Advanced Local Predictors Based Short-Term Load Forecasting for Unit Commitment Scheduling

Research Area: Volume 2 Issue 5, Sept. 2013 Year: 2013
Type of Publication: Article Keywords: Dynamic Programming, Kernel Principal Component Analysis, Load Forecasting, Local Radial Basis Function, Local Support Vector Regression, Unit Commitment
Authors:
  • E. E. Elattar
Journal: IJEIR Volume: 2
Number: 5 Pages: 447-452
Month: September
Abstract:
Theunit commitment (UC) problem is the problem of deciding which electricity generation units should be scheduled economically in a power system in order to meet therequirements of load and spinning reserve.In this paper, the UC problem is solved for an optimum schedule of generating units based on the load data forecasted using advanced local predictors. These local predictors are local support vector regression (LSVR) and local radial basis function (LRBF) Low-cost generation is important in power system analysis. Under forecasting or over forecasting will result in the requirement of purchasing power from spot market or an unnecessary commitment of generating units. Accurate load forecasting is the first step to enhance the UC solution. Total costs calculated for the actual load and two different forecasting load data are compared. A 10-units test system is used for this analysis. The results show the importance of accurate load forecasting to UC.

Indexed By:

Our Journals

IJECCE
International Journal of Electronics Communication and Computer Engineering
ISSN(Online): 2249 - 071X
ISSN (Print) : 2278 – 4209
www.ijecce.org
Submissions open
IJAIR
International Journal of Agriculture Innovations and Research
ISSN(Online) : 2319 – 1473
www.ijair.org
Submissions open
IJISM
International Journal of Innovation in Science and Mathematics
ISSN : 2347 – 9051
www.ijism.org
Submissions open
IJEIR
International Journal of Engineering Innovations and Research
ISSN(Online) : 2277 – 5668
www.ijeir.org
Submissions are open.

IJAIM
International Journal of Artificial Intelligence and Mechatronics
ISSN(Online) : 2320 – 5121
www.ijaim.org
Submissions open
IJRAS
International Journal of Research in Agricultural Sciences
ISSN(Online) : 2348 – 3997
www.ijras.org
Submissions open

Submission Open

"Submissions Open For Vol. 15,Issue 1, Jan. - Feb.,2026"

Click here to submit article.........

Latest Updates

Submissions open

Submissions open

For

"Vol. 15,Issue 1, Jan. - Feb.,2026"


 
Published Papers

Accepted Papers are published in

1. Recently Published Issue.


 

Dear Authors

Once author receives paper id, please always mention it in subject of your mail.

"Submissions Open"

Message for Authors