Subject Areas : journal of Artificial Intelligence in Electrical Engineering
hadi tarazodar
1
,
Karamolah BagheriFard
2
,
Samad Nejatian
3
,
Hamid Parvin
4
,
Razieh MalekHoseini
5
1 -
2 - Department of Computer Engineering, Yasooj Branch, Islamic Azad University, Yasooj, Iran
3 - Department of Electrical Engineering, Yasooj Branch, Islamic Azad University, Yasooj, Iran
4 - Department of Computer Engineering, College of Engineering, Yasooj Branch, Islamic Azad University, Yasooj, Iran.
5 - Department of Computer Engineering, Yasuj Branch, Islamic Azad University, Yasuj, Iran
Keywords:
Abstract :
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