供应链
产品(数学)
质量(理念)
采后
集合(抽象数据类型)
业务
计算机科学
营销
生物
数学
哲学
几何学
认识论
园艺
程序设计语言
作者
Thijs Defraeye,Chandrima Shrivastava,Tarl Berry,Pieter Verboven,Daniel I. Onwude,Seraina Schudel,Andreas Bühlmann,Paul Cronjé,René M. Rossi
标识
DOI:10.1016/j.tifs.2021.01.025
摘要
Digital twins have advanced fast in various industries, but are just emerging in postharvest supply chains. A digital twin is a virtual representation of a certain product, such as fresh horticultural produce. This twin is linked to the real-world product by sensors supplying data of the environmental conditions near the target fruit or vegetable. Statistical and data-driven twins quantify how quality loss of fresh horticultural produce occurs by grasping patterns in the data. Physics-based twins provide an augmented insight into the underlying physical, biochemical, microbiological and physiological processes, enabling to explain also why this quality loss occurs. We identify what the key advantages are of digital twins and how the supply chain of fresh horticultural produce can benefit from them in the future. A digital twin has a huge potential to help horticultural produce to tell its history as it drifts along throughout its postharvest life. The reason is that each shipment is subject to a unique and unpredictable set of temperature and gas atmosphere conditions from farm to consumer. Digital twins help to identify the resulting, largely uncharted, postharvest evolution of food quality. The benefit of digital twins particularly comes forward for perishable species and at low airflow rates. Digital twins provide actionable data for exporters, retailers, and consumers, such as the remaining shelf life for each shipment, on which logistics decisions and marketing strategies can be based. The twins also help diagnose and predict potential problems in supply chains that will reduce food quality and induce food loss. Twins can even suggest preventive shipment-tailored measures to reduce retail and household food losses.
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