Please use this identifier to cite or link to this item:
https://hdl.handle.net/10356/182577
Title: | Deep DeePC: data-enabled predictive control with low or no online optimization using deep learning | Authors: | Zhang, Xuewen Zhang, Kaixiang Li, Zhaojian Yin, Xunyuan |
Keywords: | Engineering | Issue Date: | 2025 | Source: | Zhang, X., Zhang, K., Li, Z. & Yin, X. (2025). Deep DeePC: data-enabled predictive control with low or no online optimization using deep learning. AIChE Journal, 71(3), e18644-. https://dx.doi.org/10.1002/aic.18644 | Project: | RS15/21 RG63/22 NTU SUG |
Journal: | AIChE Journal | Abstract: | Data-enabled predictive control (DeePC) is a data-driven control algorithm that utilizes data matrices to form a non-parametric representation of the underlying system, predicting future behaviors and generating optimal control actions. DeePC typically requires solving an online optimization problem, the complexity of which is heavily influenced by the amount of data used, potentially leading to expensive online computation. In this article, we leverage deep learning to propose a highly computationally efficient DeePC approach for general nonlinear processes, referred to as Deep DeePC. Specifically, a deep neural network is employed to learn the DeePC vector operator, which is an essential component of the non-parametric representation of DeePC. This neural network is trained offline using historical open-loop input and output data of the nonlinear process. With the trained neural network, the Deep DeePC framework is formed for online control implementation. At each sampling instant, this neural network directly outputs the DeePC operator, eliminating the need for online optimization as conventional DeePC. The optimal control action is obtained based on the DeePC operator updated by the trained neural network. To address constrained scenarios, a constraint handling scheme is further proposed and integrated with the Deep DeePC to handle hard constraints during online implementation. The efficacy and superiority of the proposed Deep DeePC approach are demonstrated using two benchmark process examples. | URI: | https://hdl.handle.net/10356/182577 | ISSN: | 0001-1541 | DOI: | 10.1002/aic.18644 | Schools: | School of Chemistry, Chemical Engineering and Biotechnology | Research Centres: | Environmental Process Modelling Centre Nanyang Environment and Water Research Institute |
Rights: | © 2024 American Institute of Chemical Engineers. All rights reserved. | Fulltext Permission: | none | Fulltext Availability: | No Fulltext |
Appears in Collections: | CCEB Journal Articles |
SCOPUSTM
Citations
50
1
Updated on May 5, 2025
Page view(s)
39
Updated on May 7, 2025
Google ScholarTM
Check
Altmetric
Items in DR-NTU are protected by copyright, with all rights reserved, unless otherwise indicated.