Sensor fault detection in a class of nonlinear systems using modal Kalman filter

ISA Trans. 2020 Dec:107:214-223. doi: 10.1016/j.isatra.2020.08.008. Epub 2020 Aug 8.

Abstract

Kalman filter and its different variants are commonly used as optimal methods for fault detection in various types of system components. In this paper, a newly introduced type of aforementioned filters, called modal Kalman filter, is extended and utilized in order to estimate the states of nonlinear systems, for sensor fault detection purposes, in a class of nonlinear certain systems. This method, in contrast to the extended Kalman filter, which employs only the linear term of Taylor expansion, retains higher-order terms; as a result, the estimation error will reduce accordingly. Practicality and effectivity of this method, and its superiority over Kalman filter, in terms of accuracy and promptness of sensor fault detection, are also verified with simulation results.

Keywords: Kalman filter; Modal Kalman filter; Nonlinear systems; Sensor fault detection; State estimation.