Fingerprint positioning of users devices in long term evolution cellular network using K nearest neighbour algorithm

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Abstract

The rapid exponential growth in wireless technologies and the need for public safety has led to increasing demand for location-based services. Terrestrial cellular networks can offer acceptable position estimation for users that can meet the statutory requirements set by the Federal Communications Commission in case of network-based positioning, for safety regulations. In this study, the proposed radio frequency pattern matching (RFPM) method is implemented and tested to determine a user’s location effectively. The RFPM method has been tested and validated in two different environment. The evaluations show remarkable results especially in the Micro cell scenario, at 67% of positioning error 15m and at 90% 31.78m for Micro cell scenario, with results of 75.66m at 67% and 141.4m at 90% for Macro cell scenario.

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APA

Alhasan, M. J., Abdulhussein, S. M., & Khwayyir, A. H. K. (2021). Fingerprint positioning of users devices in long term evolution cellular network using K nearest neighbour algorithm. International Journal of Electrical and Computer Engineering, 11(1), 528–535. https://doi.org/10.11591/ijece.v11i1.pp528-535

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