State of the Art of Machine Learning Models in Energy Systems, a Systematic Review
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Keywords
energy systems; machine learning; artificial neural networks (ANN); support vector machines (SVM); neuro-fuzzy; ANFIS; wavelet neural network (WNN); big data; decision tree (DT); ensemble; hybrid models; deep learning; blockchain; renewable energy systems; energy informatics; internet of things (IoT); smart sensors; remote sensing; prediction; forecasting; energy demand;All these keywords.
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