Unlocking Realism and Interpretability in Wireless Channel Synthesis: A Physics-Guided Generative Approach (opens in new tab)
In recent years, machine learning (ML) methods have become increasingly popular for wireless communication systems. These require large amounts of data reflecting the behavior of realistic channels with high fidelity. However, sampling over-the-air (OTA) channel data is an extremely resource-intensive process which cannot accurately represent the variety of real world channels. This results in the need for realistic training data for ML systems....
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