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Retrospective Maximum Likelihood Decision Rule for Tag Cognizance in RFID Networks

机译:RFID网络中标签识别的追溯最大似然决策规则

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摘要

We consider an RFID network configured as a star in which tags stationarily move into and out of the vicinity of the reader. To cognize the neighboring tags in the RFID network, we propose a scheme based on dynamic framed and slotted ALOHA which determines the number of slots belonging to a frame in a dynamic fashion. The tag cognizance scheme distinctively employs a rule for estimating the expected number of neighboring tags, identified as R-retrospective maximum likelihood rule, where the observations attained in the R previous frames are used in maximizing the likelihood of expected number of tags. Simulation result shows that a slight increase in depth of retrospect is able to significantly improve the cognizance performance.
机译:我们考虑一个RFID网络,该网络配置为星形,其中标签固定地移入和移出阅读器附近。为了识别RFID网络中的相邻标签,我们提出了一种基于动态成帧和带时隙ALOHA的方案,该方案以动态方式确定属于帧的时隙数。标签识别方案独特地采用用于估计相邻标签的预期数量的规则,该规则被标识为R回顾最大似然规则,其中在R个先前帧中获得的观察结果用于最大化标签的预期数量的可能性。仿真结果表明,回溯深度的略微增加能够显着提高认知性能。

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