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Energies2018,11, 1282
Table10.Accuracyestimationof thepredictionpoint for the test set.
Prediction
Model <1% >1%and<2% >2%and<3% >3%
Number Percentage Number Percentage Number Percentage Number Percentage
BA-ELM 61 84.72% 10 13.89% 1 1.39% 0 0
ELM 33 45.83% 33 45.83% 6 8.34% 0 0
BPNN 24 33.33% 37 51.39% 10 14.29% 1 1.39%
LSSVM 27 37.50% 26 36.11% 18 25% 1 1.39%
Table11.Averageforecastingresultsof fourmodels.
Index Model
BA-ELM ELM BPNN LSSVM
RMSE(MW) 5.89 11.08 12.74 14.47
MAPE(%) 0.49 1.13 1.29 1.43
MAE(MW) 4.27 9.81 11.14 12.51
Figure14.Root-mean-squareerror (RMSE)ofdifferentmodels in testingperiod.
Figure15.Meanabsolutepercentageerror (MAPE)ofdifferentmodels in testingperiod.
Figure16.Meanabsoluteerror (MAE)ofdifferentmodels in testingperiod.
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Short-Term Load Forecasting by Artificial Intelligent Technologies
- Title
- Short-Term Load Forecasting by Artificial Intelligent Technologies
- Authors
- Wei-Chiang Hong
- Ming-Wei Li
- Guo-Feng Fan
- Editor
- MDPI
- Location
- Basel
- Date
- 2019
- Language
- English
- License
- CC BY 4.0
- ISBN
- 978-3-03897-583-0
- Size
- 17.0 x 24.4 cm
- Pages
- 448
- Keywords
- Scheduling Problems in Logistics, Transport, Timetabling, Sports, Healthcare, Engineering, Energy Management
- Category
- Informatik