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Open AccessJournal ArticleDOI

Power of Deep Learning for Channel Estimation and Signal Detection in OFDM Systems

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TLDR
The proposed deep learning-based approach to handle wireless OFDM channels in an end-to-end manner is more robust than conventional methods when fewer training pilots are used, the cyclic prefix is omitted, and nonlinear clipping noise exists.
Abstract
This letter presents our initial results in deep learning for channel estimation and signal detection in orthogonal frequency-division multiplexing (OFDM) systems. In this letter, we exploit deep learning to handle wireless OFDM channels in an end-to-end manner. Different from existing OFDM receivers that first estimate channel state information (CSI) explicitly and then detect/recover the transmitted symbols using the estimated CSI, the proposed deep learning-based approach estimates CSI implicitly and recovers the transmitted symbols directly. To address channel distortion, a deep learning model is first trained offline using the data generated from simulation based on channel statistics and then used for recovering the online transmitted data directly. From our simulation results, the deep learning based approach can address channel distortion and detect the transmitted symbols with performance comparable to the minimum mean-square error estimator. Furthermore, the deep learning-based approach is more robust than conventional methods when fewer training pilots are used, the cyclic prefix is omitted, and nonlinear clipping noise exists. In summary, deep learning is a promising tool for channel estimation and signal detection in wireless communications with complicated channel distortion and interference.

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Journal ArticleDOI

Deep learning based user grouping for FD-MIMO systems exploiting statistical channel state information

TL;DR: In this paper, a deep learning based user grouping algorithm is proposed to improve the efficiency of the user grouping process in joint spatial division and multiplexing (JSDM) systems.
Proceedings ArticleDOI

Model Aided Deep Learning Based MIMO OFDM Receiver With Nonlinear Power Amplifiers

TL;DR: In this article, a DL-based receiver is proposed to mitigate the clipping distortions at the receivers end, which is aided by the traditional least square (LS) channel estimation and the zeroforcing (ZF) equalization models.
Proceedings ArticleDOI

Detection through deep neural networks: a reservoir computing approach for MIMO-OFDM symbol detection

TL;DR: A Deep Echo State Network (DESN) is introduced, a unique hierarchical processing structure with multiple time intervals, to enhance the memory capacity and accelerate the detection efficiency of MIMO-OFDM symbol detection.
Proceedings ArticleDOI

Multi-Task Learning Based Underwater Acoustic OFDM Communications

TL;DR: In this paper, the authors proposed a novel receiver, called TaskNet, based on multi-task learning (MTL) to improve the DL-receiver's generalization performance for underwater acoustic (UWA) communications.
Journal ArticleDOI

Model-aided distributed shallow learning for OFDM receiver in IEEE 802.11 channel model

TL;DR: This paper proposes an efficient end-to-end OFDM based receiver learning approach based on distributed data-driven and model-based approaches that relies mainly on augmenting a typical OFDM receiver’s processing blocks with a shallow neural network as a data- driven stub to improve its performance.
References
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ImageNet Classification with Deep Convolutional Neural Networks

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Effects of clipping and filtering on the performance of OFDM

TL;DR: This work investigates, through extensive computer simulations, the effects of clipping and filtering on the performance of OFDM, including the power spectral density, the crest factor, and the bit-error rate.
Book ChapterDOI

WINNER II Channel Models

TL;DR: In this article, the authors present an introduction to channel models and channel models, and a discussion of channel model usage and models and models' models' parameters. But this chapter contains sections titled: Introduction Modelling Considerations Channel Modelling Approach Channel Models and Parameters Channel Model Usage Conclusion
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