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Article

Virial Extension for Discrete Data Series

by
Dino Otero
1,
Ariel Amadio
1,
Leandro Robles Dávila
1,
Marcos Maillot
2,
Cristian Bonini
2 and
Walter Legnani
3,*
1
Vehicle Research, Development, and Innovation Center, Facultad Regional General Pacheco, Universidad Tecnológica Nacional, Av. Hipólito Yrigoyen 288, Buenos Aires 1617, Argentina
2
Research, Development, and Innovation in Electrical Energy Center, Facultad Regional General Pacheco, Universidad Tecnológica Nacional, Av. Hipólito Yrigoyen 288, Buenos Aires 1617, Argentina
3
Signal and Image Processing Center, Facultad Regional Buenos Aires, Universidad Tecnológica Nacional, Av. Medrano 951, Buenos Aires C1179AAQ, Argentina
*
Author to whom correspondence should be addressed.
Signals 2026, 7(2), 29; https://doi.org/10.3390/signals7020029
Submission received: 19 September 2025 / Revised: 5 February 2026 / Accepted: 25 February 2026 / Published: 1 April 2026

Abstract

The Virial theorem has been applied with considerable success in various fields of natural sciences. This work proposes an extension of the theorem applied to discrete data series. This application will be called the Virial theorem extension and can be applied to the numerical solution of nonlinear dynamic systems represented by difference equations, such as logistic, discubic and random number generators, the numerical solution of differential equations like the nonlinear double pendulum and a series of pseudorandom numbers and its reciprocals. For this purpose, a coefficient was derived from the discrete Virial formalism. This coefficient can be used to detect when a time series is obtained as the solution of a differential equation, in which case the coefficient is close to 1, and when the data come from other sources, in which case it takes different values. With reference to chaotic dynamic systems, the discrete Virial coefficient shows the feasibility in the detection of a change in behavior, as an alternative to the traditional calculation of Lyapunov exponents, and it is a thousand times faster. The convergence speed of the final value of the discrete Virial coefficient of a dynamic system in a non-chaotic regime is between one and five orders of magnitude greater than in the chaotic regime, thus extending results in non-Hamiltonian systems, previously found by another author in Hamiltonian systems. The results obtained show that the proposal characterizes and distinguishes different types of behavior from the series under study. It also shows great sensitivity to the evolution of the series, even anticipating critical points. The proposed method to construct the discrete Virial extension does not require the existence of a Hamiltonian, which allows its application to a series obtained experimentally or from any differential equation. From a general point of view, this research shows a series of properties that can be reinterpreted in light of the discrete Virial coefficient, providing a novel and versatile tool, given its minimal applicability requirements. For pseudorandom number series, the extension reveals a consistent, quasi-mirror behavior between its kinetic and potential factors, suggesting an underlying structural property.

1. Introduction

The Virial theorem has been widely used in the physical sciences; for an introduction, see [1]. Recent applications include water waves [2], astrophysics [3], and magnetic systems [4]. For generalizations of the Virial concept in thermodynamics, see [5]; for chemical physics, consult [6]. Additionally, applications in Density Functional Theory can be found in [7], and geometric perspectives are discussed in [8,9].
In general, its use is related to the equivalence of kinetic and potential energy. In its original version, the variables have a continuous evolution, but when digital processing is used, discretization is necessarily required. The solution of the non-linear equations and the evolution of the experimental variables are expressed in terms of discrete data sequences. In this research, an extended formalism of the Virial theorem is applied to discrete data series using the numerical evaluation of the derivatives through the centered approximation of the derivative of order two [10,11].
The primary research question addressed in this work is whether it is possible to apply the discrete Virial formalism to discrete data series and, in the affirmative case, what properties can emerge.
The result when the generalization of the Virial theorem is applied to the series generated by the solution of differential equations is similar to that already known for the continuous theoretical evolution of the variables. This extension to discrete variables shows how convergence to expected values can provide information about the characteristics of the series and about the possible operational origin of the data. For this reason, the logistic, discubic, Sin, and Gaussian map equations are studied in detail. Although the origin of the Virial theorem is directly related to the kinetic and potential energy of a physical system, it was exposed here that it is possible to become independent of these concepts. However, the mathematical properties are still present as a pseudo-conservation of energy. The success of the Virial formalism in Hamiltonian systems was demonstrated, for example, in [12]; other research is focused on applications in nonequilibrium systems [13], and transitions between classic and quantum systems have used the Virial theorem, too, as can be seen in [14]. The existence of a Hamiltonian and continuous evolution are essential in all the previous examples. This proposal expands the results of previous works on the discrete Virial theorem for symplectic maps [15] by removing the requirement of a known Hamiltonian, thus broadening its applicability to any discrete data series, including those of experimental origin. However, this computation allows one to determine how close the origin of the series is to a Hamiltonian symplectic manifold. Some potential applications and limitations of this concept extension were explored.
The present work is organized as follows: in Section 2, the general (continuous) treatment of the Virial theorem is introduced without taking into account the nature of the system that produces the data series. In Section 3, the extension of the formalism for the discrete case is introduced. Section 4 provides detailed analyses of examples of the application of the discrete Virial formalism. Section 5 is devoted to studying the information provided by extending the Virial theorem to discrete chaotic iterative maps. Section 6 applies the new proposal to data series. Section 7 includes the global results of the research, and finally, in Section 8, the concluding remarks of the work are presented.

2. General Continuous Treatment

Consider the Virial theorem in the case of a continuous function, f ( t ) . In this section, the Virial theorem is reformulated without considering a physical system, that is, using only mathematical considerations without reference to kinetic or potential energies. Let t be a time variable. Assume that the first and second time derivatives of f ( t ) exist and that f ( t ) , d f ( t ) d t and d 2 f ( t ) d t 2 are bounded. The Virial expression can be formulated (analogously to the derivation of the Virial theorem of mechanics) as a new function of t given by:
G ( t ) = f ( t ) d f ( t ) d t ,
differentiating with respect to t,
d G ( t ) d t = d f ( t ) d t 2 + f ( t ) d 2 f ( t ) d t 2 .
Then, the time average is taken over a sufficiently large time interval, τ :
f τ = lim τ 1 τ 0 τ f ( t ) d t .
Applying the time average to Equation (2):
1 τ 0 τ d G ( t ) d t d t = G ( t ) τ 0 τ = 1 τ 0 τ d f ( t ) d t 2 d t + 0 τ f ( t ) d 2 f d t 2 d t .
The left-hand and right-hand sides of Equation (4) can be rewritten as:
d G ( t ) d t τ = d f ( t ) d t 2 τ + f ( t ) d 2 f ( t ) d t 2 τ .
The left-hand side of Equation (5) becomes:
d G ( t ) d t τ = lim τ 1 τ 0 τ d G ( t ) d t d t = lim τ G ( τ ) G ( 0 ) τ .
Since f ( t ) and d f ( t ) d t are bounded, G ( t ) = f ( t ) d f ( t ) d t is also bounded. Therefore,
lim τ G ( τ ) G ( 0 ) τ = 0 .
Thus, in this way, the continuous Virial theorem of the following form is obtained:
d f ( t ) d t 2 τ + f ( t ) d 2 f ( t ) d t 2 τ = 0 .
The result of Equation (8) is applicable to analytical solutions of certain systems, given the initial assumptions about f ( t ) and its derivatives. From Equation (8), it is possible to define the Virial coefficient, C:
C = d f ( t ) d t 2 τ f ( t ) d 2 f ( t ) d t 2 τ ,
which approaches 1 as τ under these assumptions.
As can be seen from this brief deduction, the only assumptions are that the function f ( t ) is bounded and at least twice differentiable, which allows one to obtain the expression of C. In the next section, this reasoning will be extended to discrete data series, regardless of their origin.

3. New Formalism: Discrete Virial Formalism Extension

In this section, the Virial formalism for discrete series, such as those arising from numerical solutions of difference or differential equations or experimental measurements, is introduced.
A numerical series, f ( i ) , represents values at discrete points, i, where i is typically an integer index, for example, ranging from 1 to N. The interval between points is assumed to be constant, denoted by h. It is assumed that the underlying process generating f ( i ) has bounded behavior analogous to the continuous case.
The discrete version of Equation (1) can be expressed as follows:
G ( i ) = f ( i ) f ( i + 1 ) f ( i 1 ) 2 h .
For the numerical evaluation of derivatives, the operator noted by D was introduced, where the D 1 refers to the derivative operator of order one and D 2 to the derivative operator of order two, respectively [10]:
D 1 f ( i ) = f ( i + 1 ) f ( i 1 ) 2 h , D 2 f ( i ) = f ( i + 1 ) 2 f ( i ) + f ( i 1 ) h 2 .
The average over a series of length N is defined as:
f N = 1 N i = 2 N f ( i ) .
From the left-hand side and the center term of Equation (4)
1 τ 0 τ d G ( t ) d t d t = G ( t ) τ 0 τ
From the definition in Equation (10), the discrete version of the left-hand side of Equation (13) is
G ( i ) N = f ( i + 1 ) f ( i 1 ) 2 h 2 N + f ( i ) f ( i + 1 ) 2 f ( i ) + f ( i 1 ) h 2 N .
For the right-hand side of Equation (13), and using the definition of Equation (10):
G ( i ) N = 1 N i = 2 N G ( i ) =
f ( 2 ) ( ( f ( 3 ) f ( 1 ) ) ) + f ( 4 ) ( F ( 5 ) f ( 3 ) ) + + f ( N 1 ) ( f ( N ) f ( N 2 ) ) 2 h N .
Then, there are only a couple of terms that survive from the right-hand side of Equation (15), and assuming that the data series should be bounded, result as follows:
Equation (16)
lim N 1 N i = 2 N G ( i ) = f ( N ) f ( N 1 ) f ( 2 ) f ( 1 ) N N 0 .
Finally, from Equations (14) and (16), the following is obtained:
lim N f ( i + 1 ) f ( i 1 ) 2 h 2 N + f ( i ) f ( i + 1 ) 2 f ( i ) + f ( i 1 ) h 2 N = 0 .
This is true as long as it is considered a bounded series. For any N, Equation (16) is obtained because the intermediate terms cancel each other out. Its validity depends on f ( i ) and the possibility of using the D operator. If f ( i ) originates from a process well-described by a differential equation satisfying the initial assumptions or any numerical data series, then the discrete Virial relation holds approximately.

Kinetic and Potential Factors

From Equations (16) and (17), and following the terminology of the original Virial theorem, the discrete kinetic ( K N ) and potential ( P N ) components can be defined for the discrete Virial coefficient C N :
K N = f ( i + 1 ) f ( i 1 ) 2 h 2 N , P N = f ( i ) · f ( i + 1 ) 2 f ( i ) + f ( i 1 ) h 2 N .
The discrete form for the Virial coefficient, in terms of the K N and P N , is given by:
C N = K N P N .
For systems where the continuous Virial theorem holds ( C 1 ), C N 1 is expected to be as N , provided h is sufficiently small relative to the variations of f.

4. Examples and Detailed Analysis

4.1. Use in Chaotic Differential Equations

Double Pendulum

As already mentioned, for series generated as solutions of differential equations, the relation Equation (14) (with LHS→0) is approximately fulfilled and, therefore, C N 1 .
A good example is the double pendulum. For large angles [16], the system is non-linear, and the evolution becomes much more complex. The convergence analysis was performed for a chaotic double pendulum with lengths and masses as follows: L 1 = 1.0   m, L 2 = 1.5   m, m 1 = 1.0   kg, m 2 = 0.5   kg; set for each, respectively; the gravity was taken as g = 9.81   m / s 2 .
The initial conditions were θ 1 ( 0 ) = π / 4 rad , θ ˙ 1 ( 0 ) = 0.5 rad / s , θ 2 ( 0 ) = π / 2 rad , and θ ˙ 2 ( 0 ) = 1.0 rad / s , and the equations of motion were integrated using a fourth–order Runge–Kutta method. The length of the data series was of 10,000 points, using a fixed time step, h = 0.01 s. The chaotic behavior was characterized by the Lyapunov exponent with value λ = 1.6040 [16].
When the potential P N and kinetic K N factors of the quotient that defines the discrete Virial coefficient behaving as shown in Figure 1, it could be referred to as a virialization process, in which, once stabilized, they converge to a constant ratio value.
The convergence is shown in Figure 2, and the final result is C N = 0.9970 ; the evolution corresponds to the mass ( m 1 ) hanging from the other mass ( m 2 ).

4.2. Pseudorandom Numbers

Let a pseudorandom data series be generated by the Mersenne Twister algorithm [17]—here, the step h = 1 —in such a way that the data values range between 0 and 1.
The derivative approximations from Equation (11) are formally applied to the series, despite it being an intrinsically non-differentiable distribution. However, because the series is discontinuous, the assumptions underlying the continuous Virial theorem (i.e., the existence of bounded derivatives) are violated. Consequently, while the average change term, Δ G ( i ) N , still approaches zero for a large, bounded series, the resulting ratio C N = K N / P N is not expected to converge to 1.
Instead, for a uniform pseudorandom distribution, the discrete Virial coefficient consistently converges to a different stable value. As can be seen in Figure 3, this value is approximately 0.25. This convergence implies that, even within a stochastic series, the discrete kinetic K N and potential P N factors exhibit a consistent, quasi-specular behavior, leading to a stable ratio.
The pseudorandom series presented above can be redefined, as it is the inverse, f ( i ) = 1 / r and ( i ) for i = 0 , 1 , 2 , N , in such a way as to obtain a quasi-bounded series. This is because some of the original numbers approach 0, and their inverse takes an unbounded jump. In Figure 4, the jumps that C N makes when the value of the pseudorandom number is very small (making the inverse very large). However, except for occasional jumps, C N remains at approximately 0.25 as the value of the data series increases.
Revisiting the K N and P N factors for the pseudorandom number series, both factors look like they develop in a mirror image fashion, but with different scales; see Figure 5. Note that the potential factor is larger in magnitude than the kinetic factor. Any value that tends to be very large (such is the inverse of jumps) will reset the convergence of C N .

4.3. Use in Difference Equations

Logistic  Equation

Now, consider the well-known logistic equation [18,19]:
x i + 1 = f ( x i ) = r x i ( 1 x i ) .
The behavior of this equation is very subtle, and only some peculiarities will be analyzed. As with pseudorandom numbers, the derivatives of d f ( x i ) x i are undefined in a continuous sense. However, the relation Equation (19) can be reused by defining the derivative, as suggested in Equation (11) (with h = 1 ).
Analyzing Figure 6 for the fixed point zone, the series stabilizes quickly and, therefore, the values of C N depend on the initial condition x 0 . When converging to the fixed point, all derivatives end up canceling; the numerator and denominator of Equation (19) decrease, although the quotient stabilizes in a limit that ultimately depends on the initial conditions.
For the bifurcation zone (period doubling), the definition of derivatives, Equation (11), is not appropriate to capture the underlying dynamics. It can be seen that the alternating jump of values has a strong effect because the first derivative term in the numerator of C N tends quickly to zero (e.g.: for r = 3.1 in N = 102 ; for r = 3.2 in N = 55 ; for r = 3.3 in N = 80 ; for r = 3.4 in N = 20,000). In this range, the value of C N depends on the initial condition because the iteration for which the effective derivative becomes zero is dependent in the same way. However, it is interesting to note that, before reaching the first bifurcation, C N begins a variation that preannounces it. This is because the bifurcation is in progress, and the first derivative term is in decline (see Figure 6).
Beyond r = 3.4 , more bifurcations appear, and C N depends on the initial conditions. For the chaotic zone of Pomeau–Manneville [20], the values of C N are independent of the initial conditions. Even for islands of stability within the chaos, although there are fixed points and bifurcations in these regions, they are so mixed that the dependence on the initial conditions is completely eliminated. The behavior on the islands of stability is similar, in such a way that the interest will be focused on the one with the longest duration (see Figure 7).
It can be seen that the entry and exit of the stable zone is “smooth”, as an anticipation of the behavior change. This becomes very clear when the speed ( d C / d r ) at which it approaches stability and the speed at which it moves away are calculated (Figure 8).

5. Discrete Virial Formalism and Chaotic Maps

5.1. Convergence Velocity as Chaos Indicator

This section analyzes the convergence velocity of the discrete Virial coefficient ( C N ) for three well-known iterated maps capable of exhibiting chaotic behavior. Specifically, the logistic map (a second-degree polynomial), the discubic map (a third-degree polynomial), and the sin map (utilizing the periodic trigonometric iterated s i n function) were selected. This investigation is partly motivated by the work of Howard [15], which addresses the convergence of a discrete Virial theorem in Hamiltonian systems. The logistic map was introduced in the previous section in Equation (20); the choice for the parameter r R was fixed in 4 for the chaotic regime, and 3.4 for the non-chaotic.
The discubic discrete map [21] is defined by:
x i + 1 = a x i 3 + ( 1 a ) x i , for i = 1 , , N ,
where the parameter a R was settled equal to 3.84 for the chaotic regime and equal to 3.20 for the non-chaotic one.
The other iterative map analyzed was the sin map [22], which can be expressed as:
x i + 1 = s i n ( w x i ) , for i = 1 , , N ,
where w R was selected to 4 for chaotic behavior and 1.28 for non-chaotic.
To estimate the convergence velocity of the coefficient ( C N , defined in Equation (19)) for both chaotic and non-chaotic regimes, the residual sum of squares for both regimes of the iterated maps was computed; the results are shown in Table 1, Table 2 and Table 3. The corresponding parameter values and initial conditions are indicated in the caption of each table.
Howard [15] (in Section 5 of that work) proposed a chaos indicator based on the convergence rate of the average kinetic energy. Based on this, the present study shifts focus to analyzing the convergence properties of the discrete Virial coefficient ( C N ) itself, which contains information from both kinetic ( K N ) and potential ( P N ) factors. The aim was to extend these concepts to a wider range of time series and numerically determine the convergence rate of C N .

5.2. Discrete Virial Coefficient and Order Windows

It is well established that the change of behavior of a dynamical system between the chaotic and non-chaotic regimes can be tracked in various ways, for example, by the phase diagram, by the bifurcation diagram, or by calculating the Lyapunov exponents. In this subsection is presented a novel result in which the discrete Virial coefficient plays a fundamental role and also provides an interpretation based on concepts related to the potential and kinetic factors of the discrete Virial ratio. Figure 9a shows the Feigenbaum bifurcation diagram for the logistic equation; below is the calculation of the discrete Virial coefficient for the same expression, Figure 9b, and below it is the calculation of the Lyapunov exponent for the same map as shown in Figure 9c. The figure above clearly shows the windows of order once the logistic equation develops the chaotic regime; in the figure below, it is observed that, for each of these windows, the C N shows an interval of approximately constant value. This fact can be confirmed by looking at the figure showing the Lyapunov exponent, which is an established indicator for this type of behavior. The former case of the logistic equation is mathematically represented by a polynomial of second degree, in Figure 10, analogous results are shown for the discubic equation presented before, but in this case for a recursive polynomial of third degree. The results obtained for the sin map are shown in Figure 11; meanwhile, the final case is exhibited in the Figure 12, in which case a Gaussian map [22] was studied whose expression is given by:
x i + 1 = e α x i 2 + β ,
where the α R was fixed in 8, and the parameter β R ranging from −1 to 1.
As can be seen in Figure 9, Figure 10, Figure 11 and Figure 12, each time the dynamics of the system described by the corresponding equation enter a “window” of order, the discrete Virial coefficient shows a plateauing that accompanies such transitions.
This fact can be interpreted with the help of the discrete extension of the Virial theorem proposed in this work, in such a way as to think that the transient ordering in the exhibited iterated maps corresponds to a compensation of the terms associated with the kinetic and potential components of coefficient C N given by Equation (19). This is a new result not found in the available literature, and it could indicate that the discrete Virial coefficient could be used as a proxy or indicator of the windows of order in discrete chaotic iterated maps.
For the evaluation of the computational time required to calculate the Lyapunov exponent following the algorithm in [23] and the discrete Virial coefficient, a benchmark of ten runs was realized with a code in the Octave language version 10.2.0 and running on a Core i7 processor with 32 Gb of RAM on a workstation running Ubuntu 24.04. The results are shown in Table 4 and Table 5.

6. Discrete Virial Formalism Applied to Experimental Series

The proposed extension of the discrete Virial coefficient was tested using data acquired with a continuous glucose monitor (CGM) from five healthy and five diabetic volunteers. For details, see [24]; the sampling time was Δ t = 5 min, and the series length was composed by 10,000 data points. In such a way, two sets of five data series, containing healthy and diabetic subject records, were obtained according to the procedure described in the reference. In parallel, these data were interpolated with the cubic spline, resulting in two additional series. The discrete Virial coefficient was computed on each data record and calculated the mean and its dispersion of the value of C N on the last 400 values of the series of the discrete Virial coefficient data points; see Table 6.
The scatter of the last 400 points of the discrete Virial coefficient ensures that the variance over the values of each group corresponds to variations between individuals, rather than to variations in the Virial coefficient, C N , itself. The result of this procedure is shown in Table 7, which compares raw data, cubic spline interpolation, and an MSE reconstruction using an orthonormal basis. In the latter case, each glucose series is projected onto an orthonormal trigonometric basis (constant term plus sine and cosine modes up to order 100), and the expansion coefficients are obtained by a minimum-squared-error fit. This representation preserves the global energy of the signal while providing a smooth approximation on which the Virial coefficient can be reliably evaluated.
Two important results emerge from Figure 13, which is a conceptual scheme: (a) For the data without interpolation, the parameter C N clearly distinguishes diabetics from non-diabetics; (b) when the data are interpolated, this difference disappears and the value of the parameter C N approaches unity, a characteristic of the data generated by a differential equation [24]. Using a previously published formalism [24], it is also verified that interpolation erases the difference between diabetics and non-diabetics. The Virial formalism shows that an interpolation process to smooth experimental data from a series can distort the information originally contained in the series.
Cubic splines are well known for ensuring that the resulting curve is smooth and continuous with continuous first and second derivatives. This allows for better visualization of fluids, for example. These properties are precisely what bring the C N value close to unity in the case of glucose. The proposed series analysis dramatically highlights this effect by erasing significant differences. The study with other types of interpolations deserves a special analysis in future works.

7. Results Analysis

In this research, we introduced an extension of the Virial formalism to discrete systems like a numerical solution of a nonlinear differential equation, some discrete systems, discrete chaotic iterative maps, and measured data; some interesting properties had emerged from the cases analyzed that warrant further investigation.
The analysis of the series generated by the double pendulum solution in Section Double Pendulum shows that the convergence of the discrete Virial coefficient is very good and sufficiently fast for nonlinear Hamiltonian systems.
As shown in Figure 5, the convergence demonstrates that the factors K N and P N evolve in a nearly identical manner, resulting in an approximate convergence of the parameter C N . Specifically, after approximately 500 iterations, the relationship between the factors identified as kinetic and potential remains constant, favoring the associated with the potential energy in a 75%. This result holds when taking the inverse of the pseudorandom numbers; furthermore, the need for the series to be bounded becomes evident.
Figure 6 shows how the value of C N varies with the initial conditions before the bifurcation of the logistic equation in the vicinity of the parameter r = 3 , highlighting how the slopes of the decrease in the discrete Virial coefficient change at the entrance and exit of the mentioned bifurcation. This fact could be used to predict the entry of the logistic equation dynamics into a bifurcation. On the other hand, Figure 7 shows the plateau formed by C N when the logistic equation enters a zone of stability after having developed chaotic behavior at its extremes. Furthermore, Figure 8 shows the difference in the speed with which the evolution of the logistic equation enters the zone of stability and with which it exits that zone.
The early detection of a dynamic system entering a chaotic regime receives continuous attention, whether through the use of Lyapunov exponents [25] for this purpose, changes in the entropy values of the signals [26], or studies that employ machine learning tools [27]. These methodological approaches require, in most cases, parameter adjustments that are not necessary in the present proposal, as established in Section 3. It is only necessary that the data series be sampled at a constant rate and that its values be bounded.
In Appendix A, there is a brief discussion about the effect of the time-step size in the results of the convergence of the discrete Virial coefficient. And in Appendix B is shown how the noise can disturb the Virial value of a perfect differentiable function.
As can be seen from Table 1, Table 2 and Table 3, for the three iterated maps considered, the discrete Virial coefficient reaches its final value faster when the iterated map is set to exhibit non-chaotic behavior than when it is applied under chaos conditions. Depending on the components of the discrete Virial Equation (19), one associated with the kinetic component and the other with the potential, the slower speed of convergence could be interpreted as a greater imbalance between these two components when the system is starting up under chaotic conditions. This fact could extend the results obtained by Howard [15] to be applied to many other systems.
When analyzing bifurcations and stability regions in dynamic systems, especially those with low dimensionality, various types of theoretical tools are often used, as explained by Mittal and Gupta [28]. In particular, the calculation of Lyapunov exponents is a well-known tool, and more than one algorithm has been developed for its calculation, so one might think that, although its mathematical definition is precise, there is no standardized methodology for its calculation. In a more theoretical sense, a critical analysis of their spurious values can be found to characterize islands of stability in dynamic systems, as proposed by Hayna and Daowen [29] and Leonov and Kuznetzof [30]. In this way, the discrete Virial coefficient not only has minimal requirements for use but the calculation algorithms are also very clear, given that it uses discrete operators for the calculation of the discrete derivatives.
Figure 9a shows several windows of order of the Feigenbaum diagram for the logistic map. The most extended ones are centered on the values of the parameter r, approximately 3.65, 3.75 and 3.85; in all four cases, the verification of the class of behavior can be confirmed with the calculation of the corresponding Lyapunov exponent, as can be seen in Figure 9c. Note that, in Figure 9b, plateaus of almost constant behavior of the discrete Virial coefficient appear. This fact shows that both components have been defined as kinetic, and the potential factors are found in areas where the quotient provided by the C N coefficient is almost constant. This could constitute a new framework that employs the constancy of the discrete Virial coefficient as a p r o x y of the windows of the order of bifurcation diagram of the iterated logistic map.
For the case of the discubic map in Figure 10a, a similar behavior of the discrete Virial coefficient was found when an ordering window occurs in the bifurcation diagram, with this case being an iterated map of degree three to analyze whether the behavior found for the logistic map was reiterated in this new case.
To analyze other cases, with more of the presence of the plateaus as a proxy of the windows of order, an iterated map defined on a periodic function was selected, as in the case of the sin map. In Figure 11a is shown a narrow window centered at approximately w = 3.6 , a wide window between 4.6 and 5.3, and much narrower windows of around 6, 6.5 and 7. This phenomenon is reflected with the Lyapunov exponent in Figure 11c, and the presence of plateaus in the C N coefficient can be observed in the regions corresponding to the same parameter values in Figure 11b, which is another confirmation of the phenomenon found with the behavior of the discrete Virial coefficient in the regions of the order in the bifurcation diagrams.
The last case analyzed in Section 5.2 is the order windows in the Gaussian map. This map was selected because it is composed of an exponential function and has a wide range of order in the bifurcation diagram, as can be seen in Figure 12a. This map, whose bifurcation diagram is shown in Figure 12a, has a window of order whose center is close to the value of the β parameter −0.7, another one a bit wider centered around −0.3, and a very large one starting from the β parameter close to −0.2. In all the cases, it is possible to appreciate the presence of a plateau in the value of the discrete Virial coefficient, as is observed in Figure 12b, and additionally, as in all the previous analyses, it is attached in Figure 12c with the corresponding calculation of the Lyapunov exponent. In all exposed cases, there are much narrower windows of order that are not analyzed in detail but that a deep revision of the graphs makes evident.
An additional, but no less important, result in favor of using the discrete Virial coefficient when studying a dynamic system is the time required for its calculation compared to, for example, the Lyapunov exponent, as can be seen from Table 4 and Table 5. This is due to the simplicity of the calculations required in the case of the discrete Virial, just derivatives, and those necessary for the Lyapunov exponent, which complicate and make the algorithms and computation times more complex and costly.
Two important results emerge from Figure 13: (a) for the data without interpolation, the parameter C N clearly distinguishes diabetics from non-diabetics; (b) when the data are interpolated, this difference disappears, and the value of the parameter C N approaches unity, a characteristic of the data generated by a differential equation; see Figure 1. Previous treatments have also shown this result; interpolation erases the difference between the signals. The discrete Virial extension shows that an interpolation process to smooth experimental data from a series can distort the information originally contained in the series.

8. Conclusions

This work has demonstrated the feasibility of applying the Virial concept to discrete systems, even in cases that do not have a Hamiltonian and, in some cases, with problems in defining the concept of a discrete derivative. However, the quotient established in the discrete definition of Virial can continue to be applied to obtain the relevant properties of the data series analyzed. The convergence towards a given value of C N was also verified in the numerical solution of the non-linear differential equation of the double pendulum. In addition, it was verified in some systems, such as pseudorandom number generators, and in the equation of the logistic iterative map.
The speed with which the coefficient of the discrete Virial tends to its final value after a number of applications of the iterated maps have been shown to be a discriminator of the behavior of the maps. In chaotic regimes, it has shown, with reference to the non-chaotic ones, a slower convergence speed, as demonstrated by the coefficient designed ad hoc in the present research. Given a number of samples from a dynamic system, and without information on its operating regime, a comparison of the speed of convergence of the discrete Virial coefficient could be made to find out the behavior of the systems. This fact represents, in itself, another contribution in quasi-energetic terms, given that the greater convergence of the Virial coefficient implies a smaller oscillation of it in the initial moments of the operation of a dynamic system, which translates into a smaller oscillation of the quotient between the term associated with the kinetic component and that of the potential component, which precisely constitutes the coefficient of the discrete Virial.
One of the main contributions of this work can be represented by the association of the intervals of values of the discrete Virial coefficient being almost constant, as a proxy of the emerging of the windows of order in the Feigenbaum diagrams of the logistic, discubic, sin and Gaussian maps. In all of them, every time a simplification of the bifurcation diagram begins to appear, an approximated compensation of the kinetic and potential terms of the expression for the discrete Virial Coefficient C N is present. This window of order in chaotic maps is a well-known fact that could be reinterpreted in terms of the discrete Virial coefficient from a nearly energetic point of view—more explicitly, because it can be associated with an equilibrium in the relationship between the kinetic energy and potential energy components of the discrete Virial extension.
Finally, it was applied to a series of measured blood glucose density data that demonstrated the capacity of the discrete extension of the proposal to study the differentiation of time series.
As a final summary, it can be concluded that the extension of the discrete Virial formalism presented here has a clear conceptual simplicity and ease of computational implementation that, in relation to the properties it could provide of the data series to be analyzed, presents a very interesting and innovative alternative that only requires that the discrete data series should be bounded and that a constant rate should be sampled.

Author Contributions

Conceptualization, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Methodology, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Software, A.A., L.R.D., M.M., C.B. and W.L.; Validation, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Formal analysis, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Investigation, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Resources, L.R.D., M.M., C.B. and W.L.; Data curation, A.A., L.R.D., M.M., C.B. and W.L.; Writing—original draft, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Writing—review & editing, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Visualization, D.O., A.A., L.R.D., M.M., C.B. and W.L.; Supervision, D.O. and W.L.; Project administration, W.L.; Funding acquisition, W.L. All the authors contributed in the same way to the production of this research. All authors have read and agreed to the published version of the manuscript.

Funding

The authors wish to acknowledge the support of the Universidad Tecnologica Nacional Projects: Signal Analysis Using Geometric Transformations and Symbolic Sequences and Informational Tools, Project Code PID ASIFNBA0010125, and Study of the Glucemic Dynamic of Subjects Suffering Type II Diabetes Through Mathematical Models and Informational Theory, Project Code PID de PID ASPPGP0010154.

Data Availability Statement

The computer codes used in this study can be reproduced easily and are correctly cited. With regard to blood glucose concentration data measured with continuous glucose monitors, these may be requested in writing and used by means of a signed agreement.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A. On the Role of the Sampling Interval (h)

This appendix is devoted to the analysis of what happens if the calculation step h is still constant, but with a different value. Although C N does not depend on h theoretically, the signal can be distorted by the size of the interval between the signal data and, therefore, the information conveyed by the series varies. This is a complicated problem, and there are three possible situations: (a) it is possible to vary h arbitrarily, (b) it is possible to vary h to some extent, and (c) it is not possible to vary h.
Case (a) occurs for solutions of differential equations, and adjusting the value of h to small values gives the value of C N 1 . In (c), the case in which the solutions of difference equations, like pseudorandom numbers and a logistic map, where h = 1 by construction, and it cannot be varied. Finally, case (b) is actually the most important because it will be presented in the study of experimentally obtained series. In this case, when physical and/or biological quantities are measured numerically, the signal is inherently discrete, and the value of h is usually given by the experiment itself or by the measuring device. Normally, experiment and measurement equipment are designed with the objective of obtaining a series for which h is as small as possible. In any case, the series information corresponds to the set of experimental/measuring devices.
For the case of the function sin ( t ) , see Figure A1, which illustrates the problem that arises when the sample size h is varied.
Figure A1. Variation of the average C N (blue line) and its standard deviation band (sigma) when the sampling interval h is varied for sin ( t ) , where σ refers to the standard deviation.
Figure A1. Variation of the average C N (blue line) and its standard deviation band (sigma) when the sampling interval h is varied for sin ( t ) , where σ refers to the standard deviation.
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Appendix B. Impact of Discontinuities in Analyzed Series

Let us return to the case of the solution of a harmonic oscillator with the function sin ( t ) , this time disturbed by pseudorandom noise. The point here is to determine how the signal begins to lose the information of the derivatives. By adding pseudorandom “noise” in different proportions, Table A1 examines the sensitivity of C N . It can be seen that C N decreases and quickly approaches the value of C N obtained with pseudorandom numbers (approx. 0.25).
Table A1. Evolution of the mean of C N (between iterations 15,000 and 20,000) and the corresponding variance when adding pseudorandom (0–1) noise to sin ( t ) . Calculation used time sptep h = 0.0236 s.
Table A1. Evolution of the mean of C N (between iterations 15,000 and 20,000) and the corresponding variance when adding pseudorandom (0–1) noise to sin ( t ) . Calculation used time sptep h = 0.0236 s.
Noise Added C N 15 k 20 k Variance
0%1.00000.0017
1%0.96230.0017
5%0.56750.0017
10%0.36450.0004
20%0.28230.0006
50%0.25960.0005
100%0.24970.0006
In Figure A2, it can be seen that a small disturbance is generated by adding 5% noise [17] to the signal produces a large variation in the evolution of the C N value. The convergence of C N to the value generated by the pseudorandom numbers occurs for any proportion when the pseudorandom numbers are multiplied, rather than added.
Figure A2. Evolution of sin ( t ) , adding 5% of pseudorandom (0–1) noise and the corresponding evolution of C N after 17,000 iterations.
Figure A2. Evolution of sin ( t ) , adding 5% of pseudorandom (0–1) noise and the corresponding evolution of C N after 17,000 iterations.
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Having clarified this point, the problem that arises is to find out which analytic functions are close to C N = 1 and which are outside the dispersion of this value. For example, sin 2 ( t ) approaches C N = 1 . Instead, this function:
f ( t ) = | sin ( t ) | .
Converges to: C N = 0.7849 . This function is continuous, but its derivative is not, as looking closely at the first derivative changes signals at the cusps.
This function has the first derivative similar to a Heaviside discontinuity, going from negative to positive sign values. Consequently, the second derivative has a “delta” type discontinuity: between two negative values, it grows to a positive value (see Figure A3). It is concluded that the values that C N can take are strongly influenced by the degree of continuity of the derivatives of the data series.
Figure A3. Derivatives of the function f ( t ) = | sin ( t ) | .
Figure A3. Derivatives of the function f ( t ) = | sin ( t ) | .
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Figure 1. Mirrored evolution of the kinetic factor K N and the potential factor P N of the evolution of the double pendulum.
Figure 1. Mirrored evolution of the kinetic factor K N and the potential factor P N of the evolution of the double pendulum.
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Figure 2. Convergence of C N for the chaotic double pendulum.
Figure 2. Convergence of C N for the chaotic double pendulum.
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Figure 3. Evolution of C N for Mersenne Twister pseudorandom numbers (0 to 1), h = 1 . It converges to approximately 0.25.
Figure 3. Evolution of C N for Mersenne Twister pseudorandom numbers (0 to 1), h = 1 . It converges to approximately 0.25.
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Figure 4. Evolution of C N for the inverse of pseudorandom numbers ( 0 < r a n d < 1 ). (a) Semi-logarithmic axis showing large jumps when the pseudorandom number is near 0. (b) Linear axis showing C N remaining close to 0.25 between jumps.
Figure 4. Evolution of C N for the inverse of pseudorandom numbers ( 0 < r a n d < 1 ). (a) Semi-logarithmic axis showing large jumps when the pseudorandom number is near 0. (b) Linear axis showing C N remaining close to 0.25 between jumps.
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Figure 5. Evolution of the kinetic factor (top, blue) and potential factor (bottom, red) for the reciprocal of the pseudorandom series, showing quasi-reflection but with different amplitudes.
Figure 5. Evolution of the kinetic factor (top, blue) and potential factor (bottom, red) for the reciprocal of the pseudorandom series, showing quasi-reflection but with different amplitudes.
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Figure 6. Evolution of C N for the logistic equation with different initial conditions as parameter r varies. Note the drop before the first bifurcation around r = 3.0, as well as the dependence on initial conditions in the periodic regime.
Figure 6. Evolution of C N for the logistic equation with different initial conditions as parameter r varies. Note the drop before the first bifurcation around r = 3.0, as well as the dependence on initial conditions in the periodic regime.
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Figure 7. Evolution of C N across an island of stability (period-3 window) in the chaotic zone of the logistic map (approximately from r = 3.8250 to r = 3.8570 ) .
Figure 7. Evolution of C N across an island of stability (period-3 window) in the chaotic zone of the logistic map (approximately from r = 3.8250 to r = 3.8570 ) .
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Figure 8. Speed ( d C N / d r ) upon entering and exiting the stable island depicted in Figure 7. Note the sharp peaks at the transitions.
Figure 8. Speed ( d C N / d r ) upon entering and exiting the stable island depicted in Figure 7. Note the sharp peaks at the transitions.
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Figure 9. Logistic map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
Figure 9. Logistic map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
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Figure 10. Discubic map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
Figure 10. Discubic map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
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Figure 11. Sin map: (a) Feigenbaum Bifurcation Diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
Figure 11. Sin map: (a) Feigenbaum Bifurcation Diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
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Figure 12. Gaussian map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
Figure 12. Gaussian map: (a) Feigenbaum bifurcation diagram, (b) Virial coefficient plot, (c) Lyapunov exponent.
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Figure 13. Discrete Virial coefficient ( C N ) evaluated for biological series (glucose data) with and without data interpolation (graphical representation of Table 7), the circles represent the mean values of C N , and the vertical segments correspond to the variation within each group.
Figure 13. Discrete Virial coefficient ( C N ) evaluated for biological series (glucose data) with and without data interpolation (graphical representation of Table 7), the circles represent the mean values of C N , and the vertical segments correspond to the variation within each group.
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Table 1. Residual sum of squares for the discrete Virial coefficient convergence for the logistic equation, for chaotic ( r = 4 ) and non-chaotic ( r = 3.4 ) regimes, and initial condition x = 0.6 .
Table 1. Residual sum of squares for the discrete Virial coefficient convergence for the logistic equation, for chaotic ( r = 4 ) and non-chaotic ( r = 3.4 ) regimes, and initial condition x = 0.6 .
Iteration5001000500010,00050,000100,000150,000200,000
Chaos0.20390.19950.21920.22720.43980.53800.72020.5931
Non-Chaos0.00080.00080.00080.00080.00080.00080.00080.0008
Table 2. Residual sum of squares for the discrete Virial coefficient convergence for the discubic equation, for chaotic ( a = 3.84 ) and non-chaotic ( a = 3.2 ) regimes, and initial condition x = 0.5 .
Table 2. Residual sum of squares for the discrete Virial coefficient convergence for the discubic equation, for chaotic ( a = 3.84 ) and non-chaotic ( a = 3.2 ) regimes, and initial condition x = 0.5 .
Iteration5001000500010,00050,000100,000150,000200,000
Chaos0.17620.17880.17930.17960.17980.17980.17980.1798
Non-Chaos5.0 × 10−75.1 × 10−75.1 × 10−75.1 × 10−75.1 × 10−75.1 × 10−75.1 × 10−75.1 × 10−7
Table 3. Residual sum of squares for the discrete Virial coefficient convergence for the iterated sin map, for chaotic ( w = 4 ) and non-chaotic ( w = 1.28 ) regimes, and initial condition x = 0.7 .
Table 3. Residual sum of squares for the discrete Virial coefficient convergence for the iterated sin map, for chaotic ( w = 4 ) and non-chaotic ( w = 1.28 ) regimes, and initial condition x = 0.7 .
Iteration5001000500010,00050,000100,000150,000200,000
Chaos0.49940.67080.78220.84890.89230.90900.93891.0169
Non-Chaos0.04510.04510.04510.04510.04510.04510.04510.0451
Table 4. Time consumed for the calculus of the discrete Virial coefficient for different numbers of iterations of the logistic equation (values in seconds).
Table 4. Time consumed for the calculus of the discrete Virial coefficient for different numbers of iterations of the logistic equation (values in seconds).
Iteration5001000500010,00050,000100,000150,000200,000
Mean value0.00040.00030.00060.00050.00270.00330.00810.0108
Standard dev0.00030.00030.00050.00020.00220.00170.00310.0036
Table 5. Time consumed for the calculus of the Lyapunov exponent for different number of iterations of the logistic equation (values in seconds).
Table 5. Time consumed for the calculus of the Lyapunov exponent for different number of iterations of the logistic equation (values in seconds).
Iteration5001000500010,00050,000100,000150,000200,000
Mean value0.15160.11930.78392.417632.7860153.6608370.6662705.5994
Standard dev0.02700.05340.36661.199010.850848.8774143.0838209.4798
Table 6. Mean and variance of Virial coefficient C N (N = 5 individuals).
Table 6. Mean and variance of Virial coefficient C N (N = 5 individuals).
H. RawH. IntS. RawS. Int
IDMVMVMVMV
10.73150.01381.04100.01310.87640.00941.07720.0055
20.66170.01030.98490.00540.78610.01370.99730.0149
30.65190.01210.98450.01110.77770.01550.99480.0091
40.65700.00781.00570.00830.83290.01981.00670.0262
50.71340.00961.00420.00580.89290.01461.00920.0107
References: H. Raw: healthy without interpolating; H. Int: interpolated healthy; S. Raw: sick without interpolating; S. Int: interpolated sick; M: mean C N ; V: variance, ID: individual number. Calculated with the last 400 discrete Virial coefficient data points.
Table 7. Average Virial coefficient C N and inter-individual variance for glucose data groups using two interpolation schemes.
Table 7. Average Virial coefficient C N and inter-individual variance for glucose data groups using two interpolation schemes.
GroupAverage C N Variance (Between Individuals)
Non-diabetics, raw data0.68240.0012
Non-diabetics, spline interpolated data1.00500.0006
Non-diabetics, MSE (orthonormal) data0.98870.0001
Diabetics, raw data0.82020.0020
Diabetics, spline interpolated data1.01720.0015
Diabetics, MSE (orthonormal) data1.01110.0025
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Otero, D.; Amadio, A.; Robles Dávila, L.; Maillot, M.; Bonini, C.; Legnani, W. Virial Extension for Discrete Data Series. Signals 2026, 7, 29. https://doi.org/10.3390/signals7020029

AMA Style

Otero D, Amadio A, Robles Dávila L, Maillot M, Bonini C, Legnani W. Virial Extension for Discrete Data Series. Signals. 2026; 7(2):29. https://doi.org/10.3390/signals7020029

Chicago/Turabian Style

Otero, Dino, Ariel Amadio, Leandro Robles Dávila, Marcos Maillot, Cristian Bonini, and Walter Legnani. 2026. "Virial Extension for Discrete Data Series" Signals 7, no. 2: 29. https://doi.org/10.3390/signals7020029

APA Style

Otero, D., Amadio, A., Robles Dávila, L., Maillot, M., Bonini, C., & Legnani, W. (2026). Virial Extension for Discrete Data Series. Signals, 7(2), 29. https://doi.org/10.3390/signals7020029

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