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Article

Sets of Fractional Operators and Numerical Estimation of the Order of Convergence of a Family of Fractional Fixed-Point Methods

by
A. Torres-Hernandez
1,* and
F. Brambila-Paz
2
1
Department of Physics, Faculty of Science, Universidad Nacional Autónoma de México, Mexico City 04510, Mexico
2
Department of Mathematics, Faculty of Science, Universidad Nacional Autónoma de México, Mexico City 04510, Mexico
*
Author to whom correspondence should be addressed.
Fractal Fract. 2021, 5(4), 240; https://doi.org/10.3390/fractalfract5040240
Submission received: 27 October 2021 / Revised: 15 November 2021 / Accepted: 17 November 2021 / Published: 23 November 2021

Abstract

:
Considering the large number of fractional operators that exist, and since it does not seem that their number will stop increasing soon at the time of writing this paper, it is presented for the first time, as far as the authors know, a simple and compact method to work the fractional calculus through the classification of fractional operators using sets. This new method of working with fractional operators, which may be called fractional calculus of sets, allows generalizing objects of conventional calculus, such as tensor operators, the Taylor series of a vector-valued function, and the fixed-point method, in several variables, which allows generating the method known as the fractional fixed-point method. Furthermore, it is also shown that each fractional fixed-point method that generates a convergent sequence has the ability to generate an uncountable family of fractional fixed-point methods that generate convergent sequences. So, it is presented a method to estimate numerically in a region Ω the mean order of convergence of any fractional fixed-point method, and it is shown how to construct a hybrid fractional iterative method to determine the critical points of a scalar function. Finally, considering that the proposed method to classify fractional operators through sets allows generalizing the existing results of the fractional calculus, some examples are shown of how to define families of fractional operators that satisfy some property to ensure the validity of the results to be generalized.

1. Introduction

A fractional derivative is an operator that generalizes the ordinary derivative, in the sense that if
d α d x α
denotes the differential of order α R , then α may be considered a parameter such that the first derivative corresponds to the particular case α = 1 . On the other hand, a fractional differential equation is an equation that involves at least one differential operator of order α , with ( n 1 ) < α n for some positive integer n, and it is said to be a differential equation of order α if this operator is the highest order in the equation. Analogously, a fractional partial differential equation is an equation that involves at least one differential operator of order α , which in general are usually partial derivatives of order α , that is,
α t α , α x α , α y α .
The fractional operators have many representations, but one of their fundamental properties is that they allow retrieving the results of conventional calculus when α n . So, considering a scalar function h : R m R and the canonical basis of R m denoted by e ^ k k 1 , it is possible to define the following fractional operator of order α , using Einstein notation as follows:
o x α h ( x ) : = e ^ k o k α h ( x ) ,
and then, denoting by k n the partial derivative of order n applied with respect to the k-th component of the vector x and using the previous operator, it is possible to define the following set of fractional operators as follows:
O x , α n ( h ) : =   o x α : o k α h ( x ) and lim α n o k α h ( x ) = k n h ( x ) k 1 ,
which may be proved to be a nonempty set through the following sets of fractional operators:
O 0 , x , α n ( h ) : =   o x α : o k α h ( x ) =   k n + n α k α h ( x ) and lim α n k α h ( x ) k n h ( x ) k 1 ,
O 1 , x , α n ( h ) : =   o x α : o k α h ( x ) = 1 2 k n + k α h ( x ) and lim α n k α h ( x ) = k n h ( x ) k 1 ,
O 2 , x , α n ( h ) : =   o x α : o k α h ( x ) = k α h ( x ) k n k α h ( x ) n and lim α n k α h ( x ) = k n h ( x ) k 1 ,
whose complement may be defined as follows:
O x , α n , c ( h ) : =   o x α : o k α h ( x ) k 1 and lim α n o k α h ( x ) k n h ( x ) i n   a t   l e a s t   o n e   v a l u e   k 1 ,
and which may be considered as a generating set of sets of fractional tensor operators. For example, considering α , n R d with α = e ^ k [ α ] k and n = e ^ k [ n ] k , it is possible to define the following set of fractional tensor operators:
O x , α n ( h ) : =   o x α : o x α O x , [ α ] 1 [ n ] 1 ( h ) × O x , [ α ] 2 [ n ] 2 ( h ) × × O x , [ α ] d [ n ] d ( h ) .
Therefore, considering a function h : R m × R 0 R , as well as the vectors α , n R 3 with α = e ^ k [ α ] k and n = e ^ k [ n ] k , it is possible to combine the sets (2) and (7) to define new sets of fractional operators related to the theory of differential equations, as shown with the following set:
W t , x , α n ( h ) : =   w t , x α = o t [ α ] 1 tr o x ( [ α ] 2 , [ α ] 3 ) : o t [ α ] 1 O t , [ α ] 1 [ n ] 1 ( h ) a n d o x ( [ α ] 2 , [ α ] 3 ) O 0 , x , ( [ α ] 2 , [ α ] 3 ) ( [ n ] 2 , [ n ] 3 ) ( h ) ,
where tr ( · ) denotes the trace of a matrix. So, denoting the Laplacian operator by 2 , it is possible to obtain the following results:
If w t , x α W t , x , α n ( h ) w i t h   n = ( 1 , 1 , 1 ) lim α n w t , x α h ( x , t ) = t 2 h ( x , t ) ,
If w t , x α W t , x , α n ( h ) w i t h   n = ( 2 , 1 , 1 ) lim α n w t , x α h ( x , t ) = t 2 2 h ( x , t ) ,
which may generalize the diffusion equation and the wave equation, respectively. To finish this section, it is necessary to mention that the applications of fractional operators have spread to different fields of science, such as finance [1,2], economics [3], number theory through the Riemann zeta function [4,5] and in engineering with the study of the manufacture of hybrid solar receivers [6,7]. It should be mentioned that there is also a growing interest in fractional operators and their properties for the solution of nonlinear algebraic systems [7,8,9,10,11,12,13,14,15,16,17,18], which is a classical problem in mathematics, physics and engineering that consists of finding the set of zeros of a function f : Ω R n R n , that is,
ξ Ω : f ( ξ ) = 0 ,
where ·   : R n R denotes any vector norm, or equivalently,
ξ Ω : [ f ] k ( ξ ) = 0 k 1 ,
where [ f ] k : R n R denotes the k-th component of the function f. This paper presents a simple and compact method to work the fractional calculus through the classification of fractional operators using sets. This new method of working with fractional operators allows generalizing objects of the conventional calculus, such as tensor operators, the Taylor series of a vector-valued function, and the fixed-point method in several variables, which allows generating the method known as the fractional fixed-point method. It is also shown that each fractional fixed-point method that generates a convergent sequence has the ability to generate an uncountable family of fractional fixed-point methods that generate convergent sequences. It is presented one method to estimate numerically in a region Ω the mean order of convergence of any fractional fixed-point method through the problem of determining the critical points of a scalar function, and it is shown how to construct a hybrid fractional iterative method to determine the critical points of a scalar function.

2. Fixed-Point Method

Let Φ : R n R n be a function. It is possible to build a sequence x i i 1 by defining the following iterative method:
x i + 1 : = Φ ( x i ) , i = 0 , 1 , 2 , .
If it is fulfilled that x i ξ R n and if the function Φ is continuous around ξ , we obtain the following:
ξ = lim i x i + 1 = lim i Φ ( x i ) = Φ lim i x i = Φ ( ξ ) .
The above result is the reason by which the method (13) is known as the fixed-point method. Furthermore, the function Φ is called an iteration function. Before continuing, it is necessary to define the order of convergence of an iteration function Φ [18,19]:
Definition 1.
Let Φ : Ω R n R n be an iteration function with a fixed point ξ Ω . So, the method (13) is called (locally) convergent, with an order of convergence of order (at least) p (with p 1 ), if there exist δ > 0 and a non-negative constant C (with C < 1 if p = 1 ) such that for any initial value x 0 B ( ξ ; δ ) , it is fulfilled that
x i + 1 ξ   C x i ξ p , i = 0 , 1 , 2 , ,
where C is called the convergence factor.
The order of convergence is usually related to the speed at which the sequence generated by an iteration function Φ converges. It is necessary to mention that for the case p = 1 , it is said that the function Φ has an order of convergence that is (at least) linear, and for the case p = 2 , it is said that the function Φ has an order of convergence that is (at least) quadratic. From the previous definition, the following proposition is obtained.
Proposition 1.
Let Φ : R n R n be an iteration function that defines a sequence x i i 1 such that x i ξ R n . So, if Φ has an order of convergence of order (at least) p in B ( ξ ; δ ) , there exists a non-negative constant K = K ( C ) , such that for all values of the sequence x i i 1 , it is fulfilled that
x i + 1 x i   K x i x i 1 p , i = 0 , 1 , 2 , ,
where x 1   : = 0 .
Proof. 
Considering that Φ defines a sequence x i i 1 and that it has an order of convergence of order (at least) p, it is possible to obtain the following inequality:
x i + 1 x i   C ( x i ξ p + x i ξ   +   x i x i 1 p ) .
As a consequence,
x i + 1 x i   2 C x i ξ   +   x i x i 1 p ,
and since x i ξ , there exists a positive constant c such that
x i + 1 x i   2 c C x i x i 1 p = K x i x i 1 p .
From the previous proposition, the following theorem is obtained the following.
Theorem 1.
Let Φ : R n R n be an iteration function that defines a sequence x i i 1 such that x i ξ R n . So, if Φ has an order of convergence of order (at least) p in B ( ξ ; δ ) , there exists a value m N such that for all subsequence x i i m B ( ξ ; 1 / 2 ) that fulfills the following condition
x i + 2 x i + 1   K x i + 1 x i p , i m ,
there exist δ K = δ K ( C ) > 0 and a sequence of values P i given by the following expression
P i : = log x i x i 1 log x i 1 x i 2 ,
such that P i i m + 2 B ( p ; δ K ) .
Proof. 
Considering that Φ defines a sequence x i i 1 and that it has an order of convergence of order (at least) p, from Proposition 1, it is possible to obtain the following inequality:
log x i + 2 x i + 1     p log x i + 1 x i   log ( K ) ,
assuming that there exists a subsequence x i i m B ( ξ ; 1 / 2 ) ; then
log x i + 1 x i   < 0 , i m .
So, if the subsequence x i i m fulfills the above inequality
log ( K ) log x i + 1 x i log x i + 2 x i + 1 log x i + 1 x i p ,
then considering that x | x | x R , there exists a positive constant c such that
log ( K ) log x i + 1 x i   | log x i + 2 x i + 1 log x i + 1 x i p |   c | log ( K ) log x i + 1 x i | ,
and since K = K ( C ) , there exists a positive value δ K = δ K ( C ) such that the sequence P i i m + 2 B ( p ; δ K ) . □
From the previous theorem, the following corollary is obtained.
Corollary 1.
Let Φ : R n R n be an iteration function that defines a sequence x i i 1 such that x i ξ R n . So, if Φ has an order of convergence of order (at least) p in B ( ξ ; 1 / 2 ) , for some m N , there exists a sequence P i i m B ( p ; δ K ) that fulfills the following condition:
lim i P i p ,
and therefore, there exists at least one value k m such that
| P k p | ϵ .
The previous corollary allows estimating numerically the order of convergence of an iteration function Φ that generates at least one convergent sequence x i i 1 . On the other hand, the following corollary allows characterizing the order of convergence of an iteration function Φ through its Jacobian matrix Φ ( 1 ) [18]:
Corollary 2.
Let Φ : R n R n be an iteration function. If Φ defines a sequence, x i i 1 such that x i ξ R n . So, Φ has an order of convergence of order (at least) p in B ( ξ ; δ ) , where it is fulfilled that:
p : = 1 , i f   lim x ξ Φ ( 1 ) ( x ) 0 2 , i f   lim x ξ Φ ( 1 ) ( x ) = 0 .

3. Riemann–Liouville Fractional Operators

Let f : Ω R R be a function. One of the fundamental operators of fractional calculus is the operator Riemann–Liouville fractional integral, which is defined as follows: follows [20,21]
a I x α f ( x ) : = 1 Γ α a x ( x t ) α 1 f ( t ) d t ,
which is a fundamental piece to construct the operator Riemann-Liouville fractional derivative, which is defined as follows [20,22]:
a D x α f ( x ) : =   a I x α f ( x ) , if   α < 0 d n d x n a I x n α f ( x ) , if   α 0 ,
where n = α and a I x 0 f ( x ) : = f ( x ) . Applying the operator (21) with a = 0 to the function x μ , with μ > 1 , we obtain the following result [18]:
0 D x α x μ = Γ μ + 1 Γ μ α + 1 x μ α , α R \ Z .

4. Fractional Fixed-Point Method

Let N 0 be the set N   0 if γ N 0 m and x R m . Then it is possible to define the following multi-index notation:
γ ! : = k = 1 m [ γ ] k ! , | γ | : = k = 1 m [ γ ] k , x γ : = k = 1 m [ x ] k [ γ ] k γ x γ : = [ γ ] 1 [ x ] 1 [ γ ] 1 [ γ ] 2 [ x ] 2 [ γ ] 2 [ γ ] m [ x ] m [ γ ] m .
So, considering a function h : Ω R m R , it is possible to define the following set of fractional operators:
S x , α n , γ ( h ) : = s x α γ = s x α γ o x α : o x α O x , α s ( h ) s n 2 a n d s x α γ h ( x ) : = o 1 α [ γ ] 1 o 2 α [ γ ] 2 o m α [ γ ] m h ( x ) α , | γ | n ,
from which it is possible to obtain the following results:
If s x α γ S x , α n , γ ( h ) lim α 0 s x α γ h ( x ) = o 1 0 o 2 0 o m 0 h ( x ) = h ( x ) lim α 1 s x α γ h ( x ) = o 1 [ γ ] 1 o 2 [ γ ] 2 o m [ γ ] m h ( x ) = γ x γ h ( x ) | γ | n lim α k s x α γ h ( x ) = o 1 k [ γ ] 1 o 2 k [ γ ] 2 o m k [ γ ] m h ( x ) = k γ x k γ h ( x ) k | γ | k n lim α n s x α γ h ( x ) = o 1 n [ γ ] 1 o 2 n [ γ ] 2 o m n [ γ ] m h ( x ) = n γ x n γ h ( x ) n | γ | n 2 .
As a consequence, considering a function h : Ω R m R m , it is possible to define the following set of fractional operators:
m S x , α n , γ ( h ) : = s x α γ : s x α γ S x , α n , γ [ h ] k k m .
On the other hand, using little-O notation, it is possible to obtain the following result:
I f   x B ( a ; δ ) lim x a o ( x a ) γ ( x a ) γ 0 | γ | 1 ,
with which it is possible to define the following set of functions:
R α γ n ( a ) : = r α γ n : lim x a r α γ n ( x ) = 0 | γ | n a n d r α γ n ( x ) o x a n x B ( a ; δ ) ,
where r α γ n : B ( a ; δ ) Ω R m . So, considering the previous set and some B ( a ; δ ) Ω , it is possible to define the following set of fractional operators:
m T x , α , p n , q , γ ( a , h ) : =   t x α , p = t x α , p s x α γ : s x α γ m S x , α M , γ ( h ) a n d t x α , p h ( x ) : = | γ | = 0 p 1 γ ! e ^ j s x α γ [ h ] j ( a ) ( x a ) γ + r α γ p ( x ) α n p q ,
m T x , α , γ ( a , h ) : =   t x α , = t x α , s x α γ : s x α γ m S x , α , γ ( h ) a n d t x α , h ( x ) : = | γ | = 0 1 γ ! e ^ j s x α γ [ h ] j ( a ) ( x a ) γ ,
which allow generalizing the Taylor series expansion of a vector-valued function in multi-index notation [18], where M = max n , q . As a consequence, it is possible to obtain the following results:
If   t x α , p m T x , α , p 1 , q , γ ( a , h ) a n d   α 1 t x 1 , p h ( x ) = h ( a ) + | γ | = 1 p 1 γ ! e ^ j γ x γ [ h ] j ( a ) ( x a ) γ + r γ p ( x ) ,
If t x α , p m T x , α , p n , 1 , γ ( a , h ) a n d   p 1 t x α , 1 h ( x ) = h ( a ) + k = 1 m e ^ j o k α [ h ] j ( a ) ( x a ) k + r α γ 1 ( x ) .
Let f : Ω R n R n be a function with a point ξ Ω such that f ( ξ ) = 0 . So, for some x i B ( ξ ; δ ) Ω and for some fractional operator t x α , n T x , α , γ ( x i , f ) , it is possible to define a type of linear approximation of the function f around the value x i as follows:
t x α , f ( x ) f ( x i ) + k = 1 n e ˆ j o k α [ f ] j ( x i ) ( x x i ) k ,
which may be rewritten more compactly as follows:
t x α , f ( x ) f ( x i ) + o k α [ f ] j ( x i ) ( x x i ) ,
where o k α [ f ] j ( x i ) denotes a square matrix. On the other hand, if x ξ since f ( ξ ) = 0 , it follows that
0 f ( x i ) + o k α [ f ] j ( x i ) ( ξ x i ) ξ x i o k α [ f ] j ( x i ) 1 f ( x i ) .
Then, defining the following matrix,
A f , α ( x ) = [ A f , α ] j k ( x ) : = o k α [ f ] j ( x ) 1 ,
it is possible to define the following fractional iterative method
x i + 1 : = Φ ( α , x i ) = x i A f , α ( x i ) f ( x i ) , i = 0 , 1 , 2 , ,
which corresponds to the more general case of the fractional Newton–Raphson method [7,16,17,18]. As a consequence, considering an iteration function Φ : ( R \ Z ) × R n R n , the iteration function of a fractional iterative method may be written in general form as follows
Φ ( α , x ) : = x A g , α ( x ) f ( x ) , α R \ Z ,
where A g , α is a matrix that depends, in at least one of its entries, on fractional operators of order α applied to some function g : R n R n , whose particular case occurs when g = f . So, it is possible to define the following sets of fractional operators:
n O x , α m ( g ) : =   o x α : o x α O x , α m [ g ] k k n ,
n O x , α m , c ( g ) : =   o x α : o x α O x , α m , c [ g ] k k n ,
n O x , α m , u ( g ) : = n O x , α m ( g ) n O x , α m , c ( g ) ,
which allow defining the following sets of matrices:
n M x , α m ( g ) : =   A g , α = A g , α ( o x α ) : o x α n O x , α s , u ( g ) s Z m a n d A g , α ( x ) = [ A g , α ] j k ( x )   : =   o k α [ g ] j ( x ) ,
n IM x , α m ( g ) : =   A g , α n M x , α m ( g ) : A g , α 1 .
Therefore, the fractional Newton–Raphson method may be defined and classified through the set of matrices n IM x , α ( g ) , using the following set:
A g , α : A g , α 1 n IM x , α ( g ) and A g , α ( x ) = [ A g , α ] j k ( x )   : = o k α [ g ] j ( x ) 1 .
Furthermore, considering that when using the classical Hadamard product in general o x p α o x q α o x ( p + q ) α , assuming the existence of a fixed set of matrices n IM x , α ( g ) , joined with a modified Hadamard product that fulfills the following property
o i , x p α o j , x q α : = o i , x p α o j , x q α , if   i j ( Hadamard product of type horizontal ) o i , x ( p + q ) α , if   i = j ( Hadamard product of type vertical ) ,
by omitting the function g it has the ability to generate a group of fractional matrix operators A α that fulfill the following equation
A α o i , x p α A α o j , x q α   : =   A α o i , x p α o j , x q α , if   i j A α o i , x ( p + q ) α , if   i = j ,
through the following set
n G F N R ( α ) : =   A α m = A α o x m α : A α m n IM x , α ( · ) m Z a n d A α m = [ A α m ] j k   : =   o k m α .
where A i , α m n G F N R ( α ) , the following properties are defined
A i , α 0 A i , α p = A i , α p : = A i , α o i , x p α A i , α p A i , α q = A i , α ( p + q ) : = A i , α o i , x ( p + q ) α A i , α p A j , α q = A k , α 1 : = A k , α o i , x p α o j , x q α ,
as a consequence
A k , α 1 n G F N R ( α ) such that A k , α o k , x α = A k , α o i , x p α o j , x q α A k , α r = A k , α ( r 1 ) A k , α 1 = A k , α o i , x r p α o j , x r q α .
Therefore, it is possible to obtain the following corollary:
Corollary 3.
Let g : R n R n be a function such that n O x , α k , u ( g ) k Z , then it is fulfilled that
o x α n MO x , α , u ( g ) : = k Z n O x , α k , u ( g ) n G A α o x α   n G F N R ( α ) ,
such that n G A α o x α is a group. As a consequence
n G F N R ( α ) = o x α n MO x , α , u ( g ) n G A α o x α .
Furthermore, defining A α ( g ) = [ A α ( g ) ] j k   : =   [ g ] k , it is possible to obtain the following result:
A α m n G F N R ( α ) A g , m α n IM x , α ( g ) such that A g , m α : = A α o x m α A α T g .
As a consequence, the fractional Newton–Raphson method may also be defined through the set of fractional matrix operators n G F N R ( α ) using the following set:
A α 1 n G F N R ( α ) : A g , α 1 = A α o x α A α T g and A g , α 1 n IM x , α ( g ) .
Therefore, if Φ F N R denotes the iteration function of the fractional Newton–Raphson method, it is possible to obtain the following results:
Let α 0 R \ Z A g , α 0 1 n IM x , α ( g ) Φ F N R = Φ F N R ( A g , α 0 ) A g , α 0 Φ F N R ( A g , α ) : α R \ Z ,
Let α 0 R \ Z A α 0 1 n G F N R ( α ) Φ F N R = Φ F N R ( A α 0 ) A α 0 Φ F N R ( A α ) : α R \ Z .
On the other hand, it is possible to define in a general way a fractional fixed-point method as follows:
x i + 1 : = Φ ( α , x i ) , i = 0 , 1 , 2 , .
Figure 1. Illustration of some lines generated by the fractional Newton–Raphson method for the same initial condition x 0 but with different orders α of the fractional operator implemented [16]. The fractional Newton–Raphson method usually generates lines that are not tangent to the function f whose zeros are sought, unlike the classical Newton–Raphson method.
Figure 1. Illustration of some lines generated by the fractional Newton–Raphson method for the same initial condition x 0 but with different orders α of the fractional operator implemented [16]. The fractional Newton–Raphson method usually generates lines that are not tangent to the function f whose zeros are sought, unlike the classical Newton–Raphson method.
Fractalfract 05 00240 g001
Before continuing, it is necessary to mention that one of the main advantages of fractional iterative methods is that the initial condition x 0 can remain fixed, with which it is enough to vary the order α of the fractional operators involved until generating a sequence convergent x i i 1 to the value ξ Ω . Since the order α of the fractional operators is varied, different values of α can generate different convergent sequences to the same value ξ but with a different number of iterations (see Figure 1). So, it is possible to define the following set
Conv δ ( ξ ) : =   Φ : lim x ξ Φ ( α , x ) = ξ α B ( ξ ; δ ) ,
which may be interpreted as the set of fractional fixed-point methods that define a convergent sequence x i i 1 to some value ξ α B ( ξ ; δ ) . So, denoting by card · the cardinality of a set, it is possible to define the following theorem:
Theorem 2.
Let Φ : ( R \ Z ) × R n R n be an iteration function with a value α R \ Z such that Φ ( α , x ) Conv δ ( ξ ) in a region Ω. So, if there exists ϵ > 0 small enough to ensure that there exists a non-integer value β B ( α ; ϵ ) such that
Φ ( β , x ) B Φ ( α , x ) ; δ β x Ω a n d Φ ( β , x ) Conv δ ( ξ ) ,
then the following is fulfilled:
card Conv δ ( ξ ) = card R .
Proof. 
The proof of the theorem is carried out by contradiction, assuming the following:
card Conv δ ( ξ )   < card R .
So, considering that
Φ ( β , x ) B Φ ( α , x ) ; δ β x Ω a n d Φ ( α , x ) , Φ ( β , x ) Conv δ ( ξ ) ,
there exists at least one value x k B ( ξ ; δ ) such that
Φ ( β , x k ) B Φ ( α , x k ) ; δ β   = B ( x k + 1 ; δ β ) B ( ξ ; δ ) .
Since β B ( α ; ϵ ) for some ϵ small enough, without loss of generality if α < β < m with m = α , it follows that
Φ ( a , x k ) B Φ ( α , x k ) ; δ a   B x k + 1 ; δ β a [ α , β ] .
As a consequence, the following holds:
Conv δ ( ξ )   Φ ( a , x ) : a [ α , β ] card Conv δ ( ξ )   card [ α , β ] .
Then, considering the following function
h ( x ) = x α β α ,
it is fulfilled that
h : [ α , β ] [ 0 , 1 ] card [ α , β ] = card [ 0 , 1 ] = card R ,
and therefore,
card Conv δ ( ξ )   card R .
Finally, it is necesssary to mention that fsractional iterative methods may be defined in the complex space [18], that is,
Φ ( α , x ) : α R \ Z and x C n .
However, due to the part of the integral operator that fractional operators usually have, it may be considered that in matrix A g , α , each fractional operator o k α is obtained for a real variable [ x ] k , and if the result allows it, this variable is subsequently substituted by a complex variable [ x i ] k , that is, the following:
A g , α ( x i ) : = A g , α ( x ) | x x i , x R n , x i C n .
So, considering the above as well as the Theorem 1 and the Theorem 2, the following corollary is obtained:
Corollary 4.
Let Φ : ( R \ Z ) × C n C n be an interaction function with a sequence of different values α i i 1 R \ Z that define the following set:
Conv Ω , α i i 1 : = Φ ( α , x ) Conv δ ξ α f o r s o m e   ξ α Ω : α α i i 1 .
So, if card Conv Ω , α i i 1 = M with 1 < M < , then Φ has a mean order of convergence of order (at least) p ¯ in Ω, and there exists a sequence P i i 1 M B ( p ¯ ; δ K ) with P i = P i ( α i ) that allows defining the following value:
P ¯ : = 1 M i = 1 M P i ,
Therefore, for M large enough, it is fulfilled the following:
| P ¯ p ¯ | < ϵ .

5. Approximation to the Critical Points of a Function

Let C s ( Ω ) be a set of functions defined as follows
C s ( Ω ) : =   f : γ x γ f ( x ) | γ | s and x Ω .
So, it is possible to obtain the following result:
Let f : Ω R n R   a function such that   f C 2 ( Ω ) f ( x )   and   H f ( x ) x Ω ,
where f and H f denote the gradient of f and the Hessian matrix of f, respectively. So in general, for every scalar function f : Ω C n C that belongs to the set C 2 ( Ω ) , it is possible to define the following set:
C ( Ω , f ) : = ξ Ω : f ( ξ )   = 0 ,
which corresponds to the set of critical points of the function f in the region Ω . On the other hand, denoting by Re ( · ) the real part of a complex, by det ( · ) the determinant of a matrix and by sgn ( · ) the sign function such that for a square matrix A,
sgn A : = sgn [ A ] j k ,
it is possible to define the following functions
Δ d ( ξ ) : = sgn det Re ( H f ( ξ ) ) and Δ t ( ξ ) : = tr sgn Re ( H f ( ξ ) ) ,
which allow defining the following sets
C M ( Ω , f ) : =   ξ C ( Ω , f ) : Δ d ( ξ ) = 1 and Δ t ( ξ ) = n ,
C m ( Ω , f ) : =   ξ C ( Ω , f ) : Δ d ( ξ ) = 1 and Δ t ( ξ ) = n ,
C S ( Ω , f ) : =   ξ C ( Ω , f ) : Δ d ( ξ ) = 1 and Δ t ( ξ ) [ n , n ] ,
which correspond respectively to the sets of local maxima, local minima, and local saddle points of the function f in the region Ω . So, defining the following set of functions
C H 2 ( Ω ) : =   f C 2 ( Ω ) : H f ( x ) 1 x Ω ,
and considering a function f : Ω C n C such that f C H 2 ( Ω ) , it is possible to construct an iteration function Φ H , δ : ( R \ Z ) × C n C n defined as follows:
Φ H , δ ( α , x ) : = x H g , α ( x ) f ( x ) ,
which corresponds to the iteration function of a hybrid fractional iterative method, where
H g , α ( x ) : =   A g , α ( x ) , if   f ( x ) > δ H f ( x ) 1 , if   f ( x ) δ ,
and A g , α is a matrix of some fractional iterative method.

Examples

Let f : Ω C 2 C be a function given by the following expression:
f ( x ) = 2 [ x ] 1 2 + [ x ] 1 3 [ x ] 2 cos [ x ] 1 2 [ x ] 2 2 cos [ x ] 2 [ x ] 1 5 [ x ] 2 3 cos [ x ] 2 2 sin [ x ] 1 [ x ] 2 7 + 2 sin [ x ] 2 .
Then,
f ( x ) = 3 [ x ] 1 2 [ x ] 2 cos [ x ] 1 + [ x ] 2 3 cos [ x ] 2 + [ x ] 1 2 1 [ x ] 1 [ x ] 2 sin [ x ] 1 5 1 3 cos [ x ] 1 + 3 [ x ] 1 [ x ] 2 2 cos [ x ] 2 [ x ] 2 2 1 + [ x ] 1 [ x ] 2 sin [ x ] 2 7 ,
H f ( x ) = [ x ] 1 [ x ] 1 + 6 [ x ] 2 [ x ] 1 2 [ x ] 2 cos [ x ] 1 + 2 1 3 [ x ] 1 [ x ] 2 sin [ x ] 1 [ x ] 1 2 3 cos [ x ] 1 [ x ] 1 sin [ x ] 1 + [ x ] 2 2 3 cos [ x ] 2 [ x ] 2 sin [ x ] 2 1 2 3 cos [ x ] 1 [ x ] 1 sin [ x ] 1 + [ x ] 2 2 3 cos [ x ] 2 [ x ] 2 sin [ x ] 2 [ x ] 2 [ x ] 2 [ x ] 1 6 [ x ] 2 2 cos [ x ] 2 + 2 1 + 3 [ x ] 1 [ x ] 2 sin [ x ] 2 .
So, considering the following function
Rnd m x   : =   Re ( x ) , if   | Im ( x ) | 10 m x , if   | Im ( x ) | > 10 m ,
it is possible to define the following iteration function:
Rnd 5 Φ H , δ ( α , x )   : = e ^ j Rnd 5 Φ H , δ j ( α , x ) .
Before continuing, it is necessary to mention that a description of the algorithm that must be implemented when working with a fractional iterative method given by Equation (54) may be found in Ref. [17]. Simplified examples of how a fractional iterative method given by a matrix A g , α should be programmed may be found in Refs. [23,24].
Example 1.
Using the function (73), the Riemann–Liouville fractional derivative (22) and f , it is possible to construct an iteration function analogous to Equation (36), using the following matrix:
A g f , β ( x i ) = [ A g f , β ] j k ( x i ) : = k β ( α , [ x i ] k ) [ g f ] j ( x ) x i 1 , α R \ Z ,
which generates a particular case of the fractional quasi-Newton method [7,17], where g f ( x ) and β ( α , [ x i ] k ) are functions defined as follows:
g f ( x ) : = f ( x i ) + H f ( x i ) x a n d β ( α , [ x i ] k ) : =   α , i f   | [ x i ] k | 0 1 , i f   | [ x i ] k | = 0 .
So, considering following initial condition
x 0 = ( 5.21 , 5.21 ) T w i t h f ( x 0 ) 2 1 , 289.4083 ,
the results shown in Table 1 are obtained.
Therefore,
P ¯ 1.0060 B p ¯ ; δ K ,
which is consistent with the Corollary 2 since, in general, if ξ C ( Ω , f ) , then it is fulfilled the following (see [18], proof of Proposition 1):
lim x ξ Φ ( 1 ) ( α , x ) 0 .
Example 2.
Using the iteration function (74) and the matrix A g f , β given by Equation (75), considering following values
δ = 7 a n d x 0 = ( 4.78 , 4.78 ) T w i t h f ( x 0 ) 2 770.4734 ,
the results shown in Table 2 are obtained.
Therefore, the following holds:
P ¯ 2.0692 B p ¯ ; δ K ,
which is consistent with Corollary 2 since, in general, if ξ C ( Ω , f ) , then it is fulfilled the following (see [18], proof of Proposition 1):
lim x ξ Φ H , δ ( 1 ) ( α , x ) = 0 .
Example 3.
Using the Riemann–Liouville fractional derivative (22), it is possible to construct the following matrix:
A ϵ , β ( x i ) = [ A ϵ , β ] j k ( x i )   : = k β ( α , [ x i ] k ) δ j k + ϵ δ j k x i , α R \ Z ,
which generates a particular case of thefractional pseudo-Newton method[5], where δ j k is the Kronecker delta, ϵ is a positive constant 1 , and β ( α , [ x i ] k ) is a function defined by the Equation (76). So, using the iteration function (74) and the matrix A ϵ , β given by the Equation (77), considering the following values,
ϵ = 10 4 , δ = 13 a n d x 0 = ( 14.55 , 14.55 ) T w i t h f ( x 0 ) 2 65 , 057.2221 ,
the results shown in Table 3 are obtained.
Therefore
P ¯ 2.0994 B p ¯ ; δ K ,
which is consistent with Corollary 2 since in general if ξ C ( Ω , f ) , then it is fulfilled the following (see Ref. [18], proof of Proposition 1):
lim x ξ Φ H , δ ( 1 ) ( α , x ) = 0 .
Finally, it is necessary to mention that the fractional iterative methods, such as the fractional Newton–Raphson method, can find multiple zeros of a function using a single initial condition. This partially solves the intrinsic problem of classical iterative methods, which is that in general, to find N zeros of a function, N initial conditions must be provided. Due to the fractional operators implemented, which are usually non-local operators, these methods may be considered non-local parametric iterative methods, so they have two important characteristics for both real and complex variables:
(i)
The initial condition does not necessarily have to be close to the sought values due to the non-local nature of fractional operators [5].
(ii)
When working in a space of N dimensions, in the case that it is necessary to change the initial condition, unlike the classical iterative methods, where in the worst case, it is necessary to vary the N components of the initial condition until a suitable value is obtained; in the fractional fixed-point methods, it is enough to vary the parameter α of the fractional operators until an adequate value is found that allows generating a sequence that converges to a sought value [16].
It is necessary to mention that, although there exist theories such as theorems, prepositions, and corollaries of classical iterative methods that can be transferred to fractional iterative methods, most of these results are for local iterative methods, so it is necessary to continue developing theories with results of a non-local nature, such as Corollary 4.

6. Conclusions

Considering the large number of fractional operators that exist [25,26], and since it does not seem that their number will stop increasing soon at the time of writing this paper [27,28,29], the most simple and compact method to work the fractional calculus is through the classification of fractional operators using sets, which, as shown in the previous sections, allows generalizing objects of the conventional calculus, such as the fixed-point method in several variables, which allows generating the method known as the fractional fixed-point method, which in turn allows generating a new type of numerical analysis using sets [7]. It is necessary to mention that the use of sets to classify fractional operators allows generalizing the existing results of the fractional calculus to families of operators that fulfill some property to ensure the validity of the results to be generalized, as shown by defining the following sets of fractional operators:
m O x , α n ( g )   o x α : o k α c = 0 c R and k 1 ,
m O x , α n ( g )   o x α : o k α c 0 c R \ 0 and k 1 ,
m O x , α n ( g )   o x α : o k α is a local operator   k 1 ,
m O x , α n ( g )   o x α : o k α is a non-local operator   k 1 ,
m O x , α n ( g )   o x α : o k α is a linear operator   k 1 ,
m O x , α n ( g )   o x α : o k α is a non-linear operator   k 1 ,
m O x , α n ( g )   o x α : o k α and o k α o k α o k α o k α = o k 0 k 1 .
Furthermore, it is possible to define elements of the fractional calculus that fulfill some property, such as the following set of matrices:
A g , α : A g , α 1 m IM x , α ( g ) and A g , α ( x ) = [ A g , α ] j k ( x )   : = o k α [ g ] j ( x ) 1     o x α : o k α c 0 c R \ 0 and k 1 ,
which allows defining the fractional quasi-Newton method. On the other hand since each fractional fixed-point method that generates a convergent sequence has the ability to generate an uncountable family of fractional fixed-point methods that generate convergent sequences as shown by the Theorem 2, and considering that determining the critical points of a scalar function is usually one of the most recurrent problems in physics, mathematics and engineering, it becomes almost natural to estimate numerically in a region Ω the mean order of convergence of any fractional fixed-point method by determining the critical points of a scalar function. Finally, it should be mentioned that the result of the Theorem 2 may be transferred to the theory of fractional differential equations, resulting in a new type of theory of differential equations using sets, which allows defining the following sets of functions for some operator s x α γ S x , α s , γ ( f )
C α s s x α γ , Ω   : =   f : s x α γ f ( x ) α | γ | s and x Ω ,
H α s s x α γ , Ω   : =   f C α s s x α γ , Ω : s x α γ f ( x ) L 2 ( Ω ) α | γ | s ,
and which allows defining multidimensional fractional partial differential equations [2]. Therefore, working with fractional operators through sets opens the possibility that fractional calculus becomes a more extensive theory, which should be renamed fractional calculus of sets.

Author Contributions

Conceptualization, Methodology, Software, Formal Analysis, Investigation, Writing—Original Draft Preparation, Visualization, Writing—Review and Editing, A.T.-H.; Formal Analysis, Validation, Supervision, Project Administration, F.B.-P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Simplified versions of the programming codes of some methods exposed in the manuscript may be found in the following links: https://www.doi.org/10.13140/RG.2.2.13687.55209/1, https://www.doi.org/10.13140/RG.2.2.15856.79366, https://www.doi.org/10.13140/RG.2.2.26555.54563/1.

Acknowledgments: Nota del Autor

  • Agradecimientos: La teoría presentada en este documento es el resultado de la investigación actual de mi tesis doctoral, la cual fue realizada durante los primeros dos años de mis estudios de Doctorado en la Universidad Nacional Autónoma de México gracias al apoyo del Consejo Nacional de Ciencia y Tecnología. Los resultados expuestos no habrían sido desarrollados sin el apoyo incondicional de mi familia cercana, en especial de mi abuela Alicia y mi hermana Wendy, así como de mi tía Roxana y mis primos Barbara, Humberto y Yoel.
    Debo mencionar que mis estudios de Doctorado no habrían sido posibles sin aquellas personas que me ayudaron, de forma directa o indirecta, en la etapa final de mis estudios en la Licenciatura en Física de la Facultad de Ciencias de la UNAM, entre las cuales puedo mencionar al Dr. Miguel Bastarrachea, la M. en A. Reyna Caballero, la Dra. Mirna Villavicencioy el Dr. Alberto Güijosa. Así como de las personas que me ayudaron, de forma directa o indirecta, al inicio de misestudios en la Maestría en Ciencias Matemáticas de la UNAM, entre las cuales puedo mencionar al Dr. Fernando Brambila, la Mat. Beatriz Brito, la Dra. Silvia Ruíz-Velasco y la Dra. Úrsula Iturrarán. Por último, pero no menos importante, agradezco a todas aquellas personas que me brindaron su apoyo en algúna ocasión desde el inicio de mis estudios en la Licenciatura en Física hasta el momento actual de mis estudios de Doctorado en Matemáticas
  • Significados:
    1.
    Fractional Fixed-Point Method: = Método de Punto Fijo Fraccional (affectionately dubbed “zeros-hunter” method).
    2.
    Fractional Newton-Raphson Method: = Método de Newton-Raphson Fraccional (the seed of the fractional calculus of sets).
    3.
    Fractional Quasi-Newton Method: = Método Quasi-Newton Fraccional
    4.
    Fractional Pseudo-Newton Method: = Método Pseudo-Newton Fraccional.
    5.
    Fractional Calculus of Sets: = Cálculo Fraccional de Conjuntos

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Results obtained using the fractional quasi-Newton method [7].
Table 1. Results obtained using the fractional quasi-Newton method [7].
α [ x k ] 1 [ x k ] 2 x k x k 1 2 f ( x k ) 2 P k Δ d ( x k ) Δ t ( x k ) k
1−0.5305156.6771554 − 0.02130862i−0.014023 + 1.72836829i1.41E-089.24E-050.9812−12167
2−0.5160370.01499973 − 1.73190718i6.6757499 − 0.04157569i1.41E-089.86E-051.0260−1−2165
3−0.4728670.01499966 + 1.73190711i6.67574974 + 0.04157578i2.45E-089.54E-051.0000−1−2180
4−0.4400176.67715551 + 0.02130861i−0.014023 − 1.72836833i1.41E-089.47E-051.0113−12180
5−0.372536−1.12922862 + 1.02480512i3.7817693 + 0.02894647i3.22E-078.23E-050.99601−292
6−0.359168−1.12922793 − 1.02480539i3.78176969 − 0.02894643i1.36E-067.78E-051.02551−292
7−0.3177673.68514423 − 0.05398726i−1.20114465 + 1.03004598i4.35E-077.98E-051.00951−289
8−0.1756576.66385192 + 0.00958153i−3.05535188 + 0.51526774i1.66E-079.98E-051.014512129
9−0.1749379.69844564 − 0.00485976i− 1.49692201 + 1.85490018i1.41E-088.99E-050.98121−2180
10−0.1674099.69844566 + 0.00485981i−1.49692201 − 1.85490019i1.00E-088.76E-051.00001−2178
11−0.1655383.68514454 + 0.0539876i−1.20114479 − 1.0300467i8.66E-078.57E-051.01441−2117
12−0.162111−1.47430587 + 1.85378122i9.71215809 + 0.012692i1.41E-088.26E-051.03131−2178
13−0.14848612.78190313 − 0.00664448i−3.36083258 − 1.47015693i1.00E-088.71E-051.019212195
14−0.141354−1.47430585 − 1.85378123i9.71215813 − 0.01269197i3.00E-085.73E-050.99661−2179
15−0.140788−3.01831349 + 0.5058919i6.69924174 + 0.01613682i3.16E-089.57E-051.028512146
16−0.12501519.0075656−7.549610781.41E-088.38E-051.000012197
17−0.119655−4.592858599.731296663.61E-084.16E-051.01951−2111
18−0.0920156.66385199 − 0.00958166i−3.05535203 − 0.51526774i2.45E-088.85E-051.00441285
19−0.08124412.81002482−7.109665471.41E-088.10E-051.039912190
20−0.0750769.71878342−4.627717582.24E-089.26E-051.00001−297
21−0.073120−3.01831348 − 0.50589194i6.69924174 − 0.01613673i4.58E-087.95E-051.01871282
22−0.05619018.99311678−9.300493811.41E-089.76E-050.9812−10145
23−0.052492−6.399374859.685196292.24E-089.90E-050.9563−10161
24−0.052490−7.0966518712.815424662.24E-087.76E-051.037712113
25−0.037197−5.68870793 − 0.65962195i15.8889979 − 0.00516137i1.41E-082.87E-050.98121−2183
26−0.030387−9.3020253518.994740191.41E-087.22E-050.9812−10162
Table 2. Results obtained using the iteration function (74) with the fractional quasi-Newton method [7].
Table 2. Results obtained using the iteration function (74) with the fractional quasi-Newton method [7].
α [ x k ] 1 [ x k ] 2 x k x k 1 2 f ( x k ) 2 P k Δ d ( x k ) Δ t ( x k ) k
1−0.9915043.981154713.921701251.00E-081.50E-062.11621255
2−0.985320−0.20172521−2.138620131.00E-083.55E-082.0096−10184
3−0.9775344.769447440.246825855.21E-064.75E-072.0536−12115
4−0.957378−0.142495337.844591092.32E-061.71E-062.1574−1044
5−0.9316741.52183063 + 0.04852431i−1.07285283 + 0.62177498i1.64E-056.40E-081.9728−10147
6−0.910766−0.14118954.756298365.06E-074.42E-072.0939−1−299
7−0.902424−1.66983169−1.478433973.51E-056.06E-082.02101−2141
8−0.7969267.840121820.117800885.96E-052.18E-062.2020−1032
9−0.747172−1.47430586 − 1.85378123i9.71215811 − 0.01269197i5.21E-061.45E-052.09871−2193
10−0.7398549.69844563 − 0.0048598i−1.496922 + 1.85490017i4.57E-061.59E-052.10761−2190
11−0.7344009.69844563 + 0.0048598i−1.496922 − 1.85490017i4.77E-061.59E-052.10511−2194
12−0.718024−1.47430586 + 1.85378123i9.71215811 + 0.01269197i5.09E-061.45E-052.10551−2172
13−0.691512−1.12922847 − 1.02480556i3.78176946 − 0.02894603i4.21E-065.54E-072.02811−2166
14−0.654774−0.9615658 + 0.5828065i1.85727226 + 0.22306481i2.46E-061.41E-071.9957−1099
15−0.6390460.72967089 + 0.94166299i0.62407461 − 0.91988663i7.18E-071.54E-072.048412128
16−0.6164043.68514466 + 0.05398708i−1.20114498 − 1.03004629i6.54E-066.96E-071.98811−2150
17−0.598098−1.12922847 + 1.02480556i3.78176946 + 0.02894603i3.10E-065.54E-072.04711−262
18−0.5917843.68514466 − 0.05398708i−1.20114498 + 1.03004629i8.24E-066.96E-072.00081−267
19−0.5311766.67715546 − 0.02130875i−0.01402295 + 1.7283683i1.41E-084.70E-061.9773−1252
20−0.52773812.78275364 − 0.00603578i−0.00730626 + 2.36240058i8.25E-072.69E-052.1144−12193
21−0.5111821.59511265 + 0.92462709i0.28169602 − 0.00845802i3.61E-089.30E-081.9993−1270
22−0.5031860.01499973 − 1.73190712i6.67574976 − 0.04157565i3.33E-053.96E-062.1931−1−257
23−0.490941−3.34309333 + 1.46646036i12.79048871 + 0.01073275i7.06E-074.43E-052.124812194
24−0.4907530.00737884 − 2.36289538i12.78266688 − 0.00836806i8.19E-073.00E-052.1172−1−2199
25−0.47018312.78275364 + 0.00603578i−0.00730626 − 2.36240058i8.35E-072.69E-052.1169−12200
26−0.468001−3.34309333 − 1.46646036i12.79048871 − 0.01073275i9.49E-074.43E-052.062212186
27−0.46395912.78190312 − 0.00664448i−3.36083257 − 1.47015693i3.42E-073.36E-052.153912200
28−0.4587771.30993837 − 0.36023537i0.99738945 − 0.66890573i1.16E-068.98E-081.9828−1253
29−0.4375850.01499973 + 1.73190712i6.67574975 + 0.04157565i8.14E-055.27E-062.0388−1−257
30−0.42911912.78190312 + 0.00664448i−3.36083257 + 1.47015693i2.80E-073.36E-052.148612184
31−0.4175316.67715546 + 0.02130875i−0.01402295 − 1.72836831i8.14E-055.37E-062.0768−1249
32−0.32130315.88192661 + 0.00033296i−1.64153442 − 2.37001819i1.37E-074.16E-052.11861−2192
33−0.29525915.88518055 + 0.00474592i−5.70013516 + 0.67487422i4.69E-085.96E-052.15021−2195
34−0.287905−5.68870793 + 0.65962195i15.8889979 + 0.00516137i7.23E-072.87E-052.01201−2177
35−0.27860115.88518055 − 0.00474592i−5.70013516 − 0.67487422i1.15E-075.96E-052.05241−2197
36−0.264047−5.68870793 − 0.65962195i15.8889979 − 0.00516137i3.32E-082.87E-052.17311−2194
37−0.2637976.66385192 − 0.00958162i−3.05535199 − 0.51526776i3.78E-055.76E-062.046612110
38−0.242447−4.592858569.731296671.34E-072.16E-052.79851−2199
39−0.2401079.71878344−4.62771765.48E-077.22E-062.66241−2173
40−0.235095−3.01831353 + 0.50589193i6.69924181 + 0.01613676i3.61E-081.43E-061.97621277
41−0.2128676.66385192 + 0.00958162i−3.05535199 + 0.51526775i8.78E-056.78E-061.98151257
42−0.21172519.0075656−7.549610791.61E-044.83E-050.776712197
43−0.209337−3.01831353 − 0.50589194i6.69924181 − 0.01613676i7.73E-053.05E-061.99191264
44−0.204931−7.5368636419.009858851.00E-083.66E-052.086712158
45−0.18178312.81002482−7.109665461.32E-073.93E-052.251712196
46−0.181407−9.3020253518.994740191.00E-087.22E-052.1044−10197
47−0.178655−7.0966518812.815424661.00E-084.79E-052.695912188
48−0.17562318.99311678−9.30049381.00E-086.54E-052.1290−10187
49−0.125919−6.399374879.68519631.81E-062.11E-052.0664−10195
50−0.0924579.67778512−6.402357485.02E-072.22E-052.2493−10183
51−0.07679719.02754978−12.955596181.29E-044.95E-050.950312156
Table 3. Results obtained using the iteration function (74) with the fractional pseudo-Newton method [5].
Table 3. Results obtained using the iteration function (74) with the fractional pseudo-Newton method [5].
α [ x k ] 1 [ x k ] 2 x k x k 1 2 f ( x k ) 2 P k Δ d ( x k ) Δ t ( x k ) k
10.9970256.40346174−9.687456297.48E-062.99E-052.0712−1011
20.997053−6.8254374−6.807365331.34E-061.17E-052.19701−237
30.9970619.733949444.594183093.34E-061.33E-052.12621233
40.9981134.625989719.721388092.20E-071.78E-052.80791213
50.998133−9.679339626.408212553.58E-073.16E-052.1427−1019
60.998185−3.75670368 + 0.00677324i1.14479461 − 0.90835133i6.32E-088.42E-071.98601−2184
70.998189−3.75670368 − 0.00677324i1.14479461 + 0.90835133i2.47E-068.42E-071.98091−2126
80.998229−12.81526848−7.098787843.61E-083.00E-052.17031−222
90.998469−12.6804252−15.854724551.00E-084.54E-052.2093−1049
100.9990451.52183063 − 0.04852431i−1.07285283 − 0.62177498i8.25E-066.40E-081.9673−10161
110.9990657.09845974−12.814498747.07E-082.76E-052.21221233
120.9999099.816023589.808951212.24E-084.07E-052.11241225
130.999917−7.0966518812.815424661.06E-074.79E-052.17261226
140.999921−6.802748426.82636877.69E-061.15E-052.21261228
150.999925−12.809362427.112204531.30E-075.55E-052.27101228
160.999929−9.73194065−4.583684112.72E-065.55E-062.72751262
170.999937−9.81505776−9.807604761.13E-042.80E-051.42371218
180.999941−4.61844557−9.718528061.53E-061.39E-052.84051261
190.9999456.80674644−6.8207444.50E-061.44E-052.185512176
200.99995312.81002482−7.109665463.41E-073.93E-052.28681244
211.0033936.821674826.802125188.31E-061.48E-052.17951−25
221.004893−0.55742729 − 0.65679566i−0.20882106 − 1.14800938i3.11E-071.41E-072.0709−1064
231.0049253.68514466 + 0.05398708i−1.20114498 − 1.03004629i5.10E-086.96E-071.96861−2119
241.004969−1.12922847 + 1.02480556i3.78176946 + 0.02894603i4.58E-085.54E-071.99711−2137
251.0050250.72967089 − 0.94166299i0.62407461 + 0.91988663i2.37E-051.54E-071.99831284
261.0055490.29601303−4.651659061.49E-054.30E-072.1087−1−215
271.0058493.68514466 − 0.05398708i−1.20114498 + 1.03004629i6.25E-086.96E-071.98901−2184
281.005937−1.12922847 − 1.02480556i3.78176946 − 0.02894603i1.41E-085.54E-071.97351−282
291.006421−1.3914151 − 0.70003547i0.17621271 + 1.00035774i1.02E-041.46E-072.0270−1050
301.0064371.30993837 − 0.36023537i0.99738945 − 0.66890573i4.91E-068.98E-081.9863−1244
311.006465−0.55742729 + 0.65679566i−0.20882106 + 1.14800938i6.32E-081.41E-072.1428−1038
321.007481−3.95538299−3.885433299.14E-053.64E-062.3031125
331.0087131.59511265 − 0.92462709i0.28169602 + 0.00845802i1.63E-069.30E-082.1184−1220
341.009697−2.30034423−0.459504434.99E-067.08E-082.1235−106
351.0098170.09238517 + 0.91135195i−1.48626899 − 0.45588717i5.70E-071.37E-071.97271−228
361.0098210.09238517 − 0.91135195i−1.48626899 + 0.45588717i1.41E-081.37E-072.00531−234
371.009861−1.3914151 + 0.70003546i0.17621271 − 1.00035774i9.45E-052.55E-072.0119−1022
381.0103851.30993837 + 0.36023537i0.99738945 + 0.66890573i4.13E-058.98E-081.9803−1238
391.9083620.72967089 + 0.94166298i0.62407461 − 0.91988663i8.45E-051.83E-071.96421214
401.9134381.52183063 + 0.04852431i−1.07285283 + 0.62177498i1.10E-076.40E-081.9787−1013
411.918790−1.66983169−1.478433971.14E-046.06E-082.24931−25
421.9207781.59511265 + 0.92462709i0.28169602 − 0.00845802i4.58E-089.30E-081.9835−1217
431.9225063.8890101−3.988788881.22E-071.48E-062.14611−219
441.928090−3.918439033.947770851.97E-072.03E-062.09741−275
451.9281984.769447440.246825854.45E-054.75E-072.0605−1219
461.938338−0.14118954.756298366.65E-064.42E-072.0695−1−212
472.027490−4.63811516−0.173660273.50E-075.12E-072.4473−126
482.027714−0.9615658 − 0.5828065i1.85727226 − 0.22306481i1.22E-061.41E-072.0016−1080
492.027802−0.9615658 + 0.5828065i1.85727226 + 0.22306481i8.66E-071.41E-072.0016−1023
502.0280823.981154713.921701254.47E-081.50E-062.0806129
512.0502220.10127937 − 0.65790456i−0.69552033 − 1.28219351i4.24E-082.55E-081.92781−29
522.892915−0.2017252−2.138620138.96E-051.79E-072.0069−105
532.979539−9.68548222−6.404223871.48E-056.43E-062.0748−1043
542.979543−6.40734755−9.677429591.68E-057.33E-062.0878−1043
552.9830156.66385192 − 0.00958162i−3.05535199 − 0.51526776i4.88E-065.76E-061.97011265
562.9832791.07448447 + 0.94219835i−3.88986554 + 0.11532861i7.72E-059.22E-072.02291−292
572.989991−3.01831353 + 0.50589193i6.69924181 + 0.01613676i5.64E-061.43E-061.967612101
582.99023512.78190312 + 0.00664448i−3.36083257 + 1.47015693i3.33E-063.36E-052.04431227
592.990955−3.34309333 − 1.46646036i12.79048871 − 0.01073275i2.29E-064.43E-052.04441226
603.002283−12.78071432 + 0.00620911i3.36250229 + 1.47445201i7.91E-061.73E-052.04861238
613.0047199.5547747112.753082683.30E-071.49E-052.1260−109
623.013455−6.65415389 + 0.00918318i3.06649242 + 0.56418379i5.49E-064.40E-061.97951290
633.0139119.687172416.398608521.86E-057.26E-062.0743−10199
643.0143436.403229679.67969592.04E-051.09E-052.0718−10189
653.9829166.66385192 + 0.00958162i−3.05535199 + 0.51526776i8.57E-055.76E-062.10021287
663.98299212.78190312 − 0.00664448i−3.36083257 − 1.47015693i1.25E-053.36E-052.05051235
673.9838843.02691487 + 0.54276524i−6.68492207 + 0.01504716i1.41E-085.46E-061.975112117
683.9905683.34433054 + 1.46955548i−12.78880218 + 0.01004339i7.60E-073.97E-052.13911220
693.9905803.34433054 − 1.46955548i−12.78880218 − 0.01004339i9.72E-073.97E-052.13981223
703.991060−3.01831353 − 0.50589193i6.69924181 − 0.01613676i9.65E-061.43E-061.96721281
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Torres-Hernandez, A.; Brambila-Paz, F. Sets of Fractional Operators and Numerical Estimation of the Order of Convergence of a Family of Fractional Fixed-Point Methods. Fractal Fract. 2021, 5, 240. https://doi.org/10.3390/fractalfract5040240

AMA Style

Torres-Hernandez A, Brambila-Paz F. Sets of Fractional Operators and Numerical Estimation of the Order of Convergence of a Family of Fractional Fixed-Point Methods. Fractal and Fractional. 2021; 5(4):240. https://doi.org/10.3390/fractalfract5040240

Chicago/Turabian Style

Torres-Hernandez, A., and F. Brambila-Paz. 2021. "Sets of Fractional Operators and Numerical Estimation of the Order of Convergence of a Family of Fractional Fixed-Point Methods" Fractal and Fractional 5, no. 4: 240. https://doi.org/10.3390/fractalfract5040240

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