Solution of System of First Order Nonlinear Non-Homogeneous Fuzzy Ordinary Differential Equations by Embedding Method
DOI:
https://doi.org/10.56919/usci.2323.010Keywords:
System, Fuzzy, Differential Equation, Embedding MethodAbstract
In this study, a system of first order nonlinear non-homogeneous fuzzy ordinary differential equations will be examine in fuzzy environment and solved using embedding method. The results of nonlinear non-homogeneous fuzzy ordinary differential equations are established which followed the form of SxS matrices and all the components of the matrices are real functions of time denoted by t. The accuracy of the results obtained is tested on some constructed example and recommended that further study should consider odd and even system of nonlinear non-homogeneous fuzzy ordinary differential equations by embedding method.
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