Volume 3, Issue 10 (12-2012)                   jemr 2012, 3(10): 21-56 | Back to browse issues page

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sadeghi H, Afzalian A A, Haghani M, sohrabi vafa H. Forecasting the Long Run Electricity Demand Using Hybrid PSO-ANFIS Algorithm. jemr 2012; 3 (10) :21-56
URL: http://jemr.khu.ac.ir/article-1-478-en.html
1- Tarbiat Modares University
2- Power and Water Institute of Technology
3- Power and Water Institute of Technology , SohrabiVafa@gmail.com
Abstract:   (11998 Views)

  Storing the electrical energy in large scale is impossible. So, it is necessary to identify the factors affecting the electricity demand. Researchers have used different methods to forecast the future demand of electricity, among them intelligent methods and fuzzy based methods are more popular. Since ANFIS structure is based on researcher’s experience about phenomenon, the created structure may not have the best result. Therefore, we used PSO-ANFIS structure.

  In this paper long term electricity demand is forecasted until the year 2025 by hybrid PSO-ANFIS algorithm. The results confirm the high power of the Adaptive Neural based Fuzzy Inference System in forecasting the electricity demand. Results also indicate that the forecasted electricity demand will be 401 billion KWh in 2025. The prediction performance of the proposed technique is more accurate than the ARIMA model.

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Type of Study: Applicable | Subject: انرژی، منابع و محیط زیست
Received: 2012/06/13 | Accepted: 2013/04/21 | Published: 2013/04/21

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