LAPSE:2024.0427v1
Published Article

LAPSE:2024.0427v1
Machine Learning Algorithms That Emulate Controllers Based on Particle Swarm Optimization—An Application to a Photobioreactor for Algal Growth
June 5, 2024
Abstract
Particle Swarm Optimization (PSO) algorithms within control structures are a realistic approach; their task is often to predict the optimal control values working with a process model (PM). Owing to numerous numerical integrations of the PM, there is a big computational effort that leads to a large controller execution time. The main motivation of this work is to decrease the computational effort and, consequently, the controller execution time. This paper proposes to replace the PSO predictor with a machine learning model that has “learned” the quasi-optimal behavior of the couple (PSO and PM); the training data are obtained through closed-loop simulations over the control horizon. The new controller should preserve the process’s quasi-optimal control. In identical conditions, the process evolutions must also be quasi-optimal. The multiple linear regression and the regression neural networks were considered the predicting models. This paper first proposes algorithms for collecting and aggregating data sets for the learning process. Algorithms for constructing the machine learning models and implementing the controllers and closed-loop simulations are also proposed. The simulations prove that the two machine learning predictors have learned the PSO predictor’s behavior, such that the process evolves almost identically. The resulting controllers’ execution time have decreased hundreds of times while keeping their optimality; the performance index has even slightly increased.
Particle Swarm Optimization (PSO) algorithms within control structures are a realistic approach; their task is often to predict the optimal control values working with a process model (PM). Owing to numerous numerical integrations of the PM, there is a big computational effort that leads to a large controller execution time. The main motivation of this work is to decrease the computational effort and, consequently, the controller execution time. This paper proposes to replace the PSO predictor with a machine learning model that has “learned” the quasi-optimal behavior of the couple (PSO and PM); the training data are obtained through closed-loop simulations over the control horizon. The new controller should preserve the process’s quasi-optimal control. In identical conditions, the process evolutions must also be quasi-optimal. The multiple linear regression and the regression neural networks were considered the predicting models. This paper first proposes algorithms for collecting and aggregating data sets for the learning process. Algorithms for constructing the machine learning models and implementing the controllers and closed-loop simulations are also proposed. The simulations prove that the two machine learning predictors have learned the PSO predictor’s behavior, such that the process evolves almost identically. The resulting controllers’ execution time have decreased hundreds of times while keeping their optimality; the performance index has even slightly increased.
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Suggested Citation
Mînzu V, Arama I, Rusu E. Machine Learning Algorithms That Emulate Controllers Based on Particle Swarm Optimization—An Application to a Photobioreactor for Algal Growth. (2024). LAPSE:2024.0427v1
Author Affiliations
Mînzu V: Control and Electrical Engineering Department, “Dunarea de Jos” University, 800008 Galati, Romania [ORCID]
Arama I: Informatics Department, “Danubius” University, 800654 Galati, Romania [ORCID]
Rusu E: Mechanical Engineering Department, “Dunarea de Jos” University, 800008 Galati, Romania [ORCID]
Arama I: Informatics Department, “Danubius” University, 800654 Galati, Romania [ORCID]
Rusu E: Mechanical Engineering Department, “Dunarea de Jos” University, 800008 Galati, Romania [ORCID]
Journal Name
Processes
Volume
12
Issue
5
First Page
991
Year
2024
Publication Date
2024-05-13
ISSN
2227-9717
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Original Submission
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PII: pr12050991, Publication Type: Journal Article
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LAPSE:2024.0427v1
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