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Hybrid Support Vector Regression in Electric Load During National Holiday Season

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Fig. 1. An Illustration of Electric Load analysis using HYBRID SVR
TABLE I.  EXAMPLE THE DATASET ELECTRIC LOAD DURING NATIONAL HOLIDAY SEASON 2012
Fig. 2. Forecasting Performance

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