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Open AccessJournal ArticleDOI

Fractional Programming for Communication Systems—Part I: Power Control and Beamforming

Kaiming Shen, +1 more
- 15 May 2018 - 
- Vol. 66, Iss: 10, pp 2616-2630
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TLDR
In this article, a quadratic transform technique is proposed for solving the multiple-ratio concave-convex FP problem, where the original nonconveX problem is recast as a sequence of convex problems.
Abstract
Fractional programming (FP) refers to a family of optimization problems that involve ratio term(s). This two-part paper explores the use of FP in the design and optimization of communication systems. Part I of this paper focuses on FP theory and on solving continuous problems. The main theoretical contribution is a novel quadratic transform technique for tackling the multiple-ratio concave–convex FP problem—in contrast to conventional FP techniques that mostly can only deal with the single-ratio or the max-min-ratio case. Multiple-ratio FP problems are important for the optimization of communication networks, because system-level design often involves multiple signal-to-interference-plus-noise ratio terms. This paper considers the applications of FP to solving continuous problems in communication system design, particularly for power control, beamforming, and energy efficiency maximization. These application cases illustrate that the proposed quadratic transform can greatly facilitate the optimization involving ratios by recasting the original nonconvex problem as a sequence of convex problems. This FP-based problem reformulation gives rise to an efficient iterative optimization algorithm with provable convergence to a stationary point. The paper further demonstrates close connections between the proposed FP approach and other well-known algorithms in the literature, such as the fixed-point iteration and the weighted minimum mean-square-error beamforming. The optimization of discrete problems is discussed in Part II of this paper.

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Fractional Programming for Communication Systems—Part II: Uplink Scheduling via Matching

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References
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Journal ArticleDOI

On Nonlinear Fractional Programming

TL;DR: In this paper, an algorithm for fractional programming with nonlinear as well as linear terms in the numerator and denominator is presented. But the algorithm is based on a theorem by Jagannathan Jagannathy, R. 1966.
Proceedings ArticleDOI

An iteratively weighted MMSE approach to distributed sum-utility maximization for a MIMO interfering broadcast channel

TL;DR: This paper proposes a linear transceiver design algorithm for weighted sum-rate maximization that is based on iterative minimization of weighted mean squared error (MSE) and extends the algorithm to a general class of utility functions and establishes its convergence.
Journal ArticleDOI

An Iteratively Weighted MMSE Approach to Distributed Sum-Utility Maximization for a MIMO Interfering Broadcast Channel

TL;DR: A linear transceiver design algorithm for weighted sum-rate maximization that is based on iterative minimization of weighted mean-square error (MSE) and can be extended to a general class of sum-utility maximization problem.
Journal ArticleDOI

Weighted sum-rate maximization using weighted MMSE for MIMO-BC beamforming design

TL;DR: A relationship between weighted sum-rate and weighted MMSE in the MIMO-BC is established and two low complexity algorithms for finding a local weighted Sum-rate optimum based on alternating optimization are proposed.
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