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Neutral stochastic functional differential equations with Lévy jumps under the local Lipschitz condition
Advances in Difference Equations volume 2017, Article number: 57 (2017)
Abstract
In this paper, a general neutral stochastic functional differential equations with infinite delay and Lévy jumps (NSFDEwLJs) is studied. We investigate the existence and uniqueness of solutions to NSFDEwLJs at the phase space \(C_{g}\) under the local Carathéodory type conditions. Meanwhile, we also give the exponential estimates and almost surely asymptotic estimates of solutions to NSFDEwLJs.
1 Introduction
Many dynamical systems depend not only on present and past states but also involve derivatives with delays as well as the function itself. Deterministic neutral functional differential equations (NFDEs) are often used to describe such systems. The theory of NFDEs has been studied by many authors, e.g., Hale [1, 2]. Motivated by the chemical engineering systems as well as the theory of aeroelasticity, Kolmanovskii and Myshkis [3, 4] introduced the neutral stochastic functional differential equations (NSFDEs) and gave its applications in chemical engineering and aeroelasticity. Since then, the theory of NSFDEs has attracted more and more attention. For example, the existence, uniqueness, and stability of solutions to NSFDEs can be found in [5–15]. Various efficient computational methods of NSFDEs are obtained and their convergence and stability have been studied by many authors. One can see Jiang [16], Liu [17], Mo [18], Wu [19], Wang [20], Yu [21], Zhou [22], Zong [23, 24].
However, the global Lipschitz condition imposed on [5, 7, 8, 10, 11, 13, 15, 25, 26] is seemed to be considerably strong when one discusses variable applications in real world. For instance, Cox [27] proposed the Cox-Ingersoll-Ross process for describing the short-term interest rates
where \(k,\lambda\ge0, \theta>0\) and \(x_{0}>0\). \(w(t)\) is a one-dimensional Brownian motion. It is well known that the diffusion coefficient of equation (1.1) is not globally Lipschitz. In this case, it is necessary for us to find other conditions to replace the Lipschitz condition. In the past few decades, many people have paid much attention to the existence, uniqueness of stochastic differential systems under some weaker conditions (see [28–30]). Different from the global Lipschitz condition, the non-Lipschitz condition is a much weaker sufficient condition with a wider range of applications. Very recently, this condition was investigated by many scholars to study the existence and uniqueness of NSFDEs. For example, Ren [31, 32] extended the result of [15] and derived the existence and uniqueness of the solution to NSFDEs at the phase space \(BC((-\infty, 0];R^{d})\) under non-Lipschitz conditions in [30]; Bao [33] established the existence and uniqueness theorem of mild solutions to a class of stochastic neutral partial functional differential equations under non-Lipschitz conditions; Boufoussi [34] and Luo [35] studied the existence and uniqueness of mild solutions to neutral stochastic partial differential equations with jumps and non-Lipschitz coefficients, respectively; In addition, Ren [36] and Wei [37] extended the phase space \(BC((-\infty, 0];R^{d})\) of [31, 32] to the phase space \(\mathfrak{B}\) and \(C_{g}\), they obtained the existence and uniqueness theorem of solutions to NSFDEs under non-Lipschitz conditions.
Motivated by the aforementioned work, in this paper we aim to study the existence and uniqueness of solutions to NSFDEs with infinite delay and Lévy jumps at the phase space \(C_{g}\) which is proposed by [38]. Meantime, we establish the exponential estimates and almost surely asymptotic estimates of solutions to NSFDEs with infinite delay and Lévy jumps under non-linear growth conditions. Unlike the condition imposed by Wei [37], we prove that equation (2.1) has a unique solution under some Carathéodory type conditions and we extend the existence results [15, 31, 32] to the phase space \(C_{g}\). To the best of our knowledge, under non-linear growth conditions, the exponential estimates and almost surely asymptotic estimates of solutions for NSFDEs with infinite delay and Lévy jumps have scarcely been investigated.
The rest of this paper is organized as follows. In Section 2, we introduce some basic preliminaries and assumptions on equation (2.1); while in Section 3 we show that equation (2.1) has a unique solution on \([0,T]\) under the Carathéodory conditions; in Section 4, we prove the pth moment of solution will grow at most exponentially with exponent \(\frac{M_{2}}{(1-k_{0})^{p}}\) and show that the exponential estimations implies the almost surely asymptotic estimations. Finally, we give two examples to illustrate the theory in Section 5.
2 Preliminaries and some assumptions
Throughout this paper, unless otherwise specified, we use the following notation. Let \(|x|\) be the Euclidean norm of a vector \(x\in R^{n}\). If A is a matrix, its trace norm is denoted by \(|A|=\sqrt{\operatorname{trace} (A^{\top}A)}\). Let \((\Omega , {\mathcal {F}}, \{{\mathcal {F}}_{t}\}_{t\ge0}, P)\) be a complete probability space with a filtration \(\{{\mathcal {F}}_{t}\}_{t\ge 0}\) satisfying the usual conditions (i.e. it is increasing and right continuous while \({\mathcal {F}}_{0}\) contains all P-null sets). Let \(w(t)= (w_{1}(t), \ldots, w_{m}(t))^{T}\) be an m-dimensional Brownian motion defined on the probability space \((\Omega , {\mathcal {F}}, P)\).
Let \(\{\bar{p}=\bar{p}(t), t\ge0\}\) be a stationary \(\mathcal {F}_{t}\)-adapted and \(R^{n}\)-valued Poisson point process. Then, for \(A\in\mathcal{B}(R^{n}-\{0\})\), here \(\mathcal{B}(R^{n}-\{0\} )\) denotes the Borel σ-field on \(R^{n}-\{0\}\) and 0∉ the closure of A, we define the Poisson counting measure N associated with p̄ by
where # denotes the cardinality of the set \(\{\cdot\}\). For simplicity, we denote \(N(t,A):=N(({0},t]\times A)\). It is well known that there exists a σ-finite measure π such that
This measure π is called the Lévy measure. Moreover, by Doob-Meyer’s decomposition theorem, there exists a unique \(\{\mathcal{F}_{t}\}\)-adapted martingale \(\tilde{N}(t,A)\) and a unique \(\{\mathcal{F}_{t}\}\)-adapted natural increasing process \(\hat{N}(t,A)\) such that
Here \(\tilde{N}(t,A)\) is called the compensated Lévy jumps and \(\hat {N}(t,A)=\pi(A)t\) is called the compensator.
Let \(C=C((-\infty, 0],R^{n})\) denote the family of continuous functions from \((-\infty,0]\) to \(R^{n}\), define
where \(g:(-\infty,0]\to[1,\infty)\) be a continuous and non-increasing function such that \(g(-\infty)=+\infty, g(0)=1\). For any \(\phi\in C_{g}\), define the norm: \(|\phi|_{g}=\sup_{s\le0}\frac {|\phi(s)|}{g(s)}\), then the space \((C_{g},|\cdot|_{g})\) is a Banach space, which was proved by Arion [38].
Let \(p\ge2, \mathcal{M}^{p}([a,b];R^{n})\) denote the family of \(\mathcal {F}_{t}\)-measurable, \(R^{n}\)-valued process \(f(t)=\{f(t,\omega)\}, t\in [a,b]\) such that \(E\int_{a}^{b}|f(t)|^{p}\,dt<\infty\). In this paper, we assume that Lévy jumps N is independent of Brownian motion w. For \(Z\in\mathcal{B}(R^{n}-\{0\})\), consider the following NSFDEs with Lévy jumps:
where \(x_{t}=\{x(t+\theta):-\infty< \theta\le0\}\) and \(x_{t-}\) denotes the left limit of \(x_{t}\). \(D:[0,T]\times C_{g}\to R^{n}\), \(f:[0,T]\times C_{g}\to R^{n}, g:[0,T]\times C_{g} \to R^{n\times m}\) and \(h : [0,T]\times C_{g} \times Z\to R^{n}\) are both Borel-measurable functions. The initial function \(x_{0}\) is given as
That is, ξ is an \(\mathcal{F}_{0}\)-measurable \(C_{g}\)-valued random variable such that \(\xi\in\mathcal{M}^{2}((-\infty,0];R^{n})\).
In order to obtain the main results, we give the following conditions.
Assumption 2.1
Let \(D(t,0)=0\) and for any \(\varphi,\psi\in C_{g}\), there exists a constant \(k_{0}\in(0,1)\) such that
Here, \(D(t,\varphi)\) is continuous in t for each fixed \(\varphi\in C_{g}\).
Assumption 2.2
For any \(\varphi,\psi\in C_{g}\) and \(t\in[0,T]\), there exists a function \(k(t,u): R_{+}\times R_{+}\to R_{+}\) such that
Here \(k(t,u)\) is locally integrable in t for each fixed \(u\in [0,\infty)\), it is continuous, nondecreasing, and concave in u for each fixed \(t\in[0,T]\). Moreover, \(k(t,0)=0\) and for any constant \(C_{1}>0\), if a non-negative continuous function \(z(t), t\in[0,T]\), satisfies \(z(0)=0\) and
then \(z(t)=0\) for all \(t\in[0,T]\).
Assumption 2.3
For any constant \(C_{2}>0\), the deterministic ordinary differential equation
has a global solution for any initial value \(u_{0}\).
Assumption 2.4
For any \(t\in[0,T]\), there exists a constant K such that
Assumption 2.5
For any integer \(N>0\), there exists a function \(k_{N}(t,u):R_{+}\times R_{+}\to R_{+}\), such that
for any \(\varphi,\psi\in C_{g}\) with \(|\varphi|_{g},|\psi|_{g}\le N\) and \(t\in[0,T]\). Here \(k_{N}(t,u)\) is nondecreasing and locally integrable in t for each fixed \(u\in[0,\infty)\), it is continuous and nondecreasing and concave in u for each fixed \(t\in[0,T]\). Moreover, \(k_{N}(t,0)=0\) and for any constant \(C_{3}>0\), if a non-negative continuous function \(z(t)\) satisfies \(z(0)=0\) and
then \(z(t)=0\) for all \(t\in[0,T]\).
Remark 2.1
Clearly, the conditions (2.3) and (2.5) imply the growth condition. That is, for any \(\varphi\in C_{g}\) and \(t\in[0,T]\), there exists a function \(k(t,u): R_{+}\times R_{+}\to R_{+}\) such that
where \(k(t,u)\) is defined as Assumption 2.2.
Remark 2.2
By using the Carathéodory theorem (see [39]), it follows that the deterministic ordinary differential equation
has a global solution for any initial value \(u_{0}\). In addition, by applying Lemma 3 in [29], we see that \(z(t)\) of (2.7) is identically zero on \([0,T]\).
3 Existence and uniqueness theorem
In this section, we establish the existence and uniqueness theorem to equation (2.1) under the Carathéodory type conditions.
In order to prove our main results, we need to introduce the following lemmas.
Lemma 3.1
Let \(p\ge2\) and \(a,b\in R^{n}\). Then, for \(\epsilon>0\),
Lemma 3.2
Let \(\phi:R_{+}\times Z\to R^{n}\) and assume that
Then there exists \(D_{p}>0\) such that
The proofs of Lemma 3.1 and Lemma 3.2 can be found in [9] and [40, 41], we omit them here.
Lemma 3.3
Let \(p\ge2\) and \(a,b\in R^{n}\). Then, for any \(\delta \in(0,1)\),
The proof of Lemma 3.3 can be obtained from Lemma 3.1 by putting \(\epsilon=\frac{\delta}{1-\delta}\).
Lemma 3.4
For any \(f\in\mathcal{M}^{2}([0,T];R^{n})\), \(g\in \mathcal{M}^{2}([0,T];R^{n\times d})\) and \(h\in\mathcal{M}^{2}([0,T]\times Z;R^{n})\), the following equation:
has a unique solution \(x(t)\) on \([0,T]\) under Assumption 2.1.
Proof
Define the operator Φ,
and \((\Phi x)(0)=\xi\), then we write equation (3.1) as \(x(t)=(\Phi x)(t)\). Clearly, Φx is an \(R^{n}\)-valued measurable \(\{\mathcal{F}_{t}\} \)-adapted process and continuous in \(t\in[0,T]\). By the Hölder inequality and the Doob martingale inequality, we obtain
Note that \(|x_{t}|_{g}^{2}=\sup_{-\infty\le\sigma\le0}\frac{x(t+\sigma)}{g(\sigma)} \), we obtain
Therefore, by applying the basic inequality \(|a+b|^{2}\le2|a|^{2}+2|b|^{2}\), we have
Since \(f\in\mathcal{M}^{2}([0,T];R^{n})\), \(g\in\mathcal {M}^{2}([0,T];R^{n\times d})\) and \(h\in\mathcal{M}^{2}([0,T]\times Z;R^{n})\), if \(E\sup_{0 \le t\le T}|x(t)|^{2}<\infty\), then we get
Hence, (3.2) implies Φ is an operator from \(\mathcal {M}^{2}([0,T];R^{n})\) to itself and we conclude that Φ is well defined. Now, we prove that Φ has a unique fixed point. For any \(x,y\in\mathcal{M}^{2}([0,T];R^{n})\), we have
From \(0< k_{0}^{2}<1\), it follows that ϕ is a contractive mapping. Thus, by the Banach fixed point theorem, we have the operator Φ has a unique fixed point in \(\mathcal{M}^{2}([0,T];R^{n})\), i.e., there exists a unique stochastic process \(x=x(t)\) satisfying
So \(x(t)\) is a unique solution of equation (3.1) in \([0,T]\). The proof is complete. □
Theorem 3.1
Let Assumptions 2.1-2.4 hold. Then there exists a unique \(\mathcal{F}_{t}\)-adapted solution \(\{x(t)\}_{t\ge0}\) to equation (2.1) such that \(E(\sup_{0\le t\le T}|x(t)|^{2})<\infty\) for all \(T>0\).
Proof
We construct the sequence of successive approximations defined as follows:
The solution \(x^{n}(t)\) of the above equation exists according to Lemma 3.4. The proof will be split into the following three steps.
Step 1. Let us show that \(\{x^{n}(t)\}_{n\ge 1}\) is bounded. Taking \(\epsilon\in(0,\frac{1}{k_{0}^{2}}-1)\), by applying the elementary inequality \(|a+b|^{2}\le(1+\epsilon )|a|^{2}+(1+\epsilon^{-1})|b|^{2}\) and Assumption 2.1, we derive that
In particular, taking \(\epsilon=\frac{1}{2}(\frac{1}{k_{0}^{2}}-1)\), we get
Taking the expectation on both sides of (3.4), we have
Similarly, note that \(|x_{t}^{n}|_{g}^{2}=\sup_{-\infty\le\sigma\le0}\frac{x^{n}(t+\sigma )}{g(\sigma)} \), we obtain
Since \(k_{0}\in(0,1)\), then we have \(\frac{1+k_{0}^{2}}{2}<1\),
Next, we will estimate the second term of (3.5). Using the elementary inequality \(|a+b+c+d|^{2}\le 4(|a|^{2}+|b|^{2}+|c|^{2}+|d|^{2})\), it follows from (3.3) that
By Lemma 3.1 with \(p=2\), we have
Using the Hölder inequality and Doob’s martingale inequality, we get
and
Now for the fourth term of (3.6). By using the basic inequality \(|a+b|^{2}\le2(|a|^{2}+|b|^{2})\), we have
where \(N(dt,dv)=\tilde{N}(dt,dv)+\pi(dv)\,dt\). By Lemma 3.2 with \(p=2\) and the Hölder inequality, we derive that
and
Therefore,
Combining with (3.6)-(3.10), it follows that
Then the condition (2.8) implies that
where \(c_{1}=4(1+k_{0})^{2}, c_{2}=(8T+32+16D_{2}+16T\pi(Z))\). By applying the Jensen inequality, we have
Then, inserting (3.11) into (3.5), we get
where \(c_{3}=\frac{(1+k_{0})^{2}(5-4k_{0}^{2})}{1-k_{0}^{2}}\) and \(c_{4}=\frac {2(1+k_{0})^{2}}{(1-k_{0})^{2}}\). This indicates that
By Assumption 2.3, it follows that \(u(t)\) is a global solution of the equation
with the initial condition \(u_{0}>(1+c_{3})E|\xi|_{g}^{2}+c_{4}K\). Now, we will prove the following inequality:
holding for all \(n\ge0\). For \(n=0\), the inequality (3.13) holds by the definition of u. When \(n=k-1\), suppose that
holds. Then, by (3.12),
From mathematical induction and (3.14), we have
Since \(k(t,u)\) is continuous and nondecreasing in u for each fixed \(t\ge0\), we obtain
for all \(n\ge0\). This proves the boundedness of \(\{x^{n}(t), n\ge1\}\).
Step 2. Let us show that \(\{x^{n}(t)\}_{n\ge 1}\) is a Cauchy sequence. Since the sequence \(\{x^{n}(t)\}_{n\ge 1}\) is bounded by (3.15), we obtain a positive constant C such that
For any \(t\in[0,T]\) and \(m,n\ge0\), it follows from Lemma 3.3 with \(p=2\) and Assumption 2.1 that
where \(\delta=k_{0}\). Taking the expectation on both sides of (3.16), it follows that for any \(t\in[0,T]\)
Consequently,
Now, we will estimate \(E\sup_{0\le s\le t}|x^{n}(s)-x^{m}(s)-[D(s,x_{s}^{n})-D(s,x_{s}^{m})]|^{2}\). Using the elementary inequality \(|a+b+c|^{2}\le3(|a|^{2}+|b|^{2}+|c|^{2})\), we have
Using the Hölder inequality and Doob’s martingale inequality again, we get
and
In the meantime, by Lemma 3.2 with \(p=2\) and the Hölder inequality, we have
Combining with (3.18)-(3.21), it follows from Assumption 2.2 that
Substituting (3.22) into (3.17), we get
Then, by the Fatou lemma and (3.15), it is easily seen that
Hence, Assumption 2.2 implies that
This shows that \(\{x^{n}(t)\}\) is a Cauchy sequence in \(\mathcal {M}^{2}([0,T];R^{n})\).
Step 3. According to (3.23), it follows that there exists \(x(t)\in\mathcal {M}^{2}([0,T];R^{n})\) such that \(\lim_{n \to\infty}E\sup_{0\le s\le t}|x^{n}(s)-x(s)|^{2}=0\). For any \(\delta>0\), by the Chebyshev inequality, we have
Hence, there exists a subsequence \(\{n_{i}\}_{ i=1,2,3, \ldots,\infty}\) satisfying
The Borel-Cantelli lemma shows that \(x^{n_{i}}(t)\) converges to \(x(t)\) almost surely uniformly on \([0,T]\) as \(n_{i}\to\infty\). Taking the limits on both sides of (3.3) and letting \(n\to\infty\), we see that \(x(t)\) is a solution of equation (2.1). In addition, similar to the proof of (3.15), we obtain \(E\sup_{0\le t\le T}|x(t)|^{2}<\infty \) for any \(T> 0\).
Now we address proving the uniqueness of equation (2.1). Let \(x(t)\) and \(y(t)\) be any two solutions of equation (2.1), we can prove by the same procedure as Step 2 that
for all \(t\in[0,T]\). By Assumption 2.2, we obtain
i.e., for any \(t\in[0,T]\), \(x(t)\equiv y(t)\) a.s. The proof is completed. □
Remark 3.1
Let \(k(t,u)=c(t)k(u), t\in[0,T]\), where \(c(t)\ge0\) is locally integrable and \(k(u)\) is a continuous, nondecreasing, and concave function with \(k(0)=0\) such that \(\int_{0^{+}}\frac{1}{k(u)}\,du=\infty\). Then by the comparison theorem of differential dynamic systems we know that Assumptions 2.2 and 2.3 hold.
Remark 3.2
Now let us give some concrete examples of the function \(k(\cdot)\). Let \(L>0\) and \(\delta\in(0,1)\) be sufficiently small. Define \(k_{1}(u)=Lu\),
where \(k'\) denotes the derivative of the function k. They are all concave nondecreasing functions satisfy \(\int_{0^{+}} \frac {du}{k_{i}(u)}=+\infty\) (\(i=1,2\)).
Next, we will prove the existence and uniqueness of solutions to equation (2.1) under the local Carathéodory conditions.
Theorem 3.2
If Assumptions 2.1, 2.3, 2.4, and 2.5 hold, then there exists a unique local solution \(\{x(t)\}_{t\ge0}\) to equation (2.1).
Proof
Let \(T_{0}\in(0,T)\), for each \(N\ge1\), we define the truncation function \(f_{N}(t,\varphi)\) as follows:
and \(g_{N}(t,\varphi), h_{N}(t,\varphi,v)\) similarly. Then \(f_{N}\), \(g_{N}\), and \(h_{N}\) satisfy Assumption 2.2 due to the following inequality as regards \(f_{N}\), \(g_{N}\), and \(h_{N}\):
where \(\varphi,\psi\in C_{g}\) and \(t\in[0,T_{0}]\). Therefore, by Theorem 3.1, there exists a unique solution \(x_{N}(t)\) and \(x_{N+1}(t)\), respectively, to the following stochastic systems:
By Lemma 3.3 with \(p=2\) and Assumption 2.1, it follows that
Define the stopping times
Again the Hölder inequality, the Burkholder-Davis-Gundy inequality, and Lemma 3.2 with \(p=2\) imply that
Noting that, for any \(0\le t\le\tau_{N}\),
we derive that
Substituting (3.27) into (3.26), it follows from Assumption 2.5 that
If \(t\le\tau_{N}\), then we have
If \(t>\tau_{N}\), then we have
For any fixed \(u\in[0,\infty)\), \(k_{N}(t,u)\) is nondecreasing in t, so we obtain
From Assumption 2.5, one sees that
Therefore, we obtain
For each \(\omega\in\Omega\), there exists an \(N_{0}(\omega)>0\) such that \(0< T_{0}\le\tau_{N_{0}}\). Now define \(x(t)\) by \(x(t)=x_{N_{0}}(t)\) for \(t\in[0,T_{0}]\). Since \(x({t\wedge\tau _{N}})=x_{N}({t\wedge \tau_{N}})\), it follows that
Letting \(N\to\infty\) then yields
We can see that \(x(t)\) is the solution of equation (2.1). □
Remark 3.3
From Theorem 3.2, we derive the existence and uniqueness of solution to equation (2.1) under local Carathéodory conditions with the non-Lipschitz conditions in [32, 35, 36] being regarded as special cases, which makes it more feasible that the conditions of equation (2.1) can be satisfied.
If \(k_{N}(t,u)\) is independent of t, i.e. \(k_{N}(t,u)=k_{N}(u)\), we obtain the following corollary.
Corollary 3.1
Let Assumptions 2.1 and 2.4 hold. Assume that, for any integer \(N>0\) and \(t\in[0,T]\), there exists a positive constant \(k_{N}\) such that, for any \(\varphi,\psi\in C_{g}\) with \(|\varphi|_{g},|\psi |_{g}\le N\), it follows that
where \(k_{N}(u)\) is a concave and nondecreasing function such that \(k_{N}(0)=0\) and \(\int_{0^{+}}\frac{1}{k_{N}(u)}\,du=\infty\). Then equation (2.1) has a unique local solution \(x(t)\) on \([0,T]\).
Proof
In fact, if the conditions of Corollary 3.1 hold, then Assumption 2.5 also holds. Thus, from Theorem 3.2, we can prove that equation (2.1) has a unique local solution \(x(t)\) on \([0,T]\). □
Remark 3.4
If we let \(k_{N}(u)\equiv k_{N} u\), \(k_{N},u\ge0\), then conditions (3.29) and (3.30) imply the local Lipschitz condition which was investigated by [5, 9, 13]. Therefore, the corresponding results of [5, 9, 13] are improved and generalized by Theorem 3.2 and Corollary 3.1.
4 Exponential estimations for solutions
In this section, we will give the pth exponential estimates and almost surely asymptotic estimations of solutions to equation (2.1).
Assumption 4.1
Non-linear growth condition
For any \(\varphi,\psi\in C_{g}\) and \(t\in[0,T]\),
where \(\rho(\cdot)\) is a concave and nondecreasing function from \(R^{+}\) to \(R^{+}\) such that \(\rho(0)=0\) and \(\rho(u)>0\) for \(u>0\).
Since \(\rho(\cdot)\) is concave and \(\rho(0)=0\), one can find a pair of positive constants a and b such that \(\rho(u)\le a+bu\) for all \(u\ge0\).
Remark 4.1
In particular, we see clearly that if let \(\rho (u)=Lu\), \(L>0\), then Assumption 4.1 reduces to the linear growth condition. In other words, Assumption 4.1 is much weaker than the linear growth condition.
Suppose that equation (2.1) has a unique solution \(x(t), t\in [-\infty,T]\). Along with the non-linear growth condition, we first establish the pth exponential estimates.
Theorem 4.1
Let \(E|\xi|_{g}^{p}<\infty\) and Assumption 4.1 hold. Then, for any \(t\in[0,T]\) and \(p\ge2\),
where \(M_{1}\), \(M_{2}\) are two positive constants.
Proof
Without loss of generality, we assume that \(x(t)\) is bounded. Otherwise, for each integer \(n\ge1\), define the stopping time
If we can show (4.1) for the stopped processes \(x(t\wedge\tau_{n})\), then the general case follows upon letting \(n\to\infty\). By the Itô formula, we derive that
Taking the expectation on both sides of (4.2), one gets
By Lemma 3.1 and Assumption 2.1, we get
where \(\epsilon_{1}=k_{0}^{p-1}\). Using the basic inequality
we have
where \(\epsilon_{2}>0\). By Lemma 3.1, it follows that
From Assumption 4.1, we obtain
Applying the basic inequality \(|a+b|^{\frac{p}{2}}\le2^{\frac {p}{2}-1}(|a|^{\frac{p}{2}}+|b|^{\frac{p}{2}})\), it is easy to see that
Inserting (4.6) and (4.7) into (4.5) and letting \(\epsilon_{2}=\sqrt {2(a+b)}\), we obtain
where \(\bar{c}_{1}=2\sqrt{2(a+b)}(p-1)(1+k_{0})^{p}+\sqrt{\frac {a+b}{2}}\). For the third term of the inequality (4.3), by applying the basic inequality
it follows that, for \(a,b>0\), \(p\ge2\), and \(\epsilon>0\),
Letting \(\epsilon_{3}=2(a+b)\),
where \(\bar{c}_{2}=(p-1)(a+b)[1+2(p-2)(1+k_{0})^{p}]\). Noting that the fourth term of (4.3) is a martingale, we easily obtain
Finally, note that the Lévy jump \(\tilde{N}(dt,dv)\) is a martingale and \(N(dt,dv)=\tilde{N}(dt,dv)+\pi(dv)\,dt\), we derive that
By the mean value theorem, we obtain, for any \(|\theta|<1\),
Together with the basic inequality \(|a+b|^{p-1}\le 2^{p-2}(|a|^{p-1}+|b|^{p-1})\), this implies that
By Assumption 4.1, we get
Similar to the computation of (4.8), it follows that
Hence, we have
where \(\bar{c}_{3}=p2^{p-2}2^{\frac{p}{2}-1}(a+b)^{\frac {p}{2}}+(p-1)2^{p}(1+k_{0})^{p}\pi(Z)+\frac{\sqrt{2}}{4}\sqrt{a+b}\). Combining (4.3), (4.4), and (4.8)-(4.11), we obtain
where \(M_{1}=(1+k_{0})^{p}E|\xi|^{p}_{g}+\sum_{k=1}^{3}\bar{c}_{k}(1+E|\xi |^{p}_{g})T,M_{2}=2\sum_{k=1}^{3}\bar{c}_{k}\). On the other hand, by Lemma 3.3 and Assumption 2.1, it follows that
Therefore,
Therefore, the Gronwall inequality implies that
The proof is complete. □
Remark 4.2
From Theorem 4.1, we see that the pth moment will grow at most exponentially with exponent \(\frac{M_{2}}{(1-k_{0})^{p}}\). It should be mentioned that (4.1) can be expressed as
The inequality (4.13) shows that the pth moment Lyapunov exponent should not be greater than \(\frac{M_{2}}{(1-k_{0})^{p}}\).
The next theorem shows that the pth exponential estimations implies the almost surely asymptotic estimations, and we give an upper bound for the sample Lyapunov exponent.
Theorem 4.2
Under Assumption 4.1, we have
That is, the sample Lyapunov exponent of the solution should not be greater than \(\frac{9\sqrt{a+b}+3(a+b)+16\pi(Z)}{(1-k_{0})^{2}}\).
Proof
For each \(n=1,2,\ldots\) , it follows from Theorem 4.1 (taking \(p=2\)) that
where \(\beta=\frac{1+3k_{0}}{(1-k_{0})^{2}}E|\xi|^{2}_{g}+\frac{9\sqrt {a+b}+3(a+b)+16\pi(Z)}{(1-k_{0})^{2}}(1+E|\xi|^{2}_{g})T\) and \(\gamma=\frac {18\sqrt{a+b}+6(a+b)+32\pi(Z)}{(1-k_{0})^{2}}\). Hence, for any \(\varepsilon>0\), by the Chebysher inequality, it follows that
Since \(\sum _{n=0}^{\infty}\beta e^{-\varepsilon n}<\infty\), by the Borel-Cantelli lemma, we deduce that there exists an integer \(n_{0}\) such that
Thus, for almost all \(\omega\in\Omega\), if \(n-1 \le t\le n\) and \(n\ge n_{0}\), then
Taking the limsup in (4.15) leads to an almost surely exponential estimate, that is,
The required assertion (4.14) follows because \(\varepsilon>0\) is arbitrary. □
5 Examples
Example 5.1
Let us return to equation (1.1),
where \(k,\lambda\ge0, \theta>0\), and \(x_{0}>0\). \(w(t)\) is a one-dimensional Brownian motion.
Clearly, the diffusion coefficient of equation (5.1) does not satisfy the Lipschitz condition. Let \(k(t,u)=\theta k(u)\), we see that \(k(u)=\sqrt{u}\) is a nondecreasing, positive, and concave function on \([0,\infty)\) with \(k(0)=0\) and
Then by the comparison theorem of differential dynamic systems we know that Assumptions 2.2 and 2.3 hold for equation (5.1).
Example 5.2
Consider the semi-linear NSFDEs with pure jumps
Here \(D(t,x_{t})=0.1x_{t}\) and a is a constant. Assume that \(b(\cdot)\) satisfies the local Lipschitz condition: for any \(N>0\), there exists a positive constant \(J_{N}\) such that, for all \(\varphi,\psi\in C_{g}\) with \(|\varphi|,|\psi|\le N\) and \(t\in[0,T]\),
\(\sigma(t,\cdot)\) satisfies Assumptions 2.2-2.4 and there exists a positive constant C̄ such that
It is easily seen that equation (5.2) does not satisfy the non-Lipschitz condition of [32, 34], so the result in [32, 34] does not apply to equation (5.2).
We assume that \(\int_{Z}|v|^{2}\pi(dv)<\infty\) and \(b(u)\), \(\sigma (t,u)\) are continuous in u for each \(u\in[0,\infty)\). Let
where \(k(t,x)\) satisfies Assumptions 2.2, 2.3. Obviously, the coefficients \(0.1x, ax\), \(b(x)\sigma(t,x)v\) satisfy Assumptions 2.2-2.4 and \(k_{N}(t,x)=A_{N}(x)+B_{N}(t,x)\) satisfies Assumption 2.5, by Theorem 3.2, we see that equation (5.2) has a unique solution \(x(t)\) on \([0,T]\).
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Acknowledgements
The authors would like to thank the Edinburgh Mathematical Society (RKES130172) and the National Natural Science Foundation of China under NSFC grant (11401261, 11471071) for their financial support.
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Mao, W., Hu, L. & Mao, X. Neutral stochastic functional differential equations with Lévy jumps under the local Lipschitz condition. Adv Differ Equ 2017, 57 (2017). https://doi.org/10.1186/s13662-017-1102-9
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DOI: https://doi.org/10.1186/s13662-017-1102-9
Keywords
- neutral stochastic functional differential equations
- Lévy jumps
- phase space \(C_{g}\)
- the local Lipschitz condition
- exponential estimates and almost surely asymptotic estimates