Department of Food Informatics and Computational Science Lab, University of Hohenheim, 70599 Stuttgart, Germany.
Sensors (Basel). 2021 Dec 24;22(1):115. doi: 10.3390/s22010115.
The food industry faces many challenges, including the need to feed a growing population, food loss and waste, and inefficient production systems. To cope with those challenges, digital twins that create a digital representation of physical entities by integrating real-time and real-world data seem to be a promising approach. This paper aims to provide an overview of digital twin applications in the food industry and analyze their challenges and potentials. Therefore, a literature review is executed to examine digital twin applications in the food supply chain. The applications found are classified according to a taxonomy and key elements to implement digital twins are identified. Further, the challenges and potentials of digital twin applications in the food industry are discussed. The survey revealed that the application of digital twins mainly targets the production (agriculture) or the food processing stage. Nearly all applications are used for monitoring and many for prediction. However, only a small amount focuses on the integration in systems for autonomous control or providing recommendations to humans. The main challenges of implementing digital twins are combining multidisciplinary knowledge and providing enough data. Nevertheless, digital twins provide huge potentials, e.g., in determining food quality, traceability, or designing personalized foods.
食品工业面临着许多挑战,包括需要养活不断增长的人口、食物损失和浪费以及生产系统效率低下。为了应对这些挑战,通过整合实时和现实世界的数据来创建物理实体的数字表示的数字孪生似乎是一种很有前途的方法。本文旨在提供食品工业中数字孪生应用的概述,并分析它们的挑战和潜力。因此,进行了文献综述,以检查食品供应链中的数字孪生应用。发现的应用根据分类法进行分类,并确定了实施数字孪生的关键要素。此外,还讨论了食品工业中数字孪生应用的挑战和潜力。调查显示,数字孪生的应用主要针对生产(农业)或食品加工阶段。几乎所有的应用都用于监测,许多应用用于预测。然而,只有一小部分专注于系统的集成,以实现自主控制或向人类提供建议。实施数字孪生的主要挑战是结合多学科知识和提供足够的数据。然而,数字孪生提供了巨大的潜力,例如,确定食品质量、可追溯性或设计个性化食品。