3. SL(2R) as an Invariance Group
We will be practically interested in only one group, namely the so called centro-affine unimodular group, i.e., the SL(2R) [
15]. This is the homogenous transformations of the affine plane group, which in various areas, represented by real unimodular matrices
This is a group in two variables with three parameters, because only three from
are independent, by virtue of the fact that the matrix determinant is the unit. We adopt the following parametrization for the infinitesimal transformations corresponding to (3)
case in which these become:
From these relations we can observe that the group’s action is transitive: there is at least one transformation of the group that links two points of co-ordinates and , respectively. This can be observed from the fact that Equation (10) in unknowns form a compatible system. Actually, there is a simple infinity of such transformations, which means that the action of this group is multiple transitive.
Now we can directly read from Formulas (10) the matrix
which characterizes the infinitesimal transformations, necessary in Deltheil’s equation
Prior to writing Deltheil’s equations, let us observe that this picture gives us the basis of the Lie algebra associated to the SL(2R) group, given through the infinitesimal generators
i.e.,
These infinitesimal operators give the following group structure, through the associated Poisson parentheses (or the operators commutators)
where we noted with square parentheses the commutators of the respective operators. We can thus find the structure constants of the SL(2R) group algebra
all the other ones being null.
Taking into account (11), the Deltheil’s equations characteristic to the group are
and adopt the solution
, i.e., we can take
. Therefore, the SL(2R) group is measurable, having the elementary measure, which we previously discussed,
where with
we noted the exterior product of the differential form. According to Jaynes’ observations [
5], if unspecified circumstances which admit this invariance group exist, then the probable a priori equal situations accept a uniform distribution of an elementary measure given by (17). We wish now to show such an unspecified circumstance, directly resulting from taking into account the canonic formalism.
Indeed, the fact that SL(2R) invariates the 2-form (17) shows that it is, in equal measure, a simplectic group. The corresponding Hamiltonian dynamics is generated in the “tangent” space through the vectors
from (13), which satisfies the commutation relations (14). A general “tangent” vector is a linear combination of the form
and poses the problem of finding the invariant functions along the trajectories tangent to this vector, i.e., the solutions of equation
Taking into account (13), this equation can be explicitly written
The differential system characteristic to this equation is
and admits the immediate prime integral
It follows that the solution of Equation (20) will be a random function of this formation which plays a special role in the theory described here, namely, that of a Hamiltonian considered as a motion generator. Indeed, the differential systems (21) is the Hamilton equations systems associated to (22), i.e.,
in the case in which
is a co-ordinate and
is the impulse of the considered system, for example a harmonic oscillator. Here we noted with
the common value of the two differentials from (21), i.e., the differential of the parameter on the vector’s (18) integral curves.
In principle, the Gaussian distribution density can be found among the solutions of Equation (19), expressed as
in which case statistical meanings can be conferred to parameters
. This mathematically states the idea of statistical mechanics, according to which the probability density must be a motion integral, but only for the considered particular case, that also includes the important problem of a harmonic oscillator (for other details see [
16]).
This, however, does not in any way favor neither the Gaussian probability density, nor the exponential one, because they are decided from other considerations, such as the maximum informational entropy. From this point of view, an observation is absolutely necessary, which directs us, on the one hand, towards another important statistical quantity, the informational energy, and provides us, on the other hand, a certain construction principle for integral invariant functions (for other details see [
3,
4,
10,
16]).
If the problem described by Equation (19) is determined from a dynamical point of view, in the sense that the Hamiltonian (22) characterizes a well-established system, the
parameters are fixed, and Equation (19) selects a certain class of SL(2R) group trajectories, specified by the afore mentioned parameters values. It is quite easy to provide the trajectories class in question, with the help of system (21). In the hypothesis that
and
are positive, and the quadratic form (22) is positively defined, the system (21) gives the solution
where
. In another working hypothesis related to the quadratic form (22) we can, obviously, obtain another evolution matrix, but still unimodular.
Things get quite complicated, however, if the quadratic form (22) is obtained through statistical interference, according to the principle of maximum informational entropy [
16], due to the fact that we have here two types of hypotheses: one for averages, the other one for statistical variances, and both are intransitive from a mathematical point of view (for other details see [
16]). This means that the variety of hypotheses is not linear, as it happens, for example, in the case where only the averages are specified. There is, however, an important special case, namely, the one in which the Gaussians refer to the same average. In this case, for the inference on ensembles referring to impulse and position,
and
represent the differences of the current quantities towards the average
Any statistical hypothesis is specified here through a particular choice of
coefficients from the quadratic form (22). The class of all these statistical hypotheses is marked by the invariance of this quadratic form, because the Gaussian distribution density (un-normalized) can be also written as
where
under the condition
If
are linked to
through an unimodular transformation
evidently acceptable because the inference takes place at constant averages, then condition (29) imposes for
the following group with three parameters
This group is evidently isomorphic with the group (30), yet it has the remarkable property that its action is intransitive on the
variables space. In order to practically show what this means, we will adopt for group (30) the parametrization (9) case in which the infinitesimal transformations corresponding to (30) are
Considered as a linear system in
unknowns, this system is not compatible. Therefore, no transformation can be found that can link the
and
triplets, which means that the action of the group in the space of these parameters is intransitive, as we said before. This shows that the group effectively acts only under the condition of a certain connection between
parameters, that must remain invariant, i.e., on the so-called transitivity manifolds of the group. We can also discover invariant functions by observing that a necessary and sufficient condition for the invariance through group of the function is that it satisfies the partial derivatives equations system
This can be easily deducted from (5) under the invariance condition
, in the hypothesis that the values of the
parameters are arbitrary. In our case, it results from (32) that the matrix
is given by
and the system (33) becomes
The solution of this system is the arbitrary function
so that the transitivity manifolds of group (31) are given by
Therefore, the hypotheses class specific to the same average Gaussians is characterized by the property that the discriminant of the quadratic forms (22) is a constant.
For the moment, let us observe another important connection between the theory of measurable continuous groups and the Gaussian construction through statistical inference according to the principle of maximum informational entropy. Firstly, let us notice that we can write, with the help of (34), the infinitesimal generators of the group (31) action. They are
These operators satisfy the commutation relations (14), which, obviously, is a normal fact: the two algebras are accomplishments of the one and the same algebra, namely, the SL(2R) group, with structure constants given by (15). The later ones dictate the properties of the respective Lie algebra, the different forms of it in one, two, or three dimensions being only accidental.
It is certain that, considering (37), the group effectively acts in two variables, in other words depend on two parameters. Now we will show the important connection previously deduced: Gaussians can be considered as families of invariant manifolds with three parameters, for the SL(2R) group, having associated the group given by (38), as a parameter group.
4. SL(2R) Joint Invariant Functions—On the Parametrization of a Harmonic Oscillators Ensemble
Further details on parameters families of manifolds invariant to groups action can be found in “Integral Geometry” by Stoka [
17]. For the current necessities, we will extract only the part that is of importance to us, and that is the fact that group (31) has been produced by induction as a
parameters group induced by group (30), under the condition of
functions invariance, given by (29). Reciprocally, taking into account groups (30) and (31) for variables
and parameters
, respectively, the resulting three parameters invariant manifolds families are, indeed, only the functions
. This fact needs to be detailed, because it can be generalized with important physical applications, providing, in particular, some physical meanings to the
parameters. The general theory of parametric invariant manifolds families gives this manifold the following solutions for Stoka’s equations [
17]
Here are the infinitesimal generators of the variables group, are the ones of the parameters group and it is necessary for the two groups to be isomorphic, i.e., their Lie algebras to belong to the same and only algebra, as was, in our case, (13) and (38). In this case, if we take into account (19) and (38) for and , thus detailing Stoka’s Equation (39), we indeed obtain for the three parameters invariant manifolds families the previous function, but, and we must emphasize this, only under the transitivity condition (37).
For now, let us keep in mind a very important fact, that Stoka’s equation provide the possibility of constructing a priori invariant measures, through certain groups, depending on certain parameters, under the condition that the variables and parameters groups be isomorphic. Generally speaking, if we have two isomorphic groups, we can find the common invariant manifolds families, without a priori cataloging one group or the other as a parameter group.
In this sense we give now an example of a certain parametrization of an ensemble of harmonic oscillators, starting from the motion equation. In the one-dimensional case, this is the usual equation of the harmonic oscillator
where
is the relevant coordinate. We will write the general solution for this equation as
where
is a complex amplitude,
is its complex conjugate,
is a specific phase, and
is a time parameter. In this way,
and
label each oscillator from an interval, eventually an ensemble, which has as a general characteristic the motion Equation (40) and, thus, the same frequency
. This is, for example, the case for a “Planck resonators” ensemble, which interacts with electromagnetic radiation, its analysis leading to the well-known law of energy density distribution by frequencies (for other details see [
16]). This ensemble can be described by a continuous group with three variables of three parameters, as follows.
Let us note that the ratio of the fundamental solution of Equation (40), noted with
k
is a solution of the Schwartz equation [
16]
where
is the Schwartzian of the
function with respect to the
variable, the accent representing, as usual, the derivation with respect to the variable. Now Equation (43) has the important property that it is invariant with respect to the homographic function transformation, in the sense that the function
satisfies the same equations
Transformations (45) form a three real parameters continuous group on the complex line, which confers to parameter
a projective trait. This allows the introduction of a projective parameter, specific to each oscillator, through relation
which, obviously, satisfies Equation (46). Therefore, between the parameters of various oscillators from the ensemble, a real homographic relation must exist
Group (48) can be considered a sort of “synchronizing” group between various oscillators, process to each, obviously, their amplitudes take part as well, in the sense that they are also correlated, as are their phases. The usual synchronizing through phase delay must be here only a very particular case. Indeed, group (48) implies for
,
, and
the following parametric group
as it can be easily verified. This shows that, indeed, the phase of
is only shifted by a quantity which depends on the oscillators’ amplitude, and not only that, but the fact that the oscillator’s amplitude is also homographic affected.
Adopting now for group (49) parametrization (9), we obtain the following infinitesimal generators of group (49)
with commuting relations
which show the same structure as the SL(2R) Lie algebra. Therefore, the Lie algebra of group (49) is again a form of the Lie algebra of group SL(2R). Actually, as it can be easily seen, group (49) represents only another action of group SL(2R), made in three variables
.
These being said, we are now in the conditions of Stoka’s theorem and we can try to find the function which are simultaneously invariant to the action of groups (13) and (50), as solutions for the Stoka’s equations
By explicating these equations with the help of (13) and (50), we can easily solve them by successive reduction, in order to obtain simultaneously invariant functions (joint invariant functions) in the form
where
and
have the expressions
from which
is unimodular complex, and
is real. A particular class of such invariant functions are the linear combinations of the type
where
are three real arbitrary constants.
Taking into account (54), Equation (55) transforms into
where
admitting that
Equation (56) represents a manifold of conics from the
plane. These are ellipses if
condition which is always satisfied if
where
is a real constant. We need to consider here a very important particular case, namely the one in which
is purely imaginary, having the value
, without narrowing the generality. In this case, the quadratic form (56) can be compared to
from (22), which gives for
the following values
where
is the value of
, assumed as being fixed. These relations show that, indeed,
can be found on trajectories of group (31), because they are finite transformations generated by the infinitesimal transformations (38) of this group, starting from the standard quadratic form of coefficients
. Therefore, the square of
is precisely the value of constant
from (36) which characterizes the transitivity manifolds of group (31). Let us note that, in the case of multifractal dynamics,
corresponds to the constant associated to the multifractal-non-multifractal scale transition. In the case of monofractal dynamics described through Peano curves at Compton scale resolution,
must be put into correspondence with the Planck constant
h [
16,
18]. In
Appendix A some correlations between the
constant and the scale resolution in various fractal/multifractal dynamics can be found.
It is important to notice that the Gaussian obtained in this way is only a particular case of a distribution which can be extracted, with the condition that it needs to additionally satisfy the principle of maximum informational entropy under quadratic constraints. The solutions of Stoka’s equation can be much more general and can be selected according to other criteria from group theory.
As for the group (49), we must firstly note an historical aspect. This group was discovered by Barbilian as a covariance group for binary cubic forms; later on, it was observed that the group was measurable [
6]. By explicating the quantities from (50), Deltheil’s equations become
and their solution will be given, up to a multiplicative constant, by
Therefore, the elementary measure of this group will be
This group provides meaning to some statistical quantities, through comparison with an oscillators ensemble, each of them being described by three physical quantities (for details see also [
16]).
Therefore, Jaynes’ unspecified circumstances for an oscillators ensemble described in Equation (40) come back to not knowing the amplitude and phase for each of them, making it necessary to appeal to the statistical ensemble by explicating its element (the oscillator). This involves quantities
, the ensemble being traversed with the help of Barbilian’s group transformations. By virtue of this condition, we can say that the elementary probability on this ensemble is given by (64). This means that, if we note with
the measure (64) transforms into
We can see from (66) that the oscillators’ phase is uniformly distributed on the ensemble, just like the real part of the amplitude. As for the imaginary part of the amplitude, it can be said that its inverse is uniformly distributed.
In general, the Barbilian group is not compact, just like the SL(2R) group. This means that the integral of (66) along the entire domain of is not finite. Therefore, distribution (66) cannot be normalized, with the exception of finite intervals and , and only in this way it could be used in statistical calculus. This does not in any way diminish the importance of this group, because it can provide a physical meaning, in relation with a harmonic oscillator, to quantities obtained, in general, through statistical inference with respect to the maximum informational entropy.
We have here another example, which illustrates a general fact: the need to realize our degree of ignorance in a certain problem imposes explicating the ensemble described by a usual distribution through the maximum informational entropy. This can be done here by explicating its element in a way which differs from the one previously mentioned, i.e., through the Hamiltonian. Here we were taking into account a oscillator at a given moment in time, in the other case we were discussing about the entire trajectory of a oscillator, for which the Hamiltonian is invariant.
Anyway, an important conclusion can be made: if the principle of maximum informational entropy admits a maximum ignorance in statistical inference, then the parametric continuous groups show in a concrete way what this maximum means; they show what we should know, obviously in the current state of knowledge, they explain the reason for not knowing, and through integral invariant functions, they show how much we can retain from the knowledge process (for other details see also [
16]).
5. Nonlinear Behaviors in Ablation Plasma Dynamics—Numerical Simulations and Applications
The above presented result specify that, in order to have information about an oscillators ensemble we need to know the amplitude and phase of each oscillator, according to the usual theory of the harmonic oscillator. In this process, it is irrelevant which individual oscillator we choose, because once we know one of them, we can have an a priori knowledge about all of them: the Barbilian transitive group warrants this fact. This however imposes for the a priori probability the previously mentioned invariance.
In such perspective, in the following, let us consider that the previously mentioned oscillators ensemble (self-structured both structural and functional as a multifractal mathematical object) can be identified with an ablation plasma. Then, in accordance with the operation procedures on multifractal manifolds described in [
16] (e.g., Riemannian differential geometries, parallel transport of direction in the Levi-Civita sense, harmonic mappings–for other details see
Appendix B), the explicit form of parameter
z from the previous section is given by the relation
with
real and arbitrary, as long as
is the solution of a Laplace-type equation for the free space, such that
. For a choice of the form
, in which case a temporal dependency was introduced in the complex system dynamics, (67) becomes:
Numerical simulations were performed for this extension of the multifractal representation of the model. The simulations were performed in Maple software followed by data treatment with OriginPro. The meanings of the employed quantities are the usual ones from [
8,
9]. The results are presented in
Figure 1, where we have represented Re (
F), Im (
F) and
F for a fixed resolution scale dependent parameter (ω) and the fractal time. The use of fractal time becomes mandatory as when investigating transient phenomena as the energy and temporal operating spectra are interconnected. We can observe, for various chosen scales, the shape and frequency of this periodic evolution. The
F function is defined by a base of period doubling and transitions towards chaotic and modulated dynamics. This incremental change in the periodicity of the system is related to a scattering type process of the oscillators ensemble, where unique kinetic groups are generated and defined during the evolution of the system.
To better understand this effect we have represented the 2D maps for
F(ω,t) for different maximum values of
ω. It can be seen that in the same fractal temporal range (or energy spectrum range) one can find, based on the resolution scale used in the simulation, a distinct evolution of the system, where, for
ω values we see only one structure. With the increase of
ω, we observe the formation of secondary structures along the orthogonal axis. It is worth noting that for intermediate values there is no interconnection between the original structure and the newly developed one (the
ω = 6 case). This changes for larger values when the structures are well defined and there is a clear communication channel between them. Thus, in the fractal representation, with the change of the scale resolution, different scenes during the evolution of the system can be seen. The appearance of a secondary structure is a direct effect of the modulation phenomena seen in the 1-dimensional simulations presented in
Figure 1. It is the interplay of the two-oscillation frequency, the real part which often defines the real, measurable space and the imaginary one, characterizing the interaction in the fractal space.
To test the validity of this new evolution scenario for complex system in a multifractal framework it is important to check the relevance of the mathematical approach. Over time, laser produced plasmas [
19,
20,
21], and in general, low-temperature transient plasmas [
22] have been promoted as great media in which non-linear and often chaotic behavior can occur.
In
Figure 2 we have represented a selection of ICCD images of a transient plasmas generated by ns laser ablation (10Hz, 532 nm, 10 J/cm) of a chromite target, placed in vacuum chamber (1Pa residual pressure). Extensive details on the dynamic of the chromite plasma can be seen in [
23]. Briefly after irradiation, a high energetic plasma forms. The emission of the plasma is imaged by means of a cylindrical lenses optical system on the ICCD camera’s detector. An internal procedure is implemented to record images of the plasma at various moments in time. Supplementary investigations were performed on the plasma as was found to be characterized by 0.7 eV and two main structures along the main expansion axis expanding with 55 km/s and 14 km/s, respectively. Here the focus will be on short time evolution of the plasma (<500 ns) and the plume splitting phenomena. The generation of multiple plasma structure during laser produced plasma expansion has often been related to the existence of two types of ablation mechanism (thermal and electrostatic) which generate particle with different kinetic energy, thus inducing plasma structuring in the kinetic energy plane [
24,
25]. Recent work has also been dedicated to offering a hydrodynamic answer to this problem with promising results [
26,
27]. Each ICCD image from the sequence presented in
Figure 3 has attributed two cross-sections along the main expansion axis (axial) and across the main expansion axis (transversal). During expansion the plasma increases its volume and the shape of the plasma considerable changes. This change is seen through the transversal cross-section where we see that the lateral shape of the plasma changed from quasi-Gaussian (below 250 ns) to a bi-lobbed one (above 250 ns). This change is attributed to a lateral plume splitting and confirms the simulated data from
Figure 3, where we can see the generation of structure in the fractal space in a symmetrical manner across all axes. Although empirically, the lateral lobs are not always seen, they can act as a non-manifested potential ability in their evolution. The two lateral lobs appear as a result of the ablated particle scattering towards the edges of the multi-element plasmas, especially for expansion scenarios occurring the in atmospheres at relative high pressure as it is here (1 Pa). This result reflects well the simulated evolution in the multifractal medium where we see that the structuring of the fractal object does not have a particular direction when left unrestricted. The axial cross section reveals a classical image of the plasma with multiple peaks at 125 ns, which are better seen at longer evolution time (250 ns) where the separation based on their kinetic energy become clearer. Each maximum corresponds to a different energetic group of ions traveling with 55 and 14 km/s, respectively. The scattering and collisional processes are intimately related to the notion of fractality and fractal curve and the results here reaffirms the correlations between the fractal representation of the plasma and the empirical data.