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Article

Optimal Approximate Solution of Coincidence Point Equations in Fuzzy Metric Spaces

1
Department of Mathematics, University of Management and Technology, C-II Johar Town, Lahore 54000, Pakistan
2
Department of Mathematics, Government College University, Lahore 54000, Pakistan
3
Department of Mathematics and Applied Mathematics, University of Pretoria, Pretoria 0002, South Africa
4
Institute of Research and Development of Processes IIDP, Faculty of Science and Technology, University of the Basque Country, P.O. Box 644 de Bilbao, Barrio Sarriena, 48940 Leioa (Bizkaia), Spain
*
Authors to whom correspondence should be addressed.
Mathematics 2019, 7(4), 327; https://doi.org/10.3390/math7040327
Submission received: 28 February 2019 / Revised: 26 March 2019 / Accepted: 29 March 2019 / Published: 3 April 2019
(This article belongs to the Special Issue Applications in Theoretical and Computational Fixed Point Problems)

Abstract

:
The purpose of this paper is to introduce α f -proximal H -contraction of the first and second kind in the setup of complete fuzzy metric space and to obtain optimal coincidence point results. The obtained results unify, extend and generalize various comparable results in the literature. We also present some examples to support the results obtained herein.

1. Introduction and Preliminaries

Several nonlinear problems arising in various branches of mathematics, engineering, economics, physics, astronomy, biology and economics can be formulated as a fixed point problem of the form f x = x , where f is a nonlinear operator defined on a set equipped with some topological structure. Due to an equivalence among fixed point problem and integral and differential equation problem, variational inequality problem and optimization problems attracted the attention of researchers [1,2,3]. The Banach [4] contraction principle is one of the significant tools for solving such problems.
On the other hand, fixed point equation T x = x has no solution if T : A B , where A and B are any nonempty disjoint subsets of a metric space ( X , d ) . It is then natural to find a point x A such that the error between x and T x is minimum. Such a point is called an approximate solution of a fixed point equation.
A study of necessary conditions to guarantee the existence of an approximate solution of fixed point equations has its due importance in fixed point theory. Among approximate solutions, finding an optimal solution is an active research area.
A point x in A which satisfies d ( x , T x ) = d ( A , B ) is called a best proximity point of T and the pair ( x , T x ) is called a best proximity pair. A best proximity point x in A indeed solves the following optimization problem:
min x A d ( x , T x ) .
Best proximity pair theorem deals with the conditions which guarantee the solution of optimization problem given above. Clearly, if sets A and B are not disjoint or identical, then best proximity point and fixed point problem of mapping T become equivalent and hence best proximity point results are a potential generalization of fixed point results.
A classical best approximation result by K. Fan in [5] reads as follows: Let T : A X be a continuous mapping, where A is nonempty compact convex subset of a Banach space then T has approximate fixed point in A. For more results, see [6,7,8,9].
On the other hand, a framework of probabilistic metric spaces is a matter of great interest for engineers, social scientist and mathematicians, see, for example, [10,11,12,13]. Kramosil and Michalek [14] proposed the concept of fuzzy metric space. In [15] using continues t-norm, the concept of fuzzy metric spaces was modified. This modification can be viewed as a generalization of probabilistic metric space to fuzzy case (see [14]).
For some interesting fixed point results in the setup of fuzzy metric space, we refer the reader to [16,17,18]. Vetro and Salimi [19] studied best proximity point theorems in the framework of non-Archimedean fuzzy metric spaces—see also [20,21].
This paper deals with the problem of finding an optimal approximate solution of coincidence point equation in the framework of fuzzy metric spaces. We study necessary conditions which guarantee the existence and uniqueness of such solutions. The main focus lies on introducing general contractive conditions on operators T and g so that the solution is guaranteed. This paper is divided into four sections: some known definitions, lemmas and important results are discussed in the first section. In the second section, optimal coincidence best proximity point results in complete fuzzy metric space are studied. In the next section, we obtain similar results in complete ordered fuzzy metric space. Section 4 is devoted to the applications of obtained results in fixed point theory. Conclusions are given in the last section.
In this section, some basic definitions and known results are discussed which will be needed in the sequel.
Definition 1.
A commutative and associative binary operation ∗ on [ 0 , 1 ] is called t n o r m if α 1 = α and α β γ δ whenever α γ and β δ holds true, for any α , β , γ , δ [ 0 , 1 ] . Moreover, if ∗ is a continuous mapping, then ∗ is called a continuous t-norm [10].
Define binary operations , . , and L on [ 0 , 1 ] by a b = min { a , b } , a · b = a b , and a L b = max { a + b 1 , 0 } . Note that , . , and L are continuous t-norms, called m i n , p r o d u c t and L u k a s i e w i c z t-norms, respectively. Furthermore, L · .
Definition 2.
A fuzzy set M on X × X × [ 0 , ) is called a fuzzy metric (compare [22]) if:
(i) 
M ( x , y , t ) is positive,
(ii) 
M ( x , y , t ) = 1 x = y ,
(iii) 
M ( y , x , t ) = M ( x , y , t ) ,
(iv) 
M ( x , z , t + s ) M ( x , y , t ) M ( y , z , s ) ,
(v) 
M ( x , y , · ) : [ 0 , ) [ 0 , 1 ] is left continuous,
for any x , y , z X , and t , s > 0 , where X is a nonempty set and ∗ is continuous t-norm. The triplet ( X , M , ) is said to be a fuzzy metric space.
In the above definition, if
M ( x , z , t + s ) M ( x , y , t ) M ( y , z , s ) for all t , s > 0 ,
is replaced with
M ( x , z , max { t , s } ) M ( x , y , t ) M ( y , z , s ) for all t , s > 0 ,
then M is called non-Archimedean fuzzy metric on X .
Since M is a fuzzy set on X 2 × [ 0 , ) and M ( x , y , t ) is regarded as the degree of closeness of x and y with respect to t 0 .
Furthermore, M ( x , y , · ) is a nondecreasing function on ( 0 , ) , for each x , y X [23].
The set
B M ( x , ε , t ) = { y X : M ( x , y , t ) > 1 ε }
is an open M ball in X , where x X , ε ( 0 , 1 ) , t > 0 . Note that fuzzy metric M induces Hausdorff topology on X . A sequence { x n } converges to an element x in fuzzy metric space X ( with respect to τ M ) if and only if lim n M ( x n , x , t ) = 1 for all t > 0 . A sequence { x n } is a Cauchy sequence in a fuzzy metric space X if, for each t > 0 and ε ( 0 , 1 ) , there exists n 0 N such that M ( x n , x m , t ) > 1 ε for all n , m n 0 . If every Cauchy sequence in a fuzzy metric space X is convergent, then X is called a complete. If the limit of any convergent sequence in A belongs to A, then A is closed. If each sequence in A has a convergent subsequence, then A is compact.
Define a fuzzy metric M d on a given metric space ( X , d ) by
M d ( x , y , t ) = t t + d ( x , y ) .
Then, ( X , M d , · ) is called standard fuzzy metric space [15].
Let A and B be nonempty subsets of a fuzzy metric space X . Then,
M ( x , A , t ) = sup a A M ( x , a , t ) , for t > 0
gives distance of a point x X from A . Moreover,
M ( A , B , t ) = sup { M ( a , b , t ) : a A , b B } .
is the distance between A and B . Consider a coincidence point equation g x = T x . A point x in A is said to be an optimal solution of coincidence point equation T x = g x , if
M ( g x , T x , t ) = M ( A , B , t )
holds [20].
Definition 3.
[19] Let x X and t > 0 . Define A 0 ( t ) and B 0 ( t ) as follows:
A 0 ( t ) = { x A : M ( x , y , t ) = M ( A , B , t ) for some y B } , and B 0 ( t ) = { y B : M ( x , y , t ) = M ( A , B , t ) for some x A } .
Definition 4.
[20] Let f : be a self mapping on A if M ( f x , f y , t ) M ( x , y , t ) for any x , y A and t > 0 then f is called fuzzy expansive.
If, in the above definition, inequality is replaced with equality, then f is called fuzzy isometry.
Definition 5.
[20] A set B is said to be fuzzy approximately compact with respect to A if for every sequence { y n } in B and for some x A , M ( x , y n , t ) M ( x , B , t ) implies that x A 0 ( t ) .
Wardowski [18] defined a class H of mapping that consists upon the mappings η : ( 0 , 1 ] [ 0 , ) , where η is continuous and strictly decreasing on [ 0 , 1 ] . It follows from the definition of H that η ( 1 ) = 0 for any η H .
Definition 6.
[18] A sequence { x n } in a fuzzy metric space ( X , M , ) is said to be M-Cauchy if, for every ϵ ( 0 , 1 ) , t > 0 , there exists n 0 N such that
η ( M ( x m , x n , t ) ) < ϵ
for all m , n n 0 , where η H .
Definition 7.
A mapping T : X X is said to be (a) α admissible if α ( x , y , t ) 1 implies that α ( T x , T y , t ) 1 ; (b) α R -admissible if
α ( T x , T y , t ) 1 that implies α ( x , y , t ) 1 .
Definition 8.
A sequence { x n } in X converging to an element x X is said to be α-regular if for α ( x n , x n + 1 , t ) 1 , we have a subsequence { x n k } of { x n } such that α ( x n k , x , t ) 1 holds for all k N .
Proposition 1.
A set A is said to be α-complete, if, for any sequence, { y n } in A with α ( y n , y n + 1 , t ) 1 and y n y 0 as n implies α ( y n , y 0 , t ) 1 .
Definition 9.
A mapping T : A B is said to be α f -proximal admissible mapping if for any x , y , u , v A and t > 0 ,
α ( x , y , t ) 1 M ( u , T x , t ) = M ( A , B , t ) M ( v , T y , t ) = M ( A , B , t ) α ( u , v , t ) 1 .
Definition 10.
A mapping T : A B is said to be an α f -proximal H -contraction of first kind if for any u , v , x , y in A and t > 0 , there exists a function η H such that
  M ( u , T x , t ) = M ( A , B , t ) M ( v , T y , t ) = M ( A , B , t ) α ( x , y , t ) η ( M ( u , v , t ) ) k [ η ( M ( x , y , t ) ) ] .
Definition 11.
Let g : A A . A mapping T : A B is said to be an α f -proximal H -contraction of second kind if for any u , v , x , y in A and t > 0 , there exists a function η H such that
  M ( g u , T x , t ) = M ( A , B , t ) M ( g v , T y , t ) = M ( A , B , t ) α ( g x , g y , t ) η ( M ( g u , g v , t ) ) k [ η ( M ( x , y , t ) ] ) .
In the above definition, if we take g = I A , then α f -proximal H contraction of second kind becomes α f -proximal H contraction of first kind.

2. Optimal Coincidence Point Solution in Fuzzy Metric Spaces

We start with the following result.
Lemma 1.
Let T : A B be an α f -proximal admissible mapping. Suppose that A 0 ( t ) ϕ and T ( A 0 ( t ) ) B 0 ( t ) . If there exists x 0 , x 1 A 0 ( t ) such that M ( x 1 , T x 0 , t ) = M ( A , B , t ) and α ( x 0 , x 1 , t ) 1 , then starting with x 0 in A 0 ( t ) , we may find a sequence { x n } A 0 ( t ) such that
M ( x n + 1 , T x n , t ) = M ( A , B , t ) and α ( x n + 1 , x n , t ) 1 for all n N .
Proof. 
By given assumption, T x 1 T ( A 0 ( t ) ) B 0 ( t ) , there exists x 2 A such that M ( x 2 , T x 1 , t ) = M ( A , B , t ) and hence x 2 A 0 ( t ) . Thus, we have
α ( x 0 , x 1 , t ) 1 , M ( x 1 , T x 0 , t ) = M ( A , B , t ) and M ( x 2 , T x 1 , t ) = M ( A , B , t ) .
As T is α f -proximal admissible mapping, we obtain that α ( x 1 , x 2 , t ) 1 . Continuing this way, we obtain a sequence { x n } A 0 ( t ) which satisfies condition (1). □
Definition 12.
A sequence { x n } A 0 ( t ) satisfying condition (1) is called ( α , T ) -proximal fuzzy sequence starting with x 0 A 0 ( t ) .
Definition 13.
A set A 0 ( t ) is called proximal ( α , T ) -complete if and only if every ( α , T ) -proximal fuzzy Cauchy sequence starting with some x 0 A 0 ( t ) converges to an element in A 0 ( t ) .
We also need following Lemma in the sequel.
Lemma 2.
Let T : A B , where A and B are nonempty closed subsets of a complete fuzzy metric space X, if A 0 ( t ) and T ( A 0 ( t ) ) B 0 ( t ) . Then, the set A 0 ( t ) is proximal ( α , T ) -complete provided that B is approximately compact with respect to A.
Proof. 
Let x 0 be a given point in A 0 ( t ) and { x n } a ( α , T ) -proximal fuzzy Cauchy sequence starting with some x 0 A 0 ( t ) , that is,
M ( x n , T x n 1 , t ) = M ( A , B , t ) with α ( x n , x n 1 , t ) 1 .
Since ( X , M , ) is complete and A is closed, there exist an element x in A such that lim n M ( x n , x , t ) = 1 . Furthermore,
M ( x n , B , t ) M ( x n , T x n 1 , t ) = M ( A , B , t ) M ( x n , B , t ) .
On taking limit as n on both sides of the above inequality, we have
M ( x , B , t ) M ( x , T x , t ) M ( x , B , t ) ,
which implies that
M ( x , B , t ) = M ( x , T x , t ) .
Taking y n = T x for all n N and using the assumption that B is approximately compact with respect to A , we have x A 0 ( t ) .  □
Theorem 1.
Let g : A A be a one to one fuzzy expansive and α R -admissible mapping with A 0 ( t ) g ( A 0 ( t ) ) for any t > 0 . Suppose that a continuous mapping T : A B is α f -proximal H -contraction of second kind and α f -proximal admissible mapping with T ( A 0 ( t ) ) B 0 ( t ) , where B is fuzzy approximately compact with respect to A . If there exists x 0 , x 1 A 0 ( t ) such that M ( g x 1 , T x 0 , t ) = M ( A , B , t ) and α ( x 0 , x 1 , t ) 1 . Then, mappings g and T have a unique optimal coincidence point x in A 0 ( t ) .
Proof. 
Let x 0 , x 1 be a given point in A 0 ( t ) such that M ( g x 1 , T x 0 , t ) = M ( A , B , t ) and α ( x 0 , x 1 , t ) 1 . Since T ( A 0 ( t ) ) B 0 ( t ) and A 0 ( t ) g ( A 0 ( t ) ) for any t > 0 , it follows that there exists an element x 2 in A 0 ( t ) g ( A 0 ( t ) ) such that M ( g x 2 , T x 1 , t ) = M ( A , B , t ) . Since T is α f -proximal admissible mapping and g is α R -admissible mapping, α ( g x 1 , g x 2 , t ) 1 implies that α ( x 1 , x 2 , t ) 1 . Continuing this way, we can obtain a sequence { g x n } in A 0 ( t ) such that the following holds true:
M ( g x n + 1 , T x n , t ) = M ( A , B , t ) = M ( g x n + 2 , T x n + 1 , t ) with α ( x n , x n + 1 , t ) 1 and α ( x n + 1 , x n + 2 , t ) 1 ,
which implies that
η ( M ( x n + 1 , x n + 2 , t ) ) η ( M ( g x n + 1 , g x n + 2 , t ) ) α ( x n , x n + 1 , t ) η ( M ( g x n + 1 , g x n + 2 , t ) ) k η ( M ( x n , x n + 1 , t ) ) .
In addition,
M ( g x n , T x n 1 , t ) = M ( A , B , t ) = M ( g x n + 1 , T x n , t )
implies that
η ( M ( x n , x n + 1 , t ) ) η ( M ( g x n , g x n + 1 , t ) ) α ( x n 1 , x n , t ) η ( M ( g x n , g x n + 1 , t ) ) k η ( M ( x n 1 , x n , t ) ) .
From Labels (3) and (2), we have
η ( M ( x n + 1 , x n + 2 , t ) ) η ( M ( g x n + 1 , g x n + 2 , t ) ) α ( x n , x n + 1 , t ) η ( M ( g x n + 1 , g x n + 2 , t ) ) k η ( M ( x n , x n + 1 , t ) ) k 2 η ( M ( x n 2 , x n 1 , t ) ) .
Continuing on the same lines, we obtain
η ( M ( x n + 1 , x n + 2 , t ) ) η ( M ( g x n + 1 , g x n + 2 , t ) ) α ( x n , x n + 1 , t ) η ( M ( g x n + 1 , g x n + 2 , t ) ) k η ( M ( x n , x n + 1 , t ) ) k 2 η ( M ( x n 2 , x n 1 , t ) ) k n + 1 η ( M ( x 0 , x 1 , t ) ) .
Since k ( 0 , 1 ) and η is strictly decreasing, we have
η ( M ( x n + 1 , x n + 2 , t ) ) η ( M ( g x n + 1 , g x n + 2 , t ) ) k n + 1 η ( M ( x 0 , x 1 , t ) ) < η ( M ( x 0 , x 1 , t ) )
and
M ( x n + 1 , x n + 2 , t ) M ( x 0 , x 1 , t ) > 0 , n N , t > 0 .
Now, consider any n , m N , m < n , and { a i } i N be a strictly decreasing sequence of positive numbers such that i = 1 a i = 1 . Then, we have
M ( x m , x n , t ) M ( g x m , g x n , t ) M ( g x m , g x m , t i = m n 1 a i t ) M ( g x m , g x n , i = m n 1 a i t ) 1 M ( g x m , g x m + 1 , a m t ) M ( g x m + 1 , g x m + 2 , a m + 1 t ) M ( g x n 1 , g x n , a n 1 t ) i = m n 1 M ( g x i , g x i + 1 , a i t ) .
Thus,
η ( M ( g x m , g x n , t ) ) η ( i = m n 1 M ( g x i , g x i + 1 , a i t ) ) i = m n 1 η ( M ( g x i , g x i + 1 , a i t ) ) i = m n 1 k i η ( M ( g x 0 , g x 1 , t ) ) , m , n N , m < n , t > 0 .
The above sum is finite, and η ( M ( g x 0 , g x 1 , a i t ) i N is non-decreasing and η ( M ( g x i , g x j , t i ) ) is bounded, hence the series i = 1 k i η ( M ( g x 0 , g x 1 , t ) ) is convergent. Consequently, for some ϵ > 0 , there exist n 0 N such that i = 1 k i η ( M ( g x 0 , g x 1 , t ) ) < ϵ and
η ( M ( g x m , g x n , t ) ) i = m n 1 k i η ( M ( g x 0 , g x 1 , t ) < ϵ , m , n n 0 , m < n , t > 0 .
Hence, { g x n } is a M-Cauchy sequence in A 0 ( t ) . Furthermore, A 0 ( t ) is closed. As A 0 ( t ) is proximal ( α , T ) -complete (Lemma 2), the sequence { g x n } converges to some element g x in A 0 ( t ) , that is,
lim n M ( g x n , g x , t ) = 1 .
Now,
M ( g x n , B , t ) M ( g x n , T x n + 1 , t ) = M ( A , B , t ) M ( g x n , B , t )
implies that
M ( g x , B , t ) M ( g x , T x , t ) M ( g x , B , t ) .
Take y n = T x (say) in B . As g is continuous, the sequence { g x n } converges to g x , and M ( g x , y n , t ) M ( g x , B , t ) . Since B is fuzzy approximately compact with respect to A , g x A 0 ( t ) . Since A 0 g ( A 0 ) , there exist some u A 0 ( t ) such that
M ( g u , T x , t ) = M ( A , B , t ) = M ( g x n + 1 , T x n , t ) for all n N .
Since α ( x n , x n 1 , t ) 1 and T is α f -proximal admissible mapping, hence α ( g x n + 1 , g x n , t ) 1 and { g x n } converges to g x . Since A 0 ( t ) is proximal ( α , T ) -complete, we therefore have α ( g x , g x n , t ) 1 . In addition, g is α R -admissible mapping, which implies that α ( x , x n , t ) 1 . As { g , T } is α f -proximal H contraction of second kind and g is a fuzzy expansive mapping, we have
α ( x , x n , t ) η ( M ( g u , g x n + 1 , t ) ) k ( η ( M ( x , x n , t ) ) ) .
Taking limit as n on both sides of the above inequality, we obtain g u = g x . Furthermore, g is one to one and hence u = x . Thus,
M ( g x , T x , t ) = M ( g u , T x , t ) = M ( A , B , t )
gives that x is the optimal coincidence point of the pair { g , T } .
Uniqueness: Let y be another optimal coincidence point of mappings g, and T in A 0 ( t ) , then
M ( g x , T x , t ) = M ( A , B , t ) and M ( g y , T y , t ) = M ( A , B , t ) , α ( x , y , t ) 1 .
Since { g , T } is α f -proximal H -contraction of second kind and g is fuzzy expansive, so
η ( M ( g x , g y , t ) ) α ( x , y , t ) η ( M ( g x , g y , t ) ) k ( η ( M ( x , y , t ) ) ) < η ( M ( x , y , t ) ) ,
a contradiction—hence the result. □
Example 1.
Let X = [ 0 , 1 ] × R , A = { ( 0 , x ) : x 0 and x R } and B = { ( 1 , y ) : y 0 and y R } . Then,
M d ( A , B , t ) = t t + 1 , A 0 ( t ) = { ( 0 , 0 ) } and B 0 ( t ) = { ( 1 , 0 ) } .
Define T : A B and g : A A by:
T ( x , 0 ) = ( 1 , x 4 ) and g ( 0 , x ) = ( 0 , 4 x ) .
In addition, consider η ( t ) = 1 t 1 , t ( 0 , 1 ] and α : X × X × ( 0 , ) by
α ( x , y , t ) = 1 , x , y [ 0 , ) , 0 , otherwise .
Obviously, T ( A 0 ( t ) ) = B 0 ( t ) and A 0 ( t ) = g ( A 0 ( t ) ) . Note that the points u = ( 0 , x 1 ) , v = ( 0 , x 2 ) , x = ( 0 , y 1 ) and y = ( 0 , y 2 ) in A satisfies M ( g u , T x , t ) = M ( A , B , t ) and M ( g v , T y , t ) = M ( A , B , t ) if x 1 = y 1 16 and x 2 = y 2 16 . Under these circumstances, T becomes α f -proximal H -contraction of second kind. Thus, all of the conditions of the Theorem (1) are satisfied. Moreover, ( 0 , 0 ) is an unique optimal coincidence point of ( g , T ) in A 0 ( t ) .
Theorem 2.
Let T : A B be a continuous α f -proximal H -contraction of first kind and α f -proximal admissible mapping with T ( A 0 ( t ) ) B 0 ( t ) for any t > 0 . If there exists x 0 , x 1 A 0 ( t ) such that M ( x 1 , T x 0 , t ) = M ( A , B , t ) and α ( x 0 , x 1 , t ) 1 , then the mapping T has a unique best proximity point x in A 0 ( t ) provided that A 0 ( t ) is proximal ( α , T ) -complete and B is fuzzy approximately compact with respect to A.
Proof. 
By taking g = I A in Theorem (1). In this case, α f -proximal H -contraction of second kind becomes an α f -proximal H -contraction of first kind and the result follows. □
Corollary 1.
Let g : A A be a one to one fuzzy non-expansive mapping and T : A B with A 0 ( t ) ϕ , T ( A 0 ( t ) ) B 0 ( t ) , A 0 ( t ) g ( A 0 ( t ) ) for any t > 0 . If A 0 ( t ) is proximal ( α , T ) -complete and B is fuzzy approximately compact with respect to A, the pair ( g , T ) further satisfies the following implication:
M ( g u , T x , t ) = M ( A , B , t ) M ( g v , T y , t ) = M ( A , B , t ) implies that η ( M ( g u , g v , t ) ) k η ( M ( x , y , t ) ) ,
where η H . Then, the pair ( g , T ) has a unique optimal coincidence point x in A 0 ( t ) .
Proof. 
Take α ( x , y , t ) = 1 for all x , y A 0 ( t ) and t > 0 in Theorem (1). The proof follows under the same lines as in Theorem (1). □

3. Optimal Coincidence Point and Approximation Results in Ordered Structures

In this section, we will provide results in ordered metric spaces.
Let ( X , M , ) is a fuzzy metric space and ( X , ) is a partially ordered set. Then, ( X , M , , ) is known as a partially ordered fuzzy metric space. In the sequel sets, A and B are assumed to be nonempty closed subsets of ( X , M , , ) .
A nonempty set X is called partially ordered fuzzy metric space if ( X , M , ) is a fuzzy metric space and ⪯ is a partial order on X . Suppose that A and B are subsets of a partially ordered fuzzy metric space X .
Definition 14.
[24] A mapping T : A B is called (a) nondecreasing or order preserving if for any x , y in A with x y , we have T x T y (b) an ordered reversing if, for any x , y in A with x y , we have T x T y (c) monotone if it is order preserving or order reversing.
Definition 15.
[21] A mapping T : A B is called proximal fuzzy order preserving (proximal fuzzy order reversing), if:
x y M ( u , T x , t ) = M ( A , B , t ) M ( v , T y , t ) = M ( A , B , t ) u v   ( u v ) ,   f o r   a n y   u , v , x   a n d   y   i n   A
If A = B in the above definition, then proximal fuzzy order preserving (proximal fuzzy order reversing) mapping will become order preserving (order reversing).
Lemma 3.
Let A 0 ( t ) and T ( A 0 ( t ) ) B 0 ( t ) . Then, for a A 0 ( t ) , there exists a sequence { x n } A 0 ( t ) such that
x 0 = a , M ( x n + 1 , T x n , t ) = M ( A , B , t ) , for all n N with ( x n , x n + 1 ) Δ .
Proof. 
Define the function α : A × A × [ 0 , ) [ 0 , ) by
α ( x , y , t ) = 1 , if ( x , y ) Δ , 0 , otherwise .
By the set Δ , we mean the collection of x , y X such that either x y or y x . From Equation (1), by taking the above function, we obtain a sequence which satisfies the condition Equation (4). □
Definition 16.
[21] A sequence { x n } A 0 ( t ) satisfying the condition (4) is called ordered proximal Picard sequence starting with a A 0 ( t ) .
Definition 17.
[21] A set A 0 ( t ) is ordered proximal T-orbitally complete if and only if every ordered proximal Picard Cauchy sequence { x n } starting with x 0 A 0 ( t ) converges to an element in the set A 0 ( t ) .
Lemma 4.
Let T : A B be continuous, fuzzy proximally monotone and α f -proximal H -contraction of first kind with A 0 ( t ) and T ( A 0 ( t ) ) B 0 ( t ) . Suppose that each pair of elements in partially ordered complete fuzzy metric spaces ( X , M , , ) has a lower and upper bound. Then, A 0 ( t ) is fuzzy proximal T-orbitally complete provided that T is one to one on A 0 ( t ) and there exists a function α : A × A × [ 0 , ) [ 0 , ) such that ( x , y ) Δ and α ( x , y , t ) 1 for all x , y A .
Proof. 
Consider a function α : A × A × [ 0 , ) [ 0 , ) defined in Equation (5). Let x 0 be a given point in A 0 ( t ) and { x n } be an ordered proximal Picard Cauchy sequence starting with x 0 . As ( X , M , , ) is complete ordered fuzzy metric space and A is closed, there exist some x in A such that lim n M ( x n , x , t ) = 1 . By definition of ordered proximal Picard sequence { x n } , we have
M ( x n , T x n 1 , t ) = d ( A , B ) and M ( x n + 1 , T x n , t ) = M ( A , B , t ) with ( x n 1 , x n ) Δ
for all n N . Since T is a α f -proximal H -contraction of first kind and function α ( x , y , t ) defined in Equation (5) agrees with the α f proximal admissible mapping defined on A × A , the rest of the proof follows on the same lines given in Equation (2). □
Theorem 3.
Let T : A B be continuous, proximally monotone and α f -proximal H -contraction of first kind with A 0 ( t ) ϕ and T ( A 0 ( t ) ) B 0 ( t ) . Suppose that each pair of elements in partially ordered complete fuzzy metric spaces ( X , M , , ) has a lower and upper bound. If B is approximately fuzzy compact with respect to A, then T has a unique best proximity point x in A 0 ( t ) provided that T is one-to-one on A 0 ( t ) and for all ( x , y ) Δ such that α ( x , y , t ) 1 for all x , y A .
Proof. 
Let x 0 be a given point in A 0 ( t ) . From Lemma (1), the ordered proximal Picard sequence { x n } in A 0 ( t ) satisfies
M ( x n , T x n 1 , t ) = M ( A , B , t ) , M ( x n + 1 , T x n , t ) = M ( A , B , t )
for all n N . In addition, define a function α : A × A × [ 0 , ) [ 0 , ) which satisfies Equation (5), since T is a α f -proximal H -contraction of first kind. The following arguments are similar to those in the proof of Lemma (2) and Theorem (1) by taking g = I A . In addition, the function α ( x , y , t ) agrees with the α f -proximal admissible mapping defined on A × A . Following the same lines of the proof of Theorem (1), the result follows. □
Theorem 4.
Let g : A A be an expansive mapping, α : A × A × [ 0 , ) [ 0 , ) and T : A B with A 0 ( t ) ϕ , T ( A 0 ( t ) ) B 0 ( t ) and A 0 ( t ) g ( A 0 ( t ) ) for any t > 0 . If B is approximately compact with respect to A and the pair ( g , T ) is α f -proximal H contraction of second kind. Suppose that each pair of elements in partially ordered complete fuzzy metric spaces ( X , M , , ) has a lower and an upper bound. Then, the pair ( g , T ) has a unique optimal coincidence point x in A 0 ( t ) provided that α ( x , y , t ) 1 such that ( x , y ) Δ for all x , y A .
Proof. 
Let x 0 be a given point in A 0 ( t ) . As T ( A 0 ( t ) ) B 0 ( t ) and A 0 ( t ) g ( A 0 ( t ) ) , we can choose an element x 1 in A 0 ( t ) such that M ( g x 1 , T x 0 , t ) = M ( A , B , t ) where ( x 0 , x 1 ) Δ . In addition, T x 1 T ( A 0 ( t ) ) B 0 ( t ) , and A 0 ( t ) g ( A 0 ( t ) ) , there exists an element x 2 A 0 ( t ) such that M ( g x 2 , T x 1 , t ) = M ( A , B , t ) . Since g is ordered, where ( g x 1 , g x 2 ) Δ , hence α ( g x 1 , g x 2 , t ) = 1 . Continuing this way, we can obtain a sequence { g x n } in A 0 ( t ) such that it satisfies
M ( g x n , T x n 1 , t ) = M ( A , B , t ) and M ( g x n + 1 , T x n , t ) = M ( A , B , t ) , where ( g x n 1 , g x n ) Δ and ( g x n , g x n + 1 ) Δ .
Define a function α : A × A × [ 0 , ) [ 0 , ) as in Equation (4) which agrees with α f -proximal admissible mapping. Following the arguments similar to those in Equation (1), the result follows. □
Corollary 2.
If T : A B is a α f -proximal H -contraction of first kind with A 0 ( t ) ϕ and T ( A 0 ( t ) ) B 0 ( t ) for any t > 0 . Then, T has a unique best proximity point x in A 0 ( t ) provided that B is approximative compact with respect to A.
Corollary 3.
Let T : A B be α f -proximal H -contraction of first kind with A 0 ( t ) ϕ , T ( A 0 ( t ) ) B 0 ( t ) for any t > 0 . Suppose that each pair of elements in the partially ordered complete metric space ( X , M , , ) has a lower and upper bound. If B is approximately compact with respect to A, then T has a unique best proximity point x in A 0 ( t ) provided that α ( x , y , t ) 1 such that ( x , y ) Δ for all x , y A .
Example 2.
Suppose that X = [ 0 , 1 ] × R , A = { ( 0 , x ) : x 0 and x R } and B = { ( 1 , y ) : y 0 and y R } . Note that
M d ( A , B , t ) = t t + 1 , A 0 ( t ) = { ( 0 , 0 ) } and B 0 ( t ) = { ( 1 , 0 ) } .
Define T : A B by
T ( x , 0 ) = ( 1 , x 5 ) and x y is defined as x y .
Obviously, T ( A 0 ( t ) ) = B 0 ( t ) and A 0 ( t ) = g ( A 0 ( t ) ) . Note that the points u = ( 0 , x 1 ) , v = ( 0 , x 2 ) , x = ( 0 , y 1 ) and y = ( 0 , y 2 ) in A satisfy M ( u , T x , t ) = M ( A , B , t ) and M ( v , T y , t ) = M ( A , B , t ) if x 1 = y 1 5 , x 2 = y 2 5 and α ( x , y , t ) = 1 as ( x , y ) Δ . In addition, η ( M ( u , v , t ) ) k η ( M ( x , y , t ) ) holds true, where η ( t ) = 1 t 1 . Thus, all the conditions of the corollary (3) are satisfied. Moreover, ( 0 , 0 ) is the best proximity point of T in A 0 ( t ) if k 1 5 .

4. Application:

As an application of obtained results, we prove some new fixed point theorems as follows. We start with the following:
Theorem 5.
Let ( X , M , ) be a complete fuzzy metric space, and α : A × A × [ 0 , ) [ 0 , ) . If T : X X is α-admissible mapping such that the following hold:
(i)
α ( x , y , t ) η ( M ( T x , T y , t ) ) k η ( M ( x , y , t ) , where η H .
(ii)
There exists x 0 X such that α ( x 0 , T x 0 , t ) 1 .
(iii)
Either T is continuous or { x n } is α ordered regular.
Then, T has a fixed point x X and { T n x 0 } converges to x .
Proof. 
Let A = B = X . We prove that T is α f -proximal H contraction of first kind. Let x , y , u , v X such that the following conditions hold:
( x , y ) Δ , M ( u , T x , t ) = M ( A , B , t ) , M ( v , T y , t ) = M ( A , B , t ) .
As M ( A , B , t ) = 1 , we have u = T x and v = T y . Since T satisfies the condition (i), therefore
α ( x , y , t ) η ( M ( u , v , t ) ) = α ( x , y , t ) η ( M ( T x , T y , t ) ) k η ( M ( x , y , t ) )
implies that T is α f -proximal H -contraction of first kind. Consider
α ( x , y , t ) 1 , M ( u , T x , t ) = M ( A , B , t ) , M ( v , T y , t ) = M ( A , B , t ) .
Then, α -admissible property of T implies that α ( u , v , t ) = α ( T x , T y , t ) 1 . Therefore, T is α -ordered regular admissible mapping. Applying condition (ii), there exists x 0 X such that α ( x 0 , T x 0 , t ) 1 . If we choose x 1 = T x 0 , then
α ( x 0 , x 1 , t ) 1 and M ( A , B , t ) = M ( x 1 , T x 0 , t ) = M ( T x 0 , T x 0 , t ) .
Since set B is approximately compact with respect to A . All the conditions of Theorem (2) are satisfied, so there exists x X such that M ( x , T x , t ) = M ( A , B , t ) for all t > 0 and hence T x = x . In the following remark, we compared the already existing results in literature. □
Remark 1.
Latif et al. [25] defined α-proximal fuzzy contraction of type-I and type-II. If we define η ( t ) = 1 ψ ( t α ) , where ψ Ψ (as defined in [25]) and α [ 0 , 1 ] , then η H . Then, α f -proximal contraction of first and second kind will reduce to α-proximal fuzzy contraction of type-I and type-II in [25]. If we take α ( x , y , t ) = 1 for all x , y A , t > 0 and η ( t ) = 1 ψ ( t α ) in Theorem (1), (2) and simplify our results along with some minor conditions on involved mappings, we obtain Theorems 2.2, 3.2, 3.5, and 3.8 in [25].
Explanation: Take η ( t ) = 1 ψ ( t α ) , where ψ Ψ (as defined in [25]) and α ( 0 , 1 ) in α f -proximal contraction of first kind defined in Equation (2) as η ( M ( u , v , t ) ) k [ η ( M ( x , y , t ) ) ] , then we have
1 ψ ( [ M ( u , v , t ) ] α ) k ( 1 ψ ( [ ( M ( x , y , t ) ] α ) ψ ( [ M ( u , v , t ) ] α ) k k ψ ( [ M ( x , y , t ) ] α ) k ψ ( [ ( M ( x , y , t ) ] α ) , sin ce k ( 0 , 1 ) ψ ( [ M ( u , v , t ) ] α ) k ψ ( [ ( M ( x , y , t ) ] α ) ψ ( [ M ( u , v , t ) ] α ) k ψ ( [ ( M ( x , y , t ) ] α ) .
Furthermore,
ψ ( M ( u , v , t ) ) ψ ( [ M ( u , v , t ) ] α ) k ψ ( [ ( M ( x , y , t ) ] α ) .
We have
ψ ( M ( u , v , t ) ) k ψ ( [ ( M ( x , y , t ) ] α ) .
If ψ ( M ( u , v , t ) ) M ( u , v , t ) k ψ ( [ ( M ( x , y , t ) ] α ) happens, then we have M ( u , v , t ) k ψ ( [ ( M ( x , y , t ) ] α ) , which is an α -proximal fuzzy contraction of type-I defined in [25]. A similar explanation exist for α -proximal fuzzy contraction of type-II.

5. Conclusions

In this paper, we introduced α f -proximal contraction of first and second kind in complete fuzzy metric space and some optimal coincidence point results are obtained. Some examples are provided to show that the results presented in this paper generalize comparable existing results in the sense of nonself mapping. Furthermore, we obtained optimal coincidence point results of such contractions in ordered structures along with some examples. If we restrict ourselves to self mapping only, results in [16,18] are extended. We provided an application in fixed point theory, if we restrict non-self mappings to self mappings in the framework of a complete fuzzy metric space.
Though techniques to prove best proximity point results are not new but an introduction of a new class of mappings in the framework of fuzzy metric spaces extends the scope of the study of best proximity point theory. Moreover, there is not much work done in fuzzy metric spaces. Our results will open new avenues of research in this direction. It will be interesting to study the same problem for a pair of non-self mappings in fuzzy metric spaces. Moreover, the study of coupled best proximity point in such spaces will also be a valuable contribution towards best proximity point theory.

Author Contributions

These authors contributed equally to this work.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

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Saleem, N.; Abbas, M.; Sen, M.D.l. Optimal Approximate Solution of Coincidence Point Equations in Fuzzy Metric Spaces. Mathematics 2019, 7, 327. https://doi.org/10.3390/math7040327

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Saleem N, Abbas M, Sen MDl. Optimal Approximate Solution of Coincidence Point Equations in Fuzzy Metric Spaces. Mathematics. 2019; 7(4):327. https://doi.org/10.3390/math7040327

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Saleem, Naeem, Mujahid Abbas, and Manuel De la Sen. 2019. "Optimal Approximate Solution of Coincidence Point Equations in Fuzzy Metric Spaces" Mathematics 7, no. 4: 327. https://doi.org/10.3390/math7040327

APA Style

Saleem, N., Abbas, M., & Sen, M. D. l. (2019). Optimal Approximate Solution of Coincidence Point Equations in Fuzzy Metric Spaces. Mathematics, 7(4), 327. https://doi.org/10.3390/math7040327

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