Machine Learning-Based Localization Accuracy of RFID Sensor Networks via RSSI Decision Trees and CAD Modeling for Defense Applications
Curtis Lee Shull, Merrick Green

TL;DR
This study evaluates RFID sensor network localization accuracy using RSSI data and decision trees within a CAD-modeled environment, highlighting challenges and potential improvements for defense logistics security.
Contribution
It introduces a simulation framework combining RSSI data, decision trees, and CAD modeling to assess RFID localization in defense storage scenarios.
Findings
Overall accuracy of 34.2% in zone classification
F1-scores above 0.40 for several zones
Misclassification issues in rare classes like LabZoneC
Abstract
Radio Frequency Identification (RFID) tracking may be a viable solution for defense assets that must be stored in accordance with security guidelines. However, poor sensor specificity (vulnerabilities include long range detection, spoofing, and counterfeiting) can lead to erroneous detection and operational security events. We present a supervised learning simulation with realistic Received Signal Strength Indicator (RSSI) data and Decision Tree classification in a Computer Assisted Design (CAD)-modeled floor plan that encapsulates some of the challenges encountered in defense storage. In this work, we focused on classifying 12 lab zones (LabZoneA-L) to perform location inference. The raw dataset had approximately 980,000 reads. Class frequencies were imbalanced, and class weights were calculated to account for class imbalance in this multi-class setting. The model, trained on…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · RFID technology advancements · Wireless Signal Modulation Classification
