Energy Model for UAV Communications: Experimental Validation and Model Generalization
Ning Gao, Yong Zeng, Jian Wang, Di Wu, Chaoyue Zhang, Qingheng Song,, Jiachen Qian, and Shi Jin

TL;DR
This paper validates a theoretical energy model for rotary-wing UAVs through extensive flight experiments and develops a generalized model for complex flight scenarios where theoretical derivation is difficult.
Contribution
It provides experimental validation of existing theoretical energy models and introduces a heuristic model for complex UAV flight patterns with experimental support.
Findings
The theoretical energy model matches well with experimental data for straight-level flight.
Deep neural networks can effectively fit UAV energy consumption data.
The heuristic model accurately predicts energy use in 2D circular flights.
Abstract
Wireless communication involving unmanned aerial vehicles (UAVs) is expected to play an important role in future wireless networks. However, different from conventional terrestrial communication systems, UAVs typically have rather limited onboard energy on one hand, and require additional flying energy consumption on the other hand, which renders energy-efficient UAV communication with smart energy expenditure of paramount importance. In this paper, via extensive flight experiments, we aim to firstly validate the recently derived theoretical energy model for rotary-wing UAVs, and then develop a general model for those complicated flight scenarios where rigorous theoretical model derivation is quite challenging, if not impossible. Specifically, we first investigate how UAV power consumption varies with its flying speed for the simplest straight-and-level flight. With about 12,000 valid…
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Taxonomy
TopicsUAV Applications and Optimization · Distributed Control Multi-Agent Systems · Air Traffic Management and Optimization
