Active Learning for Linear Parameter-Varying System Identification

Chin, Robert; Maass, Alejandro, I; Ulapane, Nalika; Manzie, Chris; Shames, Iman; Nesic, Dragan; Rowe, Jonathan E.; Nakada, Hayato

Abstract

Active learning is proposed for selection of the next operating points in the design of experiments, for identifying linear parameter-varying systems. We extend existing approaches found in literature to multiple-input multiple-output systems with a multivariate scheduling parameter. Our approach is based on exploiting the probabilistic features of Gaussian process regression to quantify the overall model uncertainty across locally identified models. This results in a flexible framework which accommodates for various techniques to be applied for estimation of local linear models and their corresponding uncertainty. We perform active learning in application to the identification of a diesel engine air-path model, and demonstrate that measures of model uncertainty can be successfully reduced using the proposed framework. Copyright (C) 2020 The Authors.

Más información

Título según WOS: ID WOS:000652592500160 Not found in local WOS DB
Título de la Revista: IFAC PAPERSONLINE
Volumen: 53
Número: 2
Editorial: Elsevier
Fecha de publicación: 2020
Página de inicio: 989
Página final: 994
DOI:

10.1016/j.ifacol.2020.12.1274

Notas: ISI