A General Design Framework for MIMO Wireless Energy Transfer with Limited Feedback
Jie Xu, Rui Zhang

TL;DR
This paper introduces a versatile framework for MIMO wireless energy transfer that uses limited feedback from energy receivers to optimize beamforming, employing convex optimization techniques for improved channel estimation.
Contribution
It proposes a general design framework for channel learning in MIMO WET using energy measurement feedback, with two novel feedback schemes and analysis of their performance.
Findings
Energy quantization outperforms energy comparison with many feedback bits.
Energy comparison is more effective with fewer feedback bits.
The framework enhances beamforming accuracy in practical limited-feedback scenarios.
Abstract
Multi-antenna or multiple-input multiple-output (MIMO) technique can significantly improve the efficiency of radio frequency (RF) signal enabled wireless energy transfer (WET). To fully exploit the energy beamforming gain at the energy transmitter (ET), the knowledge of channel state information (CSI) is essential, which, however, is difficult to be obtained in practice due to the hardware limitation of the energy receiver (ER). To overcome this difficulty, under a point-to-point MIMO WET setup, this paper proposes a general design framework for a new type of channel learning method based on the ER's energy measurement and feedback. Specifically, the ER measures and encodes the harvested energy levels over different training intervals into bits, and sends them to the ET via a feedback link of limited rate. Based on the energy-level feedback, the ET adjusts transmit beamforming in…
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