In this paper we consider some inverse problems of determining the diffusion matrix between different structures for the time fractional diffusion equation featuring a Caputo derivative. We first study an inverse problem of determining the diffusion matrix in the period structure using data from the corresponding homogenized equation, then we investigate an inverse problem of determining the diffusion matrix in the homogenized equation using data from the corresponding period structure of the oscillating equation. Finally, we establish the stability and uniqueness for the first inverse problem, and the asymptotic stability for the second inverse problem.
Citation: Feiyang Peng, Yanbin Tang. Inverse problem of determining diffusion matrix between different structures for time fractional diffusion equation[J]. Networks and Heterogeneous Media, 2024, 19(1): 291-304. doi: 10.3934/nhm.2024013
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In this paper we consider some inverse problems of determining the diffusion matrix between different structures for the time fractional diffusion equation featuring a Caputo derivative. We first study an inverse problem of determining the diffusion matrix in the period structure using data from the corresponding homogenized equation, then we investigate an inverse problem of determining the diffusion matrix in the homogenized equation using data from the corresponding period structure of the oscillating equation. Finally, we establish the stability and uniqueness for the first inverse problem, and the asymptotic stability for the second inverse problem.
Fractional diffusion involves phenomena that have spatial and temporal correlations [1,2]. Anomalous diffusion through fractional equations is associated with super-statistics and can be linked to a generalized random walk [3]. The phenomenon of anomalous diffusion has received widespread attention in the fields of natural sciences, engineering, technology, and mathematics [4,5,6]. The fractional diffusion equations which serve as models for describing this phenomenon are of utmost importance [7,8,9,10,11]. Numerous publications have been dedicated to this field so far (e.g., Sakamoto and Yamamoto [12]). In contrast to classical parabolic equations, the time fractional diffusion equations replace the traditional local partial derivative ∂t with the nonlocal fractional derivative ∂αt. The fractional equations are highly regarded in mathematical physics and present distinct properties that challenge conventional differential equations. Nevertheless, some properties, such as the maximum principle, remain valuable in our research. This paper plans to describe the behavior of time fractional diffusion equations.
In this paper we consider the following initial boundary value problem (IBVP) of a time fractional diffusion equation with a period structure
{∂αtuϵ(x,t)−div(Bε(x)∇uε(x,t))=fε(x,t),x∈Ω,t∈(0,T),uε(x,t)=0,x∈∂Ω,t∈(0,T),uε(x,0)=uε0(x),x∈Ω, | (1.1) |
where 0<α<1, T>0, Ω⊂Rd is bounded domain with C2−class boundary ∂Ω, ε>0 is a scale parameter, Bε(x)=B(xε) is a diffusion matrix which satisfies some appropriate conditions, B(y) is periodic, and fε(x,t) and uε0(x) are the source function and the initial function, respectively.
The existence and uniqueness of solutions to the initial boundary value problem (1.1) have been investigated widely. Sakamoto and Yamamoto [12] derived a kind of solution in terms of the Fourier series; Kubicam, Ryszewska and Yamamoto [13] gave the variational formulation; Hu and Li [14] gave the formally homogenized equation by the multiple scale expansion as ε→0+ and Kawamoto, Machida and Yamamoto [15] gave the homogenized equation
{∂αtu0(x,t)−div(B0∇u0(x,t))=f0(x,t),x∈Ω,t∈(0,T),u0(x,t)=0,x∈∂Ω,t∈(0,T),u0(x,0)=u0(x),x∈Ω, | (1.2) |
where B0 is the homogenized coefficient matrix, and then proved the precise homogenization theorem; they also discussed the inverse problem between different structures in the one dimensional case and in the layered material case where Bε(x) is a diagonal matrix with an unknown element when f=0. The aim of this paper is to generalize this result from the case with only one unknown element to the case with multiple unknown elements.
The rest of this paper is organized as follows. In Section 2, we introduce some necessary tools, including the well-posedness and homogenization of fractional diffusion equations with oscillating diffusion matrix, the eigenvalue problem, and the Mittag-Leffler function. In Section 3 and Section 4 we state main results and prove them. In Section 5, we draw concluding remarks.
In this section, we state some basic tools to investigate the inverse problems of the initial boundary value problem (1.1) and its homogenized equation (1.2), including the well-posedness, homogenization theory, the eigenvalue problem of the corresponding elliptic operator, and the Mittag-Leffler function, see [13,16].
We recall the Riemann-Liouville fractional integral operator
(Jαu)(t)=1Γ(α)∫t0(t−τ)α−1u(τ)dτ,u∈L2(0,T),0<α<1, | (2.1) |
then the domain D(Jα)=L2(0,T) and the range R(Jα)=Hα(0,T) with
Hα(0,T):={Hα(0,T),0≤α<12,{u∈H12(0,T)|∫T0|u(t)|2tdt<∞},α=12,{u∈Hα(0,T)|u(0)=0},12<α≤1, | (2.2) |
where Hα(0,T) is the Sobolev space. Moreover, Jα:L2(0,T)→Hα(0,T) is a homeomorphism with
‖ | (2.3) |
Therefore, the general fractional derivative of the Caputo type is defined by
(2.4) |
Obviously, is also a homeomorphism.
We now consider the initial boundary value problem
(2.5) |
where , , and the matrix satisfies that
(2.6) |
for . From [13,15], we know that there exists a weak solution satisfying , and
(2.7) |
for a.e. and
For , we say that a function is Y-periodic if
Theorem 2.1. [15] For , assume that is Y-periodic and satisfies Eq (2.6), , and . If
(2.8) |
and is the weak solution of IBVP (1.1), then
(2.9) |
where is the weak solution of the homogenized problem (1.2), and is the homogenized coefficient matrix. Furthermore, for the layered material, that is, is a diagonal matrix
then
(2.10) |
where
For the diagonal matrix diag, are constants and , denote a vector and an operator div, we consider an eigenvalue problem of the operator on .
(2.11) |
According to the domain , we consider the sub-eigenvalue problems
(2.12) |
Then, we can verify that is a solution of eigenvalue problem (2.11) with , i.e., Denote by the th simple eigenvalue of the th sub-eigenvalue problem, that is, It is known that are the sine functions. Since the eigenfunctions are an orthonormal basis of , so is an orthonormal basis of . Then, we can prove that the all eigenvalues of have following form:
In fact, for , , there exists such that Taking inner product of with respect to on both sides of equation (2.11) and integration by parts, we can complete the proof.
For example, for , we have . Taking we have and . Then we can write the eigenvalue of Eq (2.11) as
and the corresponding eigenfunctions are
Thus, we know that some eigenvalues of problem (2.11) have more than one geometric multiplicity, which is different from the eigenvalues of problem (2.12) such that all eigenvalues are simple.
Returning to the general operator on a bounded domain , we rearrange the eigenvalues of without multiplicity, and rearrange the eigenvalues such that
where is the multiplicity of the eigenvalue . Note that is simple, i.e. and Set
where is the eigenfunction corresponding to eigenvalue , and is the orthonormal basis of .
We introduce a projection operator such that
is an eigenprojection. We note that the eigenfunctions of and are identical indeed, but their eigenvalues are not identical.
From [17], the Mittag-Leffler function is defined by
which is an entire function in the complex plane.
When , is precisely an exponential function. What is more, we have the asymptotic expansion and estimate
(2.13) |
(2.14) |
where , , and min.
We now consider problem (1.1) on the domain . In order to state the main results, we first give a definition.
Definition 13.1. For the matrices and , we say if
We say if and there exists an index or such that
We consider the IBVP with a periodic structure
(3.1) |
with unknown initial function and unknown diffusion matrix with layer structure
(3.2) |
satisfying
(3.3) |
Due to Theorem 2.1, we get in , where is a weak solution of the homogenized equation
(3.4) |
where is the limit of , diag and
(3.5) |
satisfying By Eq (3.5) and simple calculation, we have
(3.6) |
with . Moreover, if
(3.7) |
we have
(3.8) |
with . These can be seen in the proof of [15, Lemma 3.11].
For simplicity of notation, we set . We first consider several inverse problems of determining the diffusion matrix of the following IBVP:
(3.9) |
where and .
Inverse problem Ⅰ: Let . We will determine the diffusion matrix by the single data point of problem (3.9).
Theorem 3.1. Let and be a solution of problem (3.9). Assume and
(3.10) |
Then there exists a constant such that
(3.11) |
Inverse problem Ⅱ: Let . We will determine the diffusion matrix by the data of problem (3.9). Note that the measurement data is an integral expression. Thus, it is more useful for applications.
Theorem 3.2. Let and be a solution of problem (3.9). Assume and
(3.12) |
Then there exists a constant such that
(3.13) |
Inverse problem Ⅲ: Let . We determine the diffusion matrix by the time trice data of problem (3.9). We can only get uniqueness here.
Theorem 3.3. Let be a solution of problem (3.9) and such that
(3.14) |
If , then
Remark 3.1. Let . The eigenfunction corresponding to is and the eigenfunction corresponding to is and . We take and . We have
and
If , and , we have , but . Thus, condition (3.14) is necessary.
We will present the proof of these theorems later in Section 4.
Following Theorems 3.1–3.3 and the estimates (3.8), we can immediately obtain the following corollaries of the inverse problem determining the diffusion matrix between different structures to problem (3.1) and problem (3.4). First, we present the inverse problem of determining the period coefficient matrix by the homogenized data.
Corollary 3.1. Let be a solution of problem (3.4) and . Under the condition (3.7) and
Then there exists a constant such that
We see that the condition for is from Condition 3.10 and are vector-valued functions over portraying the period structure. Further, we must guarantee and have the same limit . Similarly, the following result also follows.
Corollary 3.2. Let , be a solution of problem (3.4) and be a solution of problem (3.9). Under condition (3.7) and
Then there exists a constant such that
Corollary 3.3. Let be a solution of problem (3.4) and such that
Then if , we have
Limited by our approach, as in Theorem 3.3, we can only obtain the uniqueness of this inverse problem. We can also use the periodic structure data to determine the homogenized coefficient matrix as the following result of asymptotic stability.
Corollary 3.4. Let , be a solution of problem (3.1) and be a solution of problem (3.4). Under the condition (3.7) and
Then there exists a constant such that
where as .
In this section, we give the proof of Theorems 3.1–3.3.
Proof of Theorem 3.1. We split the proof into the following three steps, and prove separately for each step.
Step 1. We first prove that implies that . Set , then
(4.1) |
Denote div. Since
we get
Thus, by [12, Theorem 2.1], we know that is a weak solution of the following problem
(4.2) |
By [18, Theorem 2.1] and , we have . Applying [18, Theorem 2.1] to Eq (4.1), we get , i.e., .
Step 2. For , we prove the analyticity of with respect to every . Observe that
hence
By the Sobolev embedding , we have
Thus, we get the convergent series
(4.3) |
and since is holomorphic in the complex plane, we see that is analytic with respect to .
Step 3. We prove that means . First, , so . Since and , by the strong maximum principle [20], we have . On the basis of [19, Theorem 9], we know that for all .
If there exist such that and , then there is such that . Therefore, when ,
Since is analytic with respect to , we have
Moreover,
(4.4) |
where we use the fact that
and the series converges. Passing to the limit as in Eq (4.4), we have , a contradiction. Therefore, means that .
Step 4. By the last step, we have for all Set , then . By the mean value theorem we get
where
This ends the proof of Theorem 3.1.
Proof of Theorem 3.2. Referring to Theorem 3.8(ⅱ) in [15], we can similarly verify that the function satisfies for all Thus, we can complete the proof similarly to that of Theorem 3.1.
Proof of Theorem 3.3. From for and the analyticity of with respect to , we have for Since
and by the asymptotic expansion (2.13), we have that
holds for . We equate the coefficients of , which yields
If , we have
(4.5) |
We observe that
Taking in Eq (4.5), we get
this yields a contradiction. Thus, . Similarly, we can prove . This ends the proof of Theorem 3.3.
We should mention that our work is done under some constraints. We require the diffusion coefficient matrix to be diagonal and the area considered to be a rectangular area. This is because our method relies on the expansion of the eigenfunction, and only under these constraints can we clarify our eigenfunction, which is very advantageous for our proof. In addition, we only consider the case of layered matter, that is, the diffusion matrix only depends on one variable. Only in this way can we obtain formula . In order to break through these limitations, we believe that we can only seek other more difficult methods. Besides, we can also consider other more general problems. For example, we can consider the inverse problem of the variable-order time-fractional equation [21] in the current frame, but we do not discuss these problem in this paper. Moreover we also consider the inverse problem of determining the variable order and diffusion matrix simultaneously, such as in article [22], which investigates this problem in one space dimension. We also hope to expand their results to the situation of high-dimensional situations in the future.
We would like to thank the Editor and Referees for valuable comments and contributions. The research is supported by the National Natural Science Foundation of China (No. 12171442). Feiyang Peng carried out the inverse problem and the homogenization theory of fractional diffusion equations, and Yanbin Tang carried out the reaction diffusion equations and the perturbation theory of partial differential equations. All authors carried out the proofs and conceived the study. All authors read and approved the final manuscript.
The authors declare that there is no conflict of interest.
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