A General Study on Langevin Equations of Arbitrary Order
Journal Title: Computer Reviews Journal - Year 2018, Vol 1, Issue 2
Abstract
In this paper, the broad study depends on Langevin differential equations (LDE) of arbitrary order. The fractional order is in terms of ψ-Hilfer fractional operator. This work reveals the dynamical behaviour such as existence, uniqueness and stability solutions for LDE involving ψ-Hilfer fractional derivative (HFD). Thus the fractional LDE with boundary condition, impulsive effect and nonlocal conditions are taken in account to prove the results
Authors and Affiliations
Elsayed M. Elsayed, S Harikrishnan, K. Kanagarajan
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