Title :
One-day-ahead load forecast using an adaptive approach
Author :
Xi Xia ; Xiaoguang Rui ; Xinxin Bai ; Haifeng Wang ; Feng Jin ; Wenjun Yin ; Jin Dong ; Hsin-Ying Lee
Author_Institution :
IBM Res. - China, Beijing, China
Abstract :
Electrical load forecasting is vitally important to modern power system planning, operation, and control. In this paper, by focusing on historical load data and calendar factors, we present a hybrid method using period refinement scheme and adaptive strategy for building peak hour period and off-peak hour period models in day-of-week for one-day-ahead for load forecasting. They are evaluated using three full years of Shenzhen city electricity load data. Experimental results shows the adaptive model for each period, confirm good accuracy of the proposed approach to load forecasting and indicate that it has better forecasting accuracy than traditional ANN method.
Keywords :
load forecasting; neural nets; power engineering computing; ANN method; Shenzhen city electricity load data; adaptive approach; adaptive model; adaptive strategy; building peak hour period; calendar factors; day-of-week; electrical load forecasting; forecasting accuracy; historical load data; off-peak hour period models; one-day-ahead load forecast; period refinement scheme; power system planning; Adaptation models; Artificial neural networks; Electricity; Load modeling; Measurement; adpative strategy; hybrid method; load forecast; period refinement scheme; power system;
Conference_Titel :
Service Operations and Logistics, and Informatics (SOLI), 2014 IEEE International Conference on
Conference_Location :
Qingdao
DOI :
10.1109/SOLI.2014.6960755