The food industry is undergoing a digital transformation driven by the need for greater sustainability, efficiency, and data integration. This study presents a methodology for implementing a digital twin in an industrial food manufacturing process, using the vegetable broth production line as a case study. The workflow integrates process analysis, sensor data collection, and data reconciliation to improve the reliability of process variables and enable accurate simulation. The reconciled data were used to develop a dynamic model in commercial software, capable of simulating different operating conditions. Two start-up strategies, cold start-up and pre-heating, were compared, revealing that pre-heating reduces steam consumption by 62% and start-up time by 63%. These results demonstrate the potential of digital twins in optimizing operational efficiency and energy use in the food industry. Future developments may include real-time data acquisition, integration with control systems, and the use of AI for predictive maintenance and process optimization.

Energy-efficient start-up optimization via digital twin for a vegetable broth sterilization process / M.M. Bozzini, M. Menegon, A. Di Loreto, G. Lunari, S.S. Mariani, M. Vallerio, L. Piazza, F. Manenti. - In: JOURNAL OF FOOD ENGINEERING. - ISSN 0260-8774. - 406:(2026 Mar), pp. 112822.1-112822.9. [10.1016/j.jfoodeng.2025.112822]

Energy-efficient start-up optimization via digital twin for a vegetable broth sterilization process

M. Menegon
Secondo
;
L. Piazza
Penultimo
;
2026

Abstract

The food industry is undergoing a digital transformation driven by the need for greater sustainability, efficiency, and data integration. This study presents a methodology for implementing a digital twin in an industrial food manufacturing process, using the vegetable broth production line as a case study. The workflow integrates process analysis, sensor data collection, and data reconciliation to improve the reliability of process variables and enable accurate simulation. The reconciled data were used to develop a dynamic model in commercial software, capable of simulating different operating conditions. Two start-up strategies, cold start-up and pre-heating, were compared, revealing that pre-heating reduces steam consumption by 62% and start-up time by 63%. These results demonstrate the potential of digital twins in optimizing operational efficiency and energy use in the food industry. Future developments may include real-time data acquisition, integration with control systems, and the use of AI for predictive maintenance and process optimization.
No
English
food engineering; digital twin; data reconciliation; process simulation; optimization
Settore AGRI-07/A - Scienze e tecnologie alimentari
Articolo
Esperti anonimi
Pubblicazione scientifica
   DIGITAL FOOD PROCESSING AND OPTIMIZATION FOR SUSTAINABILITY
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   2022XJ4Z42_002
mar-2026
30-set-2025
Elsevier
406
112822
1
9
9
Pubblicato
Periodico con rilevanza internazionale
https://www.sciencedirect.com/science/article/pii/S0260877425003577?via=ihub
crossref
Aderisco
info:eu-repo/semantics/article
Energy-efficient start-up optimization via digital twin for a vegetable broth sterilization process / M.M. Bozzini, M. Menegon, A. Di Loreto, G. Lunari, S.S. Mariani, M. Vallerio, L. Piazza, F. Manenti. - In: JOURNAL OF FOOD ENGINEERING. - ISSN 0260-8774. - 406:(2026 Mar), pp. 112822.1-112822.9. [10.1016/j.jfoodeng.2025.112822]
open
Prodotti della ricerca::01 - Articolo su periodico
8
262
Article (author)
Periodico con Impact Factor
M.M. Bozzini, M. Menegon, A. Di Loreto, G. Lunari, S.S. Mariani, M. Vallerio, L. Piazza, F. Manenti
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1189498
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