Data Driven Environment Classification Using Wireless Signals


연구 분야: Infrastructure



학회: ACM MobiCom '24: Proceedings of the 30th Annual International Conference on Mobile Computing and Networking


초록

Robust classification of the operational environment of wireless devices is becoming increasingly important for wireless network optimization, particularly in a shared spectrum environment. Distinguishing between indoor and outdoor devices can enhance reliability and improve coexistence with existing, outdoor, incumbents. For instance, the unlicensed but shared 6 GHz band (5.925 - 7.125 GHz) enables sharing by imposing lower transmit power for indoor unlicensed devices and a spectrum coordination requirement for outdoor devices. Further, indoor devices are prohibited from using battery power, external antennas, and weatherization to prevent outdoor operations. As these rules may be circumvented, we propose a robust indoor/outdoor classification method by leveraging the fact that the radio-frequency environment faced by a device are quite different indoors and outdoors. We first collect signal strength data from all cellular and Wi-Fi bands that can be received by a smartphone in various environments (indoor interior, indoor near windows, and outdoors), along with GPS accuracy, and then evaluate three machine learning (ML) methods: deep neural network (DNN), decision tree, and random forest to perform classification into these three categories. Our results indicate that the DNN model performs the best, particularly in minimizing the most important classification error, that of classifying outdoor devices as indoor interior devices.


Author Profile
Hossein Nasiri

University of Notre Dame South Bend USA

United States
Author Profile
Seda Tusha

University of Notre Dame South Bend US

United States
Author Profile
Muhammad Iqbal Rochman

University of Notre Dame South Bend US

United States

📄 논문 정보

발행 연도 2024년
인용수 1
출판 국가 United States
사이트 ACM
좋아요 수 0

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