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SLAM Bayesian Network Model For Robot Behavior

机译:机器人行为的猛烈贝叶斯网络模型

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In this paper, a bayesian framework for fault detection and isolation (FDI) based on kalman filtering is developed. Furthermore, in order to detect the faults affecting on the covariance matrix of the kalman filter, a real-time approach is presented. This proposed framework extracts the proper behavior of a mobile robot besides simultaneously localization and map building (SLAM). Actually the framework is a combination of the kalman filter and bayesian networks. Learning the model of the world is difficult. In particular when the system dynamics become nondeterministic, all aspects of the system cannot be directly observed and the sensors are subjected to noise. In many situations, learning a complete model is not possible. Therefore, only probabilistic models which are capable of taking uncertainty of sensors and environment can be employed. In this paper, we describe a framework as a composition between model-free and model-based systems. Model learning is perfectly based on bayesian network (BN) and fault detection is done by kalman filter. Experimental results show that the learned model outperforms the traditional BN. We demonstrate how the resulting algorithm can be used to detect faults in a complex system. Proposed method is not very sensitive to changing the map of robot. However, the Bayesian network and dynamic Bayesian network are very sensitive to changing the map and in the presence of the fault. The proposed method is tested in a real home environment with a mobile robot.
机译:在本文中,开发了一种基于卡尔曼滤波的贝叶斯的故障检测和隔离框架(FDI)。此外,为了检测影响卡尔曼滤波器的协方差矩阵的故障,呈现了实时方法。此所提出的框架除了同时定位和地图建筑物(SLAM)之外提取移动机器人的适当行为。实际上,框架是卡尔曼滤波器和贝叶斯网络的组合。学习世界的模型很难。特别是当系统动态变为非定值时,不能直接观察系统的所有方面,并且传感器受到噪声。在许多情况下,学习完整的模型是不可能的。因此,只能采用能够采用传感器和环境不确定性的概率模型。在本文中,我们将框架描述为无模型和基于模型的系统之间的组成。模型学习是完美的,基于贝叶斯网络(BN),Kalman滤波器完成故障检测。实验结果表明,学习模式优于传统的BN。我们展示了所得算法如何用于检测复杂系统中的故障。提出的方法对改变机器人地图不是很敏感。然而,贝叶斯网络和动态贝叶斯网络对改变地图和故障存在非常敏感。所提出的方法在具有移动机器人的真实家庭环境中进行测试。

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