Short-Term Electric Load Forecasting for an Industrial Plant Using Machine Learning-Based Algorithms
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Keywords
multiple linear regression (MLR); group method of data handling (GMDH); multilayer perceptron neural netwok (MLPNN); gradient boost decision tree (GBDT); gene expression programming (GEP);All these keywords.
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