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Autori principali: Pervej, Md-Ferdous, Pratik, Patel, Manjunatha, Koushik, Shamain, Prasad, Molisch, Andreas F.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.07967
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author Pervej, Md-Ferdous
Pratik, Patel
Manjunatha, Koushik
Shamain, Prasad
Molisch, Andreas F.
author_facet Pervej, Md-Ferdous
Pratik, Patel
Manjunatha, Koushik
Shamain, Prasad
Molisch, Andreas F.
contents Channel models that represent various operating conditions a communication system might experience are important for design and standardization of any communication system. While statistical channel models have long dominated this space, machine learning (ML) is becoming a popular alternative approach. However, existing approaches have mostly focused on predictive solutions to match instantaneous channel realizations. Other solutions have focused on pathloss modeling, while double-directional (DD) channel representation is needed for a complete description. Motivated by this, we (a) develop a generative solution that uses a hybrid Transformer (hTransformer) model with a low-rank projected attention calculation mechanism and a bi-directional long short-term memory (BiLSTM) layer to generate complete DD channel information and (b) design a domain-knowledge-informed training method to match the generated and true channel realizations' statistics. Our extensive simulation results validate that the generated samples' statistics closely align with the true statistics while mostly outperforming the performance of existing predictive approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2504_07967
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Double Directional Wireless Channel Generation: A Statistics-Informed Generative Approach
Pervej, Md-Ferdous
Pratik, Patel
Manjunatha, Koushik
Shamain, Prasad
Molisch, Andreas F.
Signal Processing
Information Theory
Channel models that represent various operating conditions a communication system might experience are important for design and standardization of any communication system. While statistical channel models have long dominated this space, machine learning (ML) is becoming a popular alternative approach. However, existing approaches have mostly focused on predictive solutions to match instantaneous channel realizations. Other solutions have focused on pathloss modeling, while double-directional (DD) channel representation is needed for a complete description. Motivated by this, we (a) develop a generative solution that uses a hybrid Transformer (hTransformer) model with a low-rank projected attention calculation mechanism and a bi-directional long short-term memory (BiLSTM) layer to generate complete DD channel information and (b) design a domain-knowledge-informed training method to match the generated and true channel realizations' statistics. Our extensive simulation results validate that the generated samples' statistics closely align with the true statistics while mostly outperforming the performance of existing predictive approaches.
title Double Directional Wireless Channel Generation: A Statistics-Informed Generative Approach
topic Signal Processing
Information Theory
url https://arxiv.org/abs/2504.07967