Litcius/Paper detail

A Novel Bias-Eliminated Subspace Identification Approach for Closed-Loop Systems

Kuan Li, Hao Luo, Shen Yin, Okyay Kaynak

2020IEEE Transactions on Industrial Electronics23 citationsDOI

Abstract

This article is concerned with a novel data-driven bias-eliminated subspace identification approach for closed-loop systems. Compared with the existing methods, the proposed method first proposes to utilize the coprime factorization of the controller to construct an instrumental variable uncorrelated with noise under closed-loop conditions. Furthermore, it can reliably eliminate the pole estimation bias due to the correlation between inputs and noise under feedback control. More importantly, the proposed method establishes a general framework for both open-loop and closed-loop system identification. Performance comparisons with two other closed-loop methods are made from many different aspects. Finally, the performance of the identified system is again demonstrated in the vehicle lateral dynamic system.

Topics & Concepts

Subspace topologyControl theory (sociology)Closed loopNoise (video)Computer scienceIdentification (biology)Controller (irrigation)System identificationControl systemFeedback loopNoise measurementControl engineeringArtificial intelligenceControl (management)Data modelingEngineeringNoise reductionDatabaseComputer securityAgronomyBiologyBotanyImage (mathematics)Electrical engineeringControl Systems and IdentificationHydraulic and Pneumatic SystemsFault Detection and Control Systems