Multi-Objective Signal Processing Optimization: The Way to Balance Conflicting Metrics in 5G Systems
Emil Bj\"ornson, Eduard Jorswieck, M\'erouane Debbah, Bj\"orn, Ottersten

TL;DR
This paper reviews multi-objective optimization techniques for balancing conflicting performance metrics in 5G cellular networks, highlighting how signal processing algorithms can aid in understanding and managing tradeoffs.
Contribution
It provides a comprehensive survey of multi-objective optimization methods and demonstrates their application in 5G system design, especially for massive MIMO.
Findings
Visualization of conflicts between 5G objectives using signal processing algorithms
Framework for understanding tradeoffs in 5G network optimization
Case study on massive MIMO illustrates practical application
Abstract
The evolution of cellular networks is driven by the dream of ubiquitous wireless connectivity: Any data service is instantly accessible everywhere. With each generation of cellular networks, we have moved closer to this wireless dream; first by delivering wireless access to voice communications, then by providing wireless data services, and recently by delivering a WiFi-like experience with wide-area coverage and user mobility management. The support for high data rates has been the main objective in recent years, as seen from the academic focus on sum-rate optimization and the efforts from standardization bodies to meet the peak rate requirements specified in IMT-Advanced. In contrast, a variety of metrics/objectives are put forward in the technological preparations for 5G networks: higher peak rates, improved coverage with uniform user experience, higher reliability and lower latency,…
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