A Highly Accurate NILM: With an Electro-Spectral Space That Best Fits Algorithm’s National Deployment Requirements
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Keywords
KDE—kernel density estimation; GMM—Gaussian mixture model; KNN—K-nearest neighbor; NILM—nonintrusive load monitoring; PCA—principal component analysis; NIS—network information system; RNN—recurrent neural network; SGD—stochastic gradient descent; DSO—distributed system operator; E-V—electric vehicle; P-V—photo-voltaic; HGL—harmonic generating load (inspired from current’s physical components theory);All these keywords.
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