会议专题

Approach to Daily Load Forecast of VSNN Based on Data Mining

The keys of improving the precision of daily load forecasting lie in the fore processing and the forecasting model, so this paper puts forward a new method of vary structure neural network (shorten as “VSNN) for power load forecast which is based on united data mining technology. Firstly, to search the historical daily load which have the same meteorological category as the forecasting day; secondly, to make further collection of data to compose data sequence with highly similar meteorological features which can boost up rules and weaken disturbance; thirdly, to constitute VSNN forecasting model accordingly. So the model can overcome the disadvantages of ANN through vary structure optimization to determine the optimal structure and optimal fitting approximation, and it does not easily convergence, not easily trap in partial minimum, and its structure can be determined by itself not by artificially. In the end, the forecasting precision was improved effectively, the input and calculation model was simplified properly, and the software programming was easier to realize. So the new method is more practical.

NIU Dong-xiao GU Zhi-hong XING Mian WANG Hui-qing

North China Electric Power University, China Shanxi University, China

国际会议

2nd IEEE Conference on Industrial Electronics and Applications(ICIEA 2007)(第二届IEEE工业电子与应用国际会议)

哈尔滨

英文

2007-05-23(万方平台首次上网日期,不代表论文的发表时间)