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A power prediction approach for a solar-powered aerial vehicle enhanced by stacked machine learning technique

COMPUTERS & ELECTRICAL ENGINEERING(2024)

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Abstract
This study aims to enhance the solar energy harvesting capabilities of Unmanned Aerial Vehicles (UAVs), with a focus on integrating solar power to improve overall energy harvesting systems. The proposed method combines two independent renewable systems to extract electricity from the environment. UAV wings equipped with solar panels capture solar energy, employing optimal power point tracking for increased efficiency. Simulation results utilize an ensemble machine learning algorithm, incorporating environmental variables and UAV data to predict solar power output. A comparative analysis involving various machine learning algorithms provides additional insights gleaned from the UAV dataset.
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Key words
Cloud computing,Unmanned aerial vehicle,Solar energy,Machine learning,Solar power output,Stacking,Ensemble algorithms,Regression
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