerance Method by Using a Bayesian Network for Robot Behavior

机译:贝叶斯网络的机器人行为传感器容错方法

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This paper presents FTBN, a new framework that performs learning autonomous mobile robot behavior and fault tolerance simultaneously. For learning behavior in the presence of a robot sensor fault this framework uses a Bayesian network. In the proposed framework, sensor data are used to detect a faulty sensor. Fault isolation is accomplished by changing the Bayesian network structure using interpreted evidence from robot sensors. Experiments including both simulation and a real robot are performed for door-crossing behavior using prior knowledge and sensor data at several maps. This paper explains the learning behavior, optimal tracking, exprimental setup and structure of the proposed framework. The robot uses laser and sonar sensors for door-crossing behavior, such that each sensor can be corrupted during the behavior. Experimental results show FTBN leads to robust behavior in the presence of a sensor fault as well as performing better compared to the conventional Bayesian method.
机译:本文介绍了FTBN,这是一个同时执行学习自主移动机器人行为和容错能力的新框架。对于存在机器人传感器故障的学习行为,此框架使用贝叶斯网络。在提出的框架中,传感器数据用于检测故障传感器。通过使用来自机器人传感器的解释证据来更改贝叶斯网络结构,可以实现故障隔离。使用先验知识和几幅地图上的传感器数据,进行了包括模拟和真实机器人在内的实验,以了解跨门行为。本文解释了所提出框架的学习行为,最佳跟踪,实验设置和结构。机器人使用激光和声纳传感器进行过门行为,以便在行为期间损坏每个传感器。实验结果表明,与传统的贝叶斯方法相比,FTBN在存在传感器故障的情况下具有鲁棒的性能,并且性能更好。

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