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Published:2026/1/2 9:11:12

爆速通信!MIMOの秘密🚀(超要約:fronthaul改善✨)

  1. ギャル電波到来!
  2. fronthaul革命!
  3. 未来がアガる↑

fronthaul(基地局とアンテナをつなぐ回線)のギガ不足を解消! 大容量データ通信のボトルネックを解決するよ💖

AAS(アンテナシステム)とBBU(基地局の頭脳)の連携が神ってる! サブスペース選択と量子化(データの圧縮)で、通信速度爆上げ🚀

5G/6G時代のビジネスチャンス爆誕! VR/AR、自動運転、AI… 新しいサービスがどんどん生まれる予感✨

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Splitting Precoding with Subspace Selection and Quantized Refinement for Massive MIMO

Yasaman Khorsandmanesh / Emil Bjornson / Joakim Jalden

Limited fronthaul capacity is a practical bottleneck in massive multiple-input multiple-output (MIMO) 5G architectures, where a base station (BS) consists of an advanced antenna system (AAS) connected to a baseband unit (BBU). Conventional downlink designs place the entire precoding computation at the BBU and transmit a high-dimensional precoding matrix over the fronthaul, resulting in substantial quantization losses and signaling overhead. This letter proposes a splitting precoding architecture that separates the design between the AAS and BBU. The AAS performs a local subspace selection to reduce the channel dimensionality, while the BBU computes an optimized quantized refinement precoding based on the resulting effective channel. The numerical results show that the proposed splitting precoding strategy achieves higher sum spectral efficiency than conventional one-stage precoding.

cs / eess.SP / cs.AR