Ergodicity of Stochastic Burgers’ System with Dissipative Term
Abstract
A 2-dimensional stochastic Burgers equation with dissipative term perturbed by Wiener noise is considered. The aim is to prove the well-posedness, existence, and uniqueness of invariant measure as well as strong law of large numbers and convergence to equilibrium.
1. Introduction
So far, most of the monographs concerning the equation focus on one-dimensional case, for example, Bertini et al. [8] solved the equation with additive space-time white noise by an adaptation of the Hopf-cole transformation. Da Prato et al. [9] studied the equation via a different approach based on semigroup property for the heat equation on a bounded interval. The more general equation with multiplicative noise was considered by Da Prato and Debussche [10]. With a similar method, Gyöngy and Nualart [11] extended the Burgers equation from bounded interval to real line. A large deviation principle for the solution was obtained by Gourcy [12]. Concerning the ergodicity, an important paper by Weinan et al. [13] proved that there exists a unique stationary distribution for the solutions of the random inviscid Burgers equation, and typical solutions are piecewise smooth with a finite number of jump discontinuities corresponding to shocks. For model with jumps, Dong and Xu [14] proved that the global existence and uniqueness of the strong, weak, and mild solutions for a one-dimensional Burgers equation perturbed by Lévy noise. When the noise is fractal, Wang et al. [15] get the well-posedness.
The main aim in our paper is to study the large time behavior of stochastic system. There are lots of the literature about the topic (see [16–20]).
We believe that our work is new and is worth researching. The methods and results in this paper can be applied to stochastic reaction diffusion equations and stochastic real valued Ginzburg Landau equation in high dimensions. But we cannot extend our result to dynamical systems with state-delays. Since in order to show the existence of an invariant measure, we should consider the segments of a solution. In contrast to the scalar solution process, the process of segments is a Markov process. We show that the process of segments is also Feller and that there exists a solution of which the segments are tight. Then, we apply the Krylov-Bogoliubov method. Since the segment process has values in the infinite-dimensional space C([−r, 0], H), boundedness in probability does not automatically imply tightness. For solution processes of infinite-dimensional equations, one often uses compactness of the orbits of the underlying deterministic equation to obtain tightness. For an infinite-dimensional formulation of the functional differential equation, however, such a compactness property does not hold. For ergodicity of stochastic delay equations, we can see [21]. We believe that stochastic Burgers’ system with state-delays is a very interesting problem.
In order to study ergodicity of problem (2), we use a remarkable dissipativity property of the stochastic dynamic to obtain the existence of the invariant measure. For uniqueness, we try to use the method from [22] to prove that the distributions P(t, x, ·) induced by the solution are equivalent. It is well known that the equivalence of the distributions implies uniqueness, a strong law of large numbers, and the convergence to equilibrium.
The remaining of this paper is organized as follows. Some preliminaries are presented in Section 2, the local existence and global existence are presented, respectively, in Sections 3 and 4. In Section 5, we obtain the existence and uniqueness of the invariant measure as well as strong law of large numbers, and convergence to equilibrium. As usual, constants C may change from one line to the next; we denote by Ca a constant which depends on some parameter a.
2. Preliminaries on the Burgers Equation
3. Local Existence in Time
Definition 1 (see Definition 5.1.1 in [24].)We say a (ℱ(t)) t≥0 adapted process v(t) is a mild solution to (11), if and it satisfies
Lemma 2. For any θ ∈ (0,1), if , then A1/2WA has a version which is α-Hölder continuous with respect to t ∈ [0, T], x ∈ D with any α∈]0, θ/2[.
Proof. Let T > 0 and s, t ∈ [0, T]; then
Remark 3. An example of the noise satisfying condition of Lemma 2 is
Remark 4. Another example of stochastic noise satisfying Lemma 2 is
Lemma 5. For , and ui(0) is adapted to ℱ0, i = 1,2; then there exists a unique mild solution v in sense of Definition 1 to (11) in ℬm.
Proof. Choose a v in ℬm, and set
For I1, by (27) and Theorem A.8 in [25], we get
For R1, we have
Remark 6. By making some minor modifications in the proof of Lemma 5, we can see that the conclusion in Lemma 5 is also true for (1). Our original aim is to get the global well-posedness of (1), but we find that the dissipative term Δu cannot dominate the nonlinear term (u · ∇)u. So, we introduce the dissipative term |u|2u which will also play an important role in obtaining the ergodicity.
4. Global Existence
Theorem 7. With conditions in Lemma 2, for satisfying (12), when ϑ > 1/16, one has
Proof. Let be a sequence of vectors which satisfies and , i = 1,2, n ≥ 1, such that
5. Invariant Measures
5.1. Existence
Proof. Multiplying (131) by vτ and integrating on D, we get
Since vτ(t) is vector field, we denote it by , where is real valued function, i = 1,2. For r1, we have
5.2. Uniqueness
The main result of this part is as follows.
Theorem 9. Assume θ > 1/2 in Lemma 2 and ϑ > 1/4; then,
- (i)
the stochastic Burgers equation (2) has a unique invariant measure μ;
- (ii)
for all and all Borel measurable functions φ, , such that ,
() - (iii)
for every Borel measure μ* on , one has that
()
Theorem 10. Assume that the probability measures , are all equivalent, in the sense that they are mutually absolutely continuous. Then, Theorem 9 holds true.
- (I)
For any , such that for all ɛ > 0,
() -
for each t > 0.
- (S)
For all , every t > 0, and all such that xn → x in , it holds that
()
Lemma 11. Define Ψ(ϕ) = u(·, x, ϕ); then,
- (i)
the mapping
() -
is continuous, where C0([0, T]; B)≔{h ∈ C([0, T]; B); h(0) = 0} for Banach space B;
- (ii)
for every x, y ∈ H3/2 and T > 0 there exists such that .
Proof. (i) is proved by (A.30) in the Appendix. To prove (ii), let x, y, ∈H3/2 and T > 0, define as
Proposition 12. With conditions in Theorem 9, the irreducibility property (I) is satisfied.
Proof. Let x ∈ H3/2 and be the same as (ii) in Lemma 11. By the above lemma, we have that for ɛ > 0, we can find δ > 0, such that
In this part, it is time to check the condition (S).
We will first obtain the strong Feller property in for modified Burgers equation (208) below, then let R → ∞ to check the condition (S).
Proposition 13. There exists a unique mild solution for (208) which is Markov process with the Feller property in , that is for every R > 0, t > 0, there exists a constant L = L(t, R) > 0 such that
Proof. The proof of existence and uniqueness is similar to Section 2. Let ϕ1 = ϕ2 in (A.28), by the Gronwall inequality, we know that uR is Lipschitz continuous with respect to initial value. Using the method in Proposition 4.3.3 in [24], we can prove that the solution is a Markov process. To prove the Fell property, we first consider the following Galerkin approximations of (208). Let Pn be the orthogonal projection in H defined as . Clearly, Hn≔PnH for every n. Consider the equation in Hn as follows:
Thus, from (212), we have
Proposition 14. Under conditions of Theorem 9, (S) holds true.
6. Example
Acknowledgments
The authors are thankful to the referee for careful reading and insightful comments which led to many improvements of the earlier version. This work was partially supported by the Fundamental Research Funds for the Central Universities (Grant no. CQDXWL-2013-003).
Appendix
Estimate 1. We have the following estimate in H for (A.2):
Estimate 2. We obtain the following estimate in for (A.2):
Analogously, we can get the same estimate for I2 and I3. Take advantage of the estimates for I1, I2, and I3, we have
Remark A.1. It is standard to show that, for and ϕ ∈ C([0, T]; H3/2), there exists a subsequence which converges to some v, strongly in L2([0, T]; H1), weekly in L2([0, T]; H2), and weak star in L∞([0, T]; H1). Therefore, we have
Estimate 3. We compare, only in the case R = ∞. Let be two solutions with the same initial condition x ∈ H1 but with different functions ϕ1, ϕ2, there exists a constant , such that
Take inner product in H with respect to Aηn, we have
For the third term on the left hand side of (A.23), we have
Similarly, we can get
So, by the Gronwall inequality and (A.6), we get (A.21). By (A.6), we know that converges week star to vi in , for i = 1,2, we have
Estimate 4. Let us consider only the case R ∈ (0, ∞), and denote by vn(t) the solution to (A.2). Let ξn be the differential mapping x → vn in the direction h at point x, defined by, for given x, h ∈ H as follows:
Set also
so that ξn is also the differential of the mapping x → un(t; x) in the direction h at the point x. Thus, ξn satisfies
So,
Therefore,
By the Gronwall inequality and (A.6), we have
And therefore, using again the previous inequality,