An Enhanced Dynamic Ray Tracing Architecture for Channel Prediction Based on Multipath Bidirectional Geometry and Field Extrapolation
With the development of sixth generation (6G) networks toward digitalization and intelligentization of communications, rapid and precise channel prediction is crucial for the network potential release. Interestingly, a dynamic ray tracing (DRT) approach for channel prediction has recently been propo...
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Zusammenfassung: | With the development of sixth generation (6G) networks toward digitalization
and intelligentization of communications, rapid and precise channel prediction
is crucial for the network potential release. Interestingly, a dynamic ray
tracing (DRT) approach for channel prediction has recently been proposed, which
utilizes the results of traditional RT to extrapolate the multipath geometry
evolution. However, both the priori environmental data and the regularity in
multipath evolution can be further utilized. In this work, an enhanced-dynamic
ray tracing (E-DRT) algorithm architecture based on multipath bidirectional
extrapolation has been proposed. In terms of accuracy, all available
environment information is utilized to predict the birth and death processes of
multipath components (MPCs) through bidirectional geometry extrapolation. In
terms of efficiency, bidirectional electric field extrapolation is employed
based on the evolution regularity of the MPCs' electric field. The results in a
Vehicle-to-Vehicle (V2V) scenario show that E-DRT improves the accuracy of the
channel prediction from 68.3% to 94.8% while reducing the runtime by 7.2%
compared to DRT. |
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DOI: | 10.48550/arxiv.2405.02825 |