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Deep Denoising Neural Network Assisted Compressive Channel Estimation for mmWave Intelligent Reflecting Surfaces (2006.02201v2)

Published 3 Jun 2020 in cs.IT, cs.LG, eess.SP, and math.IT

Abstract: Integrating large intelligent reflecting surfaces (IRS) into millimeter-wave (mmWave) massive multi-input-multi-ouput (MIMO) has been a promising approach for improved coverage and throughput. Most existing work assumes the ideal channel estimation, which can be challenging due to the high-dimensional cascaded MIMO channels and passive reflecting elements. Therefore, this paper proposes a deep denoising neural network assisted compressive channel estimation for mmWave IRS systems to reduce the training overhead. Specifically, we first introduce a hybrid passive/active IRS architecture, where very few receive chains are employed to estimate the uplink user-to-IRS channels. At the channel training stage, only a small proportion of elements will be successively activated to sound the partial channels. Moreover, the complete channel matrix can be reconstructed from the limited measurements based on compressive sensing, whereby the common sparsity of angular domain mmWave MIMO channels among different subcarriers is leveraged for improved accuracy. Besides, a complex-valued denoising convolution neural network (CV-DnCNN) is further proposed for enhanced performance. Simulation results demonstrate the superiority of the proposed solution over state-of-the-art solutions.

Citations (226)

Summary

  • The paper proposes a hybrid IRS architecture that integrates active elements with compressive sensing to minimize training overhead in mmWave MIMO systems.
  • It leverages a complex-valued denoising CNN to refine channel estimates, achieving around 4 dB NMSE improvement over conventional methods.
  • The approach scales efficiently for large IRS configurations and paves the way for practical deployment in beyond 5G/6G wireless networks.

Overview of "Deep Denoising Neural Network Assisted Compressive Channel Estimation for mmWave Intelligent Reflecting Surfaces"

This paper investigates an advanced channel estimation framework designed for millimeter-wave (mmWave) Intelligent Reflecting Surface (IRS) assisted systems. The proposal tackles the complexities inherent in channel estimation for high-dimensional and cascaded MIMO channels, especially considering the passive nature of IRS elements. The paper introduces a novel hybrid system combined with advanced machine learning techniques to significantly lower the training overhead required for such estimations.

Core Contributions and Technical Approach

The core contributions of the paper can be summarized as follows:

  1. Hybrid IRS Architecture: The authors propose a hybrid passive/active IRS structure. This architecture allows a limited number of active IRS elements equipped with RF chains to capture uplink channel information while the rest of the surface remains passive, thus economizing on power and reducing hardware complexity.
  2. Compressive Sensing (CS) Framework: A compressive sensing-based approach is adopted to leverage common sparsity within the angular domains of mmWave MIMO channels across various subcarriers. This method facilitates the reconstruction of the complete channel matrix from minimal measurements. The Simultaneous Orthogonal Matching Pursuit (SOMP) algorithm is employed to estimate these channels effectively.
  3. Deep Learning Enhancement: The proposed framework benefits from a complex-valued denoising convolutional neural network (CV-DnCNN) to further refine estimation accuracy. By treating the channel matrix as a two-channel image (real and imaginary parts), CV-DnCNN enhances the channel estimation results by learning noise patterns and residual mappings from preliminary estimates.

Numerical and Theoretical Insights

The simulation results presented affirm the superiority of the proposed architecture over existing methodologies. Key results include:

  • The hybrid IRS system's ability to achieve substantial estimation accuracy with a reduced number of activated elements, which implies reduced pilot transmission overhead.
  • CV-DnCNN consistently improves NMSE performance compared to state-of-the-art CS methods and real-valued denoising networks by around 4 dB.

Implications and Future Directions

The proposed approach innovatively combines CS and deep learning to address large IRS configurations for mmWave MIMO, which holds significant promise for future wireless communication systems including beyond 5G/6G. The paper suggests multiple implications:

  • Practical Deployment: The agile nature of the proposed system is favorable for deployment scenarios where channel estimation overhead and operational cost need to be minimized.
  • Training Efficiency: The paper’s use of simulated channels for offline training demonstrates the potential for pre-deployed systems to adapt efficiently to different environmental parameters without significant retraining.
  • Scalability: As IRS elements grow in size, maintaining computational feasibility becomes crucial. This method scales effectively while extending coverage and improving signal quality.

Speculation on AI Evolution: The integration of robust denoising networks tailored for complex signal processing might inspire new investigations into their applications in other domains, such as radar systems and autonomous vehicle communication.

Conclusion

This paper successfully presents a technically sound framework that synergizes the merits of compressive sensing and deep learning for IRS-based mmWave MIMO systems, significantly advancing the field of wireless communication technology. The demonstrated reduction in training overhead and enhanced channel estimation accuracy open pathways for practical IRS deployment in emerging network architectures. Further research may extend these principles to explore broader application areas influenced by environmental dynamics and user density fluctuations.