Revisiting RFID Missing Tag Identification: Theoretical Foundation and Algorithm Design

Kanghuai Liu, Lin Chen*, Jihong Yu, Ziyue Jia

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

We revisit the problem of missing tag identification in RFID networks by making three contributions. Firstly, we quantitatively compare and gauge the existing propositions spanning over a decade on missing tag identification. We show that the expected execution time of the best solution in the literature is Θ (N+(1-α )2(1-δ )22) , where δ and ϵ are parameters quantifying the required identification accuracy, N denotes the number of tags in the system, among which αN tags are missing. Secondly, we analytically establish the expected execution time lower-bound for any missing tag identification algorithm as Θ (N\log N+ (1-δ )2(1-α )22 \log (1-δ )(1-α )ϵ) , thus setting the theoretical performance limit. Thirdly, we develop two novel missing tag identification algorithms with the expected execution time of Θ (log log N/log NN+ (1-α)2(1-δ )2ϵ2), reducing the time overhead by a factor of up to log N over the best algorithm in the literature. The key technicality in our first algorithm is a novel data structure termed as collision-partition tree (CPT), built on a subset of bits in tag pseudo-IDs, leading to a more balanced tree structure and reducing the time complexity in parsing the entire tree. To further improve time efficiency, our second algorithm integrates multiple CPTs to form a collision-partition forest (CPF), reducing both the number of slots and the quantity of information broadcasting.

Original languageEnglish
Pages (from-to)4056-4066
Number of pages11
JournalIEEE/ACM Transactions on Networking
Volume32
Issue number5
DOIs
Publication statusPublished - 2024

Keywords

  • RFID
  • missing tag identification

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