RFID Network Planning for Flexible Manufacturing Workshop with Multiple Coverage Requirements

Lihui Wu, Junfei Ren, Yuansheng Li, Zhengzheng Dai, Zhongwei Zhang, Zhaoyun Wu
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引用次数: 1

Abstract

Flexible manufacturing workshops (FMWs) are important part of modern manufacturing enterprises. An optimized layout of radio frequency identifications (RFIDs) in an FMW is of great significance to improve information perception quality and reduce RFID deployment cost. Therefore, the RFID network planning for an FMW is studied in this paper. Firstly, three common coverage requirements are analyzed, and a RFID reader radiation model and an FMW discrete grids model are constructed. Secondly, a 0–1 integer programming-based RFID network planning model is established with the optimization objectives of the RFID deployment cost, reader interference, and reading efficiency. Thirdly, a hierarchical clustering and gradient descent-based network planning approach is proposed to solve the network planning model. An FMW case in a flexible manufacturing enterprise is taken to verify the RFID network planning model and the hierarchical clustering approach. The results show that the proposed model and approach are effective.
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多覆盖柔性制造车间RFID网络规划
柔性制造车间是现代制造企业的重要组成部分。射频识别(RFID)在FMW中的优化布局对提高信息感知质量和降低RFID部署成本具有重要意义。因此,本文对FMW无线射频识别网络规划进行了研究。首先,分析了三种常见的覆盖需求,构建了RFID读写器辐射模型和FMW离散网格模型。其次,以RFID部署成本、读写器干扰和读取效率为优化目标,建立了基于0-1整数规划的RFID网络规划模型;第三,提出了一种基于分层聚类和梯度下降的网络规划方法来求解网络规划模型。以某柔性制造企业为例,对RFID网络规划模型和分层聚类方法进行了验证。结果表明,所提出的模型和方法是有效的。
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