Subject Areas : International Journal of Industrial Mathematics
Abbasali Abounoori 1 , M Matinfar 2 , اصغر سیفی 3
1 - Islamic Azad university
2 - Science of Mathematics Faculty, Department of Mathematics, University of Mazandaran,
P.O.Box 47416-95447, Babolsar, Iran
3 - گروه ریاضی (آنالیز عددی)، دانشکده علوم ریاضی، دانشگاه مازندران، بابلسر، ایران
Keywords:
Abstract :
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