DocumentCode
675398
Title
Application of neural network to electrostatic fields distribution pattern: A case study
Author
Akinsanmi, O. ; Ekundayo, K.R.
Author_Institution
Dept. of Electr. & Comput. Eng., Ahmadu Bello Univ., Zaria, Nigeria
fYear
2013
fDate
14-16 Nov. 2013
Firstpage
206
Lastpage
211
Abstract
This paper presents the application of neural network to the electrostatic field distribution pattern modeling: a case study of Non-harmattan seasons in Zaria, Nigeria. The data was captured through an online mechanism for twenty four months (February, 2007-February, 2009) by the computer; the focus of the analysis is determining the effect of environmental factors such as temperature, pressure and relative humidity on the static electric field during the Non-harmattan season. The plots of the electrostatic field against the variation of the environmental factors were used as the qualitative analytical tools and yielded a non-linear relationship. The data was analyzed using Neural Network version 3.24 Software, to establish predictive model for the Non-harmattan period. The result of the analyses yielded good neural statistical values of Root Mean Square Error (RMSE) of 0.05, Pearson R value of 0.087 and RMSE of 0.04, R of 0.83 respectively for Non-harmattan, inside and outside Scenarios, which are reflections of a good models. The result was further buttressed by the plot of the Neural Network based Electrostatic Fields distribution pattern modeling of the experimental and predicted parameters. With the insignificant values of the RMSE, Pearson R value which are reflections of the closeness of the predicted and the experimental parameters, hence the model could be relied upon to predict the electrostatic fields during Non-harmattan season in Zaria, Nigeria.
Keywords
electric fields; environmental factors; mean square error methods; neural nets; electrostatic fields distribution pattern; environmental factors; neural network; nonharmattan season; predictive model; qualitative analytical tools; root mean square error; static electric field; Computational modeling; Data models; Electric fields; Electrostatics; Neural networks; Predictive models; Temperature measurement; Electrostatic field; Electrostatic field distribution pattern models; Environmental factors; Neural Network; Non — Hammattan Season;
fLanguage
English
Publisher
ieee
Conference_Titel
Emerging & Sustainable Technologies for Power & ICT in a Developing Society (NIGERCON), 2013 IEEE International Conference on
Conference_Location
Owerri
Print_ISBN
978-1-4799-2016-7
Type
conf
DOI
10.1109/NIGERCON.2013.6715657
Filename
6715657
Link To Document