LAPSE:2025.0317
Published Article

LAPSE:2025.0317
A Bayesian optimization approach for data-driven Petlyuk distillation column
June 27, 2025
Abstract
Recently, the focus on increasing process efficiency to reduce energy consumption has driven the adoption of alternative systems, such as Petlyuk distillation columns. It has been proven that, when compared to conventional distillation columns, these systems offer significant energy and cost savings. From an economic standpoint, achieving high-purity products alone does not ensure the feasibility of a process. Instead, balancing the trade-off between product purity and cost necessitates multi-objective optimization. While conventional optimization methods are effective, novel strategies like Bayesian optimization offer distinct advantages for handling complex systems. Bayesian optimization requires no explicit mathematical model and can efficiently optimize even when starting from a single initial point. However, as a black-box method, it demands a detailed analysis of hyperparameters, such as the acquisition function and the number of initial points, to ensure optimal performance. This work presents a case study of a Petlyuk distillation column, focusing on the influence of key hyperparameters in Bayesian optimization. Additionally, the role of uncertainty in the optimization process is explored, as it is a critical factor in real-world applications. By simulating uncertainty, this study provides insights into its impact on the optimization process.
Recently, the focus on increasing process efficiency to reduce energy consumption has driven the adoption of alternative systems, such as Petlyuk distillation columns. It has been proven that, when compared to conventional distillation columns, these systems offer significant energy and cost savings. From an economic standpoint, achieving high-purity products alone does not ensure the feasibility of a process. Instead, balancing the trade-off between product purity and cost necessitates multi-objective optimization. While conventional optimization methods are effective, novel strategies like Bayesian optimization offer distinct advantages for handling complex systems. Bayesian optimization requires no explicit mathematical model and can efficiently optimize even when starting from a single initial point. However, as a black-box method, it demands a detailed analysis of hyperparameters, such as the acquisition function and the number of initial points, to ensure optimal performance. This work presents a case study of a Petlyuk distillation column, focusing on the influence of key hyperparameters in Bayesian optimization. Additionally, the role of uncertainty in the optimization process is explored, as it is a critical factor in real-world applications. By simulating uncertainty, this study provides insights into its impact on the optimization process.
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Suggested Citation
Panales-Pérez A, Flores-Tlacuahuac A, Fuentes-Cortés LF, Gutierrez-Limon MA, Sales-Cruz M. A Bayesian optimization approach for data-driven Petlyuk distillation column. Systems and Control Transactions 4:1029-1034 (2025) https://doi.org/10.69997/sct.182003
Author Affiliations
Panales-Pérez A: Tecnológico Nacional de México, Instituto Tecnológico de Celaya, Departamento de Ingeniería Química, Celaya, Guanajuato, Mexico, 38010
Flores-Tlacuahuac A: Escuela de Ingeniería y Ciencias, Tecnológico de Monterrey, Campus Monterrey Ave. Eugenio Garza Sada 2501, Monterrey, N.L, 64849, México
Fuentes-Cortés LF: Department of Energy Systems and Environment, IMT Atlantique, GEPEA, rue Alfred Kastler, Nantes, 44000, France
Gutierrez-Limon MA: Departamento de Procesos y Tecnología, Universidad Autónoma Metropolitana-Cuajimalpa, Av. Vasco de Quiroga 4871. C.P. 05348, Ciudad de México, México
Sales-Cruz M: Departamento de Energía, Universidad Autónoma Metropolitana-Azcapotzalco, Av. San Pablo 180. C.P. 02200, Ciudad de México, México
Flores-Tlacuahuac A: Escuela de Ingeniería y Ciencias, Tecnológico de Monterrey, Campus Monterrey Ave. Eugenio Garza Sada 2501, Monterrey, N.L, 64849, México
Fuentes-Cortés LF: Department of Energy Systems and Environment, IMT Atlantique, GEPEA, rue Alfred Kastler, Nantes, 44000, France
Gutierrez-Limon MA: Departamento de Procesos y Tecnología, Universidad Autónoma Metropolitana-Cuajimalpa, Av. Vasco de Quiroga 4871. C.P. 05348, Ciudad de México, México
Sales-Cruz M: Departamento de Energía, Universidad Autónoma Metropolitana-Azcapotzalco, Av. San Pablo 180. C.P. 02200, Ciudad de México, México
Journal Name
Systems and Control Transactions
Volume
4
First Page
1029
Last Page
1034
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 1029-1034-1269-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0317
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https://doi.org/10.69997/sct.182003
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Jun 27, 2025
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References Cited
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