AUTHOREA
Log in Sign Up Browse Preprints
LOG IN SIGN UP
Mona Aggarwal
Mona Aggarwal

Public Documents 2
Beyond 5G: Exploiting learning aided precoder for downlink Cell-Free networks
Mona Aggarwal
Swapnaja Deshpande

Mona Aggarwal

and 3 more

February 23, 2023
Cell-free massive multiple-input multiple-output (CFMM) networks with its ubiquitous coverage at high spectral efficiency (SE), is one of the promising technology for 5G and beyond system. In this study, We propose a new framework for downlink (DL) CFMM system operating under Rayleigh fading channel model. We introduce new deep learning-based precoding scheme that improve the performance of the proposed system by reducing run time and computational complexity as compared to conventional linear precoding schemes. We also introduce an improved version of basic scalable pilot assignment algorithm which further enhances system performance. We derive closed- form expression for average DL spectral efficiency (SE) for the proposed scheme considering channel estimation error and pilot contamination(PC), which is then compared with Minimum Mean Square Error(MMSE), Regularised Zero Forcing (RZF) and Maximum Ratio (MR) combining techniques. We analyse the proposed scheme with perfect channel state information(CSI), instantaneous CSI, coherent transmission, non-coherent transmission, different pilot configuration, non-linear and linear precoding techniques. Numerical results shows that the proposed deep learning based precoding scheme outperforms other conventional techniques. endabstract
Machine Learning aided Channel Estimation for Cell-Free Networks using a novel pilot...
Mona Aggarwal
Swapnaja Deshpande

Mona Aggarwal

and 3 more

February 22, 2023
Cell-free massive multiple-input multiple-output (CFMM) network is projected as the latest technology for the fifth-generation and beyond wireless networks. The recent research trend is to extensively study and analyse CFMM network for its advantages and bottlenecks. The CFMM network is strongly affected by pilot contamination (PC) which is one of the bottlenecks due to which quality of service (QoS) and accuracy of channel estimation gets impacted. Therefore, we address this problem by presenting a novel pilot assignment algorithm to mitigate PC and deep learning aided channel estimation for reducing channel estimation error for the CFMM systems to maximize spectral efficiency. We derive achievable UL and DL spectral efficiency (SE) expressions for the proposed system, and compared with Minimum Mean Square Error(MMSE) and Maximum Ratio (MR) combining techniques. The performance of cellular massive MIMO is derived for comparison. For the same cellular set up,the proposed CFMM system achieves higher SE than the cellular massive MIMO. Numerical results prove the efficacy of the proposed CFMM system to some of the existing schemes in this domain.

| Powered by Authorea.com

  • Home