RFID Anti-Collision Detection Algorithm Based on Improved Adaptive N-Tree

Yuxia Li, Zhinan Zhou
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Abstract

This paper proposes a type of improved adaptive N-tree anti-collision algorithm based on the traditional one for RFID system by combination with maximum likelihood estimation and probe pre-detection. This algorithm inherits some features from Alpha- and tree-based anti-collision algorithms and effectively restrain the star-vation of the two algorithms. It has also filled in the gaps of tag collision with higher probability. The study turns out that the improved adaptive N-tree anti-collision algorithm as proposed can feature adaptive choice of the value N of the tree, length breaks of free timeslots, restraints on defects such as more tag classification and higher collision probability just as what the traditional tree-based algorithm has. N-tree built by level-to-level frame identification eliminates the free timeslots, and improves the tag identification precision for the RFID system. The results from simulation experiment reveal that the algorithm proposed in this paper has lower Error Sampling Reckon (ESR) and Throughput Rate Deviation (TRD), and features large throughput rate (87%), low delay of tag recognition and minimum timeslots, and etc. hence to be better applied in large-scale logistics and other fields where fast information recognition is involved.
基于改进自适应n树的RFID防碰撞检测算法
结合极大似然估计和探针预检测,提出了一种改进的RFID系统自适应n树防碰撞算法。该算法继承了基于Alpha和基于树的抗碰撞算法的一些特征,有效地抑制了这两种算法的星化。它还填补了高概率标签碰撞的空白。研究表明,改进的自适应N树抗碰撞算法与传统的基于树的算法一样,具有自适应选择树的N值、自由时点的断裂长度、对标签分类多、碰撞概率高等缺陷的约束等特点。通过逐层帧识别构建n树,消除了空闲时隙,提高了RFID系统的标签识别精度。仿真实验结果表明,本文算法具有较低的误差采样估计(Error Sampling estimation, ESR)和吞吐量偏差(Throughput Rate Deviation, TRD),具有吞吐量大(87%)、标签识别延迟低、时点最小等特点,能够更好地应用于大规模物流等需要快速信息识别的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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