Loading [MathJax]/extensions/MathMenu.js
Study of artificial neural network based short term load forecasting | IEEE Conference Publication | IEEE Xplore

Study of artificial neural network based short term load forecasting


Abstract:

With more and more renewable energy integrated into the power grid and demand response in smart grid environment, electric load forecasting becomes more important. Accura...Show More

Abstract:

With more and more renewable energy integrated into the power grid and demand response in smart grid environment, electric load forecasting becomes more important. Accurate load forecasting facilitates better renewable energy integration and electricity market operation. Over the years, different load forecasting methods have been developed and applied. Multiple linear regression and artificial neural network based methods are well accepted by industries. This paper focuses on ANN-based method and provides detailed steps of load forecasting including data processing and neural network design.
Date of Conference: 21-25 July 2013
Date Added to IEEE Xplore: 25 November 2013
Electronic ISBN:978-1-4799-1303-9
Print ISSN: 1932-5517
Conference Location: Vancouver, BC, Canada
References is not available for this document.

I. Introduction

Electric load forecasting has been an important topic for electric utilities. With the growing penetration of variable power generation and demand response projects in the context of smart grids, there is a pressing need for better load forecasting. This will help system operators to better accommodate fluctuating wind and solar power generations which effectively changes the “net load” behavior. Over the years, regression-based and artificial neural network-based forecasting methods have been widely adopted in utility industry. Multiple linear regression method has been used for electric load forecasting, considering the interactions between variables that affect electric load behaviors [1]–[3]. The method is based on the general linear regression model. By introducing quantitative, qualitative, and transformed variables, complex relationship between forecast output (load) and input variables can be captured by polynomial regression model. The model has satisfactory accuracy, which is comparable to ANN based method.

Select All
1.
Tao Hong, Pu Wang, On the Impact of Demand Response: Load Shedding, Energy Conservation, and Further Implications to Load Forecasting, 2011 IEEE PES General Meeting, San Diego, July 2012.
2.
Tao Hong, Pu Wang, and H. Lee Willis, "A Naive Multiple Linear Regression Benchmark for Short Term Load Forecasting", 2011 IEEE PES General Meeting, Detroit, MI Jul. 24-29, 2011.
3.
Tao Hong, Min Gui, Mesut E. Baran, and H. Lee Willis, "Modeling and Forecasting Hourly Electric Load by Multiple Linear Regression with Interactions", 2010 IEEE PES General Meeting.
4.
M. A. El-Sharkawi and Dagmar Niebur, "A tutorial course on artificial neural networks with application to power systems", IEEE Power and Engineering Society, 1996.
5.
Ying Chen, P. B. Luh, Che Guan, Yige Zhao, L. D. Michel, M. A. Coolbeth, P. B. Friedland, S. J. Rourke, "Short-Term Load Forecasting: Similar Day-Based Wavelet Neural Networks", IEEE Trans. On Power Systems, Vol. 25. No. 1. Feb. 2010.
6.
Alireza Khotanzad, Enwang Zhou, and Hassan Elragal, "A Neuro-Fuzzy Approach to Short-Term Load Forecasting in a Price-Sensitive Environment", IEEE Trans. On Power Systems, Vol. 17, No. 4, Nov. 2002.
7.
Alireza Khotanzad, Reza Afkhami-Rohani, Tsun-Liang Lu, Alireza Abaye, Malcolm Davis, and Dominic J. Maratukulam, "ANNSTLF-A Neural-Network-Based Electric Load Forecasting System", IEEE Trans. On Neural Networks, Vol. 8, No. 4, July 1997.
8.
Eric Wang, Tomislav Galjanic, Raymond Johnson, "Short term electric load forecasting at Southern California Edison", 2012 IEEE PES General Meeting, San Diego, July 2012.
9.
Junichi Yokoyama, Hsiao-Dong Chiang, "Short term load forecasting improved by ensemble and its variations", 2012 IEEE PES General Meeting, San Diego, July 2012.
10.
O. Tanidir, O. B. Tor, and C. Gencoglu, "Performance of short-term load forecasting with ANN in Turkish power system", 2012 IEEE PES General Meeting, San Diego, July 2012.
11.
Hao-Tian Zhang, Fang-Yuan Xu, Long Zhou, "Artificial Neural Network for Load Forecasting in Smart Grid", Ninth International Conference on Machine Learning and Cybernetics, Qingdao, 11-14 July 2010.
12.
The Global Energy Forecasting Competition, http://www.kaggle.com/c/ GEF2012-wind-forecasting. Accessed November 2012.

Contact IEEE to Subscribe

References

References is not available for this document.