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Jiandong Li

Researcher at Xidian University

Publications -  670
Citations -  9377

Jiandong Li is an academic researcher from Xidian University. The author has contributed to research in topics: Wireless network & MIMO. The author has an hindex of 37, co-authored 620 publications receiving 6970 citations. Previous affiliations of Jiandong Li include Cornell University & Nanjing University of Information Science and Technology.

Papers
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Proceedings ArticleDOI

3D Polarization Projection for WINNER Channel Simulations

TL;DR: This paper reveals the physical significance of polarization transform between the antenna plane and the propagation plane and finds that its 2D degenerative case is aligned with that defined in 3GPP TR 25.996.
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Scheduling in Dense Small Cells With Successive Interference Cancellation

TL;DR: A novel scheduling framework is proposed, which facilitates the development of practical algorithms to find the solution to the scheduling issue with SIC in dense small cells.

Successive interference cancellation and alignment in K-user MIMO interference channels with partial unidirectional strong interference

TL;DR: Simulation results have confirmed the sum rate improvement and DoF optimality of the proposed SICA scheme, which is designed to transmit two kinds of data streams simultaneously, the alignment streams and superposition streams.
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Performance Analysis of the Fastica Algorithm in ICA-Based Co-Channel Communication System

TL;DR: A model of ICA-based communication system, which adopts the FastICA algorithm to separate co-channel signals, and obtains the analytic closed-form expressions of global separating matrix is proposed.
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Convex optimisation-based joint channel and power allocation scheme for orthogonal frequency division multiple access networks

TL;DR: Simulation results demonstrate that the author's scheme can provide high energy efficiency compared with the existing methods, 100% relative error bounds with respect to the optimum in most cases, and low computational complexity.