Abstract?
Abstract
In this work, we study the asymptotic behavior of the mild solutions of a class of stochastic partial functional integrodifferential equation on Hilbert spaces. Using the stochastic convolution developed, we establish the exponential stability in mean square with p ≥ 2. Also, pathwise exponential stability is proved for p> 2. We extend the result of an example is provided for illustration.
1. Introduction
Stochastic delay differential equations (SDDEs) play an important role in many branches of science and industry. Such models have been used with great success in a variety of application areas, including biology, epidemiology, mechanics, economics, and finance. In the past few decades, qualitative theory of SDDEs has been studied intensively by many scholars. Here, we refer to Da Prato and Zabczyk (1992a) and references therein. In recent years, existence, uniqueness, stability, and other quantitative and qualitative properties of solutions to stochastic partial differential equations have been extensively investigated by several authors.
The existence, uniqueness and asymptotic behavior of mild solutions of some stochastic partial differential equations on Hilbert spaces were considered by applying the comparison theorem in Govindan (2002, 2003). Taniguchi (1995) and Taniguchi, Liu, and Truman (2002) have studied the existence, uniqueness and asymptotic behavior of mild solutions of stochastic partial functional differential equation on Hilbert space by using the semigroup approach. Liu and Truman (2000) and Taniguchi (1998) have proved the almost sure exponential stability of mild solution for stochastic partial functional differential equation by using the analytic technique. Liu and Shi (2006), and Liu (2006) have considered the exponential stability for stochastic partial functional differential equations by means of the Razuminkhin-type theorem.
The stochastic integrodifferential equations are more general and still in a state of flux, with new basic results continuously emerging. Integrodifferential equations are important for investigating some problems raised from natural phenomena. They have applications in many areas such as physics, chemistry, economics, social sciences, finance, population dynamics, electrical engineering, medicine biology, ecology and other areas of science and engineering. Qualitative properties such as existence, uniqueness, optimality conditions, controllability and stability for various linear and nonlinear stochastic partial integrodifferential equations have been extensively studied by many researchers, see for instance (Balachandran & Sakthivel, 2001; Diagana, Hernàndez, & Dos Santos, 2009; Dieye, Diop, & Ezzinbi, 2016a, 2016b, 2017; Diop, Ezzinbi, & Lo, 2012; Dos Santos, Guzzo, & Rabelo, 2010; Ezzinbi & Ghnimi, 2010; Sathya & Balachandran, 2012) and the references therein.
As the motivation of above-discussed works, we consider the following stochastic partial functional integrodifferential equation:
where generates a -semigroup on a separable Hilbert , a closed linear operator on with time-independent domain . , are Lipschitzian functions in and continuous in . is a Wiener process on the separable Hilbert space with covariance operator . is a -measurable -valued square-integrable random variable.
In this work, our main aim is to study the exponential stability in -th mean and also almost sure stability property of mild solutions for the system (1) by using the theory of resolvent operator as developed by Grimmer (1982) and the properties of stochastic convolution developed in Dieye, Diop, and Ezzinbi (2016c). The analysis of (1) when was initiated in Taniguchi (1995), where the authors proved the existence and stability of solutions by using a strict contraction principle. The main contribution of this paper is on finding conditions to assure the existence, uniqueness, and stability of impulsive neutral stochastic integrodifferential equations. Our paper expands the usefulness of stochastic integrodifferential equations since the literature shows results for existence and stability for such equations under semigroup theory.
The remaining of the paper is organized as follows. Section 2, presents notations and preliminary results. We study also the existence of the mild solutions of Equation (1). Section 3, shows the stability of the mild solutions. Finally, Section 4, presents an example that illustrates our results.
2. Stochastic processes and integrodifferential equations
Let and be Banach spaces. denotes the space of bounded linear operator from to , simply when . We will assume that is a complete filtered probability space. We are given a -Wiener process the probability space and having value in a separable Hilbert space, one can construct as follows, where is a sequence of real-valued standard Brownian motions mutually independent of , are positive real numbers such that is a complete orthonormal basis in , and is the incremental covariance operator of the which is a symmetric nonnegative trace class operator defined by
For this analysis, we recall the definition of -valued stochastic integral with respect to the -valued -Wiener process . Let denote the space of all Hilbert–Schmidt operator from to which is a separable Hilbert space, equipped with the following norm:
Clearly, for any bounded operators , this norm is given by
Let be a predictable -adapted process such
Then, define the -valued stochastic integral
which is a continuous square integrable martingale. For more details on stochastic integrals, we refer to Da Prato and Zabczyk (1992a).
Next, we recall conditions that guarantee the existence of solution for the deterministic, integrodifferential equation
Definition 2.1. (Grimmer, 1982) A resolvent operator for Equation (2) is a bounded linear operator-valued function for , having the following properties:
(i) (the identity map of ) and for some constants and
(ii) For each , is strongly continuous for .
(iii) for . For and
In the whole of this work, we assume that
(A1) The operator is the infinitesimal generator of a -semigroup on .
(A2) For all , is closed linear operator from to and . For any , the map is bounded, differentiable and the derivative is bounded uniformly continuous on .
The following theorem gives a satisfactory answer to the problem of existence of solutions.
Theorem 2.1. (Grimmer, 1982) Assume that hold. Then there exists a unique resolvent operator for the Cauchy problem (2).
In the following, we give some results for the existence of solutions for the following integro-differential equation:
where is a continuous function.
Definition 2.2. (Grimmer, 1982) A continuous function is said to be a strict solution of Equation (3) if and satisfies Equation (3).
Theorem 2.2. (Grimmer, 1982) Assume that hold. If is a strict solution of Equation (3), then
In order to set our problem, we make the following assumptions
(A3) There exist and such that the resolvent operator of Equation (2) satisfies
The exponential stability of the resolvent operator will play a crucial role to prove the main results of this work. It has been studied in Grimmer (1982).
(A4) The functions and are Lipschitz continuous. Let be such that for every and the following conditions are satisfied:
2.1. Existence of the mild solution of Equation (1)
The next definition introduces the concept of solution for the stochastic system (1).
Definition 2.3. A mild solution of the integrodifferential Equation (1) on is a stochastic process defined on the probability space such that is -adapted predictable on satisfies with probability one, and
Let and denote the space of -adapted predictable random process with values in the Hilbert space satisfying
We define the following norm on by is a norm. Then, we have
Lemma 2.3 (Dieye et al., 2016c) is a Banach space.
Theorem 2.4. If hypotheses and hold, then for each initial datum -measurable -valued square-integrable random variable, the integrodifferential Equation (1) has a unique mild solution on .
. Let . We define for the following applications on by
Since , then , therefore becomes a complete metric space. Now, we define the following map:
Note that a fixed point of is a mild solution of Equation (1). Using the same arguments developed in Dieye et al. (2016c), we obtain that applied to itself. Moreover, we have the following estimation:
where with . Taking the supremum over , we get that
By iterative process involving repeated substitution of the expression (13) into itself, we obtain after iterations the following inequality:
where and denotes the -fold composition of the operator . Hence, by taking the above inequality gives that
The constants and being finite, then for large enough: and hence the -th iterate of the operator is a contraction on the metric space . Since this is a complete metric space it follows from Banach fixed point Theorem that for sufficiently large, has a unique fixed point, that is a unique fixed point also of . We deduce that the mild solution exists on , this is true for any which means, we have a global existence.
3. Exponential stability of the mild solutions Equation (1)
We are mainly interested in the stability properties of the mild solutions, we consider the following equation:
instead of Equation (1).
3.1. Exponential stability in the -th mean
In the next, we discuss the exponential asymptotic stability in the -th mean of mild solutions of Equation (1). From now on, let denote the solution of Equation (16) with an initial value random variable and we always assume that is measurable with and is independent of .
Definition 3.1. Let be an integer. The mild solution of Equation (1) is said to be globally exponentially asymptotically stable in the -th mean if there exist and such that, for any mild solution of Equation (1), corresponding to an initial value with , the following inequality holds:
Theorem 3.1. Let be an integer and let and be solutions of Equation (16) with initial values and respectively. Supposse that hold true. Then, the following inequality holds:
where
. Let and be solutions of Equation (16) with initial values and respectively. Then, we have
Thus it follows that
Now, we compute the terms on the right-hand side of the above inequality. From assumption (A3), we have
From the assumptions (A3) and (A3), we obtain
where . To estimate , we recall the following result
Lemma 3.2. (Da Prato & Zabczyk, 1992a) For any and for an -predictable process we have the following inquality
By using Hölder’s inequality we obtain that
where and We remark if , the inequality (23) holds with convention . From inequalities (20), (21) and (23), one can see that the inequality (19) becomes
that is,
Hence Gronwall’s inequality yields
that is,
which completes the proof.
Consequently, we have the following result as corollary.
Corollary 3.3. Suppose that all hypotheses of Theorem 3.1 hold and let . Then mild solutions of Equation (1) are globally exponentially asymptotically stable in the -th mean.
Corollary 3.4. Assume that all hypotheses of Theorem 3.1 hold, and and . Then
3.2. Almost sure asymptotic stability
In this subsection, we state the pathwise asymptotic stability for the mild solutions of equation (1). Due to the properties of the stochastic convolution, we study the case . At first, we need the following lemma
Lemma 3.5. (Dieye et al., 2016c) Suppose that the hypothesis and are satisfied. Let be a predictable, -adapted process with for some integer and any . Then there exists a constant such that for any , the following holds
Theorem 3.6. Supposse that hold. Let be an integer, and be solutions of Equation (16) with initial values and respectively. If then there exists such that for , we have
. Let be a sufficiently large integer and denote the interval . Then for , we have
It follows that
Thus, for any fixed , we obtain that
By Theorem 3.1 and Holder’s inequality, we have
Moreover,
Using Lemma 3.5, we get that
It follows that
where
Now, for each integer , we set . Then, it follows
where .
We consider the subset of given by .
By using inequality (31) and applying Borel-Cantelli’s Lemma it follows that
Then, the set of all such that there exists an infinite number index with is a negligible set. Hence, for almost sure, there exists infinite number index such that i.e
Let be the lower bound of index almost surely.
For any , there exists a positive integer such that . For , we have
It follows that
Hence, for , we have
Corollary 3.7. Under the hypotheses of Theorem 3.6, if , then the zero solution is almost sure asymtotically stable.
4. Application
Consider the following stochastic partial functional integrodifferential equation:
where denotes the standard -valued Brownian motion, is continuous.
Let with the norm and denote the completed orthonormal basis in . are bounded Lipschitz functions and is a given continuous function.
Let be a complete filtered probability space where the Brownian motion is defined. Let , where are one-dimensional standard Brownian motion mutually independent of . Let Then is a valued -Brownian motion.
Define by , with domain .
Then , where , is, also the orthonormal set of eigenvectors of . It is well known that is the infinitesimal generator of a strongly continuous semigroup on ; thus, is true. Moreover,
Let be the operator defined by for and .
Let
Then, Equation (33) takes the following form
Clearly and satisfy the assumption with and where and are the Lipschitz constants of the functions and , respectively.
Moreover, if is bounded and function such that is bounded and uniformly continuous, then and are satisfied, and hence, by Theorem 2.1, Equation (2) has a resolvent operator on .
Proposition 4.1. (Dieye et al., 2016c) Suppose that is bounded and function such that is bounded and uniformly continuous and for all where . Then the resolvent operator of the abstract form of Equation (34) decays exponentially to zero. Specifically where .
In the next, we assume that is bounded and function such that is bounded and uniformly continuous and for all where .
Therefore, by Theorem 2.4 the existence and uniqueness of the mild solution of the stochastic partial functional integrodifferential Equation (33) is true.
Considering the case , we have the following constants:
Hence . Then, by Corollary 3.3, we have
Proposition 4.2. The system (33) is mean square globally exponentially aymtotically stable provided that:
For , we have
Therefore .
Moreover, by Theorem 3.6, we have also that
Proposition 4.3 If
Then the mild solution of the system (33) is exponentially aymtotically stable. If the pathwise exponential stabilitye is true.
Theorem 4.1. If and condition (39) holds, then zero solutions of the stochastic partial functional integrodifferential Equation (33), is almost sure asymtotically stable.
5. Conclusion
In this paper, we have initiated a study on stochastic neutral partial functional differential equations in a real separable Hilbert space. By using stochastic convolution, existence and uniqueness have been discussed. Further, the exponential stability of the moments of the mild solution as well its sample paths have been studied.