scholarly journals Demand Forecasting Considering Actual Peak Load Periods Using Artificial Neural Network

Author(s):  
Octavia D.P. Yuan ◽  
A. N. Afandi ◽  
Hari Putranto
2020 ◽  
Vol 4 (2) ◽  
pp. 10
Author(s):  
Najat Hassan Abdulkareem

Medium-term forecasting is an important category of electric load forecasting that covers a time span of up to 1 year ahead. It suits outage and maintenance planning, as well as load switching operation. There is an on-going attention toward putting new approaches to the task. Recently, artificial neural network has played a successful role in various applications. This paper is presents a monthly peak load demand forecasting for Sulaimani (located in North Iraq) using the most widely used traditional method based on an artificial natural network, the performance of the model is tested on the actual historical monthly demand of the governorate for the years 2014–2018. The standard mean absolute percentage error (MAPE) method is used to evaluate the accuracy of forecasting models, the results obtained show a very good estimation of the load. The MAPE is 0.056.


2020 ◽  
Author(s):  
Rafael S. F. Ferraz ◽  
Renato S. F. Ferraz ◽  
Lucas F. S. Azeredo ◽  
Benemar A. de Souza

An accurate demand forecasting is essential for planning the electric dispatch in power system, contributing financially to electricity companies and helping in the security and continuity of electricity supply. In addition, it is evident that the distributed energy resource integration in the electric power system has been increasing recently, mostly from the photovoltaic generation, resulting in a gradual change of the load curve profile. Therefore, the 24 hours ahead prediction of the electrical demand of Campina Grande, Brazil, was realized from artificial neural network with a focus on the data preprocessing. Thus, the time series variations, such as hourly, diary and seasonal, were reduced in order to obtain a better demand prediction. Finally, it was compared the results between the forecasting with the preprocessing application and the prediction without the  preprocessing stage. Based on the results, the first methodology presented lower mean absolute percentage error with 7.95% against 10.33% of the second one.


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