Research
Other Areas in Physics
Approximate construction of new conservative physical magnitudes
through the fractional derivative of polynomial-type functions: A particular
case in semiconductors of type AlxGa1-xAs
J. C. Campos-Garcíaa
M. E. Molinar-Tabaresb
C. Figueroa-Navarroc
L. Castro-Arced
aDepartamento de Ciencias de la Salud,
Universidad de Sonora, Blvd. Bordo Nuevo s/n, Antiguo Ejido Providencia, Apdo.
Postal 85040, Cd. Obregón Sonora, México. e-mail:
julio.campos@unison.mx
bOrganismo de Cuenca del Noroeste, Comisión
Nacional del Agua, Hermosillo, Sonora, México. e-mail:
martin.molinar@conagua.gob.mx
cDepartamento de Ingeniería Industrial y
Sistemas, Universidad de Sonora, Unidad Centro, Hermosillo, Sonora, México.
e-mail: cfigueroa@industrial.uson.mx
dDepartamento de Física, Matemática E
Ingeniería, Universidad de Sonora, Unidad Sur, Navojoa, Sonora, México. e-mail:
lcastro@navojoa.uson.mx
Abstract
The fractional calculus has a very large diversification as it relates to
applications from physical interpretations to experimental facts to the modeling
of new problems in the natural sciences. Within the framework of a recently
published article, we obtained the fractional derivative of the variable
concentration x(z), the effective mass of the electron
dependent on the position m(z) and the potential energy
V(z), produced by the confinement of the electron in a
semiconductor of type AlxGa1-xAs, with which we can intuit
a possible geometric and physical interpretation. As a consequence, it is
proposed the existence of three physical and geometric conservative quantities
approximate character, associated with each of these parameters of the
semiconductor, which add to the many physical magnitudes that already exist in
the literature within the context of fractional variation rates. Likewise, we
find that the fractional derivatives of these magnitudes, apart from having a
common critical point, manifest self-similar behavior, which could characterize
them as a type of fractal associated with the type of semiconductor structures
under study.
Keywords: Educative science; fractional derivative; geometric and physical interpretations; semiconductor parameters; fractional continuity equations
PACS: 01.40.E-; 61.82.Fk; 02.30.Mv; 05.45.Df; 02.30.Gp
1.Introduction
For the scientific community, it is known the great number of works related to the
application of fractional calculation in the different areas of knowledge 1-10. In parallel, there are efforts that continue
with the objective of performing physical and geometric interpretations of both the
fractional derivative and the fractional integral, as shown in recent contributions.
See for example: 11-14, where are shown geometric and physical interpretations of
Volterra-type convolution integrals a relationship between the fractal set of Cantor
and the fractional integral, the presentation of the general conformable fractional
derivative, along with its physical interpretation, and the geometric interpretation
of the tangent line angle of a polynomial with fractional derivative coefficients,
respectively.
On the other hand, independently of the existence of diverse physical and geometric
interpretations of what the fractional derivative of the function of a physical
system represents, it is important to mention that its use in different sciences, as
well as natural (physical) sciences, can be said to be endorsed by the formulation
of the variational principles of fractional type, which describes with great success
the evolution of non-conservative systems, as mentioned in the references 15,16. Likewise, in related literature, we can find
several explicit applications of the fractional derivative in natural systems; for
example, in 17, a model is
proposed to characterize natural shapes such as neutral hydrogen emissions using the
concept of a fractional derivative. Also, in 18, it is found that an approximation can be established
between the concepts of relativistic kinetic energy and fractional kinetic energy.
The heterogeneous semiconductor structures do not escape this multitude of
applications of the fractional calculation; for example, in 19-25 just some of them can be found. Thus, taking into
account the favorable effect that the fractional derivative can have on the
different natural systems, our present contribution consists in the direct
application of the framework developed in 14 to find, for the first time, the approximate physical
and geometric effect that produces the fractional derivative of the variable the
concentration of a dopant, in this case, Aluminum deposited on a substrate, the
position-dependent effective mass adopted by the confined electron, and the
potential energy that the electron acquires due to the semiconducting medium. It
should be mentioned that we use these magnitudes in a recent contribution 26, where we use the structure
formed by AlxGa1-xAs as a semiconductor. Bearing this in mind,
the second section contains the description of the mathematical formalism. The third
section describes the application of such formalism to the semiconductor parameters
of the mentioned type and, finally, in the fourth section, a brief description of
the obtained results and the consequences inferred by them are made.
2.Description of the formalism
The concept of a fractional derivative is linked to that of the minimum trajectory to
go from a point (x1, f(x1)) to a point
(x2, f(x2)) in a plane x,
f(x), and then to get the Lagrangian of the
system. From the classical theory of differential calculus and integral calculus, we
can see that for a function f(x), there is an
infinite sequence of derivatives and integrals 27
…d2f(t)dt2,df(t)dt,f(t),∫atf(τ)dτ,∫at∫aτ1f(τ)dτdτ1,…
(1)
The fractional calculation tries to interpolate the sequence (1) in such a way that
it allows generating any order from an arbitrary order. Several definitions have
been proposed for the fractional derivative, among which are those of
Riemann-Liouville, Grünwald-Letnikov, Weyl, Caputo, Marchaud, and Riesz. In
particular, in the present work, we make use of a definition that is generated from
the fractional derivative of Riemann-Liouville:
cDxαfx=1Γ(n-α)ddxn×∫cxx-τn-α-1fτdτ,
(2)
with 0 < α < 1. Integrating by parts and making a change of variable to
introduce the definition of the beta function, it can be seen that for a function of
the type f(x)=xc, the fractional derivative to f(x) is given by
Dα[xc]=Γ(c+1)Γ(c+1-α)xc-α.
(3)
This type of fractional derivative is used in 14, where the result of Dα[xc] is multiplied by the result of the triangular area Afα formed between the tangent line in (x =
b,f(x = b))
the distance between the point where the tangent line crosses the axis
x and x = b, and the line
x = b, which can be visualized better
inspecting the Fig. 1. The result of such
multiplication is a constant, i.e., Dα[xc]Afα≅constant.
The triangular area Afα of Fig. 1 will be given by
Afα=(λfα[fx=b]2.
(4)
The value of λ is solved for the triangular area in the form
tanθfα=mfα.
(5)
In such a way that
θfα=tan-1mfα=tan-1{Dα[bc]}=θ0α,
(6)
where θ0α is the value of the angle in radians, obtained for a value of α.
On the other hand, from the triangular area we also have that θfα=[fx=b]/[λfα] then λfα=[fx=b]/[tanθα] and substituting θ0α in θα we get λfα=[fx=b]/[tanθ0α].
With this information, the triangular area is expressed as
Afα[f(x=b)]22tanθ0α.
(7)
As can be seen, once the values of b and a are determined, both Afα and Dα[bc] can be obtained.
As mentioned in 14, the triangular
area Afα represents a physical magnitude by itself, where it is constructed in a
geometric form. The same geometrical and physical aspects can be visualized in the
fractional variation rate Dα[bc]. These aspects associated with both Afα and Dα[bc] are combined to produce another physical and geometric magnitude, which
arises with the multiplication of both, as mentioned in the opening paragraph of
this section. This magnitude of invariant character could reflect a type of
symmetry, which would manifest depending on the system under study. In the next
section, an application of the present formalism is realized.
3.A direct application of the formalism
Using atomic units, the concentration of the semiconductor is given by x(z)=(1.4/L2)z2-(1.4/L)z+0.35. The position dependent effective mass of the electron m(z)=(0.118/L2)z2-(0.118/L)z+0.096 and the potential energy of the electron V(z)=(0.044/L2)z2-(0.044/L)z+0.0110 are polynomial type functions with position dependence
z and where L is the size of the crystalline
structures. The three magnitudes associated with the semiconductor under study have
a similar algebraic structure.
In applying the formalism described in the previous section to x(z),
m(z), V(z), respectively, is obtained
Dαx(z)=Dα1.4L2z2-Dα1.4Lz+Dα,
(8)
Dαm(z)=Dα0.118L2z2-Dα0.118Lz+Dα0.096
(9)
Dαx(z)=Dα0.044L2z2-Dα0.044Lz+Dα0.0110
(10)
The fractional derivatives (8), (9) y (10) have a graphic structure equivalent to
that described by Fig. 1, within the framework
of the formalism raised above.
Taking into account the above, the areas Axα=α0, Amα=α0, AVα=α0, are given respectively by
Axα=α0=λxα[xz=z0]2,
(11)
Amα=α0=λmα[mz=z0]2,
(12)
AVα=α0=λVα[Vz=z0]2,
(13)
To solve the areas of (11), (12), and (13), respectively, it is taken into account
that
tanθxα=mxα=Dα[xz=z0]⇒θxα=tan-1θxα,
(14)
tanθmα=mmα=Dα[mz=z0]⇒θmα=tan-1θmα,
(15)
tanθVα=mVα=Dα[Vz=z0]⇒θVα=tan-1θVα,
(16)
where mxα, mmα, and mVα are the slopes that touch the curves x(z),
m(z), and V(z) forming each
of the points P that are reached to be visualized in the previous
figures. Likewise, the angles θxα, θmα and θVα are given in radians.
On the other hand, from the same triangles with the areas given by (11), (12), and
(13), we also have, respectively that
tanθxα=x(z=z0)λxα,
(17)
tanθmα=m(z=z0)λmα,
(18)
tanθVα=V(z=z0)λVα.
(19)
Therefore, substituting the angles θxα, θmα, and θVα from (14), (15), and (16), in (17), (18), and (19), respectively. With
this, it is possible to obtain the lengths of the bases λxα,λmα and λVα of the respective triangles, which finally are replaced in (11), (12),
and (13), to obtain the values corresponding to the areas Axα=α0, Amα=α0, and AVα=α0.
Once these areas are obtained, the following physical magnitudes can be
constructed
Dα=α0[x(z=z0)]⋅Axα=α0≅Ξ,
(20)
Dα=α0[m(z=z0)]⋅Amα=α0≅Υ,
(21)
Dα=α0[V(z=z0)]⋅AVα=α0≅Ω,
(22)
The Eqs. (20), (21) y (22) represent a type of conservative magnitudes from a
geometric and physical point of view. By solving (20), (21), and (22), the constant
numerical values associated with the corresponding products are obtained between the
fractional derivatives and the respective areas, as can be observed through Tables I, II, and III, where α∈[0.1000,1.000], with jumps of 0.1000, respectively. Likewise, the value of
z = 75 was chosen arbitrarily only to carry out the
calculations.
Table I The fractional-order a of the derivative, the
fractional derivative of the concentration
x(z) evaluated in
z = 75, the projected area Axα=α0 for each of the slopes associated with each value of
a and the product between the fractional derivative
of the concentration in z = 75 and the Axα=α0 respective. The numerical value of L = 100
is adopted for the size of the crystalline structure.
α =α0
|
D α= α0[x(z)] |
Axα=α0 |
Da=a
0[x(z)] ∙Axα=α0=Ξ] |
0.1000 |
0.0634 |
0.0604 |
3.83E-03 |
0.2000 |
0.0475 |
0.0805 |
3.83E-03 |
0.3000 |
0.0366 |
0.1046 |
3.83E-03 |
0.4000 |
0.0287 |
0.1332 |
3.83E-03 |
0.5000 |
0.0228 |
0.1679 |
3.83E-03 |
0.6000 |
0.0182 |
0.2107 |
3.83E-03 |
0.7000 |
0.0145 |
0.2647 |
3.83E-03 |
0.8000 |
0.0115 |
0.3343 |
3.83E-03 |
0.9000 |
0.0090 |
0.4255 |
3.83E-03 |
Table II The fractional-order a of the derivative, the
fractional derivative of the effective mass
m(z) evaluated in
z = 75, the projected area Amα=α0 for each of the slopes associated with each value of
a and the product between the fractional derivative
of the concentration in z = 75 and the Amα=α0 respective. The numerical value of L = 100
is adopted for the size of the crystalline structure.
α =α0
|
D α= α0[m(z)] |
Amα=α0 |
Da=a
0[m(z)] ∙Amα=α0=Υ
|
0.1000 |
0.0634 |
0.0604 |
3.83E-03 |
0.2000 |
0.0475 |
0.0805 |
3.83E-03 |
0.3000 |
0.0366 |
0.1046 |
3.83E-03 |
0.4000 |
0.0287 |
0.1332 |
3.83E-03 |
0.5000 |
0.0228 |
0.1679 |
3.83E-03 |
0.6000 |
0.0182 |
0.2107 |
3.83E-03 |
0.7000 |
0.0145 |
0.2647 |
3.83E-03 |
0.8000 |
0.0115 |
0.3343 |
3.83E-03 |
0.9000 |
0.0090 |
0.4255 |
3.83E-03 |
Table III The fractional-order a of the derivative, the
fractional derivative of the confining potential V
(z) evaluated in z = 75, the
projected area AVα=α0 for each of the slopes associated with each value of
a and the product between the fractional derivative
of the concentration in z = 75 and the AVα=α0 respective. The numerical value of L = 100
is adopted for the size of the crystalline structure.
α = α0 |
Dα=α0
[V (z)] |
AVα=α0 |
Da=a
0[m(z)] ∙Amα=α0=Ω
|
0.1000 |
0.0020 |
1.9202 |
3.83E-03 |
0.2000 |
0.0015 |
2.5622 |
3.83E-03 |
0.3000 |
0.0012 |
3.3274 |
3.83E-03 |
0.4000 |
0.0009 |
4.2393 |
3.83E-03 |
0.5000 |
0.0007 |
5.3419 |
3.83E-03 |
0.6000 |
0.0006 |
6.7037 |
3.83E-03 |
0.7000 |
0.0005 |
8.4230 |
3.83E-03 |
0.8000 |
0.0004 |
10.6375 |
3.83E-03 |
0.9000 |
0.0003 |
13.5397 |
3.83E-03 |
1.0000 |
0.0002 |
17.4006 |
3.83E-03 |
Likewise, the semiconductor concentration function x(z) can be
visualized through Fig. 2, where the triangular
areas obey the formalism used in this article.
Each of the other physical magnitudes (effective mass m(z) and the
confining potential V(z)) also have geometric and physical
elements, which manifest themselves analogously to the concentration x(z). Once
obtained the numeric calculations for the effective mass and the confining
potential, it was found that the constant value associated with each of these
magnitudes was the same, i.e., it is found that Ξ=Υ=Ω=3.83×10-3, which reflects intuitively the
the possibility of new symmetries associated with the semiconductor system.
Interestingly, the numerical coincidence of these three new invariant magnitudes
could indicate that the semiconductor system has a certain self-similarity, which
allows us to characterize it as a structure of fractal type.
Likewise, as we mentioned in 26,
there is a visible relationship between x(z), m(z) and V(z), which we can express as x(z)=31.818V(z), m(z)=0.0665+2.681V(z). This relationship allows us to draw some conclusions about the
relationship between these semiconductor parameters and the quantum formalism that
describes them, that is if we take into account that the Hamiltonian we studied in
26 was independent of time,
from there it was. You can see that it
is a linked potential. Such characteristic allows us to infer that (22) is continuous
everywhere, as shown in 28. The
fractional continuity of (22) is verified because the z coordinate
of the semiconductor crystal structure does not have a discrete value spectrum.
Likewise, such a continuity equation is a restriction to the wave function of the
confined electron, as mentioned in 28. Now, as we already mentioned, the concentration and the
mass effectively show a clear relationship with potential, and that relationship
allows us to infer that the continuity Eqs. (20) and (21) have an interpretation
similar to the continuity (22) of the potential, which is grounded since xz∈[0,0.35], mz∈[0.0665,0.0960] and Vz∈[0,2.75×10-3]. Some fact that results interesting can be seen in the numerical
calculation shown in the Tables I, II, and III, where it is observed that the continuity equations are verified
even though the order of the derivative α →1.
On the other hand, from these continuity equations, it can be seen that, inside the
semiconductor, a fractional area is defined when 0.1000≤α<1.0000 and only when α = 1, such area is transformed into one of integer
degree. So, the areas defined by the respective continuity equations are defined by
an inverse relationship with the rates of fractional variation respective. This
information could be telling us that there is an area Aα inside the
semiconductor, where α may be indicating the degree of irregularity it may have,
which is quite possible and real, at least from an intuitive point of view. To go a
little deeper into what was mentioned in the previous paragraph. Let us start
remembering how in 29, it is
mentioned that a semiconductor can be deposited on a substrate, varying its
concentration in one direction particular growth, which in turn will cause an
effective mass of the electron that will be dependent on its position within the
crystal structure. As you can see, the fact of depositing a semiconductor in a
substrate in one direction, involves an interaction between a quantity of
semiconductor through an area unit, that is, there is a correspondence between a
rate of change of concentration Dα=1[xz] and the cross-sectional area Aα=1 where such rate of increase is happening. On the other hand, to
guarantee compliance with the energy conservation, we must take into account that
the substrate has negligible losses of the semiconductor and whose correspondence
happens through an inverse ratio relationship like Aα=1∝1/Dα=1[xz], of such that this proportionality implies the relation Aα=1=Ξ/Dα=1[xz], whose numerical value can be seen in Table I. Likewise, we can notice that such cross-sectional area Aα=1 obeys the Euclidean standard geometry and is due to an isotropic growth
rate of concentration Dα=1[xz]. However, it is very interesting to observe that when α < 1, you have Aα<1=Ξ/Dα<1[xz], that is to say, the same quantity Ξ preserved, only now you have a
cross-sectional area obeying the Hausdorff fractional geometry. This means, that the
area cross-section Aα<1 has a set of degrees of irregularity, which correspond biunivocally with
the set of variation rates with equivalent degrees of irregularity or anisotropy in
the z direction, as expressed below:
∀Dα<1xz∈0.1000,0.9000∃ Aα<1∈0.1000, 0.9000
(23)
with 0.1000 jumps. Such an interpretation can be visualized through Fig. 3.
From the previous Fig. 3, you can see the
visualization of the variation rate of x(z), with dependence on the degree α of the
derivative. In the initial time t = t0, the concentration undergoes an
isotropic evolution Dα=1[xz] across a Euclidean-like cross-sectional area Aα=1. Later, in times t > t0, the concentration of the
semiconductor experiences an anisotropic evolution Dα<1xz∀α∈[0.9000,0.1000] through a non-integer dimension Hausdorff cross-sectional area Aα<1∀α∈[0.9000,0.1000], where l0 is the initial length that corresponds to the
magnitude of Dα=1 and l0+Δl the magnitude of Dα<1 corresponding to α = 0.9000 and so on up to α =0.1000. Therefore, the
value of α provides us with information on the degree of anisotropy that the rate of
variation of the concentration x(z) and the cross-sectional area involved in the
direction in which the concentration, with anisotropy being null when α = 1.000 and
anisotropy not null when 0.1000≤α<1.000. This same interpretative analysis of (20) can be applied to (21) and
(22) for the effective mass of the electron and the confining potential,
respectively.
4.Critical points in the fractional derivative of x(z), m(z),
andV(z)
According to 14, the fractional
derivative of polynomial-type functions shows critical points when the base variable
and the largest exponent of the polynomial coincide. Then, to visualize some
critical points in the fractional derivative of the concentration, effective mass of
the electron, and potential energy of the system, it is necessary to pose the
corresponding equations of the formalism for each of the magnitudes. However, as all
three have the same algebraic structure, we focus only on the concentration x(z), as
shown below.
If the fractional derivative of the concentration x(z) of the semiconductor under
study is given by
Dαz,β,α=Dα1.4L2zβ-Dα1.4Lzβ-1+Dα0.35zβ-2.
(24)
For z = β = 2, we must then have the possibility of finding critical points. We
examine this inspection in a next way
∂Dα(β,β,α)∂α=∂∂α1.4L2Γ(β+1)Γ(β+1-α)ββ-α-1.4LΓβΓβ-αββ-1β-1-α+(0.35)Γ(β-1)Γ(β-1-α)β-2β-2-α=0
(25)
If β = 2, (12) is reduced only to the first two terms
∂Dα(β,β,α)∂α=∂∂α1.4L2Γ(β+1)Γβ+1-αβ(β-α)-1.4LΓ(β)Γ(β-α)β-1(β-1-α)=0
(26)
Solving the partial derivative (13), we obtain the next equation
1.4×10-422-αΓ(3)-log2+ψ0(3-α)Γ(3-α)-0.01411-αΓ2ψ02-αΓ2-α=0
(27)
which is a general equation for the variable called “critical point α” y where ψ(0) is the Polygamma function.
The solution of (26) provides us with the existence of the critical point α = 0.5,
which means that in the interval of α∈[0.1000,1.000], the fractional derivative of x(z) reaches a maximum in α = 0.5 and from
there it starts to decrease until it reaches Dα=1.000[xz]. The equations analogous to (26) can be obtained for m(z), and V(z) and,
as a consequence, they will also have the same critical point α = 0.5, maintaining a
very parallel behavior in its growth ratios and fractional decrease within the
crystalline size of the semiconductor delimited in the present work. Likewise, the
numerical solutions of (26), for the intervals of 2<α≤4, show critical values at the midpoint of the respective interval Δα,
while for the intervals of 4<α≤10, such critical points are displaced from the midpoint in an amount of ≈
0.1, as can be seen in Table IV.
Table IV Critical points of the fractional derivative of the concentration
x(z) evaluated in z = 2, adopting the numerical value of L = 100 for the
size of the crystalline structure.
Δα |
α |
[0.1000; 1.000] |
0.5387 |
[2.1000; 3.000] |
2.4956 |
[3.1000; 4.000] |
3.5729 |
[4.1000; 5.000] |
4.6105 |
[5.1000; 6.000] |
5.6352 |
[6.1000; 7.000] |
6.6532 |
[7.1000; 8.000] |
7.6671 |
[8.1000; 9.000] |
8.6784 |
[9.1000; 10.00] |
9.6877 |
Something interesting that we can also observe, it has to do with the numerical
coincidence shown between the critical points shown in Table IV and specific values that involve the Zeta function of
Riemann ς(k) given by the next set of equations, respectively,
α1=0.5=∑k=2∞-1kςk-1,
(28)
αm≅m∑k=2∞ςk-1+∑k=2∞-1kςk-1 for m=2,3
(29)
αn≅n∑k=2∞ςk-1+∑k=2∞ς2k-1 for n=2,…9
(30)
Now, if we take into account that these series that involve the Zeta function of
Riemann are produced at the same time by the generating function,
∑k=2∞ς(k)yk-1=-ψ(0)(1-y)-γ
being 𝛾 the constant of Euler-Mascheroni, 30 then we could infer that the critical points predicted
by (26) can be represented by a generating function like the one shown below
(31)
This coincidence allows us to strengthen the intuitive character that we have towards
the self-similar behavior of the fractional derivatives of x(z), m(z), and V(z).
5.Conclusions
In the present work, we carried out an analysis of the fractional derivative applied
to the concentration x(z), the effective mass m(z), and the confining potential
V(z), which are magnitudes associated with a semiconductor of type
AlxGa1-xAs, studied by us in a previous work. We believe
that we have achieved, at least approximately, an interpretation possible with the
direct application of a formalism that uses the fractional derivative of
polynomial-like functions. From the results obtained in the present contribution, we
can state that the new constant magnitudes found Ξ, γ, and Ω, show a self-similar
process by visualizing the evolution of each of the fractional variation rates over
the respective fractional areas (Eqs. (5), (6) and (7)), from an initial
fractional-order α
i
to a final one α
i
, in the space of the spatial coordinate z. Also, such an evolution could be
perceived, in an intuitive way, as the description of “fractional flows through
fractional areas”. This result and the intuitive approach with which we approach it
leads us to the equation of continuity inspected commonly in university textbooks,
which has a similar structure but with the difference that the variational rates are
non-fractional variational rates. In the same way, we show, numerically, that the
concentration x(z) really behaves as an invariable quantity, verifying the
analytical result. The same can be verified for m(z) and V(z). We also find that the
fractional derivative of the concentration exhibits a set of critical points, which
depend on the interval associated with the fractional order of the derivative.
Finally, it is interesting to reflect on the self-similar behavior in our system,
within a given interval for the values of the order of the fractional derivative,
knowing that self-similarity is a characteristic feature of a fractal, as mentioned
above. This characteristic, together with the property of scale invariance and the
symmetry that could be associated with each of the new magnitudes found for the
semiconducting system under study, it could be studied more deeply in a future
contribution.
It should be noted that the applications and topics reviewed, such as fractional
calculation, fractals, and the Zeta function of Riemann, are vitally important for a
great diversity of contemporary scientific research.
Acknowledgments
The authors wish to thank the University of Sonora for the infrastructure provided
for the preparation of this contribution. We also thank the referee for his
important recommendations, which enriched the work considerably.
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