1. Introduction
Fractional stochastic partial differential equations (SPDEs for short) constitute a subclass of stochastic partial differential equations. The main characteristic of this class of stochastic equations is that they involve fractional derivatives and integrals, which replace the usual derivatives and integrals. The fractional stochastic partial differential equations received particular attention in the last several decades because they emerge in anomalous diffusion models in physics, among other areas of applications (see, for example, [
1,
2,
3,
4,
5,
6,
7,
8] and references therein).
The aim of the present article is to study the following space-time fractional stochastic kinetic equations, for any
where
,
are some fractional parameters and
and
are two positive parameters, with
being called the intensity of the noise. The coefficient
is a measurable function, and
is a Gaussian noise, white in time and correlated in space. Here,
is the
d-dimensional Laplace operator and the operators
and
are interpreted as the inverses of the Bessel and Riesz potentials, respectively. They are defined as follows. For a function
f which is sufficiently smooth and small at infinity, the Riesz potential
is defined by
with
. The Bessel potential
on
can be represented by
where
is defined for
by the formula
. For more details, one can consult Chapter V in [
9] for the definitions about the Bessel and Riesz potentials. Furthermore, the composition of the Bessel and Riesz potentials plays an important role in describing the behaviour of the process at the spatial macro and microscales. These integral operators and their inverses can be defined as bounded operators on the fractional Sobolev spaces
.
We will specify later the required conditions on the function
and the Gaussian noise
. In Equarion (
1), the time derivative operator
with order
is defined in the
Caputo-Djrbashian sense (for example, Caputo [
3], Anh, and Leonenko [
2]):
The deterministic counterparts of Equation (
1) have received a lot of attention. This is because they appear to be very useful for modeling, being introduced to describe physical phenomena such as diffusion in porous media with fractal geometry, kinematics in viscoelastic media, relaxation processes in complex systems (including viscoelastic materials, glassy materials, synthetic polymers, biopolymers), propagation of seismic waves, anomalous diffusion and turbulence (see, for example, Anh and Leonenko [
2], Caputo [
3], Chen [
10], Chen [
11], Chen et al. [
12], Meerschaert et al. [
13], Nane [
14], and references therein). Such equations are obtained from the classical diffusion equation by replacing the first or second-order derivative by a fractional derivative.
In this work, we mainly follow the studies in [
1,
2,
15,
16] and references therein, In particular, in [
1], the authors showed a connection between the solution to the deterministic counterparts of Equation (
1) and the theory of continuous-time random walks (CTRWs for short). In fact, they showed the existence of the stochastic processes which are the limits, in the weak sense, of sequences of CTRWs whose probability density function
are governed by general equations of the form
where
and
is the infinitesimal generator of a Lévy process. The Riesz–Bessel operator
is a special case of
. Hence, this motivates us considering equations of the form (
1) containing the Caputo–Djrbashian derivative in this work. On the other hand, it might come natural to add just a additive Gaussian space-time white noise
to the deterministic counterparts of Equation (
1) and study the equation
Hence, if we use time fractional Duhamel’s principle (see, for example, [
17]), we will get the mild (integral) solution of (
1) to be of the form (informally):
where
It is not clear what the fractional derivative
means. As explained in [
18,
19] and etc., one can remove the fractional derivative of the noise term in (
4) in the following way. For
, define the fractional integral operator
as follows:
Note that (see, for example, [
18] and etc.), for every
and
or
,
. Then, by using the fractional Duhamel’s principle, mentioned above, the mild (integral) solution of Equation (
3) will be (informally)
The time-fractional SPDEs (
1) studied in this paper with
may arise naturally by considering the heat equation in a material with thermal memory; see, for example, [
12,
18,
19], etc.
The fractional SPDEs represent a combination of the deterministic fractional equations and the stochastic integration theory developped by Walsh (see [
20], see also Dalang’s seminal paper [
21]). Several types of fractional SPDEs have been considered in Chen [
10], Chen et al. [
11], Chen et al. [
22], Kim and Kim [
12], Chen et al. [
23], Foondun and Nane [
24], Hu and Hu [
25], Liu and Yan [
26], Márquez-Carreras [
15,
16], Mijena and Nane [
18,
19], and references therein.
In this work, we are interested in space-time fractional SPDEs (
1). It includes some widely studied particular cases. We refer, for example, to the classical stochastic heat equation with
,
and
(see, e.g., Dalang [
21], Khoshnevisan [
27]), the fractional stochastic heat equation with
,
and
(see examples Chen and Dalang [
28,
29], Foondun and Nane [
24], Márquez-Carreras [
16], Tudor [
30]), the generalized fractional kinetic equation with
,
and
(see [
15]), the space-time fractional stochastic partial differential equation with
,
and
(see [
18,
19]).
Our paper is motivated by the works of Anh and Leonenko [
2], Márquez-Carreras [
16], and Mijena and Nane [
18,
19]. We generalize the results of Márquez-Carreras [
16] to the fractional-in-time diffusion equation and of Mijena and Nane [
18] to fractional operator including Bessel operator
, which is essential for a study of (asymptotically) stationary solutions of Equation (
1) (see Anh and Leonenko [
2] for some details).
To be more precise, the novelty of this paper is that we extend the result in [
15,
18,
31] by including in the model the Bessel operator
with
and by generalizing the stochastic noise, in the sense that we allow a more general structure for the spatial covariance of the Gaussian noise
W in (
1) (which is taken to be space-time white noise in [
18] and colored by a Riesz kernel in space in [
31]). The presence of this Bessel operator brings more flexibility to the model, by including for
the situation treated in [
15,
18,
31]. From the technical point of view, the appearance of the Bessel operator leads to a new expression of the fundamental solution associated with Equation (
1). Indeed, we need new technical estimates for this kernel, which are obtained in
Section 2.2. The Bessel operator is also essential in order to get an asymptotically stationary solution, as discussed in
Section 4 of our work. Concretely, we study the existence and uniqueness of the solution to Equation (
1) under global Lipschitz conditions on diffusion coefficient
by using the random field approach of Walsh [
20] and time fractional Duhamel’s principle (see, e.g., [
17,
18]). Moreover, we study some new properties for the solution to time-space fractional SPDE (
1), including an upper bound of the second moment, the Hölder regularity in time and space variables, and the (asymptotically) stationarity of the solution with respect to time and space variables in some particular case.
We organize this paper as follows: In
Section 2, we introduce the Gaussian noise
, and we prove some properties of Green function
associated with the fractional heat type Equation (
13). In
Section 3, we give our main result about existence and uniqueness of the solution and some properties of the solution, including the Hölder regularity and the behavior of the second moment. In
Section 4, we study the linear additive case, with zero initial condition, i.e.,
and
. We see that the solution of (
1) is a Gaussian field with zero mean, with stationary increments, and a continuous covariance function in space, while it is not stationary in time but tends to a stationary process when the time goes to infinity.
3. Existence and Uniqueness
In this section, we will prove the existence and uniqueness of the mild solution to Equation (
14). We first introduce a stronger integrability condition on the spectral measure
than Hypothesis 1. While the existence and uniqueness of the solution can be obtained under Hypothesis 1, the new assumption presented below will be needed in order to prove certain properties of the solution.
Hypothesis 2. Assume that the spectral measure μ associated with satisfieswith some parameter η satisfying We will need the following estimates for the Green function given by (
19) (their proof is given in
Appendix A.
Proposition 2. Supposing , then we have the following estimates for the temporal and spatial increments of the Green function given by (19). - 1.
Under Hypothesis 1, for any such that and , we havewith . - 2.
Under Hypothesis 2, for any such that and , we havewith - 3.
Under Hypothesis 2, for any and , , and , we havewith Notice that all the constants depend on t although we omit it in the notation.
Remark 4. - 1.
Our results of Proposition 2 extend the results in Mijena and Nane [18] to the space-time fractional SPDE with colored Gaussian noises and Khoshnevisan [27] to space-time fractional SPDE, respectively. - 2.
The above Proposition 2 also extends the results in Márquez-Carreras [15,16] to space-time fractional kinetic equation with spatially homogeneous Gaussian noise.
Let us introduce some additional conditions that we need in order to prove our main results. The first condition is required for the existence-uniqueness result as well as for the upper bound on the second moment of the solution.
Assumption 1. - 1.
We assume that the initial condition is a non-random bounded non-negative function .
- 2.
We assume that is Lipschitz continuous satisfying with being a positive constant. Moreover, for all , We may assume, with loss of generality, that is also greater than . Since , it follows that for all .
Now, we can prove the existence and uniqueness of mild solution of Equation (
1) given by (
14).
Theorem 1. Under Assumption 1 and assuming that the spectral measure μ satisfies Hypothesis 1, then Equation (14) has a unique adapted solution and for any and , Moreover, this unique solution is mean-square continuous.
Proof. The proof of existence and uniqueness is standard based on Picard’s iterations. For more information, see, e.g., Walsh [
20], Dalang [
21]. We give a sketch of the proof. Define
We could easily prove that the sequence
is well-defined and then using Burkholder’s inequality, we can show that, for any
and
,
Moreover, by using an extension of Gronwall’s lemma (for example, see Lemma 15 in Dalang [
21]),
The same kind of arguments allow us to check (
36) and (
37), changing the power 2 for
. Moreover, we can also prove that
converges uniformly in
, denoting this limit by
. We can check that
satisfies Equation (
14). Then, it is adapted and satisfies
The uniqueness can be accomplished by a similar argument.
The key to the continuity is to show that these Picard iterations are mean-square continuous. Then, it can be easily extended to
. In order to show the ideas of the mean-square continuity, we give some steps of the proof for
. As for the time increments, we have, for any
and
such that
,
Using the conditions imposed on
and (
36), we can bound the first term in (
38) by
which converges to zero as
according to (
31). The second term in (
38) can be proved by using the similar arguments by using (
32). This proves the right continuity. The left continuity can be proved in the same way.
Concerning the spatial increment, we have, for any
,
Then, thanks to (
33), we can prove that the right hand of (
39) converges to zero as
. □
Remark 5. Let us recall that Equation (1) with (fractional in space stochastic kinetic equation with factorization of the Laplacian) has been studied by Márquez-Carreras [15]. In this case, the Mittag–Leffler function reduces to . When and spatial kernel is the Riesz kernel, then the Equation (1) reduces to the SPDEs studied in Mijena and Nane [18,19]. In this reference, the authors studied the existence, uniqueness, and intermittence of the mild solution for the space-time fractional stochastic partial differential Equations (1). For and , the SPDE (1) reduces to the classical stochastic heat equation studied by many authors; see, for example, Dalang [21] and references therein. Now, let us make the following assumption on the spectral measure
in order to obtain a precise estimate for the upper bound of the second moment of the mild solution of (
1).
Assumption 2. We assume that the spectral measure μ satisfies The symbol “” means that, for every non-negative function h such that the integral in (41) are finite, there exist two positive and finite constants C and which may depend on h such that Remark 6. The Riesz kernel of order given in Example 2 obviously satisfies (40). The Bessel kernel given in Example 3 satisfies (40) and the constants in (41) are and depending on δ and d (see [33]). We have the following results concerning the upper bound on the second moment of the mild solution to Equation (
1).
Theorem 2. Suppose and , if the spectral measure μ associated with the noise satisfies Assumption 2, then, under the Assumption 1, there exist two positive and finite constants c and such thatfor all . Remark 7. This theorem implies that, under some conditions, there exists some positive constant C such thatfor any fixed . Before giving the proof of Theorem 2, we state an important lemma needed in the proof of this theorem.
Lemma 2. Supposing and , then there exists a positive constant C such that, for all , we have Proof. If we fix
, for any
, then, by using (
8), we have
Recall that the spectral measure
satisfies (
40) (i.e., (
41)) in Assumption 2. Thus, according to (
17), we have
Then, by the similar arguments in the proof of Lemma 1, based on the estimate on the Mittag–Leffler Function (
21), we can conclude the proof. □
Now, we are ready to give the proof of Theorem 2. The idea used here is essentially due to [
24].
Proof of Theorem 2. Recall the iterated sequences
given by (
35). Define
We will prove the result for
, where
is some fixed number. We now use this notation together with the covariance formula (
10) and the Assumption 1 on
to write
Now, we estimate the expectation on the right hand side using Cauchy–Schwartz inequality:
Hence, we have for
by using Lemma 2
We now note that the integral appearing on the right-hand side of the above inequality is finite when
. Hence, by Lemma 3.3 in Walsh [
20], the series
converges uniformly on
. Therefore, the sequence
converges in
and uniformly on
and the limit satisfies (
14). We can prove uniqueness in a similar way.
We now turn to the proof of the exponential bound. Set
We claim that there exist constants
c and
such that, for all
, we have
Recall the renewal inequality in Proposition 2.5 in Foondun, Liu, and Omaba [
34] with
; then, one can prove the exponential upper bound. To prove this claim, we start with the mild formulation given by (
14); then, take the second moment to obtain the following
Since
is bounded, we have
with some positive constant
c. Next, we use the Assumption 1 on the coefficient
together with Hölder’s inequality to see that
Therefore, using Lemma 2, the second term
is thus bounded as follows:
Combining the above estimates, we obtain the desired result. □
Next, we analyze the Hölder regularity of the solution with respect to time and space variables. The next Theorem 3 extends and improves similar results known for (fractional) stochastic heat equation (e.g., Mijena and Nane [
18] with
in Equation (
1), Chen and Dalang [
28], corresponding to the case
and
, Márquez-Carreras [
15] with
in Equation (
1)), and also extends some results for (
1) with Gaussian white noise (e.g., Dalang [
21]). We use a direct method to prove our regularity results in which the Fourier transform and the representation of the Green function (i.e., (
17) and (
19)) play a crucial role. We state the result as follows.
Theorem 3. Under Assumption 1, assuming that the spectral measure μ satisfies Hypothesis 2, then, for every , , , the solution to Equation (1) satisfieswith and if , and if , and and if . In particular, the random field u is -Hölder continuous with respect to the time and space variables.
Proof. Since the function
is smooth for any
, then, by Proposition 2, (
38) and (
39), we see that, for every
and any
, there exists a finite constant
such that
with
if
,
if
and
if
simultaneously for all
and
. The right-hand side of this inequality does not depend on
n. Hence, using Fatou’s lemma, as
n tends to infinity, we obtain the similar estimates for
u, which also satisfies (
47). Then, the conclusion of Theorem 3 is a consequence of the Kolmogorov continuity criterion for stochastic processes. □
Let us also make some discussion about the above regularity results.
Remark 8. For β close to 1, the order of Hölder regularity of in space is -times the order of Hölder continuity to in time. This is coherent with the case in Márquez-Carreras [15]. When and , this happens always in the case of the solution of the (fractional) heat equation (with white noise), see Walsh [20]. Remark 9. If , and (so, somehow, the operator reduces to the Laplacian operator Δ and, moreover, we assume that η is close to one-half and β is close to 1, we obtain the well-known regularity of the solution to the heat equation with time-space white noise (which is Hölder continuous of order in time and of order in space).