期刊文献+

Knowledge mining collaborative DESVM correction method in short-term load forecasting 被引量:3

Knowledge mining collaborative DESVM correction method in short-term load forecasting
下载PDF
导出
摘要 Short-term forecasting is a difficult problem because of the influence of non-linear factors and irregular events.A novel short-term forecasting method named TIK was proposed,in which ARMA forecasting model was used to consider the load time series trend forecasting,intelligence forecasting DESVR model was applied to estimate the non-linear influence,and knowledge mining methods were applied to correct the errors caused by irregular events.In order to prove the effectiveness of the proposed model,an application of the daily maximum load forecasting was evaluated.The experimental results show that the DESVR model improves the mean absolute percentage error(MAPE) from 2.82% to 2.55%,and the knowledge rules can improve the MAPE from 2.55% to 2.30%.Compared with the single ARMA forecasting method and ARMA combined SVR forecasting method,it can be proved that TIK method gains the best performance in short-term load forecasting. Short-term forecasting is a difficult problem because of the influence of non-linear factors and irregular events. A novel short-term forecasting method named TIK was proposed, in which ARMA forecasting model was used to consider the load time series trend forecasting, intelligence forecasting DESVR model was applied to estimate the non-linear influence, and knowledge mining methods were applied to correct the errors caused by irregular events. In order to prove the effectiveness of the proposed model, an application of the daily maximum load forecasting was evaluated. The experimental results show that the DESVR model improves the mean absolute percentage error (MAPE) from 2.82% to 2.55%, and the knowledge rules can improve the MAPE from 2.55% to 2.30%. Compared with the single ARMA forecasting method and ARMA combined SVR forecasting method, it can be proved that TIK method gains the best performance in short-term load forecasting.
出处 《Journal of Central South University》 SCIE EI CAS 2011年第4期1211-1216,共6页 中南大学学报(英文版)
基金 Projects(70671039,71071052) supported by the National Natural Science Foundation of China Projects(10QX44,09QX68) supported by the Fundamental Research Funds for the Central Universities in China
关键词 短期负荷预测 知识挖掘 修正方法 协同 负荷时间序列 预测模型 ARMA 模型应用 load forecasting support vector regression knowledge mining ARMA differential evolution
  • 相关文献

参考文献15

  • 1GOIA A, MAY C, FUSAI G. Functional clustering and linear regression for peak load forecasting [J]. International Journal of Forecasting, 2010, 26(4): 700 711.
  • 2PAPPAS S S, EKONOMOU L, KRAMOUSANTAS D C, CHATZARAKIS G E, KATSIKAS S K, LIATSIS P. Electricity demand loads modeling using auto regressive moving average (ARMA) models[J]. Energy, 2008, 33(9): 1353-1360.
  • 3NOWlCKA-ZAGRAJEK J, WERON R. Modeling electricity loads in California: ARMA models with hyperbolic noise [J]. Signal Processing, 2002, 82(12): 1993-1915.
  • 4WANG Bo, TAI Neng-ling, ZHAI Hai-qing, YE Jian, ZHU Jia-dong, QI Liang-bo. A new ARMAX model based on evolutionary algorithm and particle swarm optimization for short-term load forecasting [J]. Electric Power Systems Research, 2009, 78(10): 1679-1685.
  • 5KALAITZAKIS K, STAVRAKAKIS G S, ANAGNOSTAKIS E M. Short-term load forecasting based on artificial neural networks parallel implementation [J]. Electric Power Systems Research, 2002, 63(3): 185-196.
  • 6HSU Che-Chiang, CHEN Chia-Yon. Regional load forecasting in Taiwan -- Applications of artificial neural networks [J]. Energy Conversion and Management, 2003, 44( 12): 1941-1949.
  • 7李存斌,王恪铖.A new grey forecasting model based on BP neural network and Markov chain[J].Journal of Central South University of Technology,2007,14(5):713-718. 被引量:6
  • 8PAl Ping-feng, HONG Wei-Chiang. Support vector machines with simulated annealing algorithms in electricity load forecasting [J]. Energy Conversion and Management, 2005, 46(17): 2669-2688.
  • 9PAl Ping-Feng, HONG Wei-Chiang. Forecasting regional electricity load based on recurrent support vector machines with genetic algorithms [J]. Electric Power Systems Research, 2005, 74(3):417-425.
  • 10YANG Shu-xia. Study and application of time series forecasting based on rough set and Kernel method [J]. Journal of Central South University of Technology, 2008, 15(s2): 336-340.

二级参考文献17

共引文献14

同被引文献14

引证文献3

二级引证文献12

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部