Channel state information estimation for 5G wireless communication systems: recurrent neural networks approach

Volume: 7, Pages: e682 - e682
Published: Aug 26, 2021
Abstract
In this study, a deep learning bidirectional long short-term memory (BiLSTM) recurrent neural network-based channel state information estimator is proposed for 5G orthogonal frequency-division multiplexing systems. The proposed estimator is a pilot-dependent estimator and follows the online learning approach in the training phase and the offline approach in the practical implementation phase. The estimator does not deal with complete a priori...
Paper Details
Title
Channel state information estimation for 5G wireless communication systems: recurrent neural networks approach
Published Date
Aug 26, 2021
Journal
Volume
7
Pages
e682 - e682
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