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Merging Kalman Filtering and Zonotopic State Bounding for Robust Fault Detection under Noisy Environment

机译:在噪声环境下合并卡尔曼滤波和Zonotopic状态界限,在噪声环境下进行鲁棒故障检测

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A joint Zonotopic and Gaussian Kalman Filter (ZGKF) is proposed for the robust fault detection of discrete-time LTV systems simultaneously subject to bounded disturbances and Gaussian noises. Given a maximal probability of false alarms, a detection test is developed and shown to merge the usually mutually exclusive benefits granted by set-membership techniques (robustness to worst-case within specified bounds, domain computations) and stochastic approaches (taking noise distribution into account, probabilistic evaluation of tests). The computations remain explicit and can be efficiently implemented. A numerical example illustrates the improved tradeoff between sensitivity to faults and robustness to disturbances/noises.
机译:提出了一个关节Zonotopic和高斯卡尔曼滤波器(ZGKF),用于离散时间LTV系统的鲁棒故障检测,同时受限制有界扰动和高斯噪声。鉴于虚假警报的最大概率,开发了一个检测测试并显示了通过设定成员资格技术(在特定范围内,域计算)和随机方法中的最坏情况(鲁棒性)和随机方法(考虑噪声分布)合并授予的通常互斥益处,概率评估测试)。计算仍然明确,可以有效地实现。数值示例说明了对扰动/噪声的敏感性和鲁棒性之间的改进权衡。

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