A Novel Energy Accounting Model Using Fuzzy Restricted Boltzmann Machine—Recurrent Neural Network
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Keywords
energy accounting; linear-scaling normalization; fuzzy restricted Boltzmann machine; recurrent neural network (FRBM-RNN); adaptive fuzzy Adam optimization algorithm (AFAOA);All these keywords.
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