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AuthorMhiri, Mariem
AuthorMkacher, Hajer
AuthorAl-Khatib, Maryam
AuthorKharbeche, Mohamed
AuthorAlNouss, Ahmed
AuthorHaouari, Mohamed
Available date2025-10-26T05:58:43Z
Publication Date2025-11-30
Publication NameGas Science and Engineering
Identifierhttp://dx.doi.org/10.1016/j.jgsce.2025.205714
CitationMhiri, Mariem, Hajer Mkacher, Maryam Al-Khatib, Mohamed Kharbeche, Ahmed AlNouss, and Mohamed Haouari. "Enhancing Liquefied Natural Gas supply chain robustness through digital twin-driven machine learning models: A special case of cryogenic heat exchanger." Gas Science and Engineering (2025): 205714.
ISSN2949-9097
URIhttps://www.sciencedirect.com/science/article/pii/S2949908925001785
URIhttp://hdl.handle.net/10576/68144
AbstractThe Liquefied Natural Gas (LNG) supply chain plays a critical role in the global energy sector but remains vulnerable to technical disruptions that compromise operational stability. Equipment failures pose significant risks, leading to production halts and quality degradation. This paper proposes a proof-of-concept resilience-enhancing framework to mitigate minor disruptions that, if left unaddressed, could escalate and impact LNG production continuity. Focusing on the Cryogenic Heat Exchanger (CHE) as a case study, an essential component of liquefaction, the framework integrates digital twins (DT), machine learning (ML), and predictive model to enable real-time monitoring, early failure detection, and proactive mitigation. First, randomly online simulated data on critical parameters (temperature, pressure, and flow rate) is collected using IoT sensors. Next, this data is processed through Aspen HYSYS-based and ML-driven DT to assess the system performance and predict potential failures, respectively. Finally, a Vector Autoregressive model is employed to forecast future operating conditions based on recent observations, capturing system dynamics and correlations. The resulting forecasts will feed the ML model to predict the next operational state. The framework is validated through an extensive computational study on randomly generated scenarios. The results demonstrate that the proposed system monitoring enhances LNG supply chain robustness, achieving early failure detection averaging 57.21% and significant downtime reduction reaching 31.57% on average compared to corrective maintenance strategies. These findings underscore the framework’s potential to improve operational efficiency and stability in LNG production, offering a scalable solution for supply chain robustness.
SponsorResearch reported in this publication was supported by the Qatar Research Development and Innovation Council [NPRP14C-0920-210017/NPRP14C-37882-SP-513]. The content is solely the responsibility of the authors and does not necessarily represent the official views of Qatar Research Development and Innovation Council. This publication was made possible by the Collaborative Grant [QUCG-CENG-23/24-253] from Qatar University, Qatar. Open Access funding provided by the Qatar National Library . The third author would like to thank the Graduate Studies under the Research and Graduate Studies Office at Qatar University for the Graduate Assistantship. The statements made herein are solely the responsibility of the authors.
Languageen
PublisherElsevier
SubjectLNG supply chain
Digital twins
Machine learning
Predictive maintenance
Supply chain robustness
Supply chain resilience
Cryogenic heat exchanger
TitleEnhancing Liquefied Natural Gas supply chain robustness through digital twin-driven machine learning models: A special case of cryogenic heat exchanger
TypeArticle
Volume Number143
Open Access user License http://creativecommons.org/licenses/by/4.0/
ESSN2949-9089
dc.accessType Full Text


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