cs.AI updates on arXiv.org 09月08日
AI驱动无线前传压缩技术综述与策略
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本文综述了AI驱动的无线前传压缩技术,分析了两种高压缩路径,并提出适用于蜂窝无源架构的压缩策略,旨在实现高压缩比与可控性能损失。

arXiv:2509.04805v1 Announce Type: cross Abstract: Modern fronthaul links in wireless systems must transport high-dimensional signals under stringent bandwidth and latency constraints, which makes compression indispensable. Traditional strategies such as compressed sensing, scalar quantization, and fixed-codec pipelines often rely on restrictive priors, degrade sharply at high compression ratios, and are hard to tune across channels and deployments. Recent progress in Artificial Intelligence (AI) has brought end-to-end learned transforms, vector and hierarchical quantization, and learned entropy models that better exploit the structure of Channel State Information(CSI), precoding matrices, I/Q samples, and LLRs. This paper first surveys AI-driven compression techniques and then provides a focused analysis of two representative high-compression routes: CSI feedback with end-to-end learning and Resource Block (RB) granularity precoding optimization combined with compression. Building on these insights, we propose a fronthaul compression strategy tailored to cell-free architectures. The design targets high compression with controlled performance loss, supports RB-level rate adaptation, and enables low-latency inference suitable for centralized cooperative transmission in next-generation networks.

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AI压缩 无线前传 压缩策略 蜂窝无源架构 性能损失
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