A data-driven robust optimization approach to scenario-based stochastic model predictive control. (March 2019)
- Record Type:
- Journal Article
- Title:
- A data-driven robust optimization approach to scenario-based stochastic model predictive control. (March 2019)
- Main Title:
- A data-driven robust optimization approach to scenario-based stochastic model predictive control
- Authors:
- Shang, Chao
You, Fengqi - Abstract:
- Highlights: A novel data-driven approach is proposed for stochastic model predictive control. Support vector clustering is adopted to learn an uncertainty set from scenarios. A calibration procedure is developed to provide desirable probabilistic guarantees. Finally, an uncertainty set-induced robust optimization problem is solved. The proposed method requires less scenarios and can reduce conservatism. Abstract: Stochastic model predictive control (SMPC) has been a promising solution to complex control problems under uncertain disturbances. However, traditional SMPC approaches either require exact knowledge of probabilistic distributions, or rely on massive scenarios that are generated to represent uncertainties. In this paper, a novel scenario-based SMPC approach is proposed by actively learning a data-driven uncertainty set from available data with machine learning techniques. A systematical procedure is then proposed to further calibrate the uncertainty set, which gives appropriate probabilistic guarantee. The resulting data-driven uncertainty set is more compact than traditional norm-based sets, and can help reducing conservatism of control actions. Meanwhile, the proposed method requires less data samples than traditional scenario-based SMPC approaches, thereby enhancing the practicability of SMPC. Finally the optimal control problem is cast as a single-stage robust optimization problem, which can be solved efficiently by deriving the robust counterpart problem. TheHighlights: A novel data-driven approach is proposed for stochastic model predictive control. Support vector clustering is adopted to learn an uncertainty set from scenarios. A calibration procedure is developed to provide desirable probabilistic guarantees. Finally, an uncertainty set-induced robust optimization problem is solved. The proposed method requires less scenarios and can reduce conservatism. Abstract: Stochastic model predictive control (SMPC) has been a promising solution to complex control problems under uncertain disturbances. However, traditional SMPC approaches either require exact knowledge of probabilistic distributions, or rely on massive scenarios that are generated to represent uncertainties. In this paper, a novel scenario-based SMPC approach is proposed by actively learning a data-driven uncertainty set from available data with machine learning techniques. A systematical procedure is then proposed to further calibrate the uncertainty set, which gives appropriate probabilistic guarantee. The resulting data-driven uncertainty set is more compact than traditional norm-based sets, and can help reducing conservatism of control actions. Meanwhile, the proposed method requires less data samples than traditional scenario-based SMPC approaches, thereby enhancing the practicability of SMPC. Finally the optimal control problem is cast as a single-stage robust optimization problem, which can be solved efficiently by deriving the robust counterpart problem. The feasibility and stability issue is also discussed in detail. The efficacy of the proposed approach is demonstrated through a two-mass-spring system and a building energy control problem under uncertain disturbances. … (more)
- Is Part Of:
- Journal of process control. Volume 75(2019)
- Journal:
- Journal of process control
- Issue:
- Volume 75(2019)
- Issue Display:
- Volume 75, Issue 2019 (2019)
- Year:
- 2019
- Volume:
- 75
- Issue:
- 2019
- Issue Sort Value:
- 2019-0075-2019-0000
- Page Start:
- 24
- Page End:
- 39
- Publication Date:
- 2019-03
- Subjects:
- Stochastic model predictive control -- Chance constraints -- Scenario programs -- Robust model predictive control -- Machine learning
Process control -- Periodicals
Fabrication -- Contrôle -- Périodiques
Process control
Periodicals
Electronic journals
660.281 - Journal URLs:
- http://www.sciencedirect.com/science/journal/09591524 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.jprocont.2018.12.013 ↗
- Languages:
- English
- ISSNs:
- 0959-1524
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 5042.645000
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- 17368.xml