1. Introduction
In recent years, saddle-point optimality criteria and the modified objective function method in optimization problems have been investigated. In this regard, we mention the works of Sposito and David [
1], Smith and Vandelinde [
2], Duc et al. [
3], Li [
4] and Santos et al. [
5]. In order to solve the initial optimization problem and the corresponding duals, many researchers have been interested in obtaining new and easier methods by considering some associated optimization problems. For instance, Antczak [
6], by a modification of the objective function, formulated an equivalent vector programming problem for the considered multiobjective programming problem having invex objective and constraint functions. Bhatia [
7] introduced higher-order strong convexity associated with Lipschitz functions in order to derive the optimality conditions for a multiobjective optimization problem. Jayswal et al. [
8], by using the second-order
-approximation method, investigated a class of vector optimization problems involving second-order invex functions. Singh et al. [
9] formulated Lagrange-type dual model for a mathematical programming problem with equilibrium constraints and derived weak and strong duality results under convexity assumptions. Quite recently, Borisov and Cardone [
10] studied the spectrum of a quadratic operator pencil with a small
-symmetric periodic potential and a fixed localized potential. Under some invexity and
-quasi-invexity assumptions of the involved functionals, Treanţă [
11] established some efficiency conditions for a class of variational control problems with data uncertainty. In this paper, taking into account the applications of interval analysis in various fields and motivated and inspired by the above mentioned works, we extend the previous studies for a new class of interval-valued variational control problems with mixed constraints involving first-order partial differential equations (PDEs). Specifically, based on a class of interval-valued variational control problems recently introduced by Treanţă [
11], we formulate and prove LU-optimality conditions in the considered first-order PDE-constrained modified interval-valued variational control problem. More precisely, the main novelty of this paper (compared to Treanţă [
11]) is the modified objective function approach for first-order PDE-constrained interval-valued variational control problems governed by multiple integral functionals. It can be easily observed that the modified interval-valued variational control problem is simpler to study than the initial interval-valued variational control problem. Consequently, the present study provides important mathematical tools and ideas for further research in various fields.
The paper is structured as follows.
Section 2 contains notations, definitions and the preliminary results to be used in the sequel.
Section 3 includes the main results of the present paper. Concretely, a modified interval-valued variational control problem governed by first-order partial differential equations and inequality constraints is introduced. Under invexity and pseudo-invexity hypotheses, some connections between the original interval-valued variational control problem and the modified interval-valued variational control problem are established. In order to illustrate the mathematical development and its effectiveness, we present an application. Finally,
Section 4 gives the conclusions of the present study.
2. Notations and Preliminaries
In this section, we introduce the notations, working hypotheses and the preliminary results to be used throughout the present paper. Thus, we consider:
- *
is a compact domain and is a point in ;
- *
let
be the space of piecewise smooth
state functions with the norm
where
denotes
;
- *
also, denote by the space of piecewise continuous control functions with the uniform norm ;
- *
for
, we define the following continuously differentiable functions
- *
represents the volume element on ;
- *
we assume that the continuously differentiable functions
fulfill the complete integrability conditions, that is,
where
is the total derivative operator;
- *
for
in
, the following convention will be used throughout the paper:
In the following, in order to formulate and prove the main results included in this paper, we present the invexity and pseudo-invexity associated with a multiple integral functional.
Consider a continuously differentiable function
where
is the first-order jet bundle associated to
and
. For
and
, we introduce the following scalar functional
Taking into account Treanţă [
12], according to Treanţă and Arana-Jiménez [
13,
14] and following Mititelu and Treanţă [
15], we formulate the next definitions. Further, we use the notation
Definition 1. If there existof -class with , andof -class with , such that for every :then is said to be invex at with respect to and . Definition 2. If there existof -class with , andof -class with , such that for every :or, equivalently,then is said to be pseudo-invex at with respect to and . Further, let be the set of all closed and bounded real intervals. Denote by a closed and bounded real interval, where and indicate the lower and upper bounds of , respectively. Throughout this paper, the interval operations can be performed as follows:
- (1)
- (2)
- (3)
- (5)
- (5)
- (6)
- (7)
- (8)
Definition 3. ([11]) Let be two closed and bounded real intervals. We write if and only if and . Definition 4. ([11]) Let be two closed and bounded real intervals. We write if and only if and . Definition 5. ([11]) A function , defined bywhere , and are real-valued functions and satisfy the condition , is said to be interval-valued function. Now, we introduce the following class of interval-valued variational control problems, where the objective functional
, is considered as interval-valued (for more details, see Treanţă [
11]):
where
is an interval-valued function and
are continuously differentiable real-valued functions.
Define the
set of all feasible solutions (domain) in
as
Definition 6. ([11]) A feasible solution in interval-valued variational control problem is called LU-optimal solution if there exists no other feasible solution such that . The next result formulates necessary LU-optimality conditions for a feasible point in . In the following, summation over the repeated indices is assumed.
Theorem 1. (Necessary LU-optimality conditions, [11]) Under constraint qualification assumptions, if is an LU-optimal solution in , then there exists the piecewise smooth functions , and , with , such that:for all , except at discontinuities. Definition 7. ([11]) The LU-optimal solution in is said to be a normal LU-optimal solution if . 3. Main Results
This section includes the main results of the present paper. More precisely, we define a modified interval-valued variational control problem associated with and, under some invexity and pseudo-invexity assumptions, we establish LU-optimality conditions for the considered interval-valued optimization problems.
For an arbitrary given feasible solution
in
and for
defined as in Definitions 1 and 2, we introduce a
modified interval-valued variational control problem associated with
, as follows:
where
Remark 1. We observe that the set of all feasible solutions for the considered modified interval-valued control problem is , as well.
Definition 8. A point is said to be an LU-optimal solution for iffor every . The concept of a normal LU-optimal solution associated with the modified interval-valued control problem has the same meaning as in Definition 7.
Further, under some invexity assumptions, we establish the equivalence between LU-optimal solutions associated with and .
Theorem 2. Consider is a normal LU-optimal solution in and are invex at with respect to and . Then is an LU-optimal solution in .
Proof. By hypothesis, the relations in Equations (4)–(6), with
(for instance), are satisfied for all
, except at discontinuities. By reductio ad absurdum, consider that
is not an LU-optimal solution in
. Thus, there exists
such that
Taking into account that
we get
Since
is invex at
with respect to
and
, we have
Using the feasibility of
and
, the previous inequality becomes
Also, using the feasibility of
and
and, as well, the invexity of
, we get
or, equivalently,
or (using the property
)
Combining Equations
–
, we obtain
Taking into account Equations
and
(with
), we obtain a contradiction. Consequently,
is an LU-optimal solution in
and the proof is complete. ☐
Illustrative application. In order to illustrate the effectiveness of the aforementioned result (see Theorem 2), consider the following bi-dimensional control problem (in short BCP):
where
and
is a square fixed by the diagonally opposite points
and
in
.
The symmetry of the variables and , generated by , plays a crucial role in our investigations, specifically, in obtaining the LU-optimal solution associated with . Moreover, we consider interest only for affine state functions and is a constant function (see Theorem 1).
In the aforementioned application, the following mathematical tools are used:
continuously differentiable functions. The closeness condition associated to
, implies
, and the condition
, involves
.
Consider the feasible point in
and let
be defined as
The modified interval-valued variational control problem associated with
is formulated as
We can notice that has a simplified form in comparison to . Also, the feasible point , defined in , is an LU-optimal solution for . According to the relations , with , it follows that , where are real constants with and . Further, it is easy to check the invexity of at with respect to and formulated in Equations and . Consequently, the feasible point , defined in , is an LU-optimal solution in .
The following result provides LU-optimality conditions for the reverse situation presented in the previous theorem.
Theorem 3. Consider is an LU-optimal solution in and the functionals , are pseudo-invex at with respect to and . Then is an LU-optimal solution in .
Proof. Consider, by reductio ad absurdum, that
is not an LU-optimal solution in
. Therefore, there exists
satisfying
Since the functionals
, are pseudo-invex at
with respect to
and
, the previous inequality implies
By using the property
, we can write the above inequality as follows
which contradicts the optimality of
in
. In consequence,
is an LU-optimal solution in
and the proof is complete. ☐