论文标题
通过飞行测试数据进行传感器故障检测的物理信息的机器学习
Physics-informed machine learning for sensor fault detection with flight test data
论文作者
论文摘要
我们开发了数据驱动的算法,以完全自动化通过基础物理学控制的系统中的传感器故障检测。所提出的机器学习方法使用典型行为的时间序列来近似线性时间不变系统的兴趣测量结果。给定来自相关传感器的其他数据,Kalman观察者用于维持对兴趣测量的单独实时估计。测量和估计值之间的持续偏差用于检测异常行为。通过集成其他传感器测量值告知的决策树,用于确定识别传感器故障所需的偏差量。我们通过将其应用于表现各种类型的传感器故障的三个测试系统来验证该方法:商业飞行测试数据,具有动态失速的不稳定的空气动力学模型,以及由大气湍流强迫的纵向飞行动力学模型。在后两种情况下,我们测试了几种原型故障模式的故障检测。在每种情况下,学习的动力学模型与自动决策树的组合准确地检测到传感器故障。
We develop data-driven algorithms to fully automate sensor fault detection in systems governed by underlying physics. The proposed machine learning method uses a time series of typical behavior to approximate the evolution of measurements of interest by a linear time-invariant system. Given additional data from related sensors, a Kalman observer is used to maintain a separate real-time estimate of the measurement of interest. Sustained deviation between the measurements and the estimate is used to detect anomalous behavior. A decision tree, informed by integrating other sensor measurement values, is used to determine the amount of deviation required to identify a sensor fault. We validate the method by applying it to three test systems exhibiting various types of sensor faults: commercial flight test data, an unsteady aerodynamics model with dynamic stall, and a model for longitudinal flight dynamics forced by atmospheric turbulence. In the latter two cases we test fault detection for several prototypical failure modes. The combination of a learned dynamical model with the automated decision tree accurately detects sensor faults in each case.