Tensor Learning-based Precoder Codebooks for FD-MIMO Systems
Keerthana Bhogi, Chiranjib Saha, and Harpreet S. Dhillon

TL;DR
This paper introduces a tensor learning-based, data-driven method for designing low-complexity, adaptive precoder codebooks for FD-MIMO systems with UPAs, reducing mutual information loss through efficient clustering on Grassmann manifolds.
Contribution
It proposes a novel tensor decomposition and clustering approach to design precoder codebooks without relying on statistical channel models, improving adaptability and efficiency.
Findings
Codebooks learned effectively via tensor decomposition and clustering.
Significant reduction in mutual information loss with the proposed codebooks.
Enhanced performance demonstrated through simulations.
Abstract
This paper develops an efficient procedure for designing low-complexity codebooks for precoding in a full-dimension (FD) multiple-input multiple-output (MIMO) system with a uniform planar array (UPA) antenna at the transmitter (Tx) using tensor learning. In particular, instead of using statistical channel models, we utilize a model-free data-driven approach with foundations in machine learning to generate codebooks that adapt to the surrounding propagation conditions. We use a tensor representation of the FD-MIMO channel and exploit its properties to design quantized version of the channel precoders. We find the best representation of the optimal precoder as a function of Kronecker Product (KP) of two low-dimensional precoders, respectively corresponding to the horizontal and vertical dimensions of the UPA, obtained from the tensor decomposition of the channel. We then quantize this…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Tensor decomposition and applications · Advanced Wireless Communication Techniques
