Proceedings of ESCAPE 35ISSN: 2818-4734
Volume: 4 (2025)
Table of Contents
LAPSE:2025.0413
Published Article
LAPSE:2025.0413
Integration of Graph Theory and Machine Learning for Enhanced Process Synthesis and Design of Wastewater Transportation Networks
Andres Castellar-Freile, Jean Pimentel, Alec Guerra, Pratap Kodate, Kirti M. Yenkie
June 27, 2025
Abstract
Process synthesis is a fundamental step in process design. The aim is to determine the optimal configuration of unit operations and stream flows to enhance key performance metrics. Traditional methods provide just one optimal solution and are strongly dependent on user-defined technologies, stream connections, and initial guesses for unknown variables. Usually, a single solution is not sufficient for adequate decision-making, especially, when properties such as flexibility or reliability are considered in addition to the process economics. Wastewater Treatment network synthesis and design is a complex problem that demands innovative approaches in design, retrofits, and maintenance strategies. Considering this, an enhanced framework for improving reliability in wastewater transportation networks based on graph theory and machine learning is presented. Machine learning models were developed to predict failure probability, where the XGBoost model provided the best predictions. To select the appropriate solution, a trade-off between cost and reliability metrics is presented which is implemented by analyzing the results from the non-dominated solutions obtained for the case study demonstrated in this paper.
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Suggested Citation
Castellar-Freile A, Pimentel J, Guerra A, Kodate P, Yenkie KM. Integration of Graph Theory and Machine Learning for Enhanced Process Synthesis and Design of Wastewater Transportation Networks. Systems and Control Transactions 4:1625-1630 (2025) https://doi.org/10.69997/sct.135755
Author Affiliations
Castellar-Freile A: Rowan University, Department of Chemical Engineering, Glassboro, New Jersey, USA
Pimentel J: Széchenyi István University, Sustainability Competence Center, Gyor, Hungary
Guerra A: Rowan University, Department of Chemical Engineering, Glassboro, New Jersey, USA
Kodate P: Indian Institute of Technology, Department of Physics, Kharagpur, India
Yenkie KM: Rowan University, Department of Chemical Engineering, Glassboro, New Jersey, USA
Journal Name
Systems and Control Transactions
Volume
4
First Page
1625
Last Page
1630
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 1625-1630-1770-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0413
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Jun 27, 2025
 
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References Cited
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