1. Introduction
The concept of entropy to ergodic theory was introduced by Kolmogorov [
1] and Sinai [
2] in relation to the problem of isomorphisms of dynamical systems. Let
be a dynamical system, i.e., let
be a probability space and
be a measure
preserving transformation (i.e.,
implies
and
). If
is a measurable partition of a probability space
with probabilities
then the entropy of the partition
is defined as the number
where
is the Shannon entropy function defined by
if
and
(cf. [
3]). If
and
are two measurable partitions of
then the family
is a measurable partition of
Evidently, the family
is also a measurable partition of
The Kolmogorov–Sinai entropy of a dynamical system
is defined as the number
where the supremum is taken over all finite measurable partitions
of probability space
and
is defined as
Using the proposed concept, Kolmogorov and Sinai showed the existence of non-isomorphic Bernoulli shifts.
The Kolmogorov–Sinai entropy has proved to be widely applicable. It is used to measure the complexity of the motion in a dynamical system; Russian mathematician Pesin (cf. [
4]) demonstrated that when the Kolmogorov–Sinai entropy is greater than zero, the dynamical system will display chaos. Successful applications of Kolmogorov–Sinai entropy of a dynamical system stimulated the study of alternative entropy measures of dynamical systems. We note that in Reference [
5], the notion of logical entropy
of a dynamical system
was proposed. It has turned out that if the Shannon entropy function
F is replaced by the function
defined, for every
by the following equation:
the results analogous to the case of Kolmogorov–Sinai entropy theory are obtained. The logical entropy
is invariant under isomorphisms of dynamical systems; therefore, it can be used as an alternative tool for distinguishing some non-isomorphic dynamical systems. We note that some other recently published results concerning the logical entropy can be found, for example, in References [
6,
7,
8,
9,
10,
11,
12,
13,
14,
15,
16,
17].
In Reference [
9], the logical entropy of fuzzy dynamical systems was studied. We remind the reader that fuzzy set theory was introduced by Zadeh in Reference [
18] as an extension of the classical Cantor set theory. While in the classical set theory, the membership of elements in a set is assessed in binary terms according to a bivalent condition—an element either belongs or does not belong to the set, fuzzy set theory allows the assessment of the membership of elements in a set. This is described by a membership function which assigns to every element a degree of membership ranging in the real unit interval
Fuzzy sets are a generalization of classical sets, because the characteristic functions of classical sets are special cases of the membership functions of fuzzy sets. Fuzzy set theory can be used in a wide range of domains in which information is incomplete or imprecise. Since the seminal publication [
18], fuzzy set theory has advanced in various mathematical disciplines and it has also found many significant practical applications—for example, in control theory, data analysis, artificial intelligence, and computational intelligence. Of course, many publications (see e.g., [
19,
20,
21,
22,
23,
24,
25,
26,
27,
28,
29,
30,
31,
32,
33]) are devoted to the study of entropy in the fuzzy case. In our work [
9], we introduced the concept of logical entropy of fuzzy dynamical systems. Instead of measurable partitions, we considered so-called fuzzy partitions that can be used for modeling experiments with vague, incomplete information. The aim of this paper is to generalize the results regarding the logical entropy in the fuzzy case given in Reference [
9] to the case of Tsallis entropy.
Tsallis entropy, as a generalization of standard Shannon-type entropy, was introduced by Constantino Tsallis in Reference [
34]. Since then, the concept has been extensively studied. Tsallis entropy in its form is identical with Havrda–Charvát alpha-entropy, introduced in Reference [
35] in the framework of information theory. If
is a probability distribution, then its Tsallis entropy of order
where
is defined by the following equation:
Tsallis entropy plays a significant role in the non-extensive statistical mechanics of complex systems [
36]. The number
is the so-called entropic index; it characterizes the degree of non-extensivity of the system. Applications of Tsallis entropy have been found for a wide range of phenomena in diverse disciplines such as chemistry, physics, geophysics, biology, economics, medicine, etc. (see, e.g., [
37,
38,
39,
40,
41,
42,
43,
44,
45,
46,
47,
48,
49]). Tsallis entropy is also applicable to large domains in communication systems (cf. [
50]); its image processing applications through information theory can be found, for example, in Reference [
51]. For a full and regularly updated bibliography, see Reference [
52].
Let us define, for any real number
the function
by equation:
for every
Obviously, for
we can write:
If we put
into Equation (4), then we obtain:
which is the logical entropy of the probability distribution
studied in Reference [
6]. The logical entropy of partitions in a product MV-algebra (cf. [
53,
54,
55]) was defined and studied in Reference [
10]. Another recently published paper [
56] was devoted to the mathematical modeling of Tsallis entropy in product MV-algebra dynamical systems. It should be noted that the full tribe of fuzzy sets represents a special case of product MV-algebras; therefore, the results provided in References [
10,
56] can be immediately applied to this important case of fuzzy sets. It is known that there are many possibilities for defining operations over fuzzy sets; for an overview, see Reference [
57]. While in the case of the full tribe of fuzzy sets, Łukasiewicz connectives were applied, the access in this paper is based on standard Zadeh connectives [
18].
The presentation in this paper is structured as follows.
Section 2 provides definitions, notations, and some known facts used in the article. In
Section 3, the concept of the Tsallis entropy of order
of a fuzzy partition and its conditional version are introduced and studied. It is shown that the proposed definitions of Tsallis entropies generalize the logical entropy of fuzzy partitions studied in Reference [
9]; it is enough to put
In addition, they are consistent, in the case of the limit of
with the Shannon-type entropy of fuzzy partitions proposed in Reference [
29] (see also [
30,
31]).
Section 4 deals with the mathematical modeling of the Tsallis entropy of fuzzy dynamical systems. Using the proposed notion of Tsallis entropy of a fuzzy partition, we define the Tsallis entropy of order
of a fuzzy dynamical system. It turns out that the Tsallis entropy is an invariant under isomorphisms of fuzzy dynamical systems, and can thus be used as a tool for distinguishing non-isomorphic fuzzy dynamical systems. Finally, we formulate a version of the Kolmogorov–Sinai theorem on generators for the case of the Tsallis entropy of a fuzzy dynamical system. The last section provides brief closing remarks.
2. Basic Definitions, Notations, and Facts
Let us start with recalling the basic terms and some of the known results that are used in the article.
It is known that the classical Cantor set
A in the universe
can be represented by the characteristic function
mapping
into the set
namely, for
if
and
if
A fuzzy subset of
is defined by a membership function mapping
into the unit interval
: by a fuzzy subset of
X, we understand a map
(where the considered fuzzy set is identified with its membership function). The value
is considered as a degree of membership of the element
to the fuzzy set
If
then
x does not belong to
if
then
x belongs to
and if
then
x possibly belongs to
but this is not certain. For the last case, the nearer to 1 the value
is, the higher the possibility that
x belongs to
Let
X be a non-empty set. By the symbols
and
, we denote the fuzzy union and the fuzzy intersection of a sequence
of fuzzy subsets of
X, respectively, in the sense of Zadeh [
18]; i.e.,
and
The symbol
denotes the complement of fuzzy subset
of
X, i.e.,
Here,
indicates the constant function with the value 1. Analogously, the symbols
and
will indicate the constant functions with the value
and 0, respectively. Additionally, the relation
will indicate the usual order relation of fuzzy subsets of
X, i.e.,
if and only if
for every
The complementation
satisfies, for every fuzzy subset
of
X, the conditions:
and
implies
Further, for any sequence
of fuzzy subsets of
X, the de Morgan laws hold:
and
A fuzzy measurable space [
58] is a couple
where
is a non-empty set, and
M is a fuzzy
algebra of fuzzy subsets of
i.e.,
containing
excluding
closed under the operation
(i.e., if
then
and countable supremums (i.e., satisfying the implication if
then
It can be verified that the concept of a fuzzy measurable space generalizes the notion of a measurable space
from the classical measure theory; it is enough to put
where
is the characteristic function of the set
Using this procedure, the classical model can be embedded into the fuzzy case. Fuzzy sets
such that
are considered to be separated, while fuzzy sets
such that
are considered to be W-separated [
59]. A fuzzy set
such that
is called a W-universum; a fuzzy set
such that
is called a W-empty fuzzy set. It can be proved that a fuzzy set
is a W-universum if and only if there exists a fuzzy set
such that
The following definition was introduced in Reference [
60].
Definition 1 [
60]
. Let be a fuzzy measurable space. A map is called a fuzzy P-measure, if the following two conditions are satisfied: (i) for every (ii) if is a sequence of pairwise W-separated fuzzy subsets from M, then The triplet is said to be a fuzzy probability space. A fuzzy subset belonging to the fuzzy
algebra
M is regarded as a fuzzy event; W-separated fuzzy events are regarded as mutually exclusive events. A W-universum is considered as a certain event, while a W-empty set as an impossible event. The fuzzy P-measure
has properties analogous to properties of a classical probability measure (for the proof, see [
60]). We present some of them below.
- (P1)
for every
- (P2)
s is non-decreasing, i.e., if with then
- (P3)
for every
- (P4)
Let Then for all if and only if
- (P5)
If such that then
Definition 2. Letbe a fuzzy probability space. Ifthen we define: Let
be a fuzzy P-measure, and let
such that
Then the map
defined by Equation (5) is a fuzzy P-measure. It plays the role of a conditional probability measure on the family
M of fuzzy events. The following definition of a fuzzy partition was introduced in Reference [
61].
Definition 3 [
61]
. A fuzzy partition of a fuzzy probability space is a family of pairwise W-separated fuzzy sets from M with the property In the class of all fuzzy partitions of fuzzy probability space we define the refinement partial order as follows. If and are two fuzzy partitions of then we say that is a refinement of (and write if there exists a partition of the set such that for Further, we set One can easily to verify that the family is a family of pairwise W-separated fuzzy sets from M; moreover, by the property (P4), we obtain This means that is a fuzzy partition of it represents a combined experiment consisting of a realization of the experiments and If are fuzzy partitions of then we put
Example 1. Letbe a classical probability space. If we setwhereis the characteristic function of the setand define the mapby the formulafor everythen it is easy to verify that the systemis a fuzzy probability space. A measurable partitionof probability spacecan be viewed as a fuzzy partition if we considerinstead of
Definition 4. Two fuzzy partitionsandof a fuzzy probability spaceare said to be statistically independent iffor
The following definition of logical entropy and conditional logical entropy of fuzzy partitions was introduced in Reference [
9].
Definition 5 ([
9])
. Let be two fuzzy partitions of a fuzzy probability space We define the logical entropy of by:
The conditional logical entropy ofgivenis defined by the following equation: Remark 1. It is evident that we can write Equation (6) in the formwhereis the logical entropy function defined by Equation (1). Equation (7) can be expressed in the following form: In Reference [
9], we proved the basic properties of the suggested entropy measures. Specifically, the logical entropy of fuzzy partitions was shown to have the property of sub-additivity (i.e.,
for arbitrary fuzzy partitions
of
and not to have the property of additivity. It satisfies the following weaker property: if fuzzy partitions
of
are statistically independent, then
The definition of the Shannon-type entropy of fuzzy partitions was proposed in Reference [
29], and is given as follows.
Definition 6 ([
29])
. Let be two fuzzy partitions of a fuzzy probability space We define the entropy of by:The conditional entropy ofgivenis defined by the following equation: The conditional entropy ofgivenis defined by the following equation: In Definition 6, it is assumed that
if
The base of the logarithm can be any positive real number; depending on the selected base
b of the logarithm, information is measured in bits (
b = 2), nats (
b =
e), or dits (
b = 10). In Reference [
29], it was shown that the proposed entropy of fuzzy partitions has properties analogous to the properties of Shannon’s entropy of classical measurable partitions. Specifically, for any fuzzy partitions
of a fuzzy probability space
it holds
with equality if and only if the fuzzy partitions
are statistically independent. This means that the Shannon-type entropy of fuzzy partitions has the sub-additivity property as well as the additivity property.
In the succeeding sections, we will use the following known Jensen inequality: for a real concave function
real numbers
in its domain and non-negative real numbers
satisfying the condition
it holds that:
and the inequality is reversed if
is a real convex function. The equality in Equation (10) holds if and only if
or
is a linear function.
3. The Tsallis Entropy of Fuzzy Partitions
In this section, we define and study the Tsallis entropy of fuzzy partitions and its conditional version. Here, we assume that is a fuzzy probability space.
Definition 7. Letbe a fuzzy partition ofThen its Tsallis entropy of orderwherewith respect tois defined by the following equation: Remark 2. For simplicity, we writeinstead of
Definition 8. Letandbe two fuzzy partitions ofWe define the conditional Tsallis entropy of orderwhereofgivenas the number: Example 2. Let us consider the fuzzy partitionwhereis a W-universum. It represents a fuzzy experiment resulting in a certain event. Evidently,i.e., the fuzzy experiment, the outcome of which is a certain event, has zero Tsallis entropy. Furthermore, for every fuzzy partitionofdue to property (P4), we obtain: Let
be the function defined by Equation (3). Then we can write Equation (11) in the following equivalent form:
It can be verified that the function
is, for every
concave and non-negative. The non-negativity of the function
(for the proof, see [
56]) implies that the Tsallis entropy is always non-negative. Obviously, by inserting
into Equation (11), we obtain the logical entropy
If we insert
into Equation (12), we obtain the conditional logical entropy
In addition, as a limiting case for
we obtain the Shannon entropy of fuzzy partitions expressed in nats, as shown by the following theorems. In the proofs, we will need the following propositions.
Proposition 1. Letbe a fuzzy partition of a fuzzy probability spaceThen
- (i)
for every
- (ii)
for everysuch that
Proof. The claim (i) is obtained using the condition (P4). If
such that
then using the part (i), we obtain:
□
Proposition 2. Letbe fuzzy partitions ofThen:
- (i)
implies
- (ii)
andimplies
Proof. Let
- (i)
Let us suppose that
Then there exists a partition
of the set
such that
for
Set
for
We then obtain:
for
which means that
- (ii)
Let us suppose that
and
Then there exists a partition
of the set
such that
for
and there exists a partition
of the set
such that
for
Set
for
We thus obtain:
for
which means that
□
Theorem 1. Letandbe two fuzzy partitions ofThen: Proof. Let us define on
the functions
and
by
and
Then for any
we have
The functions
and
are differentiable and, using Proposition 1, we obtain:
In addition, it is evident that
Therefore, we can use L’Hôpital’s rule, according to which
under the assumption that the right-hand side exists. To find the derivative of function
we use the identity
We thus obtain:
Since
using Proposition 1, we obtain:
□
Theorem 2. Letbe any fuzzy partition ofThen: Proof. The claim immediately follows from Theorem 1; it is enough to set □
In the following, we derive basic properties of the suggested entropy measures of fuzzy partitions. First, we show that the function monotonically decreases with respect to
Theorem 3. Letbe a given fuzzy partition ofandbe positive real numbers such thatThenimplies
Proof. We have to prove that
Suppose that
We thus obtain:
where
and the function
is defined by
for any
We prove that
for every
We find
Since
for
it follows that
for every
Therefore,
□
Remark 3. As obvious consequences of Theorems 2 and 3, we have the following relations between Tsallis entropyand Shannon’s entropy:forandforOf course, in the previous inequalities, the entropyis expressed in nats.
Example 3. Letand letbe a fuzzy subset of X defined byfor everyThen the couplewhereis a fuzzy measurable space. We define the fuzzy P-measureby the equalitiesThe familiesare fuzzy partitions of the fuzzy probability spaceEvidently,Let us calculate entropies of the fuzzy partitionElementary calculations show that it has a Shannon entropynats, the logical entropyand the Tsallis entropiesWe can see that it holdsso the obtained results are consistent with the statement in the previous theorem. In addition, we have:which is consistent with what is stated in Remark 3.
In the following theorem, we show the concavity of Tsallis entropy as a function of s. Let us denote by the symbol the family of all fuzzy P-measures defined on a given fuzzy measurable space It is routine to prove that if then, for every real number it holds that
Theorem 4. Letbe a fuzzy partition of fuzzy probability spacesThen, for every real numberthe following inequality holds: Proof. The proof can be done using the concavity of the function
in the same way as the proof of Theorem 5 in Reference [
56]. □
As an immediate consequence of Theorem 4, we obtain the concavity of the logical entropy of the fuzzy partition on the family
Theorem 5. Letbe any fuzzy partition ofThenwith the equality if and only if the fuzzy P-measureis uniform overi.e., if and only iffor
Proof. To prove the claim, we apply the Jensen inequality to the function
Since the function
is concave, setting
and
for
in Equation (10), we obtain:
with the equality if and only if
Since
it follows that:
The equality holds if and only if i.e., if and only if for □
The following theorem shows that the Tsallis entropy does not satisfy the additivity property; it has the following property called pseudo-additivity.
Theorem 6. Let fuzzy partitionsofbe statistically independent. Then: Proof. Suppose that
We prove the equality by a direct computation:
□
Theorem 7. Letbe fuzzy partitions ofThenimplies the inequality
Proof. Let us assume that
Then there exists a partition
of the set
such that
for
Therefore, we have
for
Let us consider the case of
Then we have:
for
If we add these inequalities with respect to
then we obtain:
Since in this case, it holds that
it follows that:
The case of can be proven in an analogous way. □
Next, we will need the following proposition.
Proposition 3. Letbe fuzzy partitions ofandThen: Proof. We assume that
; therefore, for
it holds that
Since the function
is non-negative, it follows that:
for
If we add these inequalities with respect to
we obtain:
Next, we apply the Jensen inequality to the concave function
If we insert into Equation (10)
and
for
then we obtain:
for
It follows that:
By combining the previous results, we obtain the assertion. □
In the following theorem, it is stated that the Tsallis entropy of fuzzy partitions of order satisfies the sub-additivity property. As shown in the example that follows, the Tsallis entropy of order does not satisfy the property of sub-additivity in general.
Theorem 8. Letbe fuzzy partitions ofandThen
Proof. The proof can be done using part (i) of Proposition 1 and Proposition 3, in the same way as the proof of Theorem 3 in Reference [
56]. □
Example 4. Consider any fuzzy probability spaceand two fuzzy eventsofwithThen the familiesare fuzzy partitions ofwith the s-valuesandof the corresponding elements, respectively. Elementary calculations show that the fuzzy partitionhas the Shannon entropynats, the logical entropyand the Tsallis entropiesthe fuzzy partitionhas the Shannon entropynats, the logical entropyand the Tsallis entropiesLet us assume that the fuzzy partitionsandare statistically independent. Then the fuzzy partitionhas the s-valuesof the corresponding elements. Elementary calculations show thatnats,andIt can be seen thatandOn the other hand it holds thatThis means that the Tsallis entropyof orderdoes not satisfy the sub-additivity property in general.
Theorem 9. Letbe fuzzy partitions ofThen:
- (i)
- (ii)
- (iii)
Proof. Let
- (i)
According to Proposition 1, we have
for
Therefore, we obtain:
Consider the case of For we have which implies that for Since for it follows that On the other hand, for we have for In this case, hence
- (ii)
- (iii)
It is sufficient to set in (ii). □
As a direct consequence of the claims (i) and (iii) of the previous theorem, the following property of Tsallis entropy of fuzzy partitions is obtained.
Theorem 10. For arbitrary fuzzy partitionsofthe following inequality holds: Theorem 11. (Chain rules for Tsallis entropy). Letandbe fuzzy partitions ofPutThen the following equalities hold:
- (i)
- (ii)
Proof. The proof of claim (i) can be made using mathematical induction and the property (ii) of Theorem 9. If we put in claim (i), then equality (ii) is obtained. □
Theorem 12. Let fuzzy partitionsofbe statistically independent. Then: Proof. The claim is obtained by combining property (iii) from Theorem 9 with Theorem 6. □
Theorem 13. Letbe fuzzy partitions ofThen, forit holds that: Proof. The claim is obtained by combining property (iii) from Theorem 9 with Theorem 8. □
The following example, which is a continuation of Example 4, illustrates the result of Theorem 13 and shows that the conditional Tsallis entropy of order does not have the monotonicity property in general.
Example 5. Let us consider the fuzzy probability spaceand the partitionsfrom the previous example. We computed the Tsallis entropies to beandThrough easy calculations, we find thatandEvidently, we haveandwhich is consistent with the assertion of Theorem 13. On the other hand, we haveandThat is, the conditional Tsallis entropyof orderdoes not have the monotonicity property in general.
4. Tsallis Entropy of Fuzzy Dynamical Systems
In this section, we introduce and study the concept of the Tsallis entropy of a fuzzy dynamical system.
Definition 9 [
29]
. By a fuzzy dynamical system, we understand a quadruple where is a fuzzy probability space and is a mapping with the following properties: (i) for every (ii) for any sequence (iii) for every Example 6. Letbe a fuzzy probability space and letbe such a transformation that the following two conditions are satisfied:impliesandfor everyIf we define the mappingby the following equation:for everythen it is possible to verify that the systemis a fuzzy dynamical system. Example 7. A classical dynamical systemcan be viewed as a fuzzy dynamical systemif we consider the fuzzy probability spacefrom Example 1, and define the mappingbyfor every In this way, the classical model can be inserted into the fuzzy case.
Let be a fuzzy dynamical system and be a fuzzy partition of It can be verified that the family is a fuzzy partition of Indeed, we have and whenever Let be two fuzzy partitions of Then, in view of Definition 9, we have the equality Further, define for by induction on k, by setting where is the identical map. Evidently, the map satisfies properties (i)–(iii) of the definition above. This means that, for any non-negative integer the system is a fuzzy dynamical system.
Proposition 4. Letbe a fuzzy dynamical system and letbe fuzzy partitions ofsuch thatThen
Proof. Suppose that Then there exists a partition of the set such that for Therefore, by condition (ii) from Definition 9, we obtain for It follows that □
Theorem 14. Letbe a fuzzy dynamical system and letbe fuzzy partitions ofThen:
- (i)
for
- (ii)
for
- (iii)
for
Proof. Properties (i) and (ii) are obvious consequences of condition (i) from Definition 9. By using property (iii) of Theorem 9 and mathematical induction on starting with we obtain the equality (iii). □
The aim of this section is to define the Tsallis entropy of order of a fuzzy dynamical system. First, we prove the following proposition, which plays a key role.
Proposition 5. Letbe a fuzzy dynamical system and letbe a fuzzy partition ofThen, forthe following limit exists: Proof. In order to prove the claim, we use Theorem 4.9 of Reference [
62], which says that if
is a sub-additive sequence of non-negative real numbers (i.e.,
and
for every natural number
), then
exists. Let us denote by
the number
The Tsallis entropy is always nonnegative; thus,
for
In addition, according to the sub-additivity property of Tsallis entropy
of order
and property (i) from Theorem 14, we obtain:
Therefore, exists. □
Definition 10. Letbe a fuzzy dynamical system and letbe a fuzzy partition ofThen, forwe define the Tsallis entropy ofwith respect toby: Theorem 15. Letbe a fuzzy dynamical system and letbe a fuzzy partition ofThen, forand for any non-negative integer k, the following equality holds: Proof. In view of Definition 10, we can write:
□
Theorem 16. Letbe a fuzzy dynamical system and letbe fuzzy partitions ofThen, forimplies
Proof. Let
be fuzzy partitions of
such that
Then, by combining Proposition 2 with Proposition 4 and using mathematical induction, we find that
for
Hence, according to Theorem 7, we have:
for
It follows that:
□
Definition 11. The Tsallis entropy of a fuzzy dynamical systemis defined, forby the following equation:where the supremum is taken over all fuzzy partitionsof Example 8. A trivial case of a fuzzy dynamical system is a systemwhereis a fuzzy probability space andis the identity map. The operationis idempotent; therefore, for every fuzzy partitionofwe have:The Tsallis entropy of the fuzzy dynamical systemis Definition 12. Two fuzzy dynamical systemsare called isomorphic if there exists a bijective mapsuch that the following conditions are satisfied:
- (i)
preserves the operations, i.e.,for any sequenceandfor every
- (ii)
for every
- (iii)
for every
The mapis called an isomorphism.
Proposition 6. Letbe isomorphic fuzzy dynamical systems andbe an isomorphism between them. Letbe a fuzzy partition ofThen the familyis a fuzzy partition ofwith the Tsallis entropyIn addition, forit holds that
Proof. By the above assumption, we obtain:
and
whenever
Thus,
is a fuzzy partition of
Let us calculate its Tsallis entropy:
We used Equation (13) and condition (ii) of Definition 12. Consequently, by the use of conditions (iii) and (i) from Definition 12, for
we obtain:
□
Proposition 7. Letbe isomorphic fuzzy dynamical systems andbe an isomorphism between them. Then, for the inversethe following properties are satisfied:
- (i)
for any sequence
- (ii)
for every
- (iii)
for every
- (iv)
for every
Proof. Let be a sequence of fuzzy sets from and The map is bijective; hence, there exists a sequence such that for and there exists such that Therefore, we obtain:
- (i)
- (ii)
- (iii)
- (iv)
□
Theorem 17. Letbe isomorphic fuzzy dynamical systems and letThen: Proof. Let
be a fuzzy partition of
and
be an isomorphism between fuzzy dynamical systems
Then, according to Proposition 6, the family
is a fuzzy partition of
and it holds that
It follows that:
and consequently:
where the supremum on the left side of the inequality is taken over all fuzzy partitions
of
and the supremum on the right side of the inequality is taken over all fuzzy partitions
of
Through the symmetry that follows from Proposition 7, we also find the inequality
The proof is completed. □
Remark 4. From the previous theorem, it follows that ifthen the corresponding fuzzy dynamical systemsare non-isomorphic. This means that the Tsallis entropy can be used as an instrument for distinguishing some non-isomorphic fuzzy dynamical systems.
We conclude the article with the formulation of the Kolmogorov–Sinai theorem on generators [
62] (see also [
11,
63]) for the case of Tsallis entropy of fuzzy dynamical systems. This theorem provides a useful tool (see [
62]) for calculating the entropy of dynamical systems.
Definition 13. A fuzzy partitionofis said to be a generator of a fuzzy dynamical systemif for every fuzzy partitionofthere exists an integersuch that
Theorem 18. Letbe a generator of a fuzzy dynamical systemThen
Proof. By the assumption, for every fuzzy partition
of
there exists an integer
such that
Hence, according to Theorems 16 and 15, we obtain:
for every fuzzy partition
of
It follows that:
Since the converse inequality is immediate, this proves the claim. □