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RFID-based multi-attribute logistics information processing and anomaly mining in production logistics

机译:基于RFID的多属性物流信息处理和生产物流中的异常挖掘

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摘要

Timely collecting logistics information and finding anomalies of material supply plays a critical role in modern manufacturing systems. The problem is how to obtain multi-attribute logistics information of production logistics and build an effective approach for mining anomalies from the huge number of RFID data. The multi-attribute, randomness and various measure units of logistics states further aggravate the problem. In this paper, a novel RFID-based logistics information processing approach is proposed. Firstly, the state features of production logistics is discussed from multi-attribute perspectives including time, location, quantities, sequence and path, and a set of calculating models is set up to process RFID data for getting multi-attribute state data. Furthermore, in case of the randomness and various measure units of state data, a similarity model is presented to unify measure units of state data, and a clustering approach is proposed to divide the huge number of RFID data into different clusters with high close degree for finding out anomalies. Lastly, the experimental results show that the proposed approach can efficiently find out more than 90% of anomalies among production logistics.
机译:及时收集物流信息和寻找材料供应的异常在现代制造系统中起着关键作用。问题是如何获取生产物流的多属性物流信息,并从大量的RFID数据中构建挖掘异常的有效方法。物流国家的多属性,随机性和各种措施单位进一步加剧了问题。本文提出了一种新颖的基于RFID的物流信息处理方法。首先,从多属性透视图讨论了生产物流的状态特征,包括时间,位置,数量,序列和路径,并设置一组计算模型以处理RFID数据以获得多属性状态数据。此外,在状态数据的随机性和各种测量单位的情况下,提出了一种相似性模型来统一状态数据的测量单位,并且提出了一种聚类方法,以将大量的RFID数据划分为具有高密度的不同群集。找出异常。最后,实验结果表明,该方法可以有效地发现生产物流中超过90%的异常。

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