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Particle-filter-enabled real-time sensor fault detection without a model of faults

机译:启用颗粒过滤器的实时传感器故障检测而无需故障模型

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We are experiencing an explosion in the amount of sensors measuring our activities and the world around us. These sensors are spread throughout the built environment and can help us perform state estimation and control of related systems, but they are often built and/or maintained by third parties or system users. As a result, by outsourcing system measurement to third parties, the controller must accept their measurements without being able to directly verify the sensors' correct operation. Instead, detection and rejection of measurements from faulty sensors must be done with the raw data only. Towards this goal, we present a method of detecting possibly faulty behavior of sensors. The method does not require that the control designer have any model of faulty sensor behavior. As we discuss, it turns out that the widely-used particle filter state estimation algorithm provides the ingredients necessary for a hypothesis test against all ranges of correct operating behavior, obviating the need for a fault model to compare measurements. We demonstrate the applicability of our method by showing its ability to reject faulty measurements and accuracy in state estimation of a nonlinear vehicle traffic model, without information of generated faulty measurements' characteristics. In our test, we correctly identify nearly 90% of measurements as faulty or non-faulty without having any fault model. This leads to only a 3% increase in state estimation error over a theoretical 100%-accurate fault detector.
机译:我们正在经历测量我们的活动和周围世界的传感器数量的爆炸式增长。这些传感器分布在整个构建环境中,可以帮助我们执行状态估计和相关系统的控制,但是它们通常是由第三方或系统用户构建和/或维护的。结果,通过将系统测量外包给第三方,控制器必须接受他们的测量,而不能直接验证传感器的正确操作。取而代之的是,必须仅使用原始数据来检测和拒绝来自故障传感器的测量。为了实现这一目标,我们提出了一种检测传感器可能存在故障行为的方法。该方法不需要控制设计者具有故障传感器行为的任何模型。正如我们讨论的那样,事实证明,广泛使用的粒子过滤器状态估计算法为针对所有正确操作行为范围的假设检验提供了必要的要素,从而无需使用故障模型来比较测量结果。我们通过显示其拒绝错误测量的能力和非线性车辆交通模型状态估计的准确性来证明我们方法的适用性,而无需生成错误测量值的特征信息。在我们的测试中,我们正确地将近90%的测量结果确定为有故障或无故障,而没有任何故障模型。与理论上准确度为100%的故障检测器相比,状态估计误差仅增加3%。

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