Joint Initial Access and Localization in Millimeter Wave Vehicular Networks: a Hybrid Model/Data Driven Approach

2022 IEEE 12th Sensor Array and Multichannel Signal Processing Workshop (SAM)(2022)

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摘要
High resolution compressive channel estimation provides information for vehicle localization when a hybrid mmWave MIMO system is considered. Complexity and memory requirements can, however, become a bottleneck when high accuracy localization is required. An additional challenge is the need of path order information to apply the appropriate geometric relationships between the channel path parameters and the vehicle, RSU and scatterers position. In this paper, we propose a low complexity channel estimation strategy of the angle of departure and time difference of arrival based on multidimensional orthogonal matching pursuit. We also design a deep neural network that predicts the order of the channel paths so only the LoS and first order reflections are used for localization. Simulation results obtained with realistic vehicular channels generated by ray tracing show that sub-meter accuracy can be achieved for 50% of the users, without resorting to perfect synchronization assumptions or unfeasible all-digital high resolution MIMO architectures.
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关键词
all-digital high resolution MIMO architectures,millimeter wave vehicular networks,high resolution compressive channel estimation,vehicle localization,hybrid mmWave MIMO system,high accuracy localization,channel path parameters,low complexity channel estimation strategy,multidimensional orthogonal matching pursuit,deep neural network,channel paths,vehicular channels,hybrid model-data driven approach
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