Sufficient Fritz John Type Optimality Criteria and Duality for Control Problems ()
1. Introduction
Optimal control models represent a variety of common situations, notably, advertising investment, production and inventory, epidemic, control of a rocket, etc. The optimal planning of a river system which is an invincible resource of nature, where it is needed to make the best use of the water, can also be modelled as an optimal control problem. Optimal control models are also potentially applicable to economic planning and to the world models of the “Limits to Growth” kind in general.
Optimality criteria for any optimization problem are of great significance and lay the foundation of the concept of duality. Fritz John optimality criteria for a control problem were first derived by Berkovitz [1]. Subsequently Mond and Hanson [2], who first investigated duality in optimal control pointed out that from Fritz John optimal criteria, Karush-Kuhn-Tucker optimality criteria can be deduced if normality of the solution of a control problem which replaces a regularity conditions is assumed. Later, treating a nondifferentiable control problem as a nondifferentiable mathematical programming problem in an infinite-dimensional space, Chandra et al. [3], obtained Fritz John as well as Karush-Kuhn-Tucker optimality criteria.
For a nondifferentiable control problem Using KarushKuhn-Tucker optimality criteria, they formulated Wolfe type dual and derived usual duality results under appropriate convexity assumptions.
In this research exposition, sufficient Fritz John criteria are derived for a differentiable control problem in which objective functional is pseudoconvex and constraint functions are quasiconvex or semi-strictly pseudoconvex. A number of duality results are proved for relating the solution of the control problem with that of its proposed dual under suitable generalized convexity requirements. The relationship of our duality results to those of a nonlinear programming problem is indicated.
2. Control Problem and Related Preliminaries
Let
denotes a n-dimensional Euclidean space,
be a real interval and
be a continuously differentiable with respect to each of its arguments. For the function
where
is differentiable with its derivative
and
is the smooth function, denote the partial derivatives of
by
,
and
, where

For m-dimensional vector function
the gredient with respect to
is

a
matrix of first order derivatives.
Here
is the control variable and
is the state variable,
is related to
via the state equation
. Gradients with respect to
are defined analogously.
A control problem is to transfer the state vector from an initial state
to a final state
so as to minimize a functional, subject to constraints on the control and state variables.
A control problem can be stated formally as(CP):
subject to
(1)
(2)
(3)
1)
is as before,
and
are continuously differentiable functions with respect to each of its arguments.
2) X is the space of continuously differentiable state functions
such that
equipped with the norm
, and
is the space of piecewise continuous control functions
has the uniform norm
and 3) The differential Equation (2) for
with the initial conditions expressed as
may be written as
where the map
being the space of continuous functions from
, defined by 
Following Craven [4], the control problem can be expressed as(ECP):
subject to


where
is function from
into
given by
from
, and
;
is the convex cone of functions in
whose components are non-negative; thus
has interior points.
Necessary optimality conditions for existence of extermal solution for a variational problem subject to both equality and inequality constraints were given by valentine [5]. Invoking Valentine’s [5] results, Berkovitz [1] obtained corresponding necessary optimality criteria for the above control problem (CP). Here we state the Fritz John type optimality conditions derived by Chandra et al. [3] in of the following proposition which will be required in the sequel.
Proposition 1
(Necessary Optimality Conditions)
If
an optimal solution of (CP) and the Frechet derivatives
is surjective, then there exist Lagrange multipliers
, and piecewise smooth functions
and
satisfying, for all
,
(4)
(5)
(6)
(7)
(8)
The above conditions will become Karush-Kuhn-Tucker conditions if
. Therefore, if we assume that the optimal solutions
is normal, then without any loss of generality, we can set
. Thus from the above we have the Karush-Kuhn-Tucker type optimality conditions

Using these optimality conditions, Mond and Hanson [2] constructed following Wolfe type dual.
(CD):
subject to

In [6], [CP] and (CD) are shown to from a dual pair if
,
and
are all convex in
and
. Subsequently, Mond and Smart [6] extended this duality under generalized invexity.
As a follows up, Husain et al. [7] formulated the following dual (CD) to the primal problem (CP) in the spirit of Mond and Weir [8].
(CD): Maximize 
subject to

They proved sufficiency of the optimality criteria and duality for the pair of dual problems (CP) and (CD) under pseudoinvexity of
and quasi-invexity of
.
3. Sufficiency of Fritz Type Optimality Criteria
Before proceeding to the main results of this section, we formulate the following definitions which will be required in the forthcoming analysis:
Definitions: 1) For
the functional
is said to be strict pseudoconvex, if all 

Equivalently

2)
the functional
is semistrictly pseudoconvex if
is strictly pseudoconvex for all
If
and
are independent of t and u then the above definitions reduce to those of [6].
Theorem 1 (Sufficiency): If
is pseudoconvex,
is semi-strictly pseudoconvex and
is quasiconvex, and if there exist
and piecewise smooth
and
such that from (4)-(8) are satisfied, then
is an optimal solution of (CP).
Proof: Suppose that
is not optimal for (CP) i.e. there exist
such that

This, by pseudoconvexity of
implies

and
(9)
with strict inequality in (9) if
.
Feasibility of
for (CP) together with (6) implies,

which by semi-strict pseudoconvexity of
implies
(10)
with strict inequality in (10) if some
.
Also

This, in view of quasiconvexity of
yields

(By integrating by parts)
(11)
(Using (1))
Combining (9)-(11), we have

This contradicts (4) and (5). Hence
is an optimal solution of (CP).
4. Fritz Type Duality
The following is the Fritz john type dual to the problem (CP):
Maximize 
subject to
(12)
(13)
(14)
(15)
(16)
(17)
(18)
Theorem 2 (Weak Duality): Assume that
(A1) satisfies
is feasible for (CP) and
is feasible for (FrCD).
(A2):
is pseudo-convex,
is semi-strictly pseudo-convex and
is quasi-convex.
Then

Proof: Suppose
This, because of pseudo-convexity of
yields 
and
(19)
with strict inequality in the above with
. From the constraints of (CP) and (FrCD), we have

which by semi-strictly pseudo-convexity of
implying
(20)
with strict inequality with
,
Also, we have

Using quasi-convexity of
in the above, we have
(21)
which as earlier becomes

Combining (19)-(21), we have
(22)
From (13) and (14), we get
i.e.
(23)
The relation (22) and (23) are in contradiction, thus

Implying

Theorem 3 (Strong Duality): If
is an optimal solution of (CP), then there exist
and piecewise smooth
and
such that
is feasible for (FrCD) and objective values are equal. If hypotheses of Theorem 2 hold, then
is an optimal solution of (FrCD).
Proof: Since
is an optimal solution of (CP) by Proposition 1, there exist
, piecewise smooth
and
such that
(24)
(25)
(26)
(27)
(28)
(29)
(30)
The relation (26) implies
(31)
and the relation (28) along
gives
(32)
The relation (24), (25), (29)-(32), yields the feasibility of
for (FrCD). Equality of objective functionals of (CP) and (FrCD) is obvious from their formulations.
Consequently the optimality for (FrCD) follows, given the pseudo-convexity of the
semi-strict pseudoconvexity of
and quasi-convexity of
by Theorem 2.
Theorem 4 (Strict-Converse duality): Assume that
(A1):
is strictly pseudo-convex,
is semi-strictly pseudo-convex and
is quasi-convex.
(A2):
is an optimal solution of (CP) and
(A3):
is an optimal solution of (FrCD).
Then
is an optimal solution of (CP) with
.
Proof: we suppose
and exhibit a contradiction. Since
is an optimal solution of (CP) by theorem (Strong Duality) that there exist
where
and piecewise smooth
and piecewise smooth
and
such that
is also an optimal solution for (FrCD), it follows that

By strict pseudo-convexity of
gives, this implies

and multiplying the above by 
(33)
with strict inequality if
From the constraints of (CP) and (FrCD), we have
(34)
Also
(35)
By semi-strict pseudoconvexity of
and from (34), we have
(36)
with strict inequality in the above if,

By quasi-convexity of
and from (35), we get
(37)
As earlier, this reduces to

combining (33), (36), and (37), we have

This contradicts the feasibility of
for (FrCD), hence
is an optimal solution of (CP) and
.
Theorem 5 (Converse duality): Let
be an optimal solution of (FrCD), Assume
(A1)
is pseudo-convex,
is semi-strictly pseudo-convex and
is quasiconvex.
(A2) The set
or
is linearly independent.
(A3)
for some column vector
and where

and (A4) 
Then
is optimal for (CP).
Proof: By Proposition 1, there exist
piecewise smooth
and
such that
(38)
(39)
(40)
(41)
(42)
(43)
(44)
(45)
(46)
(47)
(48)
Multiplying (41) by
and integrating, and then using (43) and (46), we have

which can be written as
(49)
Multiplying (42) by
and then integrating we get

using (44), this yields

(by integrating by parts)
which in view of (A4), implies

This can be written as
(50)
Using (13) in (38) and (14) in (39), we have

These can be combined as


Pre-multiplying this by
and then integrating we have

Using (49) and (50) , this implies

which in view of (A2) implies
implies
(51)
In view of (A3), the equality constraint implies
Consequently, we have
(52)
Using (52), along with
, we have

This, in view of (A3),
(53)
If
(53), implies
. Thus
contradiction.
Hence
and consequently
and
.
From (41) and (42), we have

These relations yield the feasibility of
for (CP) and objective functionals of (CP) and (FrCD) are equal there. Hence under the stated convexity hypotheses, by Theorem 2,
is an optimal solution of (CP).
5. Mathematical Programming Problems
If the problems (CP) and (FrCD) are independent of t and x, these problems reduce to essentially to the static cases of nonlinear programming problem. Letting
, the problems (CP) and (FrCD) become the pair of dual nonlinear programming problems formulated by Husain and Srivastav [9].
(CD0): Minimize 
subject to

(FrCD): Maximize 
subject to

where
is pseudoconvex,
is semi-strictly pseudoconvex and
is quasi-convex. If only inequality constraint in (CD0) is given, then (CP0) and (FrCD0) become a pair of dual the nonlinear programming problems considered by Weir and Mond [10].
6. Conclusion
In this paper, sufficient optimality conditions are derived for a control problem which appears in various real life situations under generalized convexity assumptions. In order to formulate the dual to this control problem, Fritz John optimality conditions are used instead of KarushKuhn-Tucker optimality condition and hence the requirement of regularity condition is eliminated. Various duality results are obtained and the linkage of our duality results to those of a nonlinear programming problem is indicated. Our results can be seen in the setting of multiobjective control problems.
7. Acknowledgements
The authors acknowledge anonymous referees for their valuable comments which have improved the presentation of this research paper.