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](https://thumb-ap.123doks.com/thumbv2/123dok/1295889.2007995/1.595.43.545.538.692/fig-illustration-electric-load-analysis-using-hybrid-svr.webp)
![TABLE I. EXAMPLE THE DATASET ELECTRIC LOAD DURING NATIONAL HOLIDAY SEASON 2012](https://thumb-ap.123doks.com/thumbv2/123dok/1295889.2007995/4.595.98.503.388.657/table-example-dataset-electric-load-national-holiday-season.webp)
![Fig. 2. Forecasting Performance](https://thumb-ap.123doks.com/thumbv2/123dok/1295889.2007995/6.595.43.553.51.219/fig-forecasting-performance.webp)
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