1. Introduction
The measure theory has an important role in formulating calculus on fractal sets [
1,
2,
3,
4,
5,
6,
7]. The most important (and well-known) measures in fractal geometry are the Hausdorff measure, the packing measure, and the Hewitt–Stromberg measure. These measures have been investigated by several authors, highlighting their importance in the study of local properties of fractals and products of fractals [
8,
9,
10,
11,
12,
13,
14,
15,
16,
17,
18,
19]. Such measures appear explicitly, for example, in Pesin’s monograph and implicitly in Mattila’s text [
20,
21]. Finer measures have been used in the built analysis on a wider class of fractal sets [
1]. Fractal Cantor-like sets and their measures were investigated in [
7]. The quasi-Lipschitz equivalence of the Moran fractals was studied utilizing the Hausdorff dimension [
22]. One of the purposes of this paper is to define and study a class of the Hewitt-Stromberg measures on Moran fractal sets. While Hausdorff and packing measures are defined using coverings and packing by families of sets with diameters that are less than a given positive number
, say, the Hewitt-Stromberg measures are defined using ’packing of balls’ with a fixed diameter
.
A Mathematical Theory of Communication, Claude E. Shannon’s 1948 article [
23], was the first to establish the idea of entropy. Entropy is “a measure of the uncertainty associated with a random variable”, according to Wikipedia. In this context, “message” refers to a particular realization of the random variable, and “term” usually refers to the Shannon entropy, which measures the anticipated value of the information contained in a message, typically in unit-like bits. The Shannon entropy, on the other hand, measures the average amount of information that is lost when one does not know the value of the random variable. The introduction of Shannon entropy can be regarded as one of the most significant achievements during the previous fifty years in the literature on probabilistic uncertainty. Entropy created the framework for the thorough knowledge of communication theory. Several academic fields, such as statistical thermodynamics, spectral analysis, urban and regional planning, image reconstruction, business, queuing theory, economics, finance, operations research, biology, and manufacturing, among others, have used the concept of entropy. These applications will be discussed in the following section. This section reviews entropy as well as the related ideas of maximum entropy and directed divergence.
The Kolmogorov entropy is a crucial metric for describing how chaotic a system is. With relation to the phase point’s location on the attractor, it provides the average rate of information loss. The Rényi entropy [
24] can be used to calculate the Kolmogorov entropy. The Shannon entropy in information theory is a particular instance of Rényi entropy. The thermodynamic entropy is the result of the Shannon entropy and Boltzmann constant. The fractal dimension is what distinguishes fractal formations. The family of fractal dimensions is limitless. In an e-dimensional space, a generalized fractal dimension can be defined. There is a direct relationship between the Rényi entropy and the generalized fractal dimension. The main purpose of this paper is to study some formulas for some fractal dimensions and measures of the image of measures that are computed using entropy on some Moran sets.
In the present paper, we investigate a class of Moran sets in general metric spaces and we discuss some proprieties and the equivalence of the fractal measures on these sets. As an application of the main result, we obtain similar formulas of measures and dimensions of the image of -invariant measures in symbolic space using entropy as in the classical case of self-similar sets. We give some interesting examples; in particular, we discuss a group of Moran sets and provide some statistical explanations for the dimensions and associated geometrical measures.
The outline of the paper is as follows: In the next section, we define modified Hausdorff and packing measures. In
Section 3, Moran fractal sets are defined and strong separation conditions are given. Moreover, the equivalence of the Hausdorff measure, the packing measure, and the Hewitt-Stromberg measures are proved.
Section 4 gives some results about the Hewitt–Stromberg measures and dimensions of the images of
-invariant ones in symbolic space using entropy.
Section 5 presents a conclusion.
2. The Fractal Measures
We first recall the definition of the centered Hausdorff measure, the packing measure, and the Hewitt–Stromberg measure. Throughout this paper,
stands for the closed ball
For
,
and
, we define the packing pre-measure,
In a similar way, we define the Hausdorff pre-measure,
Function
is
-sub-additive but not increasing, and function
is increasing but not
-sub-additive. That is why we introduce the modifications of the Hausdorff and packing measures
and
:
The Hewitt–Stromberg pre-measure of
E is defined by
where
is the minimum number of closed balls with diameter
r, needed to cover
E (the largest number of disjoint balls of radius
r with centers in
E). The Hewitt–Stromberg measure of
E is defined by
The functions
,
, and
are metric outer measures and, thus, measures on the Borel family of subsets of
(see [
15,
16,
25,
26,
27,
28,
29]). An important feature of the Hausdorff measure, packing measure, and Hewitt–Stromberg measure is that
The Hausdorff dimension, the packing dimension, and the Hewitt–Stromberg dimension (modified lower box dimension) can be defined by
It follows immediately from the definitions that
where
is the modified upper box dimension (see for example [
1,
15,
29,
30]).
3. The Equivalence of Fractal Measures on Moran Fractal Sets
We will start by defining the Moran sets. Let
and
be, respectively, two sequences of positive integers and positive vectors, such that
For any
, such that
, let
and
We also set
and
Considering
,
, we set
Definition 1 ([
31,
32]).
Let X be a complete metric space and a compact set with no empty interior (for convenience, we assume that the diameter of I is 1). The collection of subsets of I is called having Moran structure if- 1.
For any , is similar to I. That is, there exists a similar transformationwhere we assume that . - 2.
For all , , are subsets of andwhere denotes the interior of I. - 3.
For all and , taking , we havewhere denotes the diameter of I.
Suppose that
is a collection of subsets of
I having Moran structure. We call
a Moran set determined by
, and call
the
k-order fundamental sets of
E.
I is called the original set of
E. We assume
Then, for all
, the set
is a single point. We shall denote it by
. For all
, we use the abbreviation
for the first
k elements of the sequence,
Here, we consider a class of Moran sets E which satisfy a special property called the strong separation condition (SSC), i.e., Take any . Let be the -order fundamental subsets. We say that satisfies the (SSC) if where is a sequence of positive real numbers, such that
We focus on the equivalence of the centered Hausdorff measure, the packing measure, and the Hewitt–Stromberg measure for the Moran sets meeting the strong separation requirement. We outline the resources and preliminary findings that will be used in the validation of our major findings.
Lemma 1. Let μ be a finite Borel measure on and E be a bounded Borel set. Then there exist two positive constants , such that Proof. Follows directly from Theorem 2.1 in [
32]. □
Lemma 2 ([
31,
32]).
Suppose that is a Moran set satisfying (SSC) and let μ be a finite Borel measure, such that . Then, there exist positive constants relating to , with which the following inequalities hold for any and Let
be a finite Borel measure on
, we define the dimension of a measure
by
where
Definition 2. We say that two Borel measures μ and ν are equivalent and we write if for any Borel set A, we have
Theorem 1. Suppose that is a Moran set satisfying (SSC). Let μ be a finite Borel measure such that .
- 1.
Suppose that there exists γ, such that Then, .
- 2.
Suppose that μ satisfies a stronger condition at γ, i.e., Then, .
Proof. - 1.
From Lemmas 1 and 2, we can see that if
, then
where
. It follows that
.
On the other hand, we can also see that if
, then for all set
such that
, we have
where
. This leads to
. Thus,
From
, we have
- 2.
Suppose that
satisfies (
2) and set
Then
. Suppose that
for any
. Then, there exists a sequence of open sets
, such that
and
, for all
Putting
and taking into account that
From Lemma 1, we can see that, for any
and
, we have
Letting
, we obtain
for any
This leads to
On the other hand, if we assume that
, for all
, then setting
we easily obtain, from Lemma 1, where
This implies that , for any . Now, thanks to the fact that we deduce that , which ends the proof.
□
Example 1. We will consider in this example a special case in which the conditions of all the numbers depend only on the length and the last variable, i.e.,We define the pressure function π and the Gibbs measure defined respectively byandwhere for any , . It is not difficult to see that π is strictly decreasing and continuous. Moreover, we haveSince, for all n, we havethenNow, suppose that is the unique number, such thatIt is clear that , and then and It follows from Theorem 1 that . Theorem 2. Suppose that is a Moran set satisfying (SSC). Let μ be a finite Borel measure with and such thatThenIn addition, Proof. Follows from Theorem 1 and ([
32], Theorems 4.2 and 4.3). □
Example 2. Let , and far all and . In this case, the Moran set E is the classical ternary Cantor set. Let and μ be a probability measure on I such thatIt is clear that andTherefore, Example 3. Let be a two-letter alphabet, and the free monoid generated by A. Let F be the homomorphism on defined by and . It is easy to see that . We denote by the length of the word , thusTherefore, as , we have the infinite sequencewhich is called the Fibonacci sequence. For any write . We denote by the number of the occurrence of the letter the number of occurrences of Then, . It follows that where . Let . In the Moran construction above, letThen we construct the homogeneous Moran set related to the Fibonacci sequence and denote it by . Through the construction of we haveThere exists a probability measure supported by E such that for any and ,Let where . It is clear that there exists a positive constant c, such thatThis implies thatandFinally, Theorem 1 gives that where . Remark 1. As we analyze the Hewitt–Stromberg measures and dimensions, our findings are closely comparable to those in the cited work [32], for which M. Dai also demonstrates similar findings for the Hausdorff and packing measures. Even though the results are parallel, we want to point out that the goal of our paper is to draw some useful inferences about the Hewitt–Stromberg measures and dimensions of the image measure of τ-invariant ergodic Borel probability measures, and provide a statistical explanation for the dimensions and associated geometrical measures in the next section. 4. The Dimension of Image Measure
In this section, we use entropy to derive analogous formulas for the Hewitt–Stromberg measures and the image dimensions of -invariant measures in a symbolic space. We focus on a particular class of Moran sets and provide some statistical explanations for the dimensions and associated geometrical measures.
Let
E be a Moran set satisfying the strong separation condition and
be a probability measure defined on the
-algebra
of subsets of
D. Wa said that
preserves the measure
(or
is
-invariant), if
An invariant probability measure is said to be ergodic if for every set , has either zero or full measure.
Theorem 3 ([
33]).
Let μ be the τ-invariant ergodic probability measure on D and . Then We define the entropy
of
with respect to the measure
by
In this section, we will study the image measure of
by
denoted by
and defined by
where
is the Borel algebra on
and
is a measurable map. We will assume through this section that
and
for all
. Our main result in this section is the following.
Theorem 4. Let E be a Moran set satisfying the strong separation condition and μ be a τ-invariant ergodic Borel probability measures on D.
- 1.
- 2.
If we denote by then
Proof. - 1.
We recall that
for all
and then using (
6), we set
We consider, for
, the set
From (
5) we have
and since
is ergodic, it follows from Theorem 3 that there exists
such that
and
by Shannon–McMillan–Breiman Theorem. Therefore,
, which implies by using (
7), for
that
for almost every
and
n big enough. Now, we put
, such that
. For all
with
, we have
for
. By using Lemma 1, where there exists a positive constant
, such that
which implies that
On the other hand, let
B, such that
and take
. Since
, then, using again Lemma 1, we can deduce that
and then we have equality using (
8).
- 2.
If we assume that
then, for each
, there exists
, such that
Now consider the following sets
and
Since
is ergodic, these sets are either null or full with respect to the measure
. Now, Suppose that
, where
, and put
where
It is clear that
as
, which implies that
, for any
. Moreover,
which gives, from Lemma 1, where there exists a positive constant
, such that
Choose
k large enough to satisfy
. Then
which creates a contradiction if
. Now, if
, then the above inequalities imply that
for any
n and any sufficiently large
k, which is not possible. Finally, we conclude that
.
The two other assertions may be proved in the same way. In what follows, we will only prove the second one and keep the other to the readers. We suppose conversely that
a.e.
w. It follows from Lemma 1 that
whenever
and then
□
Example 4. Consider again the special case studied in Example 1 in which the conditions of all the numbers depend only on the length and the last variable, i.e.,Let α be the unique number, such thatand the associated Gibbs measure (see (4)). ThenRecall the definition of the pressure function π (see (3)), thenwhich implies thatandIt follows from Theorem 1 thatMoreover, if we assume thatthen by using Theorems 1 and 4 we have 5. Conclusions
In this study, we focus on the characteristics of a class of Moran sets for the centered Hausdorff measure, the Packing measure, and the Hewitt–Stromberg measure. We primarily explore the equivalence of these measures for a class of Moran sets meeting the strong separation criterion. We specifically address a class of Moran sets in general metric spaces with respect to the equality of the three aforementioned dimensions and their accompanying measures. Using entropy, we derive measurements and dimensions of the image of -invariant measures in symbolic spaces that are analogous to those obtained in the traditional situation of self-similar sets. Moreover, we provide several intriguing examples, focusing in particular on a class of Moran sets and providing some statistical explanations for dimensions and corresponding geometrical measures.
Author Contributions
Writing—review & editing, N.A. and B.S. Investigation, N.A and B.S. All authors have read and agreed to the published version of the manuscript.
Funding
The authors extend their appreciation to the Deanship of Scientific Research, Vice Presidency for Graduate Studies and Scientific Research at King Faisal University, Saudi Arabia, for financial support under the annual funding track [GRANT3069].
Data Availability Statement
All data generated or analyzed during this study are included in this published article.
Conflicts of Interest
The authors declare no conflict of interest.
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