In applied mathematics and mathematical analysis, the fractal derivative or Hausdorff derivative is a non-Newtonian generalization of the derivative dealing with the measurement of fractals, defined in fractal geometry.
Fractal derivatives were created for the study of anomalous diffusion, by which traditional approaches fail to factor in the fractal nature of the media.
A fractal measure t is scaled according to tα.
Such a derivative is local, in contrast to the similarly applied fractional derivative.
[1] Porous media, aquifers, turbulence, and other media usually exhibit fractal properties.
Classical diffusion or dispersion laws based on random walks in free space (essentially the same result variously known as Fick's laws of diffusion, Darcy's law, and Fourier's law) are not applicable to fractal media.
To address this, concepts such as distance and velocity must be redefined for fractal media; in particular, scales for space and time are to be transformed according to (xβ, tα).
Elementary physical concepts such as velocity are redefined as follows for fractal spacetime (xβ, tα):[2] where Sα,β represents the fractal spacetime with scaling indices α and β.
The traditional definition of velocity makes no sense in the non-differentiable fractal spacetime.
[2] Based on above discussion, the concept of the fractal derivative of a function f(t) with respect to a fractal measure t has been introduced as follows:[3] A more general definition is given by[3] For a function y(t) on
-derivative of y(t) at t is defined by The derivatives of a function f can be defined in terms of the coefficients ak in the Taylor series expansion:
From this approach one can directly obtain:
This can be generalized approximating f with functions (xα-(x0)α)k:
Note that the lowest order coefficient still has to be b0=f(x0), since it's still the constant approximation of the function f at x0.
Just like in the Taylor series expansion, the coefficients bk can be expressed in terms of the fractal derivatives of order k of f:
Proof idea: Assuming
exists, bk can be written as
If for a given function f both the derivative Df and the fractal derivative Dαf exist, one can find an analog to the chain rule:
The last step is motivated by the implicit function theorem which, under appropriate conditions, gives us
Similarly for the more general definition:
As an alternative modeling approach to the classical Fick's second law, the fractal derivative is used to derive a linear anomalous transport-diffusion equation underlying anomalous diffusion process,[3] where 0 < α < 2, 0 < β < 1,
, and δ(x) is the Dirac delta function.
To obtain the fundamental solution, we apply the transformation of variables then the equation (1) becomes the normal diffusion form equation, the solution of (1) has the stretched Gaussian kernel:[3] The mean squared displacement of above fractal derivative diffusion equation has the asymptote:[3] The fractal derivative is connected to the classical derivative if the first derivative exists.
In this case, However, due to the differentiability property of an integral, fractional derivatives are differentiable, thus the following new concept was introduced by Prof Abdon Atangana from South Africa.
The following differential operators were introduced and applied very recently.
[4] Supposing that y(t) be continuous and fractal differentiable on (a, b) with order β, several definitions of a fractal–fractional derivative of y(t) hold with order α in the Riemann–Liouville sense:[4]
{\displaystyle ^{FFP}D_{0,t}^{\alpha ,\beta }{\Big (}y(t){\Big )}={\dfrac {1}{\Gamma (m-\alpha )}}{\dfrac {d}{dt^{\beta }}}\int _{0}^{t}(t-s)^{m-\alpha -1}y(s)ds}
{\displaystyle ^{FFE}D_{0,t}^{\alpha ,\beta }{\Big (}y(t){\Big )}={\dfrac {M(\alpha )}{1-\alpha }}{\dfrac {d}{dt^{\beta }}}\int _{0}^{t}\exp {\Big (}-{\dfrac {\alpha }{1-\alpha }}(t-s){\Big )}y(s)ds}
{\displaystyle ^{FFP}J_{0,t}^{\alpha ,\beta }{\Big (}y(t){\Big )}={\dfrac {\beta }{\Gamma (\alpha )}}\int _{0}^{t}(t-s)^{\alpha -1}s^{\beta -1}y(s)ds}
FFM refers to fractal-fractional with the generalized Mittag-Leffler kernel.