Litcius/Paper detail

Extended State Filter Based Disturbance and Uncertainty Mitigation for Nonlinear Uncertain Systems With Application to Fuel Cell Temperature Control

Wenchao Xue, Xiaocheng Zhang, Li Sun, Haitao Fang

2020IEEE Transactions on Industrial Electronics67 citationsDOI

Abstract

The filter design for nonlinear uncertain systems is quite challenging since efficient estimation is required against stochastic noises, nonlinear uncertain dynamics as well as their concurrent effects. To this end, this article develops a novel filter algorithm by augmenting the disturbance as well as unknown nonlinear dynamics as an extended state and constructing consistent Kalman-Bucy algorithm. The proposed extended state based Kalman-Bucy filter (KBF) is shown to be of bounded estimation error, and the estimation accuracy can be online evaluated. More importantly, the estimation of asymptotic minimum variance is realized in condition that the changing rate of uncertainty approaches to zero. Therefore, the proposed extended state filter enables effective mitigation of disturbance and unknown nonlinear dynamics in real time by feedback control. The proposed algorithm is experimentally verified via a temperature control application in proton exchange membrane fuel cell, in which the thermocouple noise and the electrochemical uncertainty are seriously presented. The temperature variation of the extended state based KBF-based control is greatly reduced, in comparison with the conventional control. The results in this article depict a promising prospect of the proposed method for industrial control applications to handle both noises and nonlinear uncertain dynamics.

Topics & Concepts

Control theory (sociology)Nonlinear systemKalman filterFilter (signal processing)Computer scienceNoise (video)Extended Kalman filterControl engineeringControl (management)EngineeringArtificial intelligenceImage (mathematics)Computer visionQuantum mechanicsPhysicsFault Detection and Control SystemsControl Systems and IdentificationTarget Tracking and Data Fusion in Sensor Networks