Next Article in Journal
Emergency Quantity Discount Contract with Suppliers Risk Aversion under Stochastic Price
Next Article in Special Issue
A Remark on the Change of Variable Theorem for the Riemann Integral
Previous Article in Journal
Space Analyticity and Bounds for Derivatives of Solutions to the Evolutionary Equations of Diffusive Magnetohydrodynamics
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

On Robust Saddle-Point Criterion in Optimization Problems with Curvilinear Integral Functionals

1
Department of Applied Mathematics, University Politehnica of Bucharest, 060042 Bucharest, Romania
2
Department of Mathematics, Taki Government College, Taki 743429, India
*
Author to whom correspondence should be addressed.
Mathematics 2021, 9(15), 1790; https://doi.org/10.3390/math9151790
Submission received: 6 July 2021 / Revised: 26 July 2021 / Accepted: 27 July 2021 / Published: 28 July 2021
(This article belongs to the Special Issue Variational Problems and Applications)

Abstract

:
In this paper, we introduce a new class of multi-dimensional robust optimization problems (named ( P ) ) with mixed constraints implying second-order partial differential equations (PDEs) and inequations (PDIs). Moreover, we define an auxiliary (modified) class of robust control problems (named ( P ) ( b ¯ , c ¯ ) ), which is much easier to study, and provide some characterization results of ( P ) and ( P ) ( b ¯ , c ¯ ) by using the notions of normal weak robust optimal solution and robust saddle-point associated with a Lagrange functional corresponding to ( P ) ( b ¯ , c ¯ ) . For this aim, we consider path-independent curvilinear integral cost functionals and the notion of convexity associated with a curvilinear integral functional generated by a controlled closed (complete integrable) Lagrange 1-form.

1. Introduction

As we all know, partial differential equations (PDEs) and partial differential inequations (PDIs) are essential in modeling and investigating many processes in engineering and science. In this respect, many researchers have taken a special interest in their study. We specify, for example, the research works of Mititelu [1], Treanţă [2,3,4], Mititelu and Treanţă [5], Olteanu and Treanţă [6], Preeti et al. [7], and Jayswal et al. [8] on the study of some optimization problems with ODE, PDE, or isoperimetric constraints. In order to reduce the complexity of the considered optimization problems, some auxiliary optimization problems were formulated to investigate the initial problems more easily (Treanţă [9,10,11,12]). Nevertheless, since the real-life processes and phenomena often imply uncertainty in initial data, many researchers have turned their attention to optimization issues governed by first- and second-order PDEs, isoperimetric restrictions, stochastic PDEs, uncertain data, or a combination thereof. In this context, we mention the following research papers: Wei et al. [13], Liu and Yuan [14], Jeyakumar et al. [15], Sun et al. [16], Preeti et al. [7], Lu et al. [17], and Treanţă [18]. The structure of approximate solutions associated with some autonomous variational problems on large finite intervals was studied by Zaslavski [19]. Furthermore, Geldhauser and Valdinoci [20] investigated an optimization problem with SPDE constraints, with the peculiarity that the control parameter s is the s-th power of the diffusion operator in the state equation. In [21], Babamiyi et al. focused on identifying a distributed parameter in a saddle point problem with application to the elasticity imaging inverse problem. Very recently, Debnath and Qin [22], investigated the robust optimality and duality for minimax fractional programming problems with support functions.
Motivated and inspired by previous research works, in this paper, we introduce and study new classes of robust optimization problems. More exactly, by taking curvilinear integral objective functionals with mixed (equality and inequality) constraints implying data uncertainty and second-order partial derivatives, we introduce the robust control problems under study. Further, by using the concept of convexity associated with curvilinear integral functionals and the notion of robust saddle-point associated with a Lagrange functional corresponding to the modified robust optimization problem, we formulate and prove some characterization results for the considered classes of control problems. The novelty elements included in the paper, in comparison with other research papers in this field, are provided by the presence of uncertain data both in the objective functional and in the constraint functionals and also by the presence of second-order partial derivatives. Moreover, the proofs associated with the main results are established in an innovative way. Furthermore, since the mathematical framework introduced here is appropriate for various scientific approaches and viewpoints on complex spatial behaviors, the current paper could be seen as a definitive research work for a large community of researchers in engineering and science.
The paper is structured as follows. Section 2 provides the preliminary and necessary mathematical tools, which will be used in the next sections. Section 3 includes the main results of this paper. Under convexity assumption of the cost functional, the first main result establishes a connection between a robust saddle point of the Lagrange functional associated with the associated modified problem ( P ) ( b ¯ , c ¯ ) and a weak robust optimal solution of ( P ) . By assuming the convexity hypotheses of the constraint functionals, the converse of the first main result is presented in the second main result. In Section 4, we formulate the conclusions and further development.

2. Preliminaries

In this paper, we use the following working hypotheses and notations:
  • Consider R p , R q , R r and R n as Euclidean spaces of dimension p , q , r and n, respectively;
  • Consider Θ R p as a compact domain and the point t = ( t α ) Θ as a multi-parameter of evolution or multi-time;
  • Consider Γ Θ as a piecewise smooth curve joining the points t 0 and t 1 in Θ ;
  • B is the space of C 4 -class state functions b = ( b τ ) : Θ R q and b α : = b t α , b α β : = 2 b t α t β denote the partial speed and partial acceleration, respectively;
  • C is the space of C 1 -class control functions c = ( c j ) : Θ R r ;
  • Consider T as the transpose for a given vector;
  • Consider the following convention for inequalities and equalities of any two vectors x , y R n :
    (i)
    x < y x i < y i , i = 1 , n ¯ ,
    ( i i )
    x = y x i = y i , i = 1 , n ¯ ,
    ( i i i )
    x y x i y i , i = 1 , n ¯ ,
    ( i v )
    x y x i y i , i = 1 , n ¯ and x i < y i for some i .
In the following, we consider g = ( g 1 , , g m ) = ( g l ) : J 2 Θ , R q × C × U l R m , l = 1 , m ¯ , f κ : J 2 Θ , R q × C × W κ R , κ = 1 , p ¯ , h = ( h 1 , , h n ) = ( h ζ ) : J 2 Θ , R q × C × V ζ R n , ζ = 1 , n ¯ , are C 3 -class functionals. Furthermore, let us assume that w = ( w κ ) , u = ( u l ) and v = ( v ζ ) are the uncertain parameters for some convex compact subsets W = ( W κ ) R p , U = ( U l ) R m and V = ( V ζ ) R n , respectively. Denote by J 2 Θ , R q the second-order jet bundle associated with Θ and R q . Furthermore, assume that the previous multi-time-controlled second-order Lagrangians f κ determine a controlled closed (complete integrable) Lagrange 1-form (see summation over the repeated indices, Einstein summation):
f κ ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , w ) d t κ ,
which generates the following controlled path-independent curvilinear integral functional:
Γ f κ ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , w ) d t κ .
The second-order PDE and PDI constrained variational control problem with uncertainty in the objective and constraint functionals is defined as follows:
( P ) min ( b ( · ) , c ( · ) ) Γ f κ ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , w ) d t κ subject to g ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , u ) 0 , t Θ h ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , v ) = 0 , t Θ b ( t 0 ) = b 0 , b ( t 1 ) = b 1 , b σ ( t 0 ) = b σ 0 , b σ ( t 1 ) = b σ 1 .
The associated robust counterpart of the aforementioned variational control problem ( P ) is defined as:
( R P ) min ( b ( · ) , c ( · ) ) Γ max w W f κ ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , w ) d t κ subject to g ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , u ) 0 , t Θ , u U h ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , v ) = 0 , t Θ , v s . V b ( t 0 ) = b 0 , b ( t 1 ) = b 1 , b σ ( t 0 ) = b σ 0 , b σ ( t 1 ) = b σ 1 .
Further, denote by
D = { ( b , c ) B × C : g ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , u ) 0 ,
h ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , v ) = 0 , b ( t 0 ) = b 0 , b ( t 1 ) = b 1 ,
b σ ( t 0 ) = b σ 0 , b σ ( t 1 ) = b σ 1 , t Θ , u U , v s . V }
the feasible solution set in ( R P ) , and we call it the robust feasible solution set of ( P ) .
To simplify the presentation, we use the following notation:
π = ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) ) .
The associated first-order partial derivatives of f κ , κ = 1 , p ¯ , are defined as
f κ b = f κ b 1 , , f κ b q , f κ c = f κ c 1 , , f κ c r .
In the same manner, we have g b : = g b and g c : = g c by using matrices with m rows and h b : = h b and h c : = h c by using matrices with n rows.
Further, in accordance to Treanţă [3], we define the notion of a weak robust optimal solution of the considered class of constrained variational control problems. This notion will be used to establish the associated robust necessary conditions of optimality and the main results derived in the paper.
Definition 1.
A pair ( b ¯ , c ¯ ) D is said to be a weak robust optimal solution to ( P ) if there does not exist another point ( b , c ) D such that
Γ max w W f κ ( π , w ) d t κ < Γ max w W f κ ( π ¯ , w ) d t κ .
Next, we shall use the Saunders’s multi-index notation (Saunders [23], Treanţă [3,24]) to formulate the concept of convexity and the robust necessary optimality conditions for ( P ) .
Definition 2.
A curvilinear integral functional
F ( b , c , w ¯ ) = Γ f κ ( t , b ( t ) , b σ ( t ) , b α β ( t ) , c ( t ) , w ¯ ) d t κ = Γ f κ ( π , w ¯ ) d t κ
is said to be convex at ( b ¯ , c ¯ ) B × C if the following inequality
F ( b , c , w ¯ ) F ( b ¯ , c ¯ , w ¯ ) Γ f κ b ( π ¯ , w ¯ ) [ b ( t ) b ¯ ( t ) ] d t κ
+ Γ f κ b σ ( π ¯ , w ¯ ) [ b σ ( t ) b ¯ σ ( t ) ] d t κ
+ 1 n ( α , β ) Γ f κ b α β ( π ¯ , w ¯ ) [ b α β ( t ) b ¯ α β ( t ) ] d t κ
+ Γ f κ c ( π ¯ , w ¯ ) [ c ( t ) c ¯ ( t ) ] d t κ
holds for all ( b , c ) B × C .
According to Treanţă [24], we formulate the robust necessary optimality conditions for ( P ) .
Theorem 1.
If ( b ¯ , c ¯ ) D is a weak robust optimal solution to ( P ) and max w W f κ ( π , w ) = f κ ( π , w ¯ ) , κ = 1 , p ¯ , then there exist the scalar μ ¯ R , the piecewise smooth functions ν ¯ = ( ν ¯ l ( t ) ) R + m , γ ¯ = ( γ ¯ ζ ( t ) ) R n , and the uncertainty parameters u ¯ U and v ¯ V such that the following conditions
μ ¯ f κ b ( π ¯ , w ¯ ) + ν ¯ T g b ( π ¯ , u ¯ ) + γ ¯ T h b ( π ¯ , v ¯ )
D σ μ ¯ f κ b σ ( π ¯ , w ¯ ) + ν ¯ T g b σ ( π ¯ , u ¯ ) + γ ¯ T h b σ ( π ¯ , v ¯ )
+ 1 n ( α , β ) D α β 2 μ ¯ f κ b α β ( π ¯ , w ¯ ) + ν ¯ T g b α β ( π ¯ , u ¯ ) + γ ¯ T h b α β ( π ¯ , v ¯ ) = 0 , κ = 1 , p ¯
μ ¯ f κ c ( π ¯ , w ¯ ) + ν ¯ T g c ( π ¯ , u ¯ ) + γ ¯ T h c ( π ¯ , v ¯ ) = 0 , κ = 1 , p ¯
ν ¯ T g ( π ¯ , u ¯ ) = 0 , ν ¯ 0 ,
μ ¯ 0
hold for all t Θ , except at discontinuities.
Remark 1.
The robust necessary optimality conditions of ( P ) are given by the conditions (1)–(4).
Definition 3.
A pair ( b ¯ , c ¯ ) D is said to be a normal weak robust optimal solution to ( P ) if μ ¯ > 0 in Theorem 1. We can consider μ ¯ = 1 without loss of generality.
Next, we use the modified objective function method to reduce the complexity of ( P ) . In this direction, let ( b ¯ , c ¯ ) be an arbitrary given robust feasible solution to ( P ) . The modified multi-dimensional variational control problem associated with the original optimization problem ( P ) is defined as:
( P ) ( b ¯ , c ¯ ) min ( b ( · ) , c ( · ) ) Γ { f κ b ( π ¯ , w ) ( b ( t ) b ¯ ( t ) ) + f κ b σ ( π ¯ , w ) ( b σ ( t ) b ¯ σ ( t ) ) + 1 n ( α , β ) f κ b α β ( π ¯ , w ) ( b α β ( t ) b ¯ α β ( t ) ) + f κ c ( π ¯ , w ) ( c ( t ) c ¯ ( t ) ) } d t κ subject to g ( π , u ) 0 , t Θ h ( π , v ) = 0 , t Θ b ( t 0 ) = b 0 , b ( t 1 ) = b 1 , b σ ( t 0 ) = b σ 0 , b σ ( t 1 ) = b σ 1 ,
where the functionals g , f κ and h are given as in ( P ) .
The associated robust counterpart of the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) is defined as:
( R P ) ( b ¯ , c ¯ ) min ( b ( · ) , c ( · ) ) Γ max w W { f κ b ( π ¯ , w ) ( b ( t ) b ¯ ( t ) ) + f κ b σ ( π ¯ , w ) ( b σ ( t ) b ¯ σ ( t ) ) + 1 n ( α , β ) f κ b α β ( π ¯ , w ) ( b α β ( t ) b ¯ α β ( t ) ) + f κ c ( π ¯ , w ) ( c ( t ) c ¯ ( t ) ) } d t κ subject to g ( π , u ) 0 , t Θ , u U h ( π , v ) = 0 , t Θ , v s . V b ( t 0 ) = b 0 , b ( t 1 ) = b 1 , b σ ( t 0 ) = b σ 0 , b σ ( t 1 ) = b σ 1 .
Remark 2.
The robust feasible solution set of the problem ( P ) ( b ¯ , c ¯ ) is the same as in ( P ) . Consequently, it is also denoted by D.
Definition 4.
A pair ( b ^ , c ^ ) D is said to be a weak robust optimal solution to ( P ) ( b ¯ , c ¯ ) if there does not exist another point ( b , c ) D such that
Γ max w W [ f κ b ( π ¯ , w ) ( b b ¯ ) + f κ b σ ( π ¯ , w ) ( b σ b ¯ σ )
+ 1 n ( α , β ) f κ b α β ( π ¯ , w ) ( b α β b ¯ α β ) + f κ c ( π ¯ , w ) ( c c ¯ ) ] d t κ
< Γ max w W [ f κ b ( π ¯ , w ) ( b ^ b ¯ ) + f κ b σ ( π ¯ , w ) ( b ^ σ b ¯ σ )
+ 1 n ( α , β ) f κ b α β ( π ¯ , w ) ( b ^ α β b ¯ α β ) + f κ c ( π ¯ , w ) ( c ^ c ¯ ) ] d t κ .

3. Saddle-Point Optimality Criterion

In this section, under some convexity assumptions, we establish some connections between a weak robust optimal solution of ( P ) and a robust saddle-point associated with a Lagrange functional (Lagrangian) corresponding to the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) . In this regard, in accordance with Treanţă [9,11,12] and Preeti et al. [7], we formulate the next definitions.
Definition 5.
The Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) : B × C × R + m × R n × W × U × V R associated with the modified variational control problem ( P ) ( b ¯ , c ¯ ) is defined as
L ( ( b , c ) , ν , γ , w , u , v ) = Γ { max w W [ ( b ( t ) b ¯ ( t ) ) f κ b ( π ¯ , w ) + ( b σ ( t ) b ¯ σ ( t ) ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b α β ( t ) b ¯ α β ( t ) ) f κ b α β ( π ¯ , w ) + ( c ( t ) c ¯ ( t ) ) f κ c ( π ¯ , w ) ]
+ ν T ( t ) g ( π , u ) + γ T ( t ) h ( π , v ) } d t κ .
Definition 6.
A point ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) D × R + m × R n × W × U × V is said to be a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) if the following relations are fulfilled:
(i) 
L ( ( b ¯ , c ¯ ) , ν , γ , w , u , v ) L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) , ν R + m , γ R n , ( u , v ) U × V ,
(ii) 
L ( ( b , c ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) , ( b , c ) B × C .
Now, taking into account the above definitions, we establish the following two main results of this paper.
Theorem 2.
Let ( b ¯ , c ¯ ) be a robust feasible solution to ( P ) . Assume that max w W f κ ( π , w ) = f κ ( π , w ¯ ) , κ = 1 , p ¯ , and the objective functional Γ f κ ( π , w ¯ ) d t κ is convex at ( b ¯ , c ¯ ) . If the point ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) is a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) , then ( b ¯ , c ¯ ) is a weak robust optimal solution to ( P ) .
Proof. 
By reductio ad absurdum, let us assume that ( b ¯ , c ¯ ) is not a weak robust optimal solution to ( P ) . Therefore, by using the convexity property of the objective functional Γ f κ ( π , w ¯ ) d t κ , we get
Γ max w W [ ( b ˜ b ¯ ) f κ b ( π ¯ , w ) + ( b ˜ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ˜ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ˜ c ¯ ) f κ c ( π ¯ , w ) ] d t κ
< Γ max w W [ ( b ¯ b ¯ ) f κ b ( π ¯ , w ) + ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ¯ c ¯ ) f κ c ( π ¯ , w ) ] d t κ ,
for some ( b ˜ , c ˜ ) D .
From the feasibility of ( b ˜ , c ˜ ) to the problem ( P ) and ν ¯ R + m , we get
Γ ν ¯ T g ( π ˜ , u ¯ ) d t κ 0 .
On the other hand, since ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) is a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) , by using Definition 6 ( i ) , we have
L ( ( b ¯ , c ¯ ) , ν , γ , w , u , v ) L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) , ν R + m , γ R n , u U , v s . V ,
which, using of the definition of Lagrange functional, can be rewritten as
Γ { max w W [ ( b ¯ ( t ) b ¯ ( t ) ) f κ b ( π ¯ , w ) + ( b ¯ σ ( t ) b ¯ σ ( t ) ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ¯ α β ( t ) b ¯ α β ( t ) ) f κ b α β ( π ¯ , w ) + ( c ¯ ( t ) c ¯ ( t ) ) f κ c ( π ¯ , w ) ]
+ ν T ( t ) g ( π ¯ , u ) + γ T ( t ) h ( π ¯ , v ) } d t κ
Γ { max w W [ ( b ¯ ( t ) b ¯ ( t ) ) f κ b ( π ¯ , w ) + ( b ¯ σ ( t ) b ¯ σ ( t ) ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ¯ α β ( t ) b ¯ α β ( t ) ) f κ b α β ( π ¯ , w ) + ( c ¯ ( t ) c ¯ ( t ) ) f κ c ( π ¯ , w ) ]
+ ν ¯ T ( t ) g ( π ¯ , u ¯ ) + γ ¯ T ( t ) h ( π ¯ , v ¯ ) } d t κ .
Since max w W f κ ( π , w ) = f κ ( π , w ¯ ) , κ = 1 , p ¯ , it follows that
Γ { ( b ¯ ( t ) b ¯ ( t ) ) f κ b ( π ¯ , w ¯ ) + ( b ¯ σ ( t ) b ¯ σ ( t ) ) f κ b σ ( π ¯ , w ¯ )
+ 1 n ( α , β ) ( b ¯ α β ( t ) b ¯ α β ( t ) ) f κ b α β ( π ¯ , w ¯ ) + ( c ¯ ( t ) c ¯ ( t ) ) f κ c ( π ¯ , w ¯ )
+ ν T ( t ) g ( π ¯ , u ) + γ T ( t ) h ( π ¯ , v ) } d t κ
Γ { ( b ¯ ( t ) b ¯ ( t ) ) f κ b ( π ¯ , w ¯ ) + ( b ¯ σ ( t ) b ¯ σ ( t ) ) f κ b σ ( π ¯ , w ¯ )
+ 1 n ( α , β ) ( b ¯ α β ( t ) b ¯ α β ( t ) ) f κ b α β ( π ¯ , w ¯ ) + ( c ¯ ( t ) c ¯ ( t ) ) f κ c ( π ¯ , w ¯ )
+ ν ¯ T ( t ) g ( π ¯ , u ¯ ) + γ ¯ T ( t ) h ( π ¯ , v ¯ ) } d t κ .
If we set ν = 0 and γ = 0 in the above inequality, we obtain
Γ ν ¯ T g ( π ¯ , u ¯ ) d t κ 0 .
From (6) and (7), it follows that
Γ ν ¯ T g ( π ˜ , u ¯ ) d t κ Γ ν ¯ T g ( π ¯ , u ¯ ) d t κ ,
which, along with the inequality (5), gives
Γ { max w W [ ( b ˜ b ¯ ) f κ b ( π ¯ , w ) + ( b ˜ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ˜ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ˜ c ¯ ) f κ c ( π ¯ , w ) ] + ν ¯ T g ( π ˜ , u ¯ ) } d t κ
< Γ { max w W [ ( b ¯ b ¯ ) f κ b ( π ¯ , w ) + ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ¯ c ¯ ) f κ c ( π ¯ , w ) ] + ν ¯ T g ( π ¯ , u ¯ ) } d t κ ,
equivalently with
Γ { max w W [ ( b ˜ b ¯ ) f κ b ( π ¯ , w ) + ( b ˜ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ˜ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ˜ c ¯ ) f κ c ( π ¯ , w ) ] + ν ¯ T g ( π ˜ , u ¯ ) + γ ¯ T h ( π ˜ , v ¯ ) } d t κ
< Γ { max w W [ ( b ¯ b ¯ ) f κ b ( π ¯ , w ) + ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w )
+ 1 n ( α , β ) ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ) + ( c ¯ c ¯ ) f κ c ( π ¯ , w ) ] + ν ¯ T g ( π ¯ , u ¯ ) + γ ¯ T h ( π ¯ , v ¯ ) } d t κ ,
or
L ( ( b ˜ , c ˜ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) < L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) , ( b ˜ , c ˜ ) B × C ,
which contradicts Definition 6, and the proof is completed. □
Theorem 3.
Let ( b ¯ , c ¯ ) be a normal weak robust optimal solution to ( P ) . Assume that max w W f κ ( π , w ) = f κ ( π , w ¯ ) , κ = 1 , p ¯ , and the constraint functionals
Γ ν ¯ T g ( π , u ¯ ) d t κ , Γ γ ¯ T h ( π , v ¯ ) d t κ
are convex at ( b ¯ , c ¯ ) . Then, ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) is a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified variational control problem ( P ) ( b ¯ , c ¯ ) .
Proof. 
Since the relations (1)–(4), with μ ¯ = 1 , are satisfied for all t Θ , except at discontinuities, the conditions (1) and (2) yield
Γ ( b b ¯ ) { f κ b ( π ¯ , w ¯ ) + ν ¯ T g b ( π ¯ , u ¯ ) + γ ¯ T h b ( π ¯ , v ¯ )
D σ f κ b σ ( π ¯ , w ¯ ) + ν ¯ T g b σ ( π ¯ , u ¯ ) + γ ¯ T h b σ ( π ¯ , v ¯ )
+ 1 n ( α , β ) D α β 2 f κ b α β ( π ¯ , w ¯ ) + ν ¯ T g b α β ( π ¯ , u ¯ ) + γ ¯ T h b α β ( π ¯ , v ¯ ) } d t κ
+ Γ ( c c ¯ ) { f κ c ( π ¯ , w ¯ ) + ν ¯ T g c ( π ¯ , u ¯ ) + γ ¯ T h c ( π ¯ , v ¯ ) } d t κ
= Γ [ ( b b ¯ ) { f κ b ( π ¯ , w ¯ ) + ν ¯ T g b ( π ¯ , u ¯ ) + γ ¯ T h b ( π ¯ , v ¯ ) }
+ ( b σ b ¯ σ ) { f κ b σ ( π ¯ , w ¯ ) + ν ¯ T g b σ ( π ¯ , u ¯ ) + γ ¯ T h b σ ( π ¯ , v ¯ ) }
+ 1 n ( α , β ) ( b α β b ¯ α β ) { f κ b α β ( π ¯ , w ¯ ) + ν ¯ T g b α β ( π ¯ , u ¯ ) + γ ¯ T h b α β ( π ¯ , v ¯ ) } ] d t κ
+ Γ ( c c ¯ ) { f κ c ( π ¯ , w ¯ ) + ν ¯ T g c ( π ¯ , u ¯ ) + γ ¯ T h c ( π ¯ , v ¯ ) } d t κ = 0 ,
where we used the formula of integration by parts, the result “A total divergence is equal to a total derivative” (see Treanţă [4]) and the boundary conditions formulated in the considered problem.
Further, taking into account the assumption of convexity for the following multiple integral functionals Γ ν ¯ T g ( π , u ¯ ) d t κ , Γ γ ¯ T h ( π , v ¯ ) d t κ at ( b ¯ , u ¯ ) , we obtain
Γ ν ¯ T g ( π , u ¯ ) ν ¯ T g ( π ¯ , u ¯ ) d t κ Γ ( b b ¯ ) ν ¯ T g b ( π ¯ , u ¯ ) d t κ
+ Γ ( b σ b ¯ σ ) ν ¯ T g b σ ( π ¯ , u ¯ ) d t κ + 1 n ( α , β ) Γ ( b α β b ¯ α β ) ν ¯ T g b α β ( π ¯ , u ¯ ) d t κ
+ Γ ( c c ¯ ) ν ¯ T g c ( π ¯ , u ¯ ) d t κ ,
Γ γ ¯ T h ( π , v ¯ ) γ ¯ T h ( π ¯ , v ¯ ) d t κ Γ ( b b ¯ ) γ ¯ T h b ( π ¯ , v ¯ ) d t κ
+ Γ ( b σ b ¯ σ ) γ ¯ T h b σ ( π ¯ , v ¯ ) d t κ + 1 n ( α , β ) Γ ( b α β b ¯ α β ) γ ¯ T h b α β ( π ¯ , v ¯ ) d t κ
+ Γ ( c c ¯ ) γ ¯ T h c ( π ¯ , v ¯ s . ) d t κ ,
implying
Γ ν ¯ T g ( π , u ¯ ) + γ ¯ T h ( π , v ¯ ) d t κ Γ ν ¯ T g ( π ¯ , u ¯ ) + γ ¯ T h ( π ¯ , v ¯ ) d t κ
Γ ( b b ¯ ) ν ¯ T g b ( π ¯ , u ¯ ) + γ T h b ( π ¯ , v ¯ ) d t κ
+ Γ ( b σ b ¯ σ ) ν ¯ T g b σ ( π ¯ , u ¯ ) + γ ¯ T h b σ ( π ¯ , v ¯ ) d t κ
+ 1 n ( α , β ) Γ ( b α β b ¯ α β ) ν ¯ T g b α β ( π ¯ , u ¯ ) + γ ¯ T h b α β ( π ¯ , v ¯ ) d t κ
+ Γ ( c c ¯ ) ν ¯ T g c ( π ¯ , u ¯ ) + γ ¯ T h c ( π ¯ , v ¯ s . ) d t κ
= Γ ( b b ¯ ) f κ b ( π ¯ , w ¯ ) d t κ Γ ( b σ b ¯ σ ) f κ b σ ( π ¯ , w ¯ ) d t κ
1 n ( α , β ) Γ ( b α β b ¯ α β ) f κ b α β ( π ¯ , w ¯ ) d t κ Γ ( c c ¯ ) f κ c ( π ¯ , w ¯ ) d t κ ,
by considering (8). The previous inequality can be formulated as follows
Γ ( b b ¯ ) f κ b ( π ¯ , w ¯ ) d t κ + Γ ( b σ b ¯ σ ) f κ b σ ( π ¯ , w ¯ ) d t κ
+ 1 n ( α , β ) Γ ( b α β b ¯ α β ) f κ b α β ( π ¯ , w ¯ ) d t κ + Γ ( c c ¯ ) f κ c ( π ¯ , w ¯ ) d t κ
+ Γ ν ¯ T g ( π , u ¯ ) + γ ¯ T h ( π , v ¯ ) d t κ
Γ ( b ¯ b ¯ ) f κ b ( π ¯ , w ¯ ) d t κ + Γ ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w ¯ ) d t κ
+ 1 n ( α , β ) Γ ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ¯ ) d t κ + Γ ( c ¯ c ¯ ) f κ c ( π ¯ , w ¯ ) d t κ
+ Γ ν ¯ T g ( π ¯ , u ¯ ) + γ ¯ T h ( π ¯ , v ¯ ) d t κ ,
which involves the inequality
L ( ( b , c ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) , ( b , c ) B × C .
Furthermore, the following inequality is satisfied
Γ ν T g ( π ¯ , u ) d t κ + Γ γ T h ( π ¯ , v ) d t κ 0
for all ( ν , γ ) R + m × R n , ( u , v ) U × V and, using the feasibility of ( b ¯ , u ¯ ) , we obtain
Γ ν T g ( π ¯ , u ) d t κ + Γ γ T h ( π ¯ , v ) d t κ
Γ ν ¯ T g ( π ¯ , u ¯ ) d t κ + Γ γ ¯ T h ( π ¯ , v ¯ ) d t κ ,
or, equivalently,
Γ ( b ¯ b ¯ ) f κ b ( π ¯ , w ¯ ) d t κ + Γ ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w ¯ ) d t κ
+ 1 n ( α , β ) Γ ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ¯ ) d t κ + Γ ( c ¯ c ¯ ) f κ c ( π ¯ , w ¯ ) d t κ
Γ ν T g ( π ¯ , u ) d t κ + Γ γ T h ( π ¯ , v ) d t κ
Γ ( b ¯ b ¯ ) f κ b ( π ¯ , w ¯ ) d t κ + Γ ( b ¯ σ b ¯ σ ) f κ b σ ( π ¯ , w ¯ ) d t κ
+ 1 n ( α , β ) Γ ( b ¯ α β b ¯ α β ) f κ b α β ( π ¯ , w ¯ ) d t κ + Γ ( c ¯ c ¯ ) f κ c ( π ¯ , w ¯ ) d t κ
Γ ν ¯ T g ( π ¯ , u ¯ ) d t κ + Γ γ ¯ T h ( π ¯ , v ¯ ) d t κ ,
involving
L ( ( b ¯ , c ¯ ) , ν , γ , w , u , v ) L ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w , u ¯ , v ¯ ) , ν R + m , γ R n , ( u , v ) U × V .
Consequently, by ( 9 ) and ( 10 ) , we conclude that ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) is a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified multi-dimensional variational control problem ( P ) ( b ¯ , c ¯ ) , and the proof is completed. □
Illustrative application. Let us minimize the mechanical work performed by the variable force F ¯ ( c 2 ( t ) + w 1 , c 2 ( t ) + w 2 ) , including the uncertain parameters w κ W κ = [ 0 , 1 ] , κ = 1 , 2 , to move its point of application along the piecewise smooth curve Γ , contained in Θ = [ 0 , 3 ] 2 = [ 0 , 3 ] × [ 0 , 3 ] and joining the points t 0 = 0 , 0 and t 1 = 3 , 3 , such that the following constraints
u 1 ( b 2 ) ( b + 2 ) 0 , t = ( t 1 , t 2 ) Θ
b t 1 = 3 c + v 1 , t = ( t 1 , t 2 ) Θ
b t 2 = 3 c + v 2 , t = ( t 1 , t 2 ) Θ
b ( 0 , 0 ) = 1 , b ( 3 , 3 ) = 2 ,
are satisfied, where v ζ V ζ = [ 1 , 2 ] , ζ = 1 , 2 and u 1 U 1 = 1 2 , 1 .
To solve the previous problem, for m = 1 , n = p = 2 , we consider
f κ ( π , w ) d t κ = f 1 ( π , w ) d t 1 + f 2 ( π , w ) d t 2 = ( c 2 + w 1 ) ( t ) d t 1 + ( c 2 + w 2 ) d t 2
and the constrained robust control problem:
( P 1 ) min ( b ( · ) , c ( · ) ) Γ f κ ( π , w ) d t κ subject to u 1 ( b 2 ) ( b + 2 ) 0 , t = ( t 1 , t 2 ) Θ
b t 1 = 3 c + v 1 , t = ( t 1 , t 2 ) Θ
b t 2 = 3 c + v 2 , t = ( t 1 , t 2 ) Θ
b ( 0 , 0 ) = 1 , b ( 3 , 3 ) = 2 . ( 14 )
The robust counterpart of ( P 1 ) is formulated as follows:
( R P 1 ) min ( b ( · ) , c ( · ) ) Γ max w W f κ ( π , w ) d t κ subject to u 1 ( b 2 ) ( b + 2 ) 0 , u 1 U 1 , t = ( t 1 , t 2 ) Θ b t 1 = 3 c + v 1 , v 1 V 1 , t = ( t 1 , t 2 ) Θ b t 2 = 3 c + v 2 , v 2 V 2 , t = ( t 1 , t 2 ) Θ b ( 0 , 0 ) = 1 , b ( 3 , 3 ) = 2 .
Clearly, the set of all feasible solutions in ( R P 1 ) is
D = { ( b , c ) S × C : 2 b 2 , b t 1 = b t 2 , b ( 0 , 0 ) = 1 , b ( 3 , 3 ) = 2 ,
t Θ , u 1 U 1 , v ζ V ζ , ζ = 1 , 2 } .
Now, we are interested in finding a weak robust optimal solution to the problem ( P 1 ) . This means that we must find the control function c ¯ : Θ R (that determines the state function b ¯ : Θ R ), which satisfies the dynamical system (11), (12) and (13) with respect to the boundary conditions (14). Additionally, we assume that the state function is affine.
Let ( b ¯ , c ¯ ) D be a weak robust optimal solution to the problem ( P 1 ) and consider max w W f κ ( π , w ) = f κ ( π , w ¯ ) , κ = 1 , 2 ¯ . Then, according to Theorem 1, there exists the scalar μ ¯ R , the piecewise smooth functions ν ¯ = ν ¯ 1 ( t ) R + , γ ¯ = ( γ ¯ 1 ( t ) , γ ¯ 2 ( t ) ) R 2 , and the uncertainty parameters u ¯ 1 U 1 and v ¯ ζ V ζ , ζ = 1 , 2 , such that the following conditions
2 ν ¯ 1 u ¯ 1 b ¯ + γ ¯ 1 t 1 + γ ¯ 2 t 2 = 0 ,
2 μ ¯ c ¯ γ ¯ 1 γ ¯ 2 = 0 ,
ν ¯ 1 u ¯ 1 ( b ¯ 2 4 ) = 0 , ν ¯ 1 0 , μ ¯ 0
hold for all t Θ , except at discontinuities.
One can easily verify that the robust necessary optimality conditions (15)–(17) are satisfied at ( b ¯ , c ¯ ) = 1 6 ( t 1 + t 2 ) + 1 , 29 6 , with the Lagrange multipliers μ ¯ = 1 , ν ¯ 1 = 0 , γ ¯ 1 + γ ¯ 2 = d 1 + d 2 (with d 1 + d 2 = μ ¯ 17 3 + v ¯ 1 + v ¯ 2 ) and the uncertain parameters w ¯ 1 = w 2 = u ¯ 1 = 1 , v ¯ 1 = v ¯ 2 = 2 [ 1 , 2 ] . Further, it can also be easily verified that the objective functional Γ f κ ( π , w ¯ ) d t κ is convex at ( b ¯ , c ¯ ) and that ( ( b ¯ , c ¯ ) , ν ¯ , γ ¯ , w ¯ , u ¯ , v ¯ ) is a robust saddle-point for the Lagrange functional L ( ( b , c ) , ν , γ , w , u , v ) associated with the modified multi-dimensional variational control problem
( P 1 ) ( b ¯ , c ¯ ) min ( b ( · ) , c ( · ) ) Γ 29 3 + w 1 c 29 6 d t 1 + 29 3 + w 2 c 29 6 d t 2 subject to u 1 ( b 2 ) ( b + 2 ) 0 , t = ( t 1 , t 2 ) Θ b t 1 = 3 c + v 1 , t = ( t 1 , t 2 ) Θ b t 2 = 3 c + v 2 , t = ( t 1 , t 2 ) Θ b ( 0 , 0 ) = 1 , b ( 3 , 3 ) = 2 .
Hence, all the conditions of Theorem 2 are satisfied, which ensures that ( b ¯ , c ¯ ) = 1 6 ( t 1 + t 2 ) + 1 , 29 6 is a weak robust optimal solution to the problem ( P 1 ) .

4. Conclusions and Further Development

In this paper, by considering path-independent curvilinear integral cost functionals with mixed (equality and inequality) constraints implying data uncertainty and second-order partial derivatives, we have introduced new classes of robust optimization problems. More precisely, by using the notion of convexity for curvilinear integral functionals, the concept of a normal weak robust optimal solution and the robust saddle-point of a considered Lagrange functional, we have established some characterization results of the problems under study.
As an immediate subsequent development of the results presented in this paper, the author mentions the study of well-posedness for the considered classes of robust control problems.

Author Contributions

Conceptualization, S.T.; Methodology, K.D. Both authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Mititelu, Ş. Optimality and duality for invex multi-dimensional control problems with mixed constraints. J. Adv. Math. Stud. 2009, 2, 25–34. [Google Scholar]
  2. Treanţă, S. Second-Order PDE Constrained Controlled Optimization Problems With Application in Mechanics. Mathematics 2021, 9, 1472. [Google Scholar] [CrossRef]
  3. Treanţă, S. On a Class of Second-Order PDE&PDI Constrained Robust Modified Optimization Problems. Mathematics 2021, 9, 1473. [Google Scholar]
  4. Treanţă, S. On a class of isoperimetric constrained controlled optimization problems. Axioms 2021, 10, 112. [Google Scholar] [CrossRef]
  5. Mititelu, Ş.; Treanţă, S. Efficiency conditions in vector control problems governed by multiple integrals. J. Appl. Math. Comput. 2018, 57, 647–665. [Google Scholar] [CrossRef]
  6. Olteanu, O.; Treanţă, S. Convexity, Optimization and Approximation, with Some Applications; LAP Lambert Academic Publishing: Chisinau, Republic of Moldova, 2018; ISBN 978–613-9-87683-9. [Google Scholar]
  7. Preeti; Jayswal, A.; Arana-Jiménez, M. Robust saddle-point criteria for multi-dimensional optimization problems with data uncertainty. Int. J. Control 2020. [Google Scholar] [CrossRef]
  8. Jayswal, A.; Antczak, T.; Jha, S. On equivalence between a variational problem and its modified variational problem with the η-objective function under invexity. Int. Trans. Oper. Res. 2019, 26, 2053–2070. [Google Scholar] [CrossRef]
  9. Treanţă, S. Saddle-point optimality criteria in modified variational control problems with PDE constraints. Optim. Control Appl. Meth. 2020, 41, 1160–1175. [Google Scholar] [CrossRef]
  10. Treanţă, S. On modified interval-valued variational control problems with first-order PDE constraints. Symmetry 2020, 12, 472. [Google Scholar] [CrossRef] [Green Version]
  11. Treanţă, S. On a modified optimal control problem with first-order PDE constraints and the associated saddle-point optimality criterion. Eur. J. Control 2020, 51, 1–9. [Google Scholar] [CrossRef]
  12. Treanţă, S. Saddle-point optimality criteria involving (ρ,b,d)-invexity and (ρ,b,d)-pseudoinvexity in interval-valued optimization problems. Int. J. Control 2021. [Google Scholar] [CrossRef]
  13. Wei, H.Z.; Chen, C.R.; Li, S.J. Characterizations for optimality conditions of general robust optimization problems. J. Optim. Theory Appl. 2018, 177, 835–856. [Google Scholar] [CrossRef]
  14. Liu, X.W.; Yuan, Y.X. A robust algorithm for optimization with general equality and inequality constraints. SIAM J. Sci. Comput. 2000, 22, 517–534. [Google Scholar] [CrossRef]
  15. Jeyakumar, V.; Wang, J.H.; Li, G. Lagrange multiplier characterizations of robust best approximations under constraint data uncertainty. J. Math. Anal. Appl. 2012, 393, 285–297. [Google Scholar] [CrossRef] [Green Version]
  16. Sun, X.K.; Teo, K.L.; Zeng, J.; Guo, X.L. On approximate solutions and saddle point theorems for robust convex optimization. Optim. Lett. 2020, 14, 1711–1730. [Google Scholar] [CrossRef]
  17. Lu, Z.; Zhu, Y.; Lu, Q. Stability analysis of nonlinear uncertain fractional differential equations with Caputo derivative. Fractals 2021, 29, 2150057. [Google Scholar] [CrossRef]
  18. Treanţă, S. Efficiency in uncertain variational control problems. Neural Comput. Appl. 2021, 33, 5719–5732. [Google Scholar] [CrossRef]
  19. Zaslavski, A.J. Convergence of extremals of variational problems on large intervals. Adv. Nonlinear Stud. 2015, 15, 221–240. [Google Scholar] [CrossRef]
  20. Geldhauser, C.; Valdinoci, E. Optimizing the fractional power in a model with stochastic PDE constraints. Adv. Nonlinear Stud. 2018, 18, 649–669. [Google Scholar] [CrossRef] [Green Version]
  21. Babaniyi, O.; Jadamba, B.; Khan, A.A.; Richards, M.; Sama, M.; Tammer, C. Three optimization formulations for an inverse problem in saddle point problems with applications to elasticity imaging of locating tumor in incompressible medium. J. Nonlinear Var. Anal. 2020, 4, 301–318. [Google Scholar]
  22. Debnath, I.P.; Qin, X. Robust optimality and duality for minimax fractional programming problems with support functions. J. Nonlinear Funct. Anal. 2021, 2021, 5. [Google Scholar]
  23. Saunders, D.J. The Geometry of Jet Bundles; London Mathematical Society Lecture Note Series, 142; Cambridge University Press: Cambridge, UK, 1989. [Google Scholar]
  24. Treanţă, S. Constrained variational problems governed by second-order Lagrangians. Appl. Anal. 2020, 99, 1467–1484. [Google Scholar] [CrossRef]
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Treanţă, S.; Das, K. On Robust Saddle-Point Criterion in Optimization Problems with Curvilinear Integral Functionals. Mathematics 2021, 9, 1790. https://doi.org/10.3390/math9151790

AMA Style

Treanţă S, Das K. On Robust Saddle-Point Criterion in Optimization Problems with Curvilinear Integral Functionals. Mathematics. 2021; 9(15):1790. https://doi.org/10.3390/math9151790

Chicago/Turabian Style

Treanţă, Savin, and Koushik Das. 2021. "On Robust Saddle-Point Criterion in Optimization Problems with Curvilinear Integral Functionals" Mathematics 9, no. 15: 1790. https://doi.org/10.3390/math9151790

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop