Title :
Daily electricity consumption forecast for a steel corporation based on NNLS with feature selection
Author :
Zhou, Dianmin ; Gao, Feng ; Guan, Xiaohong ; Chen, Zhongping ; Li, Sen ; Lu, Qilin
Author_Institution :
Syst. Eng. Inst., Xi´´an Jiaotong Univ., China
Abstract :
Electricity consumption forecast is very important for both suppliers and large consumers. However, the electricity consumption of a large enterprise is quite different with regional consumption, and has not been studied sufficiently, especially for an energy intensive corporation. In this paper, we investigate the daily electricity consumption forecast of a large steel corporation. By our observation, the electricity consumption is inversely proportional to maintenance duration and directly proportional to production quantity. Therefore, the production and maintenance schedules are considered as input data of the forecast model. The nonnegative least squares (NNLS) method is applied to build a linear regression forecast model with nonnegative coefficients. In addition to NNLS, random approximated greedy search (RAGS) based feature selection method is applied to select the relevant input features on the available items of maintenance and production schedules. Then the ensemble forecast models are built based on the selected feature subsets by bagging approach. Numerical testing results on the real data from a steel corporation show that results obtained by the NNLS are stable, and the forecast accuracy is greatly improved by our ensemble forecast model.
Keywords :
bagging; greedy algorithms; least squares approximations; load forecasting; maintenance engineering; power consumption; production control; regression analysis; steel industry; bagging approach; electricity consumption; energy intensive corporation; ensemble forecast model; feature selection method; linear regression forecast model; load forecasting; maintenance schedules; nonnegative coefficients; nonnegative least square method; numerical testing; production schedules; random approximated greedy search; steel corporation; Bagging; Energy consumption; Least squares approximation; Least squares methods; Linear regression; Predictive models; Production; Scheduling; Steel; Testing;
Conference_Titel :
Power System Technology, 2004. PowerCon 2004. 2004 International Conference on
Print_ISBN :
0-7803-8610-8
DOI :
10.1109/ICPST.2004.1460201