International Journal of Industrial Engineering and Management

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Forthcoming
Original Research Article

Digital Twin-Enabled Thermal Energy Management System for Sustainable Manufacturing Process Optimization

Otabek Mukhitdinov
Kimyo International University in Tashkent, Shota Rustaveli str. 156, Tashkent 100121, Uzbekistan
Doniyor Jumanazarov
Urgench State University, Kh. Alimdjan str. 14, Urgench 220100, Uzbekistan
Egambergan Khudoynazarov
Mamun University, Bolkhovuz Street 2, Khiva 220900, Uzbekistan
Abdusalom Umarov
University of Tashkent for Applied Sciences, Str. Gavhar 1, Tashkent 100149, Uzbekistan
Ahmed Mohsin Alsayah
Refrigeration & Air-condition Department, Technical Engineering College, The Islamic University, Najaf, Iraq

Published 2026-01-31

abstract views: 17 // FULL TEXT ARTICLE (PDF): 7


Keywords

  • Digital twin,
  • Energy efficiency,
  • Manufacturing optimization,
  • Sustainable production,
  • Thermal management

How to Cite

Mukhitdinov, O., Jumanazarov, D., Khudoynazarov, E., Umarov, A., & Alsayah, A. M. (2026). Digital Twin-Enabled Thermal Energy Management System for Sustainable Manufacturing Process Optimization. International Journal of Industrial Engineering and Management, article in press. https://doi.org/10.24867/IJIEM-401

Abstract

Manufacturing processes consume substantial thermal energy, yet siloed management approaches cannot exploit facility-wide synergies. This study develops and validates an integrated Digital Twin (DT) that fuses physics-based thermal models with machine-learning forecasts and multi-objective optimization to coordinate process heat, waste-heat recovery, thermal storage, and on-site renewables in real-time. Deployed across four heterogeneous manufacturing facilities, the DT generated operator-ready knee-point recommendations that balanced energy use, operating cost, and emissions under changing production and weather conditions. Across sites, deployment produced substantial, sustained gains in thermal-energy efficiency and marked reductions in carbon intensity (approximately 27% higher efficiency and about one-third lower emissions in aggregate), demonstrating that system-level orchestration outperforms isolated component upgrades. Novelty lies in plant-scale, real-time co-optimization of process heat, waste-heat recovery, thermal storage, and on-site renewables using a hybrid physics–ML digital twin with uncertainty-aware multi-objective control, field-validated across four heterogeneous manufacturing sites.

Article history: Received (August 19, 2025); Revised (October 21, 2025); Accepted (November 13, 2025); Published online (January 30, 2026)

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