An Application of Artificial Neural Networks for Solving Fractional Higher-order Linear Integro-differential Equations
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Erişim
info:eu-repo/semantics/openAccessTarih
2023Yazar
Allahviranloo, T.Jafarian, A.
Saneifard, R.
Ghalami, N.
Nia, S. Measoomy
Kiani, F.
Gamiz, U. Fernandez
Noeiaghdam, S.
Üst veri
Tüm öğe kaydını gösterKünye
ALLAHVİRANLOO , T., A. JAFARİAN , R. SANEİFARD , N. GHALAMİ , S. MEASOOMY NİA, F. KİANİ , U. FERNANDEZ-GAMİZ & S. NOEİAGHDAM. "An Application of Artificial Neural Networks for Solving Fractional Higher-order Linear Integro-differential Equations." Boundary Value Problems, 74 (2023): 2-14.Özet
This ongoing work is vehemently dedicated to the investigation of a class of ordinary
linear Volterra type integro-differential equations with fractional order in numerical
mode. By replacing the unknown function by an appropriate multilayered
feed-forward type neural structure, the fractional problem of such initial value is
changed into a course of non-linear minimization equations, to some extent. Put
differently, interest was sparked in structuring an optimized iterative first-order
algorithm to estimate solutions for the origin fractional problem. On top of that, some
computer simulation models exemplify the preciseness and well-functioning of the
indicated iterative technique. The outstanding accomplished numerical outcomes
conveniently reflect the productivity and competency of artificial neural network
methods compared to customary approaches.
Kaynak
Boundary Value ProblemsSayı
74Bağlantı
https://boundaryvalueproblems.springeropen.com/articles/10.1186/s13661-023-01762-xhttps://hdl.handle.net/11352/4626