Learning to Communicate and Energize: Modulation, Coding and Multiple Access Designs for Wireless Information-Power Transmission
Morteza Varasteh, Jakob Hoydis, Bruno Clerckx

TL;DR
This paper introduces a learning-based framework for designing modulation, coding, and multiple access schemes in wireless systems that simultaneously transmit information and power, addressing nonlinearities in energy harvesting.
Contribution
It proposes a novel learning-based approach for SWIPT system design, including a nonlinear energy harvester model and autoencoder-based modulation optimization, with practical algorithmic solutions.
Findings
Neural network autoencoders optimize SWIPT modulation schemes.
On-Off keying emerges as optimal at high power demands.
Learning-inspired algorithms achieve near-optimal performance with high adaptability.
Abstract
The explosion of the number of low-power devices in the next decades calls for a re-thinking of wireless network design, namely, unifying wireless transmission of information and power so as to make the best use of the RF spectrum, radiation, and infrastructure for the dual purpose of communicating and energizing. This paper provides a novel learning-based approach towards such wireless network design. To that end, a parametric model of a practical energy harvester, accounting for various sources of nonlinearities, is proposed using a nonlinear regression algorithm applied over collected real data. Relying on the proposed model, the learning problem of modulation design for Simultaneous Wireless Information-Power Transmission (SWIPT) over a point-to-point link is studied. Joint optimization of the transmitter and the receiver is implemented using Neural Network (NN)-based autoencoders.…
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