Wireless Power Transfer for Future Networks: Signal Processing, Machine Learning, Computing, and Sensing
Bruno Clerckx, Kaibin Huang, Lav R. Varshney, Sennur Ulukus, and, Mohamed-Slim Alouini

TL;DR
This paper reviews recent advances in wireless power transfer (WPT) for future networks, focusing on signal processing, machine learning, and system design to enable efficient energy delivery and integrated wireless-powered applications.
Contribution
It provides a comprehensive overview of recent techniques, methodologies, and emerging opportunities in WPT, highlighting the integration of signal processing and machine learning for future wireless networks.
Findings
Review of advanced signal processing techniques for WPT efficiency
Comparison of model-based and data-driven design approaches
Identification of emerging wireless-powered applications like edge computing and sensing
Abstract
Wireless power transfer (WPT) is an emerging paradigm that will enable using wireless to its full potential in future networks, not only to convey information but also to deliver energy. Such networks will enable trillions of future low-power devices to sense, compute, connect, and energize anywhere, anytime, and on the move. The design of such future networks brings new challenges and opportunities for signal processing, machine learning, sensing, and computing so as to make the best use of the RF radiations, spectrum, and network infrastructure in providing cost-effective and real-time power supplies to wireless devices and enable wireless-powered applications. In this paper, we first review recent signal processing techniques to make WPT and wireless information and power transfer as efficient as possible. Topics include power amplifier and energy harvester nonlinearities, active and…
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