Bai Weiqi, Dong Hairong, Yao Xiuming, Ning Bin
State Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing Haidian, 100044, China.
School of Electronic and Information Engineering, Beijing Jiaotong Uinversity, Beijing Haidian, 100044, China.
ISA Trans. 2018 Apr;75:76-87. doi: 10.1016/j.isatra.2018.01.032. Epub 2018 Feb 15.
This paper proposes a composite fault detection scheme for the dynamics of high-speed train (HST), using an unknown input observer-like (UIO-like) fault detection filter, in the presence of wind gust and operating noises which are modeled as disturbance generated by exogenous system and unknown multi-source disturbance within finite frequency domain. Using system input and system output measurements, the fault detection filter is designed to generate the needed residual signals. In order to decouple disturbance from residual signals without truncating the influence of faults, this paper proposes a method to partition the disturbance into two parts. One subset of the disturbance does not appear in residual dynamics, and the influence of the other subset is constrained by H performance index in a finite frequency domain. A set of detection subspaces are defined, and every different fault is assigned to its own detection subspace to guarantee the residual signals are diagonally affected promptly by the faults. Simulations are conducted to demonstrate the effectiveness and merits of the proposed method.
本文针对高速列车(HST)动力学提出了一种复合故障检测方案,该方案采用类未知输入观测器(UIO-like)故障检测滤波器,考虑了阵风以及运行噪声,这些被建模为外生系统产生的干扰和有限频域内的未知多源干扰。利用系统输入和系统输出测量值,设计故障检测滤波器以生成所需的残差信号。为了在不截断故障影响的情况下将干扰与残差信号解耦,本文提出一种将干扰划分为两部分的方法。一部分干扰不出现在残差动态中,另一部分干扰的影响在有限频域内由H性能指标约束。定义了一组检测子空间,每个不同的故障被分配到其自己的检测子空间,以确保残差信号能迅速受到故障的对角影响。通过仿真验证了所提方法的有效性和优点。