ITNESPSep 16, 2019

Decision Set Optimization and Energy-Efficient MIMO Communications

arXiv:1909.07172v12 citations
Originality Incremental advance
AI Analysis

This addresses energy efficiency in MIMO systems with finite-rate feedback, but it is incremental as it builds on existing optimization methods.

The paper tackles the problem of designing a finite decision set for energy-efficient MIMO communications to minimize performance loss compared to continuous optimization, resulting in a feedback rate reduction by a factor of 2 for a given performance loss level.

Assuming that the number of possible decisions for a transmitter (e.g., the number of possible beamforming vectors) has to be finite and is given, this paper investigates for the first time the problem of determining the best decision set when energy-efficiency maximization is pursued. We propose a framework to find a good (finite) decision set which induces a minimal performance loss w.r.t. to the continuous case. We exploit this framework for a scenario of energy-efficient MIMO communications in which transmit power and beamforming vectors have to be adapted jointly to the channel given under finite-rate feedback. To determine a good decision set we propose an algorithm which combines the approach of Invasive Weed Optimization (IWO) and an Evolutionary Algorithm (EA). We provide a numerical analysis which illustrates the benefits of our point of view. In particular, given a performance loss level, the feedback rate can by reduced by 2 when the transmit decision set has been designed properly by using our algorithm. The impact on energy-efficiency is also seen to be significant.

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