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Multiframe Maximum-Likelihood Tag Estimation for RFID Anticollision Protocols

机译:RFID防冲突协议的多帧最大似然标签估计

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摘要

Automatic identification based on radio frequency identification (RFID) is progressively being introduced into industrial environments, enabling new applications and processes. In the context of communications, RFID rely mostly on Frame Slotted Aloha (FSA) anticollision protocols. Their goal is to reduce the time required to detect all the tags within range (identification time). Using FSA, the maximum identification rate is achieved when the number of contending tags equals the number of contention slots available in the frame. Therefore, the reader must estimate the number of contenders and allocate that number of slots for the next frame. This paper introduces the new MFML-DFSA anticollision protocol. It estimates the number of contenders by means of a maximum-likelihood estimator, which uses the statistical information from several frames (multiframe estimation) to improve the accuracy of the estimate. Based on this expected number of tags, the algorithm determines the best frame length for the next reading frame, taking into account the constraints of the EPCglobal Class-1 Gen-2 standard. The MFML-DFSA algorithm is compared with previous proposals and found to outperform these in terms of (lower) average identification time and computational cost, which makes it suitable for implementation in commercial RFID readers.
机译:基于射频识别(RFID)的自动识别正在逐步引入工业环境,从而实现新的应用和过程。在通信方面,RFID主要依赖于帧时隙Aloha(FSA)防冲突协议。他们的目标是减少检测范围内所有标签所需的时间(识别时间)。使用FSA,当竞争标签的数量等于帧中可用的争用时隙的数量时,可以达到最大识别率。因此,阅读器必须估计竞争者的数量,并为下一帧分配该插槽数量。本文介绍了新的MFML-DFSA防冲突协议。它通过最大似然估计器估计竞争者的数量,该方法使用来自多个帧的统计信息(多帧估计)来提高估计的准确性。根据预期的标签数量,算法会考虑到EPCglobal Class-1 Gen-2标准的约束,确定下一个阅读帧的最佳帧长。将MFML-DFSA算法与先前的建议进行比较,发现在(较低的)平均识别时间和计算成本方面优于这些建议,这使其适合在商用RFID阅读器中实施。

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