数字孪生集成在水果供应链中的动态质量损失控制

IF 5.8 2区 农林科学 Q1 ENGINEERING, CHEMICAL Journal of Food Engineering Pub Date : 2025-03-19 DOI:10.1016/j.jfoodeng.2025.112577
Yifeng Zou , Junzhang Wu , Xiangchao Meng , Xinfang Wang , Alessandro Manzardo
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引用次数: 0

摘要

有效的冷链管理对于最大限度地减少食品损失和保持易腐物流的质量至关重要。本研究整合了数字孪生(DT)和人工智能(AI)技术,建立了一个冷供应链的“五维模型”,采用两步方法提高了温度预测的准确性,以估计保质期。在第一步中,基于长短期记忆(LSTM)的模型(仅由实验验证的温度数据训练)准确地预测了箱内条件。随后,基于文献的动力学模型应用完善的参数来估计剩余的货架寿命。通过在托盘水平放置单个传感器并应用我们的箱级数字孪生模型,我们实现了低于±0.3°C (2σ)的温度预测误差,这转化为高度易腐水果(如草莓和荔枝)的保质期估计误差低于±1.2天。模拟还显示,集成的DT-AI系统将草莓、荔枝、橙子和苹果的食物损失分别减少了8.6%、12.1%、13.6%和15.5%,在准确性和食品安全方面都超过了简单的基于环境的方法,特别是对于高度易腐的农产品。尽管dt(箱,托盘,集装箱)的等级缩放表明在较大的单位上偏差会增加,但这种模型精度和资源效率之间的权衡使得解决方案在不同的冷供应场景中都是实用的。未来的工作可能包括终端质量评估和先进的管理模块,以进一步提高可靠性,减少浪费,促进全球食品物流的可持续性。
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Digital twin integration for dynamic quality loss control in fruit supply chains
Effective cold chain management is imperative for minimizing food loss and maintaining quality in perishable logistics. This study integrates digital twin (DT) and artificial intelligence (AI) technologies to establish a “five-dimensional model” for cold supply chains, featuring a two-step approach that improve temperature prediction accuracy for shelf-life estimation. In the first step, a long short-term memory (LSTM) based model—trained solely on experimentally verified temperature data—accurately forecasts in-box conditions. Subsequently, a literature-based kinetic model applies well-established parameters to estimate remaining shelf life. By placing a single sensor at the pallet level and applying our box-level digital twin model, we achieved a temperature prediction error below ±0.3 °C (2σ), which translated into a shelf-life estimation error of under ±1.2 days for highly perishable fruits such as strawberries and lychees. Simulations also reveal the integrated DT–AI system reduces food loss by 8.6 %, 12.1 %, 13.6 %, and 15.5 % for strawberries, lychees, oranges, and apples, respectively, surpassing simpler ambient-based methods in both accuracy and food safety—particularly for highly perishable produce. Although hierarchical scaling of DTs (box, pallet, container) indicates increasing deviations at larger units, this trade-off between model precision and resource efficiency renders the solution practical across diverse cold-supply scenarios. Future work may incorporate end-point quality assessments and advanced management modules to further enhance reliability, reduce waste, and foster sustainability in global food logistics.
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来源期刊
Journal of Food Engineering
Journal of Food Engineering 工程技术-工程:化工
CiteScore
11.80
自引率
5.50%
发文量
275
审稿时长
24 days
期刊介绍: The journal publishes original research and review papers on any subject at the interface between food and engineering, particularly those of relevance to industry, including: Engineering properties of foods, food physics and physical chemistry; processing, measurement, control, packaging, storage and distribution; engineering aspects of the design and production of novel foods and of food service and catering; design and operation of food processes, plant and equipment; economics of food engineering, including the economics of alternative processes. Accounts of food engineering achievements are of particular value.
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