1. Introduction
Let us consider the following problem:
(P) minimize locally in both variables the function
under constraints
where
,
X,
Y,
Z are real Banach spaces,
is a fixed set. By a local in
solution to this problem we mean a pair
satisfying the constraints (
2), (
3) and such that
for any pair
satisfying the constraints, where
is a neighborhood of
in
X and
is a neighborhood of
in
Y.
The aim of the paper is to derive an extremum principle for the problem (P), giving necessary conditions for its solution. Such conditions allow one to find pairs suspected of being the solutions of the problem under consideration. More precisely, points that do not satisfy the necessary conditions cannot be the solutions.
There are two known main powerful tools giving the necessary conditions for problems of such a type. The first of them—the smooth-convex extremum principle due to Ioffe and Tikhomirov (see [
1] (Part 1.1.2, Theorem 3) and also Theorem 2 below)—can be used to study local in
x solutions to (
P). Besides the standard smoothness and regularity assumptions in
x imposed on
and
f, it contains a “convexity” assumption imposed on these functions with respect to
u. In this theorem, one does not require the closedness of
U nor non-emptiness of the interior of
U. The second tool is the Dubovitskii–Milyutin theorem (see [
2,
3,
4] for a systematic exposition). From this theorem, one can deduce necessary conditions for local in
solution to (
P). In the formulation of this theorem, some cones and the corresponding conjugate cones appear. To use the useful characterizations of the cones, it must be assumed that
and
f are smooth with respect to
and the set
U is closed and has a non-empty interior.
Let us point out that the paper [
5] gives the most recent discussion of the smooth-convex extremum principle. In particular, an extension of this principle—Lagrange’s principle for smoothly approximately convex problems—has been derived for a problem containing some additional “membership” constraint of type
. The main novelty of this theorem lies in replacing the smoothness and convexity assumptions by a smoothly approximate convexity assumption. The paper also includes a very interesting historical commentary with relevant references.
Our principle (Theorem 3) gives necessary conditions for local in
solution to (
P) under smoothness of
and
f in
, without convexity and approximate convexity assumptions imposed on
f and
(we assume only the convexity of the set
U) and without any assumptions on the closedness of
U as well as on the interior of
U. Proof of this result is short and based on a very simple generalization of the Fermat’s theorem, the smooth-convex principle applied to the linear problem (
P) and the local implicit function theorem. An example illustrating the obtained result is presented. It shows that using the new principle one can improve the maximum principle derived in [
6] with the aid of the Dubovitskii–Milyutin theorem.
2. Preliminaries
In this section, we recall a generalization of the Fermat’s theorem, implicit function theorem and a particular case of the smooth-convex extremum principle.
We say that a function
where
U is a subset of a real Banach space
Y, has a directional derivative at
in a direction
, if there exists
such that
for
and the limit
exists. In such a case, this limit is denoted as
and called the directional derivative of
g at
u in the direction
h. We have the following lemma generalizing Fermat’s theorem (proof of this lemma is immediate).
Lemma 1. Let U be a subset of a real Banach space Y. If a function has the directional derivative at in the direction and is a local minimum point of g on U, then The classical local implicit function theorem in Banach spaces is the following theorem (see [
1]).
Theorem 1 (local implicit function theorem). Let X, Y, Z be real Banach spaces, V—a neighborhood of a point in and —a mapping of class . Assume that and the partial differential is bijective. Then, there exist balls , and a mapping such that
- -
equalities and are equivalent in the set
- -
for any .
Now, let us consider the following problem:
(
S) minimize locally in
x the function
under constraints
where
,
X,
Z are real Banach spaces,
U is any fixed set. By a local in
x solution to this problem we mean a pair
satisfying the constraints (
6) and such that
for any pair
satisfying (
6), where
is a neighborhood of
.
A particular case of the smooth-convex extremum principle (see [
1]) is the following theorem.
Theorem 2. Let be a local in x solution to the problem .
- •
for any , the mappings are of class at ,
- •
for any where is a neighborhood of the mappings satisfy the following “convexity” assumption: for any , there exists such that - •
is onto,
then there exists (conjugate space (1)) such that 3. An Extremum Principle
Assume that a point is a local in minimum point for the problem (P) with a set . Moreover, assume that
is Frechet differentiable at
is of class on some neighborhood of
is bijective.
From the local implicit function theorem applied to
f, it follows that there exist balls
and
and a mapping
of class
with differential
such that
for
(
is the unique point in
such that the last equality holds true).
Of course, this mapping is differentiable in
and the differential
at
is of the form
for
.
Now, let us assume that the set
is convex and consider the mapping
. Since
U is convex and
is differentiable at
,
g has the directional derivative at
in any direction
with
. Clearly,
It is easy to observe that
is the local minimum point of
g. So, from Lemma 1, it follows that
for any
, i.e.,
for
. Denoting
we see that
for any
. Clearly,
In other words, the pair with is a solution to problem:
(LIN) minimize globally in
the function
given by
under constraints
where
Linearity of the mappings
,
h and regularity of the differential
imply that all assumptions of Theorem 2 are satisfied for the problem (
LIN). Consequently, there exists
such that
for any
and
Thus, we have proven the following extremum principle.
Theorem 3. If is a local in minimum point for the problem (P) with a convex set and assumptions (1.)–(3.) are satisfied, then there exists such that (8) and (9) hold true. 4. An Application
In paper [
6], we consider the following optimal control problem described by the nonlinear integro-differential equation of Volterra type
with constraints
and the nonlinear performance index of Bolza type
where
,
,
,
,
and
Consider the problem:
(ID) minimize locally in both variables (
x and
) the function
under constraints
where
with the set of solutions
(set of absolutely continuous functions possessing squared integrable derivatives, vanishing at
) and the set of functional parameters (controls)
with
consisting of essentially bounded functions taking their values in the sets
,
, respectively. On the sets
M,
N, we assume that they are convex.
Checking differentiability of
,
f and regularity of
f just as in [
6], we can obtain the maximum principle given in [
6] (Theorem 4.1) not assuming that the sets
M,
N are closed with nonempty interiors (it is sufficient to assume only convexity of these sets).