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The present model can be used to solve more kinds of nonlinear partial differential equations.
They provide an alternative to the conventional representation by partial differential equations (PDE) and are suitable for computer implementation.
This method presents a wider applicability for handling the nonlinear partial differential equations.
The method can be straightforwardly extended to tackle other types of partial differential equations.
In order to obtain physical models much closer to the nature, this procedure has a potential to be used to other nonlinear partial differential equations.
The method is straightforwardly applicable to various types of partial differential equations.
The method works well for ordinary and partial differential equations.
Our method is applicable to many other classes of nonlinear partial differential equations.

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