首页> 外文会议>9th International Conference on Signal Processing(第九届国际信号处理学术会议)(ICSP'08)论文集 >Regression analysis for supply chain logged data:A simulated case study on shelf life prediction
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Regression analysis for supply chain logged data:A simulated case study on shelf life prediction

机译:供应链记录数据的回归分析:保质期预测的模拟案例研究

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The paper illustrates that valuable information can be mined from temperature data collected along the perishable food produce supply chain.Three regression techniques: Ordinary Least Square (OLS),Principal Component Regression (PCR) and Latent Root Regression (LRR) have been used to predict remaining shelf life of tropical seafood products.The results show that LRR is the best of the three regression techniques and works well in predicting remaining shelf life for tropical seafood.The results demonstrate the potential usefulness of utilizing automated temperature data collection (e.g.using RFID sensors) to help achieve a challenging business objective–remote real-time prediction of remaining shelf life of chilled foods.
机译:本文说明可以从易变质食品供应链中收集的温度数据中获取有价值的信息。三种回归技术:普通最小二乘(OLS),主成分回归(PCR)和潜在根回归(LRR)已用于预测结果表明,LRR是三种回归技术中的最佳方法,并且可以很好地预测热带海鲜的剩余货架期。结果表明,利用自动温度数据收集(例如,使用RFID传感器)具有潜在的实用性)以帮助实现具有挑战性的业务目标-远程预测冷藏食品的剩余保质期。

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