Data-Driven Approximated Optimal Control of Sulfur Flotation Process

Sulfur flotation process is a typical industry process with complex dynamics. For a sulfur flotation cell, the structure of the system model could be derived using first-principles and reaction kinetics. However, the model parameters cannot be obtained under certain working conditions. In this paper...

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Main Author: Mingfang He
Format: Article
Language:English
Published: Wiley 2019-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2019/4754508
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author Mingfang He
author_facet Mingfang He
author_sort Mingfang He
collection DOAJ
description Sulfur flotation process is a typical industry process with complex dynamics. For a sulfur flotation cell, the structure of the system model could be derived using first-principles and reaction kinetics. However, the model parameters cannot be obtained under certain working conditions. In this paper, by using adaptive dynamic programming (ADP), we establish a data-driven optimal control approach for the operation of a sulfur flotation cell without knowing the model parameters. By learning from the online production data, an initial admissible control policy iteratively converges to an approximated optimal control law, and the dependence of optimal control design on the full model knowledge is eliminated. A simulation environment of sulfur flotation process is constructed based on phenomenological model and industrial data. Some practical problems in the implementation of ADP, i.e., selection of basis functions, how to use the model structural information in the ADP-based control design, are investigated. The feasibility and performance of the proposed data-driven optimal control are tested in the simulation environment. The results indicate the potential of applying bioinspired control methods in flotation process.
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spelling doaj-art-5f4c3f49b8e7498bad39c7665c8765302025-08-20T03:34:22ZengWileyComplexity1076-27871099-05262019-01-01201910.1155/2019/47545084754508Data-Driven Approximated Optimal Control of Sulfur Flotation ProcessMingfang He0School of Computer and Information Engineering, Central South University of Forestry and Technology, Changsha 410004, ChinaSulfur flotation process is a typical industry process with complex dynamics. For a sulfur flotation cell, the structure of the system model could be derived using first-principles and reaction kinetics. However, the model parameters cannot be obtained under certain working conditions. In this paper, by using adaptive dynamic programming (ADP), we establish a data-driven optimal control approach for the operation of a sulfur flotation cell without knowing the model parameters. By learning from the online production data, an initial admissible control policy iteratively converges to an approximated optimal control law, and the dependence of optimal control design on the full model knowledge is eliminated. A simulation environment of sulfur flotation process is constructed based on phenomenological model and industrial data. Some practical problems in the implementation of ADP, i.e., selection of basis functions, how to use the model structural information in the ADP-based control design, are investigated. The feasibility and performance of the proposed data-driven optimal control are tested in the simulation environment. The results indicate the potential of applying bioinspired control methods in flotation process.http://dx.doi.org/10.1155/2019/4754508
spellingShingle Mingfang He
Data-Driven Approximated Optimal Control of Sulfur Flotation Process
Complexity
title Data-Driven Approximated Optimal Control of Sulfur Flotation Process
title_full Data-Driven Approximated Optimal Control of Sulfur Flotation Process
title_fullStr Data-Driven Approximated Optimal Control of Sulfur Flotation Process
title_full_unstemmed Data-Driven Approximated Optimal Control of Sulfur Flotation Process
title_short Data-Driven Approximated Optimal Control of Sulfur Flotation Process
title_sort data driven approximated optimal control of sulfur flotation process
url http://dx.doi.org/10.1155/2019/4754508
work_keys_str_mv AT mingfanghe datadrivenapproximatedoptimalcontrolofsulfurflotationprocess