Data-Based Nonlinear Model Identification in Economic Model Predictive Control

被引:9
|
作者
Giuliani, Laura [1 ]
Durand, Helen [2 ]
机构
[1] Univ Aquila, Dept Ind & Informat Engn & Econ, Via Giovanni Gronchi 18 Zona Ind Pile, I-67100 Laquila, Italy
[2] Wayne State Univ, Dept Chem Engn & Mat Sci, 5050 Anthony Wayne Dr, Detroit, MI 48202 USA
来源
关键词
economic model predictive control; nonlinear model identification; regression;
D O I
10.1520/SSMS20180025
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Many chemical/petrochemical processes in industry are not completely modeled from a first-principles perspective because of the complexity of the underlying physico-chemical phenomena and the cost of obtaining more accurate, physically relevant models. System identification methods have been utilized successfully for developing empirical, though not necessarily physical, models for advanced model-based control designs such as model predictive control (MPC) for decades. However, a fairly recent development in MPC is economic model predictive control (EMPC), which is an MPC formulated with an economics-based objective function that may operate a process in a dynamic (i.e., off steady-state) fashion, in which case the details of the process model become important for obtaining sufficiently accurate state predictions away from the steady-state, and the physics and chemistry of the process become important for developing meaningful profit-based objective functions and safety-critical constraints. Therefore, methods must be developed for obtaining physically relevant models from data for EMPC design. While the literature regarding developing models from data has rapidly expanded in recent years, many new techniques require a model structure to be assumed a priori, to which the data is then fit. However, from the perspective of developing a physically meaningful model for a chemical process, it is often not obvious what structure to assume for the model, especially considering the often complex nonlinearities characteristic of chemical processes (e.g., in reaction rate laws). In this work, we suggest that the controller itself may facilitate the identification of physically relevant models online from process operating data by forcing the process state to nonroutine operating conditions for short periods of time to obtain data that can aid in selecting model structures believed to have physical significance for the process and, subsequently, identifying their parameters. Specifically, we develop EMPC designs for which the objective function and constraints can be changed for short periods of time to obtain data to aid in model structure selection. For one of the developed designs, we incorporate Lyapunov-based stability constraints that allow closed-loop stability and recursive feasibility to be proven even as the online "experiments" are performed. This new design is applied to a chemical process example to demonstrate its potential to facilitate physics-based model identification without loss of closed-loop stability. This work therefore reverses a question that has been of interest to the control community (i.e., how new techniques for developing models from data can be useful for control of chemical processes) to ask how control may be utilized to impact the use of these techniques for the identification of physically relevant process dynamic models that can aid in improving process operation and control for economic and safety purposes.
引用
收藏
页码:61 / 109
页数:49
相关论文
共 50 条
  • [41] Data-based model applied to thermoforming process control
    Marchal, Nils
    Ducloud, Guillaume
    Agazzi, Alban
    Le Goff, Ronan
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2023, 129 (11-12): : 5347 - 5358
  • [42] Data-based Predictive Control for Networked Control Systems
    Wang, Yan
    Ji, Zhicheng
    PROCEEDINGS OF THE 10TH WORLD CONGRESS ON INTELLIGENT CONTROL AND AUTOMATION (WCICA 2012), 2012, : 2302 - 2305
  • [43] Nonlinear Reference Tracking: An Economic Model Predictive Control Perspective
    Koehler, Johannes
    Mueller, Matthias A.
    Allgoewer, Frank
    IEEE TRANSACTIONS ON AUTOMATIC CONTROL, 2019, 64 (01) : 254 - 269
  • [44] Economic model predictive control of nonlinear singularly perturbed systems
    Ellis, Matthew
    Heidarinejad, Mohsen
    Christofides, Panagiotis D.
    JOURNAL OF PROCESS CONTROL, 2013, 23 (05) : 743 - 754
  • [45] Stable nonlinear model predictive control with a changing economic criterion
    Wu, Jie
    Liu, Fei
    INTERNATIONAL JOURNAL OF CONTROL, 2024, 97 (07) : 1488 - 1499
  • [46] Economic Nonlinear Model Predictive Control for Mechanical Pulping Processes
    Tian, Hui
    Lu, Qiugang
    Gopaluni, R. Bhushan
    Zavala, Victor M.
    Olson, James A.
    2016 AMERICAN CONTROL CONFERENCE (ACC), 2016, : 1796 - 1801
  • [47] Nonlinear model identification and adaptive model predictive control using neural networks
    Akpan, Vincent A.
    Hassapis, George D.
    ISA TRANSACTIONS, 2011, 50 (02) : 177 - 194
  • [48] Fuzzy Predictive Filtering in Nonlinear Economic Model Predictive Control for Demand Response
    Santos, Rui Mirra
    Zong, Yi
    Sousa, Joao M. C.
    Mendonca, Luis
    You, Shi
    Mihet-Popa, Lucian
    2016 IEEE ELECTRICAL POWER AND ENERGY CONFERENCE (EPEC), 2016,
  • [49] A data-based predictive model for spatiotemporal variability in stream water quality
    Guo, Danlu
    Lintern, Anna
    Webb, J. Angus
    Ryu, Dongryeol
    Bende-Michl, Ulrike
    Liu, Shuci
    Western, Andrew William
    HYDROLOGY AND EARTH SYSTEM SCIENCES, 2020, 24 (02) : 827 - 847
  • [50] Nonlinear Economic Model Predictive Control for SI Engines Based on Sequential Quadratic Programming
    Zhu, Qilun
    Onori, Simona
    Prucka, Robert
    2016 AMERICAN CONTROL CONFERENCE (ACC), 2016, : 1802 - 1807