Personalized PV system recommendation for enhanced solar energy harvesting using deep learning and collaborative filtering

Sustainable Energy Technologies and Assessments(2023)

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摘要
Electricity is a crucial aspect of modern life, and with the increasing population and industrialization, energy demand has risen significantly. A swift transition to renewable energy sources such as wind and solar is essential for saving the planet. Solar energy is one of the most widely used renewable energy solutions, but choosing a PVSC poses a challenging problem that involves considering various factors, such as geographical location and energy consumption patterns. In this study, we investigate the effectiveness of using machine learning techniques to assist users in selecting the most suitable PVSC for their needs. We propose a new framework for PVSC recommendation, which encompasses a PV power forecasting model and a PV configuration recommendation system.
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关键词
Smart Grid,Energy harvesting,Solar energy,Long-short term memory,Convolutional neural network,Recommender system
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