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Article

On Analytical Solutions of the Fractional Differential Equation with Uncertainty: Application to the Basset Problem

1
Young Researchers and Elite Club, Mobarakeh Branch, Islamic Azad University, Mobarakeh, Iran
2
Department of Mathematics, Faculty of Science, Universiti Putra Malaysia, 43400UPM, Serdang, Selangor, Malaysia
3
Department of Mathematics and Computer Sciences, Faculty of Art and Sciences, Cankaya University, Balgat 0630, Ankara, Turkey
4
Institute of Space Sciences, P.O.Box MG-23, Magurele-Bucharest, Romania
5
Department of Mathematics, Anand International College of Engineering, Jaipur-303012, India
*
Author to whom correspondence should be addressed.
Entropy 2015, 17(2), 885-902; https://doi.org/10.3390/e17020885
Submission received: 24 November 2014 / Revised: 15 January 2015 / Accepted: 15 January 2015 / Published: 16 February 2015
(This article belongs to the Special Issue Dynamical Equations and Causal Structures from Observations)

Abstract

:
In this paper, we apply the concept of Caputo’s H-differentiability, constructed based on the generalized Hukuhara difference, to solve the fuzzy fractional differential equation (FFDE) with uncertainty. This is in contrast to conventional solutions that either require a quantity of fractional derivatives of unknown solution at the initial point (Riemann–Liouville) or a solution with increasing length of their support (Hukuhara difference). Then, in order to solve the FFDE analytically, we introduce the fuzzy Laplace transform of the Caputo H-derivative. To the best of our knowledge, there is limited research devoted to the analytical methods to solve the FFDE under the fuzzy Caputo fractional differentiability. An analytical solution is presented to confirm the capability of the proposed method.

1. Introduction

The fractional differential equation (FDE) is gaining more attention, since it is capable of modeling different processes in physics, chemistry and engineering (see [17]). Furthermore, it appeared in the theory of the control of dynamical systems, when the controlled system and/or the controller is described by an FDE [810]. Some relevant monographs are Podlubny [10], Kilbas et al. [11] and Baleanu et al. [12]. Accordingly, providing the analytical and numerical methods to solve the FDEs has become an active research undertaking (see [1222]). Furthermore, one reason for the interest in FDE comes from applications that involve new ways of modeling physical systems using tools from fractional calculus. For example, consider the dynamics of a system that involves the motion of a rheological specimen that exhibits both elasticity and dissipation [9,23]. An alternative approach instead of the traditional models would be to combine the effects of stiffness and damping in a single term by an FDE:
D a β x ( t ) = f ( t , x ( t ) ) , 0 < β 1 , t > a , x ( t 0 ) = x 0 ,
where we usually could not be sure that the model is true. One of the main reasons is that the initial value in Equation (1) may not be known precisely, as it is usually characterized by a domain expert. Therefore, instead of using the deterministic values, one of the other popular choices is to employ the fuzzy initial value. That is, each element of the FDE is converted to the fuzzy frame, and this is how the fuzzy fractional differential equation (FFDE) emerged.
Moreover, deducing equations of dynamics from empirical observations is fundamental in science. Furthermore, describing and understanding natural phenomena is the goal of theoretical physics and mathematics. Theoretical physics has had a general measure of the uncertainty associated with the behavior of a probabilistic process for more than 100 years [24,25]. Over the past two decades, a new mathematical description has been formulated, linked together by tools of fractional calculus, which include fractional constitutive laws, probabilistic models based on continuous time random walks and generalized central limit theorems, fractional Langevin equations, fractional Brownian motions, fractional diffusion and the fractional Fokker–Planck equation. Commonly, the unknown parameters involved in such models are assumed constant over time. In reality, however, some of them are not constant and implicitly depend on several factors. Many such factors usually do not appear explicitly in the mathematical models, due to the tradeoffs between modeling and numerical tractability and the lack of precise knowledge about them. In order to deal with such uncertainty in those parameters, a stochastic approach is commonly employed with the assumption that stochastic behavior implies knowledge of the probabilistic information of the system components. However, this information can be very complicated, with errors and vagueness. With this motivation, the authors provide a different approach to depict such physical models with the parameters and initial values defined under fuzzy fractional setting theory. This interpretation can be closer to the origin of the physical models, and it has enough ability to be extended to the other models in addition to the currently discussed one.
One of the pioneering works in fuzzy fractional calculus was conducted by Agarwal et al. in [26], where they proposed a concept for the FDE with uncertainty. In this paper, the Riemann–Liouville differentiability equipped with a fuzzy initial condition to solve the FFDE was used. We recall that the differentiability of the fuzzy-valued functions in the fractional case was not covered. To extend this, Allahviranloo et al. [27] introduced the Riemann–Liouville H-differentiability in order to solve the FFDEs, which is a direct generalization of the fractional Riemann–Liouville derivative using the Hukuhara difference. Afterward, Mazandarani and Vahidian Kamyad [28] introduced the Caputo-type fuzzy fractional derivative for the solution of FFDE. Recently, Salahshour et al. [29] used the fuzzy Laplace transform [30] in order to solve analytically such problems, which was followed up by Mazandarani and Najariyan [31] to introduce the fuzzy Laplace transform under Type 2 fuzzy fractional differentiability. However, there are three flaws associated with these aforementioned solutions. In the former, as highlighted in [32,33], there is a limitation in the Hukuhara difference, where it leads to solutions with increasing length of their support. In the latter, the Riemann–Liouville derivative requires a quantity of the fractional derivative of unknown solution at the initial point, and in the last one, the authors applied the method under Type 2 fuzzy setting theory, which increases the computational cost, although it is closer to the originality of the model. Practically, we do not clearly know what is the meaning of the fractional derivative at that point. In other words, the required quantity could not be measured and perhaps may not exist. Due to this important drawback, a few papers were published to consider Caputo’s fuzzy differentiability, as well as numerical methods for the solution of FFDEs [28,3436], which is still traceless and unknown.
In this manuscript, we propose a different mathematical model based on the FFDE and present its analytical solution. Particularly, we employ the strongly-generalized differentiability based on the Caputo derivative, as in [28,37]. As a result, the proposed solution will allow us to handle the limitations suffered by the Hukuhara difference and Riemann–Liouville differentiability, respectively. Then, we employ the fuzzy Laplace transforms method [29,38] to solve the FFDEs analytically. This is in contrast to the solution in [37], where they derived an equivalent integral form of FFDE [39] to obtain the approximate solutions. We refer to some works on the fuzzy Laplace transforms in [30,40,41] and [29] and the references therein. Recently, applying the fuzzy Laplace transform has been widely used in order to solve fuzzy fractional differential equations; see [31,38]. In fact, for the first time in the literature, we have solved a mixed type of fractional differential equation under uncertainty (including natural and fractional order), the so-called fuzzy fractional Basset equation.
The paper is organized as follows: We revisit briefly some of the well-known definitions of the fuzzy numbers in Section 2 and Caputo’s H-differentiability in Section 3, respectively. The fuzzy Laplace transforms are used for the fuzzy-valued function and the novel theorem for the Laplace transform of f under Caputo’s H-derivative detailed in Section 4. The solutions of the FFDE using the fuzzy Laplace transforms and their inverses are investigated in Section 5. In Section 6, some real examples in the fuzzy sense are solved to show the presented method. Finally, the conclusion is drawn in Section 7.

2. Preliminaries

We recall that the basic definition of the fuzzy numbers had been discussed (see [42,43]), and interested readers are encouraged to read them for the details. We denote the set of all real numbers as R and the set of all fuzzy numbers on R as E.
Therefore, a fuzzy number is a mapping u : R → [0, 1] that satisfies the following properties:
  • u is upper semi-continuous,
  • u is fuzzy convex, i.e., for all x, yR, λ ∈ [0, 1]: ux + (1 λ)y) ≥ min{u(x), u(y)},
  • u is normal, i.e., ∃ x0R for which u(x0) = 1,
  • supp u = {xR | u(x) > 0} is the support of the u, and its closure cl(supp u) is compact.
Consequently, a similar definition, but in parametric form, is provided in [44] as:
Definition 1. A fuzzy number u in parametric form is a pair ( u ¯, u ¯) of functions u ¯(r), u ¯(r), 0 ≤ r ≤ 1, where the following requirements hold:
  • u ¯(r) is a bounded non-decreasing left continuous function in (0, 1] and right continuous at zero,
  • u ¯(r) is a bounded non-increasing left continuous function in (0, 1] and right continuous at zero,
  • u ¯(r) ≤ u ¯(r), 0 ≤ r ≤ 1.
Definition 2. Let E be the set of all fuzzy numbers on R. The r-level set of a fuzzy number uE, 0 ≤ r ≤ 1, denoted by [u]r, is defined as:
[ u ] r = { { x R | u ( x ) r } , i f 0 < r 1 c l ( s u p p u ) , i f r = 0 }
It is clear that the r-level set of a fuzzy number is a closed and bounded interval [ u ¯(r); u ¯(r)], where u ¯(r) denotes the left-hand endpoint of [u]r and u ¯(r) denotes the right-hand endpoint of [u]r.
Regarding Zadeh’s extension principle, the “addition” operation (⊕) on E is presented as:
( u v ) ( x ) = sup y R min { u ( y ) , v ( x y ) } , x R ,
and the scalar multiplication of a fuzzy number is described as:
( k u ) ( x ) = { u ( x / k ) , k > 0 0 ˜ , k = 0
where 0 ˜E. It is well known that these properties are true for all levels of:
[ u v ] r = [ u ] r + [ v ] r , [ k u ] r = k [ u ] r .
The Hausdorff distance between these fuzzy numbers is indicated by d : E × E → [0, ],
d ( u , v ) = sup r [ 0 , 1 ] max { | u ¯ ( r ) v ¯ ( r ) | , | u ¯ ( r ) v ¯ ( r ) | } ,
where u ( r ) = [ u ¯ ( r ) , u ¯ ( r ) ], v ( r ) = [ v ¯ ( r ) , v ¯ ( r ) ] is utilized in [32,44]. From here, one can easily find that d is a metric in E and has the following properties [45]:
  • d(uw, vw) = d(u, v), ∀u, v, wE,
  • d(ku, kv) = |k|d(u, v), ∀kR, u, vE,
  • d(uv, we) ≤ d(u, w) + d(v, e), ∀u, v, w, eE,
  • (E, d) is a complete metric space.
Definition 3. A mapping f : R × E → E is continuous at point (x0, y0) ∈ R × E, provided that for any fixed r ∈ [0, 1] and arbitrary ϵ > 0, there exists an δ(ϵ, r), such that:
d ( [ f ( x , y ) ] r , [ f ( x 0 , y 0 ) ] r ) < ,
whenever |x – x0| < δ(ϵ, r) and d([y(x)]r, [y0]r) < δ(ϵ, r) for all xR and yE.
Theorem 1. (see [46]) Let f(x) be a fuzzy-valued function on [a, ∞), and it is represented by ( f ¯ ( x ; r ) , f ¯ ( x ; r ) ). For any fixed r ∈ [0, 1], assume f ¯ ( x ; r ) and f ¯ ( x ; r ) are Riemann-integrable on [a, b] for every b ≥ a, and assume that there are two positive functions M ¯ ( r ) and M ¯ ( r ), such that a b | f ¯ ( x ; r ) | d x M ¯ ( r ) and a b | f ¯ ( x ; r ) | d x M ¯ ( r ) for every ba; then, f(x) is improper fuzzy Riemann-integrable on [a; ∞). The improper fuzzy Riemann-integral is a fuzzy number, and we have:
a b f ( x ; r ) d x = [ a f ¯ ( x ; r ) d x , a f ¯ ( x ; r ) d x ]
Definition 4. Let x, yE, such that E is the set of all fuzzy numbers on R; if there exists zE, such that x = yz, then z is called the H-difference of x and y and is denoted as xy. In this paper, the sign “” always refers to the H-difference, unless specified otherwise, and also, note that xyx+(−1)y.
Definition 5. Let f : (a, b) → E and x0 ∈ (a, b). f be called strongly-generalized differentiable at x0, if an element f′(x0) ∈ E exists, such that:
  • for all h > 0 sufficiently small, ∃f(x0 + h) ⊝ f(x0), ∃f(x0) ⊝ f(x0h) and the limits (in the metric d): lim h 0 f ( x 0 + h ) f ( x 0 ) h = lim h 0 f ( x 0 ) f ( x 0 h ) h = f ( x 0 ) ,
or:
  • for all h > 0 sufficiently small, ∃f(x0) ⊖ f(x0 + h), ∃f(x0 h) ⊖ f(x0) and the limits (in the metric d): lim h 0 f ( x 0 ) f ( x 0 + h ) h = lim h 0 f ( x 0 h ) f ( x 0 ) h = f ( x 0 ) ,
or:
  • for all h > 0 sufficiently small, ∃f(x0 + h) ⊖ f(x0), ∃f(x0h) ⊖ f(x0) and the limits (in the metric d): lim h 0 f ( x 0 + h ) f ( x 0 ) h = lim h 0 f ( x 0 h ) f ( x 0 ) h = f ( x 0 ) ,
or:
  • for all h > 0 sufficiently small, ∃f(x0) ⊖ f(x0 + h), ∃f(x0) ⊖ f(x0h) and the limits (in the metric d): lim h 0 f ( x 0 ) f ( x 0 + h ) h = lim h 0 f ( x 0 ) f ( x 0 h ) h = f ( x 0 ) (h and −h at denominators mean 1 h and 1 h, respectively).
It is important to note that, for the sake of simplicity, the function that satisfies Case (1) (or Case (2)) in Definition 5 is known as the (1)-differentiable function (or (2)-differentiable function). The principal properties of these derivatives are well described (see, for example, [32,33,47]), and the following theorems are adopted.
Theorem 2. (see [47]) Let f : R → E be a function, and denote f ( x ; r ) = [ f ¯ ( x ; r ) , f ¯ ( x ; r ) ], for each r ∈ [0,1].
  • If f is a (1)-differentiable function, then f ¯ ( x ; r ) and f ¯ ( x ; r ) are differentiable functions and [ f ( x ) ] r = [ f ¯ ( x ; r ) , f ¯ ( x ; r ) ],
or:
  • If f is a (2)-differentiable function, then f ¯ ( x ; r ) and f ¯ ( x ; r ) are differentiable functions and [ f ( x ) ] r = [ f ¯ ( x ; r ) , f ¯ ( x ; r ) ].

3. Caputo’s H-Differentiability

In this section, the concept of the fuzzy Caputo derivative as in [29] is revisited using the Hukuhara difference, and interested readers are encouraged to see the full details in the aforementioned paper. We indicate C(J, E) as a space of all fuzzy-valued functions, continuous on J = (a, b] [37]:
C ( J , E ) : = { f | f : ( a , b ] E , f i s c o n t i n u o u s } .
where, throughout the paper, we hypothesized that the fuzzy-valued function f is located in C(J, E), unless specified otherwise.
Definition 6. Let f : [a, b] → E, for 0 < β ≤ 1; the fuzzy Riemann–Liouville integral of fuzzy-valued function f is defined as:
( I a + β f ) ( x ) = 1 Γ ( β ) a x f ( t ) d t ( x t ) 1 β , x > a .
For all 0 ≤ r ≤ 1, since f ( x ; r ) = [ f ¯ ( x ; r ) , f ¯ ( x ; r ) ], the fuzzy Riemann–Liouville integral of fuzzy-valued function f can be calculated based on its lower function and upper function, respectively, as follows:
Theorem 3. (see [37]) Let f : [a, b] → E, for 0 ≤ r ≤ 1 and 0 < β ≤ 1; the fuzzy Riemann–Liouville integral of fuzzy-valued function f is defined as:
( I a + β f ) ( x ; r ) = [ ( I a + β f ¯ ) ( x ; r ) , ( I a + β f ¯ ) ( x ; r ) ] ,
where
( I a + β f ¯ ) ( x ; r ) = 1 Γ ( β ) a x f ¯ ( t ; r ) d t ( x t ) 1 β , ( I a + β f ¯ ) ( x ; r ) = 1 Γ ( β ) a x f ¯ ( t ; r ) d t ( x t ) 1 β .
Then, the fuzzy Riemann–Liouville fractional derivatives of order 0 < β < 1 for fuzzy-valued function f (which is a direct extension of strongly-generalized H-differentiability in [32] and the lateral type of H-differentiability in [47] in the fractional literature) are defined as follows:
Definition 7. Let f : (a,b) → E, x0 ∈ (a,b) and Φ ( x ) = 1 Γ ( 1 β ) a x f ( t ) d t ( x t ) β. For all 0 ≤ r ≤ 1, h > 0. f(x) is called fuzzy Riemann–Liouville fractional differentiable of order 0 < β < 1 at x0, if there exists an element ( R L D a + β f ) ( x 0 ) E, such that:
  • ( R L D a + β f ) ( x 0 ) = lim h 0 Φ ( x 0 + h ) Φ ( x 0 ) h = lim h 0 Φ ( x 0 ) Φ ( x 0 h ) h ,
or:
  • ( R L D a + β f ) ( x 0 ) = lim h 0 Φ ( x 0 ) Φ ( x 0 + h ) h = lim h 0 Φ ( x 0 h ) Φ ( x 0 ) h .
For the sake of simplicity, a fuzzy-valued function f is RL[(1)−β] -differentiable if it is differentiable, as in Definition 7, Case (1), and is RL[(2) − β]-differentiable if it is differentiable as in Definition 7, Case (2).
Theorem 4. (see [37]) Let f : (a, b) → E and x0 ∈ (a, b), 0 < β < 1; then, for all 0 ≤ r ≤ 1, we have the following relations:
  • If f is a RL[(1) − β]-differentiable fuzzy-valued function, then:
    ( R L D a + β f ) ( x 0 ; r ) = [ ( R L D a + β f ¯ ) ( x 0 ; r ) , ( R L D a + β f ¯ ) ( x 0 ; r ) ]
or:
  • If f(x) is a RL[(2) − β]-differentiable fuzzy-valued function, then:
    ( R L D a + β f ) ( x 0 ; r ) = [ ( R L D a + β f ¯ ) ( x 0 ; r ) , ( R L D a + β f ¯ ) ( x 0 ; r ) ]
where
( R L D a + β f ¯ ) ( x 0 ; r ) = [ 1 Γ ( 1 β ) d d x a x f ¯ ( t ; r ) d t ( x t ) β ] x = x 0 ( R L D a + β f ¯ ) ( x 0 ; r ) = [ 1 Γ ( 1 β ) d d x a x f ¯ ( t ; r ) d t ( x t ) 1 β ] x = x 0
This leads to the derivation of the fuzzy Caputo fractional derivatives. Let [a, b] be a finite interval of the real line R and R L D a + β be the Riemann–Liouville H-derivative of order β as in Definition 7.
Proposition 1. (see [37,48]) Let b > 0 and J = (a, b]; we denote C(J, E) as the space of all continuous fuzzy functions defined on J. Furthermore, let fC(J, E); we say that f L 1 ( J , E ) i f f d ( a b f ( s ) d s , 0 ˜ ) < , where d is the fuzzy metric defined in Section 2.
For more details, please see [37,4850]. The fuzzy Caputo fractional derivatives under the Hukuhara difference ( C D a + β f ) ( x ) are defined as:
Definition 8. (see [28,37]) Let fC(J, E) ∩ L1(J, E) be a fuzzy set-value function; then f is Caputo fuzzy H-differentiable at x when:
( C D a + β f ) ( x ) = 1 Γ ( 1 β ) a x f ( t ) ( x t ) β d t ,
where 0 < α < 1; then, we say f is C[(1) − β]-differentiable if Equation (7) holds, while f is (1)-differentiable, and f is C[(2) − β]-differentiable if Equation (7) holds, while f is (2)-differentiable.
Theorem 5. (see [37]) Let 0 < β < 1 and fC(J, E); then the fuzzy Caputo fractional derivative exists on (a, b), and for all 0 ≤ r ≤ 1, we have:
( C D a + β f ) ( x ; r ) = [ 1 Γ ( 1 β ) a x f ¯ ( t ) ( x t ) β d t , 1 Γ ( 1 β ) a x f ¯ ( t ) ( x t ) β d t ]
when f is (1)-differentiable, and:
( C D a + β f ) ( x ; r ) = [ 1 Γ ( 1 β ) a x f ¯ ( t ) ( x t ) β d t , 1 Γ ( 1 β ) a x f ¯ ( t ) ( x t ) β d t ]
when f is (2)-differentiable, in which ( I a + β f ) ( x ) = 1 Γ ( β ) a x f ( t ) d t ( x t ) 1 β for x > a.

4. The Fuzzy Laplace Transforms

Below, we define the fuzzy Laplace transform for a fuzzy-valued function. After that, a derivative theorem is presented to connect the Laplace transform of the fractional derivative and the corresponding fuzzy-valued function. We recall that, firstly, Allahviranloo and Ahmadi [30] suggested the concept of Laplace transforms for fuzzy-valued function as follows:
Definition 9. (see[30]) Let f(x) be a continuous fuzzy-value function; suppose that f(x) ⊙ e−px is improper fuzzy Riemann-integrable on [0, ); then 0 f ( x ) e p x d x is the fuzzy Laplace transforms and can be denoted as:
L { f ( x ) } = 0 f ( x ) e p x d x ( p > 0 a n d i n t e g e r )
From Theorem 1, such that r ∈ [0, 1], we conclude:
0 f ( x ; r ) e p x d x = [ 0 f ¯ ( x ; r ) e p x d x , 0 f ¯ ( x ; r ) e p x d x ] .
By virtue of the definition of the classical Laplace transform:
{ f ¯ ( x ; r ) } = 0 f ¯ ( x ; r ) e p x d x , { f ¯ ( x ; r ) } = 0 f ¯ ( x ; r ) e p x d x ,
we conclude:
L { f ( x ; r ) } = [ { f ¯ ( x ; r ) } , { f ¯ ( x ; r ) } ] .
Theorem 6. (see [30]) Let f(x), g(x) be continuous-fuzzy-valued functions; suppose that c1,c2 are constants, then:
L { ( c 1 f ( x ) ) + ( c 2 g ( x ) ) } = c 1 L { f ( x ) } + c 2 L { g ( x ) } .
Lemma 1. (see [30]) Let f(x) be a continuous fuzzy-value function on [0, ) and λ ∈ R, then:
L { λ f ( x ) } = λ L { f ( x ) } .
Lemma 2. (see [30]) Let f be a continuous fuzzy-value function and g(x) 0 a real value function; suppose that (f(x) ⊙ g(x)) ⊙ e−px is improper fuzzy Riemann-integrable on [0, ); then, for fixed r ∈ [0, 1]:
0 ( f ( x ; r ) g ( x ) ) e p x d x = [ 0 g ( x ) f ¯ ( x ; r ) e p x d x , 0 g ( x ) f ¯ ( x ; r ) e p x d x ] .
Theorem 7. (see [30]) Let f be a continuous fuzzy value function and L{f(x)} = F (p); then:
L { e a x f ( x ) } = F ( p a )
where eax is a real value function.

4.1. Proposed Solution

The fuzzy Laplace transform of Caputo’s H-derivative of f, ( C D a + β f ) ( x ) is crucial in order to obtain the solution of FFDEs. The virtue of L { ( C D a + β f ) ( x ) } is related to the fact that it can be written in terms of L{f(x)}:
Theorem 8. Derivative theorem: Suppose that f is a continuous fuzzy-valued function on [0, ). Then, we have:
L { ( C D a + β f ) ( x ) } = p β L { f ( x ) } f ( 0 )
if f is C[(1) − β]-differentiable and:
L { ( C D a + β f ) ( x ) } = f ( 0 ) ( p β L { f ( x ) } )
if f is C[(2) − β]-differentiable.
Proof. For arbitrary fixed r ∈ [0, 1], we have:
p β L { f ( x ) } f ( 0 ) = [ p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) , p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) ) ] .
Since f is C[(1) − β],
( C D a + β f ) ( x ; r ) = [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ]
= [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ] .
Hence, we have:
{ ( C D a + β f ¯ ) ( x ; r ) } = { ( C D a + β f ¯ ) ( x ; r ) } = p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) , { ( C D a + β f ¯ ) ( x ; r ) } = { ( C D a + β f ¯ ) ( x ; r ) } = p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) .
Then, we conclude that:
p β L { f ( x ) } f ( 0 ) = [ { ( C D a + β f ¯ ) ( x , r ) } , { ( C D a + β f ¯ ) ( x ; r ) } ] .
By linearity of L,
p β L { f ( x ) } f ( 0 ) = L { [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ] } .
Using Equation (13), this leads to obtaining:
p β L { f ( x ) } f ( 0 ) = L { ( C D a + β f ) ( x ) } .
Now, we assume that f is C[(2) − β]-differentiable; then for arbitrary fixed r ∈ [0, 1], we have:
f ( 0 ) ( p β L { f ( x ) } ) = [ f ¯ ( 0 ; r ) + p β { f ¯ ( x ; r ) } , f ¯ ( 0 , r ) + p β { f ¯ ( x , r ) } ]
and since f is C[(2) − β]-differentiable, we get:
( C D a + β f ) ( x ; r ) = [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ]
= [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ] .
Therefore, we have:
f ( 0 ) ( p β L { f ( x ) } ) = [ p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) , p β { f ¯ ( x ; r ) } f ¯ ( 0 ; r ) ] , = L { [ ( C D a + β f ¯ ) ( x ; r ) , ( C D a + β f ¯ ) ( x ; r ) ] } .
Finally, we can deduce:
f ( 0 ) ( p β L { f ( t ) } ) = L { ( C D a + β f ) ( x ) } .
which finishes the proof. □

5. FFDEs under Caputo’s H-Differentiability

In this section, we investigate the solutions of FFDE under Caputo’s H-differentiability with the proposed method. Firstly, we consider the FFDE of order 0 < β < 1 with the fuzzy initial condition as follows:
{ ( C D a + β y ) ( x ) = f ( x , y ( x ) ) y ( a ) E
The Laplace transform of Equation (17) gave us:
L { ( C D a + β y ) ( x ) } = L { f ( x , y ( x ) } .
Thus, using the types Caputo’s H-differentiability, we discuss the following cases:
Case I: We consider y(x) a C[(1) − β]-differentiable function; then Equation (18) is extended based on its lower and upper functions for 0 < β < 1 as:
{ { f ¯ ( x , y ( x ) ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) , 0 r 1 , { f ¯ ( x , y ( x ) ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) , 0 r 1 ,
where:
f ¯ ( x , y ( x ) ; r ) = min { f ( x , u ) | u [ y ¯ ( x ; r ) , y ¯ ( x ; r ) ] } ,
f ¯ ( x , y ( x ) ; r ) = max { f ( x , u ) | u [ y ¯ ( x ; r ) , y ¯ ( x ; r ) ] } .
In order to find a solution of the linear system (Equation (19)), for simplicity, we make the assumption that:
{ y ¯ ( x ; r ) } = H 1 ( p ; r ) , { y ¯ ( x ; r ) } = K 1 ( p ; r ) ,
where H1(p; r) and K1(p; r) are solutions of System (19). By using the inverse Laplace transform, y ¯ ( x ; r ) and y ¯ ( x ; r ) are calculated as follows:
y ¯ ( x ; r ) = 1 { H 1 ( p ; r ) } , y ¯ ( x ; r ) = 1 { K 1 ( p ; r ) } ,
In this case, we use the symbol L−1 as the inverse of fuzzy Laplace transform, and it is equivalent to:
( 1 { H 1 ( p ; r ) } , 1 { K 1 ( p ; r ) } ) .
Case II: Let us consider y(x) as C[(2) − β]-differentiable; then for 0 < β < 1, Equation (18) can be written as:
{ { f ¯ ( x , y ( x ) ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) , { f ¯ ( x , y ( x ) ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) ,
where:
f ¯ ( x , y ( x ) ; r ) = min { f ( x , u ) | u [ y ¯ ( x ; r ) , y ¯ ( x ; r ) ] } , f ¯ ( x , y ( x ) ; r ) = max { f ( x , u ) | u [ y ¯ ( x ; r ) , y ¯ ( x ; r ) ] } .
Similar to Case I, in order to solve the linear system (Equation (23)), we simplify:
{ y ¯ ( x ; r ) } = H 2 ( p ; r ) , { y ¯ ( x ; r ) } = K 2 ( p ; r ) ,
where H2(p; r) and K2(p; r) are solutions of the system (Equation (23)). By using the inverse Laplace transform, y ¯ ( x ; r ) and y ¯ ( x ; r ) are computed as follows:
y ¯ ( x ; r ) = 1 { H 2 ( p ; r ) } ,
y ¯ ( x ; r ) = 1 { K 2 ( p ; r ) } ,
and this is equivalent to:
( 1 { H 2 ( p ; r ) } , 1 { K 2 ( p ; r ) } ) .

6. Application

In this section, we will solve some real-world examples (to obtain the solutions of FFDE) under the definition of Caputo differentiability for a fuzzy-valued function about fractional order 0 < β < 1. Firstly, we solve a homogeneous FFDE (Example 1). Then, in a general case, we solve an example that includes the free parameter λ (Example 2), which has appeared in the fuzzy literature several times under Caputo’s H-differentiability [32]. Finally, the fuzzy Basset problem (Example 3) is determined to show the ability of the proposed method.
This paper is the first attempt that provides analytical solutions for the FFDEs under the Caputo differentiability. Hence, there are no other reported analytical methods for such problems to compare in the fuzzy Laplace method.
Example 1. We analyze the following FFDE:
{ ( C D 0 + β y ) ( x ) = 0 , 0 < β < 1 y ( 0 ; r ) = [ y ¯ 0 ( r ) , y ¯ 0 ( r ) ] , 0 r 1.
With the help of the Laplace transforms on Equation (26), we obtain:
L { ( C D 0 + β y ) ( x ) } = L { 0 } .
The inverse of the Laplace on Equation (27) gave us:
y ¯ ( x ; r ) = 1 { y ¯ ( 0 ; r ) p β } , 0 r 1 , 0 < β < 1 ,
y ¯ ( x ; r ) = 1 { y ¯ ( 0 ; r ) p β } , 0 r 1 , 0 < β < 1
which led to deriving lower and upper functions of the solution for 0 < β < 1 as follows:
y ¯ ( x ; r ) = y ¯ 0 ( r ) x β 1 , y ¯ ( x ; r ) = y ¯ 0 ( r ) x β 1 , 0 r 1.
Example 2. In the following, we analyze the following FFDE,
{ ( C D 0 + β y ) ( x ) = λ y ( x ) , 0 < β < 1 y ( 0 ; r ) = [ y ¯ 0 ( r ) , y ¯ 0 ( r ) ] , 0 r 1.
such that y(x) is the number of radionuclides present in a given radioactivity, and λ is a decay constant. We investigate the solution in this case for λR.
Case I: We make the assumption that λR+ = (0, +), and after that, we use the Laplace transform and finally conclude:
L { ( C D a + β y ) ( x ) } = L { λ y ( x ) } .
Using C[(1) − β]-differentiability, we get:
{ λ { y ¯ ( x ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) , λ { y ¯ ( x ; r ) } = p β { y ¯ ( x ; r ) } y ¯ ( 0 ; r ) .
After some manipulations, we get the following:
{ ( p β λ ) { y ¯ ( x ; r ) } = y ¯ ( 0 ; r ) , ( p β λ ) { y ¯ ( x ; r ) } = y ¯ ( 0 ; r ) .
The inverse of the fuzzy Laplace transforms on Equation (33) leads us to:
{ y ¯ ( x ; r ) = y ¯ ( 0 ; r ) 1 { 1 p β λ } , 0 r 1 , y ¯ ( x ; r ) = y ¯ ( 0 ; r ) 1 { 1 p β λ } , 0 r 1.
Finally, the solution of FFDE is determined as follows:
{ y ¯ ( x ; r ) = y ¯ 0 ( r ) E β , 1 [ λ x β ] , 0 r 1 , y ¯ ( x ; r ) = y ¯ 0 ( r ) E β , 1 [ λ x β ] , 0 r 1 ,
where Eβ,1 is the Mittag–Leffler function (see [11]).
Case II: Suppose that λR = (−, 0); then, using C[(2) − β]-differentiability and Theorem 8, the obtained solution will be similar to Equation (34). For a special case, let us consider β = 0.5, λ = 1 and y(0; r) = [1 + r, 3 − r]; then, the solution for Case I is derived as follows:
y ( x ; r ) = [ 1 + r , 3 r ] ( 1 π x + e x erfc ( x ) ) ,
and the solution for Case II with λ = −1 is obtained as follows:
y ( x ; r ) = [ 1 + r , 3 r ] ( 1 π x e x erfc ( x ) ) ,
where erfc ( x ) = 2 x x e t 2 d t ..
Example 3. The Basset problem: The dynamics of a sphere immersed in an incompressible viscous fluid is a classical problem with huge applications in material sciences, as well as in the study of geophysical flows. A particularly important problem is the study of a sphere subjected to gravity, which was first presented by Basset in 1888 [51] and followed in 1910 by [52], who then introduced a special hydraulic force, known as “Basset’s force”.
Basset’s force was studied by Mainardi [53,54] in terms of a fractional derivative of order 1 2 of the velocity of the particle relative to the fluid and is recognized as the generalized Basset’s force. It is based on the fractional Caputo derivative (0 < β < 1) and on a generalized model of [52]. That is, when the fluid is at rest and the particle moves vertically under the effect of gravity, with a certain initial velocity y0:
y ( x ) + 2 ( C D 0 + β y ) ( x ) + y ( x ) = g ( x )
Now, in order to discover this in a real concept, we use the fuzzy initial value y0, the fuzzy-valued function g(x) and the concept of Caputo’s H-differentiability for the fractional derivative of y(x), ( C D 0 + β y ) and the generalized H-differentiability [32] for the first order derivative of y(x), y′(x). Let us consider the fuzzy version of the dynamics of a sphere immersed in an incompressible viscous fluid (Basset’s problem) as follows:
{ y ( x ) + 2 ( C D 0 + β y ) ( x ) + y ( x ) = g ( x ) , 0 < β < 1 y ( 0 ; r ) = 0 , 0 r 1 ,
where g is an arbitrary fuzzy-valued function, which can possess the fuzzy Laplace transforms.
In order to solve this example under C[(1)−β]-differentiability, we apply the fuzzy Laplace transform to both sides of Equation (37), which leads to:
L { y ( x ) } + 2 L { ( D 0 + β y ) ( x ) } + L { y ( x ) } = L { g ( x ) }
Simply using C[(1) − β]-differentiability, we get:
p L { y ( x ) } y ( 0 ) + 2 p β L { y ( x ) } y ( 0 ) + L { y ( x ) } = L { g ( x ) } .
Then, after simple computations, we get:
L { y ( x ) } = L { g ( x ) } + 2 y ( 0 ) p + 2 p β + 1 .
Applying the inverse of fuzzy Laplace transforms, we have:
y ( x ) = L 1 { L { g ( x ) } + 2 y ( 0 ) p + 2 p β + 1 } .
For a special case, let us consider β = 1 2 and g(x; r) = [−2 + 2r; 2 − 2r]. Then, our solution is:
y ( x ; r ) = [ 2 + 2 r , 2 2 r ] L 1 { 1 p ( p 1 2 + 1 ) 2 }
or, equivalently:
y ( x ; r ) = [ 2 + 2 r , 2 2 r ] ( 1 + e x ( 2 x 1 ) erfc ( x 1 2 ) 2 ( x π ) 1 2 ) .

7. Conclusion and Future Works

In this paper, we investigated an analytical solution of the FFDEs (Equation (17)), under Caputo’s H-differentiability. To this end, we revisited Caputo’s derivatives, and proposed novel fuzzy Laplace transforms and their inverses, with an analytical method to tackle the deficiencies in the state-of-the-art methods (Equation (22) under C[(1) − β] Caputo H-differentiability, Equations (24) and (25) under C[(2) − β] Caputo H-differentiability). Experimental results using some real-world problems (nuclear decay Equation (30) and Basset problem (38)) illustrated the effectiveness and applicability of the proposed method.

Acknowledgments

The authors would like to thank Chee Seng Chan, Centre of Image and Signal Processing, Faculty of Computer Science & Information Technology, University of Malaya, Kuala Lumpur, Malaysia, for his valuable remakrs which improved the paper.

Author Contributions

Soheil Salahshour and Ali Ahmadian wrote the first draft. Noraza Senu and Praveen Agarwal corrected and improved it, and Dumitru Baleanu prepared the final version. All authors have read and approved the final manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

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Salahshour, S.; Ahmadian, A.; Senu, N.; Baleanu, D.; Agarwal, P. On Analytical Solutions of the Fractional Differential Equation with Uncertainty: Application to the Basset Problem. Entropy 2015, 17, 885-902. https://doi.org/10.3390/e17020885

AMA Style

Salahshour S, Ahmadian A, Senu N, Baleanu D, Agarwal P. On Analytical Solutions of the Fractional Differential Equation with Uncertainty: Application to the Basset Problem. Entropy. 2015; 17(2):885-902. https://doi.org/10.3390/e17020885

Chicago/Turabian Style

Salahshour, Soheil, Ali Ahmadian, Norazak Senu, Dumitru Baleanu, and Praveen Agarwal. 2015. "On Analytical Solutions of the Fractional Differential Equation with Uncertainty: Application to the Basset Problem" Entropy 17, no. 2: 885-902. https://doi.org/10.3390/e17020885

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