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Orientador(es)
Resumo(s)
With the advancement of Beyond 5G/6G technologies, accurate positioning and velocity estimation in Internet of Vehicles (IoV) systems has become increasingly critical. Although GPS can provide real-time location information, its performance degrades significantly in environments with heavy obstructions, such as urban areas surrounded by skyscrapers. To address this limitation, this study proposes a positioning framework that relies on channel parameter estimation derived from multi-antenna signal processing. Specifically, we adopt an adaptive low-complexity 2D MUSIC (ALC2D-MUSIC) algorithm to estimate signal directions, and further apply an unscented Kalman filter (UKF) using extracted Direction of Arrival (DoA) and Time of Arrival (ToA) information to estimate vehicle positions and velocities. The proposed system is robust to variations in road geometry, making it suitable for deployment in diverse traffic environments. Simulation results demonstrate that our method achieves high estimation accuracy and outperforms a compressive sensing-based approach across different SNR levels, angular search resolutions, and antenna array sizes. Furthermore, the UKF-based tracking algorithm shows superior performance in curved road scenarios, validating its effectiveness under realistic mobility conditions.
Descrição
Publisher Copyright: © 2025 IEEE.
Palavras-chave
2D MUSIC channel estimation extended Kalman filter Internet of Vehicular Kalman filter position and velocity estimation unscented Kalman filter Automotive Engineering
