comparemela.com

Page 2 - Message Passing News Today : Breaking News, Live Updates & Top Stories | Vimarsana

PyTorch 2 0: Our next generation release that is faster, more Pythonic and Dynamic as ever

Efficient Channel Estimation for RIS-Aided MIMO Communications with Un by Yabo Guo, Peng Sun et al

Reconfigurable intelligent surface (RIS) is very promising for wireless networks to achieve high energy efficiency, extended coverage, improved capacity, massive connectivity, etc. To unleash the full potentials of RIS-aided communications, acquiring accurate channel state information is crucial, which however is very challenging. For RIS-aided multiple-input and multiple-output (MIMO) communications, the existing channel estimation methods have computational complexity growing rapidly with the number of RIS units N (e.g., in the order of N2 or N3) and/or have special requirements on the matrices involved (e.g., the matrices need to be sparse for algorithm convergence to achieve satisfactory performance), which hinder their applications. In this work, instead of using the conventional signal model in the literature, we derive a new signal model obtained through proper vectorization and reduction operations. Then, leveraging the unitary approximate message passing (UAMP), we develop a m

Chiến lược tiếp cận khách hàng của thịt bò Úc Mr T Beef

Thương hiệu thịt bò Úc Mr T Beef xây dựng chiến lược marketing, tiếp cận người tiêu dùng qua TVC và thử thách khiêu vũ trên TikTok. - VnExpress

Joint Channel Estimation and Signal Recovery for RIS-Empowered Multi-U by Li Wei, Chongwen Huang et al

Reconfigurable intelligent surfaces (RISs) have been recently considered as a promising candidate for energy-efficient solutions in future wireless networks. Their dynamic and low-power configuration enables coverage extension, massive connectivity, and low-latency communications. Due to a large number of unknown variables referring to the RIS unit elements and the transmitted signals, channel estimation and signal recovery in RIS-based systems are the ones of the most critical technical challenges. To address this problem, we focus on the RIS-assisted wireless communication system and present two joint channel estimation and signal recovery schemes based on message passing algorithms in this paper. Specifically, the proposed bidirectional scheme applies the Taylor series expansion and Gaussian approximation to simplify the sum-product procedure in the formulated problem. In addition, the inner iteration that adopts two variants of approximate message passing algorithms is incorporated

Unitary Approximate Message Passing for Sparse Bayesian Learning by Man Luo, Qinghua Guo et al

Sparse Bayesian learning (SBL) can be implemented with low complexity based on the approximate message passing (AMP) algorithm. However, it does not work well for a generic measurement matrix, which may cause AMP to diverge. Damped AMP has been used for SBL to alleviate the problem at the cost of reducing convergence speed. In this work, we propose a new SBL algorithm based on structured variational inference, leveraging AMP with a unitary transformation (UAMP). Both single measurement vector and multiple measurement vector problems are investigated. It is shown that, compared to stateof- the-art AMP-based SBL algorithms, the proposed UAMPSBL is more robust and efficient, leading to remarkably better performance.

© 2025 Vimarsana

vimarsana © 2020. All Rights Reserved.