1. Introduction
During the last decades, considerable attention has been devoted to the problem of asymptotic behaviors of nonautonomous differential equations in Banach spaces. Many results can be carried out not only for differential equations and evolution operators but also for skew-evolution semiflows. The notion of skew-evolution semiflow was introduced in [
1] and includes some particular cases of many well-known concepts in dynamical system theory, such as
C0-semigroups, evolution operators and skew-product semiflows.
In this paper, we consider the case of stochastic skew-evolution semiflows studied in [
2]. We note that the stochastic cocycles studied in [
3] are particular cases of the concept below.
Several important examples of stochastic evolution semiflows give rise to stochastic evolution equations, and the reader can refer to the monographs by [
4,
5].
The main purpose of the present paper is to study a general concept of uniform asymptotic stability in mean, which we call “uniform h-stability in mean” where is a growth rate (i.e., h is nondecreasing and bijective).
In particular cases, we obtain the concepts of uniform exponential stability in mean and uniform polynomial stability in mean for stochastic skew-evolution semiflows in Banach spaces.
Our approach is based on the extension of some techniques used in the deterministic case by many authors, and here, we only mention the papers [
6,
7,
8,
9,
10,
11,
12,
13,
14,
15,
16].
Thus, we obtain three types of characterizations for each stability in mean concept considered in our study. Connections between these concepts are given. For some other approaches to the study of uniform exponential stability in mean and uniform polynomial stability in mean, we refer to [
17,
18,
19,
20].
The paper is organized as follows. In
Section 2, we review some preliminaries on stochastic skew-evolution semiflows, which will be used in the paper. A general concept of uniform asymptotic stability in mean for stochastic skew-evolution semiflows is defined. In particular, the results of the concept of uniform exponential stability in mean and uniform polynomial stability in mean. In
Section 3, connections between these concepts are presented. In
Section 4, we state and prove the main results of our paper. Thus, we obtain three types of characterizations for each stability in mean concept considered in our study.
2. Preliminaries
Let be a probability space. Denote . We also denote by X a real or complex Banach space and by the Banach algebra of all bounded linear operators on X.
Definition 1. A measurable random field is called a stochastic evolution semiflow on Ω if
(s1) for all ,
(s2) for all and all .
Definition 2. A map is called a stochastic evolution cocycle associated with a stochastic evolution semiflow if
(c1) (the identity operator on X) for all ,
(c2) for all and all .
In this case, the pair is called a stochastic skew-evolution semiflow on
Example 1. If is a stochastic evolution cocycle associated with the stochastic evolution semiflow and is a growth rate, thenis a stochastic evolution semiflow on Ω andis a stochastic evolution cocycle associated with the stochastic evolution semiflow . Example 2. If is a stochastic evolution cocycle associated with the stochastic evolution semiflow and is a growth rate, thenis a stochastic evolution semiflow on Ω andis a stochastic evolution cocycle associated with the stochastic evolution semiflow . Remark 1. Other examples of stochastic skew-evolution semiflows are given in [20]. We denote by
the Banach space of all Bochner measurable functions
with
We also denote and .
3. Stability Concepts in Mean
Let be a stochastic skew-evolution semiflow on and a growth rate.
The main stability in mean concept studied in this paper is introduced by
Definition 3. The stochastic skew-evolution semiflow is uniformly h-stable in mean (u.h.s.m.) if there exist and withfor all . As particular cases, we have
(i) if , we obtain the uniform exponential stability in mean (u.e.s.m.) concept.
(ii) if , it results in the concept of uniform polynomial stability (u.p.s.m.).
Another concept used is given by
Definition 4. The stochastic skew-evolution semiflow has uniform h-stable growth in mean (u.h.g.m.) if there are and withfor all . As particular cases, we have
(i) for , we obtain the concept of uniform exponential growth in mean (u.e.g.m.).
(ii) for , it results in the the concept of uniform polynomial growth in mean (u.p.s.m.).
Remark 2. The connections between stability and growth in mean concepts are given in the next diagramand The next theorem presents the connection between uniform h-stability in mean and uniform exponential stability in mean.
Theorem 1. The stochastic skew-evolution semiflow is uniformly h-stable in mean if and only if the stochastic skew-evolution semiflow , whereandis uniformly exponentially stable in mean. Proof. Necessity. If
is uniformly h-stable in mean and
then there are the constants
and
such that
and hence,
is uniformly exponentially stable in mean.
Sufficiency. If
is uniformly exponentially stable in mean and
then there are the constants
and
such that
and hence is uniformly h-stable in mean. □
The connection between uniform polynomial stability in mean and uniform exponential stability in mean is given by
Corollary 1. The stochastic skew-evolution semiflow is uniformly polynomial stable in mean if and only if the stochastic skew-evolution semiflow , whereandis uniformly exponentially stable in mean. Proof. It yields from Theorem 1 for . □
The next theorem presents the connection between uniform h-stability in mean and uniform polynomial stability in mean.
Theorem 2. The stochastic skew-evolution semiflow is uniformly h-stable in mean if and only if the stochastic skew-evolution semiflow , whereandis uniformly polynomially stable in mean. Proof. It is similar to the proof of Theorem 1. □
As a particular case, we obtain
Corollary 2. The stochastic skew-evolution semiflow is uniformly exponentially stable in mean if and only if the stochastic skew-evolution semiflow , whereandis uniformly polynomially stable in mean. Proof. It follows from Theorem 2 for . □
4. The Main Results
A first characterization of uniform exponential stability in mean is given by
Theorem 3. If the stochastic skew-evolution has uniform exponential growth in mean, then is uniformly exponentially stable in mean if and only if there are and such thatfor all . Proof. Necessity. If
is u.e.s.m. then so are the constants
and
with
We have
for all
where
because
Sufficiency. If , then there exists and such that .
for all
. If we denote
then
and
and
for all
. □
Corollary 3. If the stochastic skew-evolution semiflow has uniform polynomial growth in mean, then is uniformly polynomially stable in mean if and only if there exists and withfor all . Proof. Necessity. If is uniformly polynomially stable in mean, then from Corollary 1, it yields that is uniformly exponentially stable in mean.
From Theorem 3, it follows that there are
and
such that
for all
.
Then for
where
and
we have that
and
. Finally, we have that
for all
.
Sufficiency. Let and . Then , and
Thus
From Theorem 3, it follows that is uniformly exponentially stable in mean. Finally, according to Corollary 1, we see that is uniformly polynomially stable in mean. □
Corollary 4. If the stochastic skew-evolution semiflow has uniform h-growth in mean, then is uniformly h-stable in mean if and only if there are and such thatfor all . Proof. It follows from Theorems 1 and 3. □
Another characterization of polynomial uniform stability in mean is given by
Theorem 4. If the stochastic skew-evolution semiflow has uniform polynomial growth in mean, then is uniformly polynomially stable in mean if and only if there exist withfor all . Proof. Necessity. If
is uniformly polynomially stable in mean, then there are the constants
and
such that
for all
.
Using the inequality
it results that
for all
and all
. □
Sufficiency. For and
We deduce that
for all
.
From Corollary 3, it follows that is uniformly polynomially stable in mean.
Corollary 5. If the stochastic skew-evolution semiflow has uniform h-growth in mean, then is uniformly h-stable in mean if and only if there exists withfor all . Proof. Necessity. If
is uniformly h-stable in mean, then from Theorem 2 it follows that
is uniformly polynomially stable in mean.
From Theorem 4, it results that there exists
with
for all
.
Let
. Then for
and
we have
and
Sufficiency. Let
and
. Then
and from the hypothesis there exists
with
From Corollary 4, we have that
is uniformly h-stable in mean. □
Corollary 6. If the stochastic skew-evolution semiflow has uniform exponential growth in mean, then is uniformly exponentially stable in mean if and only if there exists withfor all . Proof. It follows from Corollary 5, taking . □
A majorization criterion for uniform exponential stability in mean is given in the next theorem.
Theorem 5. If the stochastic skew-evolution semiflow has uniform exponential growth in mean, then is uniformly exponentially stable in mean if and only if there exist and a nondecreasing application with andfor all Proof. Necessity. From Corollary 5, for the case
, it results that if Φ is uniformly exponentially stable in mean, then there exists
with
for all
, thus the condition of the theorem is satisfied for
Sufficiency. From , we have that there exists with . Then, for all , there are and with .
Let
. Then
and from uniform exponential growth of
and by hypothesis we observe that there exist
,
such that
for all
where
and
Finally, it results that is uniformly exponentially stable in mean. □
Corollary 7. If the stochastic skew-evolution semiflow has uniform polynomial growth in mean, then is uniformly polynomially stable in mean if and only if there exists and a nondecreasing application with andfor all Proof. Necessity. It follows from Theorem 4 for .
Sufficiency. Let
and
,
. Then from the inequality from the assumption, it follows that
where
and
.
From Theorem 5, we obtain that is uniformly exponentially stable in mean and from Corollary 2 it results that is uniformly polynomially stable in mean. □
Corollary 8. If the stochastic skew-evolution semiflow has uniform h-growth in mean, then is uniformly h-stable in mean if and only if there exist and a nondecreasing application with andfor all Proof. Necessity. It follows from Corollary 5 for .
Sufficiency. Let
and
and
. Then
and
By assumption, it results that is uniformly exponentially stable in mean. From Theorem 2, we observe that is uniformly h-stable in mean. □
5. Conclusions
In this note, we have considered three concepts of uniform stability in mean for stochastic skew-evolution semiflows. These notions are natural generalizations from the deterministic context. The established relation between these concepts represents the first main goal. Thus, the relation between uniform h-stability in mean and uniform exponential stability in mean is established in Theorem 1, the relation between uniform polynomial stability in mean and uniform exponential stability in mean is given in Corollary 1, the relation between uniform h-stability in mean and uniform polynomial stability in mean is established in Theorem 2, and finally, the connection between uniform exponential stability in mean and uniform polynomial stability in mean is done in Corollary 2. Then, based on the present results from this work, characterizations of these concepts are exposed. The second main goal of the paper is to give three types of characterizations for these concepts of uniform stability in mean. These results are presented in
Section 4. As open problems, the authors would like to investigate:
- -
A generalization of the previous results for the case of nonuniform h-stability in mean;
- -
Applications in control theory;
- -
Variants for h-dichotomy in mean and h-trichotomy in mean.
Author Contributions
Conceptualization, T.M.S.F., M.M., D.I.B.; investigation, T.M.S.F., M.M., D.I.B.; writing—original draft preparation, T.M.S.F., M.M., D.I.B.; writing—review and editing, T.M.S.F., M.M., D.I.B. All authors have read and agreed to the published version of the manuscript.
Funding
This research received no external funding.
Institutional Review Board Statement
Not applicable.
Informed Consent Statement
Not applicable.
Data Availability Statement
Not applicable.
Acknowledgments
The authors wish to express special thanks to the reviewers for their helpful suggestions that led to the improvement of this paper.
Conflicts of Interest
The authors declare no conflict of interest.
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