Identification in dynamic networks

Abstract System identification is a common tool for estimating (linear) plant models as a basis for model-based predictive control and optimization. The current challenges in process industry, however, ask for data-driven modelling techniques that go beyond the single unit/plant models. While optimization and control problems become more and more structured in the form of decentralized and/or distributed solutions, the related modelling problems will need to address structured and interconnected systems. An introduction will be given to the current state of the art and related developments in the identification of linear dynamic networks. Starting from classical prediction error methods for open-loop and closed-loop systems, several consequences for the handling of network situations will be presented and new research questions will be highlighted.

[1]  Alexandre S. Bazanella,et al.  Identification in dynamic networks: Identifiability and experiment design issues , 2015, 2015 54th IEEE Conference on Decision and Control (CDC).

[2]  Michael Nikolaou,et al.  Identification test design for multivariable model-based control: An industrial perspective , 2014 .

[3]  Yucai Zhu System identification for process control: Recent experience and outlook , 2006 .

[4]  Håkan Hjalmarsson,et al.  Advanced autonomous model-based operation of industrial process systems (Autoprofit): Technological developments and future perspectives , 2016, Annu. Rev. Control..

[5]  Panagiotis D. Christofides,et al.  Distributed model predictive control: A tutorial review and future research directions , 2013, Comput. Chem. Eng..

[6]  Arne G. Dankers,et al.  Prediction error identification with rank-reduced output noise , 2017, 2017 American Control Conference (ACC).

[7]  James B. Rawlings,et al.  COORDINATING MULTIPLE OPTIMIZATION-BASED CONTROLLERS: NEW OPPORTUNITIES AND CHALLENGES , 2008 .

[8]  Marion Gilson,et al.  Instrumental variable methods for closed-loop system identification , 2005, Autom..

[9]  Xavier Bombois,et al.  Errors-in-variables identification in dynamic networks - Consistency results for an instrumental variable approach , 2015, Autom..

[10]  James B. Rawlings,et al.  Identification for decentralized model predictive control , 2006 .

[11]  Pmj Paul van den Hof,et al.  Identifiability in dynamic network identification , 2015 .

[12]  Arne Dankers,et al.  Variance reduction for identification in dynamic networks , 2014 .

[13]  Michel Gevers,et al.  Identification for Control: From the Early Achievements to the Revival of Experiment Design , 2005, Proceedings of the 44th IEEE Conference on Decision and Control.

[14]  Xavier Bombois,et al.  Identification of Dynamic Models in Complex Networks With Prediction Error Methods: Predictor Input Selection , 2016, IEEE Transactions on Automatic Control.

[15]  Xavier Bombois,et al.  Identification of dynamic models in complex networks with prediction error methods - Basic methods for consistent module estimates , 2013, Autom..

[16]  Lennart Ljung,et al.  Closed-loop identification revisited , 1999, Autom..

[17]  Pmj Paul van den Hof,et al.  Identification of dynamic networks with rank-reduced process noise , 2017 .

[18]  Paul M. J. Van den Hof,et al.  Identification and control - Closed-loop issues , 1995, Autom..

[19]  Christopher Edwards,et al.  Dynamic Sliding Mode Control for a Class of Systems with Mismatched Uncertainty , 2005, Eur. J. Control.

[20]  Pmj Paul van den Hof,et al.  Identifiability of dynamic networks with part of the nodes noise-free , 2016 .

[21]  Arne G. Dankers,et al.  Identifiability of dynamic networks with noisy and noise-free nodes , 2016, ArXiv.

[22]  Lennart Ljung,et al.  System Identification: Theory for the User , 1987 .

[23]  Paul M. J. Van den Hof,et al.  An indirect method for transfer function estimation from closed loop data , 1993, Autom..

[24]  Xavier Bombois,et al.  Dynamic network structure identification with prediction error methods - basic examples , 2012 .

[25]  Torsten Söderström,et al.  System identification for the errors-in-variables problem , 2012 .

[26]  Yucai Zhu,et al.  System identification for process control: recent experience and outlook , 2009, Int. J. Model. Identif. Control..