2022-Sustainable Industrial Processing Summit
SIPS2022 Volume 8 Mauntz Intl. Symp. Energy Production

Editors:F. Kongoli, H. Dodds, S. Atnaw, T. Turna.
Publisher:Flogen Star OUTREACH
Publication Year:2022
Pages:266 pages
ISBN:978-1-989820-48-3(CD)
ISSN:2291-1227 (Metals and Materials Processing in a Clean Environment Series)
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    Using Physics-Based Modeling (Digital Twin) Methods and Machine Learning to Improve Energy Efficiency and Reduce Maintenance for the Global Cold Chain

    Leo Eskin1; Harvey Rubin2; Bhaskar Abhiraman3; Riley Fotis4;
    1SNOFOX SCIENCES, INC., Darnestown, United States; 2PERELMAN SCHOOL OF MEDICINE, UNIVERSITY OF PENNSYLVANIA, Philadelphia, United States; 3SCHOOL OF ENGINEERING AND APPLIED SCIENCE, UNIVERSITY OF PENNSYLVANIA, Morristown, United States; 4DEPARTMENT OF PHYSICS, UNIVERSITY OF PENNSYLVANIA, Philadelphia, United States;
    Type of Paper: Plenary
    Id Paper: 437
    Topic: 17

    Abstract:

    The global refrigeration industry (cold chain) encompasses a wide range of disciplines, including the food sector, where temperature-controlled warehouses, trucks and shipping containers maintain food safety, and the healthcare industry, where refrigeration preserves medicines and pharmaceuticals, including vaccines. It is estimated that the refrigeration sector consumes approximately seventeen percent of the global electricity production [1] and this is expected to grow in the coming years due to global warming.
    Significant performance enhancements, reduction in energy consumption and greenhouse gas emission, and improved maintenance intervals can be achieved by using physics-based thermodynamic modeling methods [2-5] to develop a digital twin for a range of industrial refrigeration systems. Implementations have been demonstrated for stand-alone, single-loop commercial vapor compression refrigeration systems (refrigerators or commercial cooling units) and for multi-loop, multi-compressor industrial refrigeration systems used in temperature-controlled warehouses up to several hundred thousand square feet in size. Such digital twins enable real-time performance monitoring by computing mass- and energy-balances using measured data, and the calculated results can be trended and used by machine learning algorithms to identify common equipment failures and alert personnel to operational problems.
    Examples are presented illustrating how the trended calculated results enable root-cause identification of a 40+% cooling capacity reduction, and a machine learning algorithm is presented demonstrating highly (98+%) accurate identification of the eight most common refrigeration system failure modes.

    Keywords:

    Energy; Engineering; Technology; Global Cold Chain; Refrigeration; Digital Twin; Machine Learning

    References:

    [1] International Institute of Refrigeration, 29th Informatory Note on Refrigeration Technologies, November 2015.
    [2] EBSILON®Professional heat balance software by STEAG Energy Services GmbH, Germany, www.ebsilon.com
    [3] C. P. Underwood, Seventh International IBPSA Conference (2001).
    [4] B. P. Rasmussen, C. Price, J. Koeln, B. Keating, A. Alleyne, Advances in Industrial Control, no. 9783319684611 (2018).
    [5] I. Saidi, A. Hammami, D. Soudani, Proceedings: confe ́rence international des e ́nergies renouvelables (Sousse, Tunisia, 2017).

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    Cite this article as:

    Eskin L, Rubin H, Abhiraman B, Fotis R. (2022). Using Physics-Based Modeling (Digital Twin) Methods and Machine Learning to Improve Energy Efficiency and Reduce Maintenance for the Global Cold Chain. In F. Kongoli, H. Dodds, S. Atnaw, T. Turna. (Eds.), Sustainable Industrial Processing Summit SIPS2022 Volume 8 Mauntz Intl. Symp. Energy Production (pp. 93-102). Montreal, Canada: FLOGEN Star Outreach