Regularized System Identification: The Prior Knowledge Awakens

Tianshi Chen

Associate Professor,
The Chinese University of Hong Kong

Seminar Information

Seminar Series
Dynamic Systems & Controls

Seminar Date - Time
November 19, 2021, 3:00 pm
-
04:00

Photo

Abstract

In control engineering practice, the users of system identification may have prior knowledge of control plants to be identified. In order to get better model estimates and further improve the modeling efficiency, the users have thus been suggested to make an intelligent choice of experiment design, model set, and identification criterion guided by prior knowledge as well as by observed data. However, it is hard to incorporate prior knowledge of control plants in classical system identification paradigm and there are few results on the systematic use of prior knowledge of control plants in system identification until the birth of the so-called regularized system identification in 2010. The regularized system identification proposes to estimate the impulse response model by a regularized least squares method and its major novelty lies in that with the impulse response model, it is possible to impose an underlying model structure by a carefully designed regularization that incorporates/embeds the prior knowledge of control plants. After ten years of development, it has become a viable paradigm and research frontier of system identification. In this talk, I will share my personal view/experience on the development of the regularized system identification and show how some key problems in regularized system identification can be solved by exploring the “control” characteristics of the prior knowledge of the control plant to be identified. This leads to the view that it is important to develop the regularized system identification methods by making use of the “control” characteristics of the prior knowledge of the control plant to be identified.

Speaker Bio

Prof. Tianshi Chen received his Bachelor's and Master's degree both from The Harbin Institute of Technology in 2001 and 2005, respectively. He received his Ph.D. degree in Automation and Computer-Aided Engineering from The Chinese University of Hong Kong, Hong Kong, China, in December 2008. From April 2009 to December 2015, he was working in the Division of Automatic Control, Department of Electrical Engineering, Linköping University, Linköping, Sweden, first as a Postdoc (April 2009–March 2011) and then as an Assistant Professor (April 2011–December 2015). In May 2015, he received the Youth Talents Award of the Thousand Talents Plan of China, and in December 2015, he returned to China and joined the Chinese University of Hong Kong, Shenzhen, as an Associate Professor. He has been mainly working in the area of systems and control with a focus on system identification, nonlinear control, and their applications. He is an associate editor for Automatica (2017–present), and also served as an associate editor for System & Control Letters (2017–2020), and IEEE Control System SocietyConference Editorial Board (2016–2019). He was a plenary speaker at the 19th IFAC Symposium on System Identification, Padova, Italy, July 13-16, 2021.