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Faculty of Computing and Information Technology
Document Details
Document Type
:
Article In Journal
Document Title
:
Prediction Of Hourly And Daily Diffuse Fraction Using Neural Network, As Compared To Linear Regression Models
التنبؤ بالإنسكار التشتتي على مستوى الساعات والأيام باستخدام الشبكة العصبية بالمقارنة من نماذج الانحدار الخطية
Subject
:
Prediction Of Hourly And Daily Diffuse Fraction
Document Language
:
English
Abstract
:
For most of the locations all over Egypt the records of diffuse radiation in whatever scale are non-existent. In case that it exists, the quality of these records is not as good as it should be for most purposes and so an estimate of its values is desirable. To achieve such a task, an artificial neural network (ANN) model has been proposed to predict diffuse fraction (KD) in hourly and daily scale. A comparison between the performances of the ANN model with that of two linear regression models has been reported. An attempt was also done to describe the ANN outputs in terms of first order polynomials relating KD with clearness index (KT) and sunshine fraction (S/S0). If care is taken in considering the corresponding regional climatic differences, these correlations can be generalized and transferred to other sites. The results hint that the ANN model is more suitable to predict diffuse fraction in hourly and daily scales than the regression models in the plain areas of Egypt.
ISSN
:
00000000
Journal Name
:
Journal of Energy
Volume
:
32
Issue Number
:
0
Publishing Year
:
1426 AH
2007 AD
Article Type
:
Article
Added Date
:
Sunday, January 15, 2012
Researchers
Researcher Name (Arabic)
Researcher Name (English)
Researcher Type
Dr Grade
Email
فرج النجاحي
Elnagahy, farag
Researcher
Doctorate
faragelnagahy@hotmail.com
Files
File Name
Type
Description
32057.docx
docx
Prediction Of Hourly And Daily Diffuse Fraction Using Neural Network, As Compared To Linear Regression Models
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