DeepTelecom: A Digital-Twin Deep Learning Dataset for Channel and MIMO Applications
DeepTelecom: A Digital-Twin Deep Learning Dataset for Channel and MIMO Applications
Domain-specific datasets are the foundation for unleashing artificial intelligence (AI)-driven wireless innovation. Yet existing wireless AI corpora are slow to produce, offer limited modeling fidelity, and cover only narrow scenario types. To address the challenges, we create DeepTelecom, a three-dimension (3D) digital-twin channel dataset. Specifically, a large language model (LLM)-assisted pipeline first builds the third level of details (LoD3) outdoor and indoor scenes with segmentable material-parameterizable surfaces. Then, DeepTelecom simulates full radio-wave propagation effects based on Sionna's ray-tracing engine. Leveraging GPU acceleration, DeepTelecom streams ray-path trajectories and real-time signal-strength heat maps, compiles them into high-frame-rate videos, and simultaneously outputs synchronized multi-view images, channel tensors, and multi-scale fading traces. By efficiently streaming large-scale, high-fidelity, and multimodal channel data, DeepTelecom not only furnishes a unified benchmark for wireless AI research but also supplies the domain-rich training substrate that enables foundation models to tightly fuse large model intelligence with future communication systems.
Bohao Wang、Zehua Jiang、Zhenyu Yang、Chongwen Huang、Yongliang Shen、Siming Jiang、Chen Zhu、Zhaohui Yang、Richeng Jin、Zhaoyang Zhang、Sami Muhaidat、Merouane Debbah
无线通信通信无线电设备、电信设备电子技术应用
Bohao Wang,Zehua Jiang,Zhenyu Yang,Chongwen Huang,Yongliang Shen,Siming Jiang,Chen Zhu,Zhaohui Yang,Richeng Jin,Zhaoyang Zhang,Sami Muhaidat,Merouane Debbah.DeepTelecom: A Digital-Twin Deep Learning Dataset for Channel and MIMO Applications[EB/OL].(2025-08-20)[2025-09-02].https://arxiv.org/abs/2508.14507.点此复制
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