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Fermi–Dirac statistics (F–D statistics) is a type of quantum statistics that applies to the
physics Physics is the natural science that studies matter, its fundamental constituents, its motion and behavior through space and time, and the related entities of energy and force. "Physical science is that department of knowledge which ...
of a
system A system is a group of interacting or interrelated elements that act according to a set of rules to form a unified whole. A system, surrounded and influenced by its environment, is described by its boundaries, structure and purpose and express ...
consisting of many non-interacting, identical particles that obey the
Pauli exclusion principle In quantum mechanics, the Pauli exclusion principle states that two or more identical particles with half-integer spins (i.e. fermions) cannot occupy the same quantum state within a quantum system simultaneously. This principle was formula ...
. A result is the Fermi–Dirac distribution of particles over energy states. It is named after
Enrico Fermi Enrico Fermi (; 29 September 1901 – 28 November 1954) was an Italian (later naturalized American) physicist and the creator of the world's first nuclear reactor, the Chicago Pile-1. He has been called the "architect of the nuclear age" an ...
and
Paul Dirac Paul Adrien Maurice Dirac (; 8 August 1902 – 20 October 1984) was an English theoretical physicist who is regarded as one of the most significant physicists of the 20th century. He was the Lucasian Professor of Mathematics at the Univer ...
, each of whom derived the distribution independently in 1926 (although Fermi derived it before Dirac). Fermi–Dirac statistics is a part of the field of statistical mechanics and uses the principles of
quantum mechanics Quantum mechanics is a fundamental theory in physics that provides a description of the physical properties of nature at the scale of atoms and subatomic particles. It is the foundation of all quantum physics including quantum chemistry, ...
. F–D statistics applies to identical and indistinguishable particles with half-integer spin (1/2, 3/2, etc.), called fermions, in
thermodynamic equilibrium Thermodynamic equilibrium is an axiomatic concept of thermodynamics. It is an internal state of a single thermodynamic system, or a relation between several thermodynamic systems connected by more or less permeable or impermeable walls. In the ...
. For the case of negligible interaction between particles, the system can be described in terms of single-particle energy states. A result is the F–D distribution of particles over these states where no two particles can occupy the same state, which has a considerable effect on the properties of the system. F–D statistics is most commonly applied to
electron The electron ( or ) is a subatomic particle with a negative one elementary electric charge. Electrons belong to the first generation of the lepton particle family, and are generally thought to be elementary particles because they have n ...
s, a type of fermion with
spin 1/2 In quantum mechanics, spin is an intrinsic property of all elementary particles. All known fermions, the particles that constitute ordinary matter, have a spin of . The spin number describes how many symmetrical facets a particle has in one fu ...
. A counterpart to F–D statistics is Bose–Einstein statistics (B–E statistics), which applies to identical and indistinguishable particles with integer spin (0, 1, 2, etc.) called
bosons In particle physics, a boson ( ) is a subatomic particle whose spin quantum number has an integer value (0,1,2 ...). Bosons form one of the two fundamental classes of subatomic particle, the other being fermions, which have odd half-integer spi ...
. In classical physics, Maxwell–Boltzmann statistics (M–B statistics) is used to describe particles that are identical and treated as distinguishable. For both B–E and M–B statistics, more than one particle can occupy the same state, unlike F–D statistics.


History

Before the introduction of Fermi–Dirac statistics in 1926, understanding some aspects of electron behavior was difficult due to seemingly contradictory phenomena. For example, the electronic
heat capacity Heat capacity or thermal capacity is a physical property of matter, defined as the amount of heat to be supplied to an object to produce a unit change in its temperature. The SI unit of heat capacity is joule per kelvin (J/K). Heat cap ...
of a metal at
room temperature Colloquially, "room temperature" is a range of air temperatures that most people prefer for indoor settings. It feels comfortable to a person when they are wearing typical indoor clothing. Human comfort can extend beyond this range depending on ...
seemed to come from 100 times fewer
electron The electron ( or ) is a subatomic particle with a negative one elementary electric charge. Electrons belong to the first generation of the lepton particle family, and are generally thought to be elementary particles because they have n ...
s than were in the
electric current An electric current is a stream of charged particles, such as electrons or ions, moving through an electrical conductor or space. It is measured as the net rate of flow of electric charge through a surface or into a control volume. The movi ...
. It was also difficult to understand why the emission currents generated by applying high electric fields to metals at room temperature were almost independent of temperature. The difficulty encountered by the Drude model, the electronic theory of metals at that time, was due to considering that electrons were (according to classical statistics theory) all equivalent. In other words, it was believed that each electron contributed to the specific heat an amount on the order of the
Boltzmann constant The Boltzmann constant ( or ) is the proportionality factor that relates the average relative kinetic energy of particles in a gas with the thermodynamic temperature of the gas. It occurs in the definitions of the kelvin and the gas constan ...
 ''k''B. This problem remained unsolved until the development of F–D statistics. F–D statistics was first published in 1926 by
Enrico Fermi Enrico Fermi (; 29 September 1901 – 28 November 1954) was an Italian (later naturalized American) physicist and the creator of the world's first nuclear reactor, the Chicago Pile-1. He has been called the "architect of the nuclear age" an ...
, translated as and
Paul Dirac Paul Adrien Maurice Dirac (; 8 August 1902 – 20 October 1984) was an English theoretical physicist who is regarded as one of the most significant physicists of the 20th century. He was the Lucasian Professor of Mathematics at the Univer ...
. According to Max Born, Pascual Jordan developed in 1925 the same statistics, which he called ''
Pauli Pauli is a surname and also a Finnish male given name (variant of Paul) and may refer to: * Arthur Pauli (born 1989), Austrian ski jumper * Barbara Pauli (1752 or 1753 - fl. 1781), Swedish fashion trader *Gabriele Pauli (born 1957), German politi ...
statistics'', but it was not published in a timely manner. According to Dirac, it was first studied by Fermi, and Dirac called it "Fermi statistics" and the corresponding particles "fermions". F–D statistics was applied in 1926 by
Ralph Fowler Sir Ralph Howard Fowler (17 January 1889 – 28 July 1944) was a British physicist and astronomer. Education Fowler was born at Roydon, Essex, on 17 January 1889 to Howard Fowler, from Burnham, Somerset, and Frances Eva, daughter of George De ...
to describe the collapse of a
star A star is an astronomical object comprising a luminous spheroid of plasma (physics), plasma held together by its gravity. The List of nearest stars and brown dwarfs, nearest star to Earth is the Sun. Many other stars are visible to the naked ...
to a white dwarf. In 1927
Arnold Sommerfeld Arnold Johannes Wilhelm Sommerfeld, (; 5 December 1868 – 26 April 1951) was a German theoretical physicist who pioneered developments in atomic and quantum physics, and also educated and mentored many students for the new era of theoretic ...
applied it to electrons in metals and developed the free electron model, and in 1928 Fowler and Lothar Nordheim applied it to
field electron emission Field electron emission, also known as field emission (FE) and electron field emission, is emission of electrons induced by an electrostatic field. The most common context is field emission from a solid surface into a vacuum. However, field emissio ...
from metals. Fermi–Dirac statistics continues to be an important part of physics.


Fermi–Dirac distribution

For a system of identical fermions in thermodynamic equilibrium, the average number of fermions in a single-particle state is given by the Fermi–Dirac (F–D) distribution, where is the
Boltzmann constant The Boltzmann constant ( or ) is the proportionality factor that relates the average relative kinetic energy of particles in a gas with the thermodynamic temperature of the gas. It occurs in the definitions of the kelvin and the gas constan ...
, is the absolute
temperature Temperature is a physical quantity that expresses quantitatively the perceptions of hotness and coldness. Temperature is measured with a thermometer. Thermometers are calibrated in various temperature scales that historically have relied o ...
, is the energy of the single-particle state , and is the total chemical potential. The distribution is normalized by the condition :\sum_i\bar n_i=N that can be used to express \mu=\mu(T,N) in that \mu can assume either a positive or negative value. At zero absolute temperature, is equal to the Fermi energy plus the potential energy per fermion, provided it is in a
neighbourhood A neighbourhood (British English, Irish English, Australian English and Canadian English) or neighborhood (American English; see spelling differences) is a geographically localised community within a larger city, town, suburb or rural a ...
of positive spectral density. In the case of a spectral gap, such as for electrons in a semiconductor, , the point of symmetry, is typically called the
Fermi level The Fermi level of a solid-state body is the thermodynamic work required to add one electron to the body. It is a thermodynamic quantity usually denoted by ''µ'' or ''E''F for brevity. The Fermi level does not include the work required to remove ...
or—for electrons—the electrochemical potential, and will be located in the middle of the gap. The F–D distribution is only valid if the number of fermions in the system is large enough so that adding one more fermion to the system has negligible effect on . Since the F–D distribution was derived using the
Pauli exclusion principle In quantum mechanics, the Pauli exclusion principle states that two or more identical particles with half-integer spins (i.e. fermions) cannot occupy the same quantum state within a quantum system simultaneously. This principle was formula ...
, which allows at most one fermion to occupy each possible state, a result is that 0 < \bar_i < 1 . File:FD e mu.svg, Energy dependence. More gradual at higher ''T''. \bar = 0.5 when \varepsilon = \mu. Not shown is that \mu decreases for higher ''T''. File:FD kT e.svg, Temperature dependence for \varepsilon > \mu. The
variance In probability theory and statistics, variance is the expectation of the squared deviation of a random variable from its population mean or sample mean. Variance is a measure of dispersion, meaning it is a measure of how far a set of numbe ...
of the number of particles in state i can be calculated from the above expression for \bar_i, Eq. 9.7.7 where \beta = 1/k_T, \quad \alpha = -\mu/k_T, \quad \frac = - \frac. : V(n_i) = k_T\frac\bar_i= \bar_i(1-\bar_i).


Distribution of particles over energy

From the Fermi–Dirac distribution of particles over states, one can find the distribution of particles over energy. The average number of fermions with energy \varepsilon_i can be found by multiplying the F–D distribution \bar_i by the degeneracy g_i (i.e. the number of states with energy \varepsilon_i), Note that in Eq. (1), n(\varepsilon) and n_s correspond respectively to \bar_i and \bar(\varepsilon_i) in this article. See also Eq. (32) on p. 339. : \begin \bar(\varepsilon_i) &= g_i \bar_i \\ &= \frac. \end When g_i \ge 2, it is possible that \bar(\varepsilon_i) > 1, since there is more than one state that can be occupied by fermions with the same energy \varepsilon_i. When a quasi-continuum of energies \varepsilon has an associated density of states g(\varepsilon) (i.e. the number of states per unit energy range per unit volume), the average number of fermions per unit energy range per unit volume is :\bar(\varepsilon) = g(\varepsilon) F(\varepsilon), where F(\varepsilon) is called the Fermi function and is the same function that is used for the F–D distribution \bar_i, : F(\varepsilon) = \frac, so that : \bar(\varepsilon) = \frac.


Quantum and classical regimes

The Fermi–Dirac distribution approaches the
Maxwell–Boltzmann distribution In physics (in particular in statistical mechanics), the Maxwell–Boltzmann distribution, or Maxwell(ian) distribution, is a particular probability distribution named after James Clerk Maxwell and Ludwig Boltzmann. It was first defined and use ...
in the limit of high temperature and low particle density, without the need for any ad hoc assumptions: * In the limit of low particle density, \bar_i = \frac \ll 1 , therefore e^+1 \gg 1 or equivalently e^ \gg 1 . In that case, \bar_i \approx \frac=\frace^ , which is the result from Maxwell-Boltzmann statistics. * In the limit of high temperature, the particles are distributed over a large range of energy values, therefore the occupancy on each state (especially the high energy ones with \varepsilon_i - \mu \gg k_T) is again very small, \bar_i = \frac \ll 1 . This again reduces to Maxwell-Boltzmann statistics. The classical regime, where Maxwell–Boltzmann statistics can be used as an approximation to Fermi–Dirac statistics, is found by considering the situation that is far from the limit imposed by the Heisenberg uncertainty principle for a particle's position and
momentum In Newtonian mechanics, momentum (more specifically linear momentum or translational momentum) is the product of the mass and velocity of an object. It is a vector quantity, possessing a magnitude and a direction. If is an object's mass ...
. For example, in physics of semiconductor, when the density of states of conduction band is much higher than the doping concentration, the energy gap between conduction band and fermi level could be calculated using Maxwell-Boltzmann statistics. Otherwise, if the doping concentration is not negligible compared to density of states of conduction band, the F–D distribution should be used instead for accurate calculation. It can then be shown that the classical situation prevails when the
concentration In chemistry, concentration is the abundance of a constituent divided by the total volume of a mixture. Several types of mathematical description can be distinguished: '' mass concentration'', '' molar concentration'', ''number concentration'', ...
of particles corresponds to an average interparticle separation \bar that is much greater than the average de Broglie wavelength \bar of the particles: :\bar \gg \bar \approx \frac, where is the
Planck constant The Planck constant, or Planck's constant, is a fundamental physical constant of foundational importance in quantum mechanics. The constant gives the relationship between the energy of a photon and its frequency, and by the mass-energy equivale ...
, and is the mass of a particle. For the case of conduction electrons in a typical metal at = 300  K (i.e. approximately room temperature), the system is far from the classical regime because \bar \approx \bar/25 . This is due to the small mass of the electron and the high concentration (i.e. small \bar) of conduction electrons in the metal. Thus Fermi–Dirac statistics is needed for conduction electrons in a typical metal. Another example of a system that is not in the classical regime is the system that consists of the electrons of a star that has collapsed to a white dwarf. Although the temperature of white dwarf is high (typically = on its surface), its high electron concentration and the small mass of each electron precludes using a classical approximation, and again Fermi–Dirac statistics is required.


Derivations


Grand canonical ensemble

The Fermi–Dirac distribution, which applies only to a quantum system of non-interacting fermions, is easily derived from the grand canonical ensemble. In this ensemble, the system is able to exchange energy and exchange particles with a reservoir (temperature ''T'' and chemical potential ''μ'' fixed by the reservoir). Due to the non-interacting quality, each available single-particle level (with energy level ''ϵ'') forms a separate thermodynamic system in contact with the reservoir. In other words, each single-particle level is a separate, tiny grand canonical ensemble. By the Pauli exclusion principle, there are only two possible microstates for the single-particle level: no particle (energy ''E'' = 0), or one particle (energy ''E'' = ''ε''). The resulting partition function for that single-particle level therefore has just two terms: : \begin \mathcal Z &= \exp\big(0(\mu - \varepsilon)/k_ T\big) + \exp\big(1(\mu - \varepsilon)/k_ T\big) \\ &= 1 + \exp\big((\mu - \varepsilon)/k_ T\big), \end and the average particle number for that single-particle level substate is given by : \langle N\rangle = k_ T \frac \left(\frac\right)_ = \frac. This result applies for each single-particle level, and thus gives the Fermi–Dirac distribution for the entire state of the system. The variance in particle number (due to thermal fluctuations) may also be derived (the particle number has a simple
Bernoulli distribution In probability theory and statistics, the Bernoulli distribution, named after Swiss mathematician Jacob Bernoulli,James Victor Uspensky: ''Introduction to Mathematical Probability'', McGraw-Hill, New York 1937, page 45 is the discrete probabi ...
): : \big\langle (\Delta N)^2 \big\rangle = k_ T \left(\frac\right)_ = \langle N\rangle \big(1 - \langle N\rangle\big). This quantity is important in transport phenomena such as the Mott relations for electrical conductivity and thermoelectric coefficient for an electron gas, where the ability of an energy level to contribute to transport phenomena is proportional to \big\langle (\Delta N)^2 \big\rangle.


Canonical ensemble

It is also possible to derive Fermi–Dirac statistics in the
canonical ensemble In statistical mechanics, a canonical ensemble is the statistical ensemble that represents the possible states of a mechanical system in thermal equilibrium with a heat bath at a fixed temperature. The system can exchange energy with the hea ...
. Consider a many-particle system composed of ''N'' identical fermions that have negligible mutual interaction and are in thermal equilibrium. Since there is negligible interaction between the fermions, the energy E_R of a state R of the many-particle system can be expressed as a sum of single-particle energies, : E_R = \sum_ n_r \varepsilon_r where n_r is called the occupancy number and is the number of particles in the single-particle state r with energy \varepsilon_r . The summation is over all possible single-particle states r. The probability that the many-particle system is in the state R, is given by the normalized canonical distribution, :P_R = \frac where \beta= 1/k_T, ''e''\scriptstyle -\beta E_R is called the Boltzmann factor, and the summation is over all possible states R' of the many-particle system.   The average value for an occupancy number n_i \; is :\bar_i \ = \ \sum_R n_i \ P_R Note that the state R of the many-particle system can be specified by the particle occupancy of the single-particle states, i.e. by specifying n_1,\, n_2,\, \ldots \;, so that :P_R = P_ = \frac and the equation for \bar_i becomes :\begin \bar_i & = \sum_ n_i \ P_ \\ \\ & = \frac \\ \end where the summation is over all combinations of values of n_1, n_2, \ldots which obey the Pauli exclusion principle, and for each r. Furthermore, each combination of values of n_1, n_2, \ldots satisfies the constraint that the total number of particles is N, : \sum_r n_r = N. Rearranging the summations, : \bar_i = \frac where the ^ on the summation sign indicates that the sum is not over n_i and is subject to the constraint that the total number of particles associated with the summation is N_i = N-n_i. Note that \Sigma^ still depends on n_i through the N_i constraint, since in one case n_i=0 and \Sigma^ is evaluated with N_i=N , while in the other case n_i=1 and \Sigma^ is evaluated with N_i=N-1 .  To simplify the notation and to clearly indicate that \Sigma^ still depends on n_i through N-n_i , define : Z_i(N-n_i) \equiv \ \sideset\sum_ e^ \; so that the previous expression for \bar_i can be rewritten and evaluated in terms of the Z_i, : \begin \bar_i \ & = \frac \\ pt& = \ \frac \\ pt& = \ \frac \quad . \end The following approximation will be used to find an expression to substitute for Z_i(N)/Z_i(N-1) . :\begin \ln Z_i(N- 1) & \simeq \ln Z_i(N) - \frac \\ & = \ln Z_i(N) - \alpha_i \; \end where \alpha_i \equiv \frac \ . If the number of particles N is large enough so that the change in the chemical potential \mu\; is very small when a particle is added to the system, then \alpha_i \simeq - \mu / k_T \ . See Eq. 9.3.17 and ''Remark concerning the validity of the approximation''.  Taking the base ''e'' antilog of both sides, substituting for \alpha_i \,, and rearranging, :Z_i(N) / Z_i(N- 1) = e^. Substituting the above into the equation for \bar _i, and using a previous definition of \beta\; to substitute 1/k_T for \beta\;, results in the Fermi–Dirac distribution. :\bar_i = \ \frac Like the
Maxwell–Boltzmann distribution In physics (in particular in statistical mechanics), the Maxwell–Boltzmann distribution, or Maxwell(ian) distribution, is a particular probability distribution named after James Clerk Maxwell and Ludwig Boltzmann. It was first defined and use ...
and the Bose–Einstein distribution the Fermi–Dirac distribution can also be derived by the Darwin–Fowler method of mean values (see Müller-KirstenH.J.W. Müller-Kirsten, Basics of Statistical Physics, 2nd. ed., World Scientific (2013), .).


Microcanonical ensemble

A result can be achieved by directly analyzing the multiplicities of the system and using Lagrange multipliers. Suppose we have a number of energy levels, labeled by index ''i'', each level having energy ε''i''  and containing a total of ''ni''  particles. Suppose each level contains ''gi''  distinct sublevels, all of which have the same energy, and which are distinguishable. For example, two particles may have different momenta (i.e. their momenta may be along different directions), in which case they are distinguishable from each other, yet they can still have the same energy. The value of ''gi''  associated with level ''i'' is called the "degeneracy" of that energy level. The
Pauli exclusion principle In quantum mechanics, the Pauli exclusion principle states that two or more identical particles with half-integer spins (i.e. fermions) cannot occupy the same quantum state within a quantum system simultaneously. This principle was formula ...
states that only one fermion can occupy any such sublevel. The number of ways of distributing ''ni'' indistinguishable particles among the ''gi ''sublevels of an energy level, with a maximum of one particle per sublevel, is given by the
binomial coefficient In mathematics, the binomial coefficients are the positive integers that occur as coefficients in the binomial theorem. Commonly, a binomial coefficient is indexed by a pair of integers and is written \tbinom. It is the coefficient of the t ...
, using its combinatorial interpretation : w(n_i,g_i)=\frac \ . For example, distributing two particles in three sublevels will give population numbers of 110, 101, or 011 for a total of three ways which equals 3!/(2!1!). The number of ways that a set of occupation numbers ''n''''i'' can be realized is the product of the ways that each individual energy level can be populated: : W = \prod_i w(n_i,g_i) = \prod_i \frac. Following the same procedure used in deriving the Maxwell–Boltzmann statistics, we wish to find the set of ''ni'' for which ''W'' is maximized, subject to the constraint that there be a fixed number of particles, and a fixed energy. We constrain our solution using Lagrange multipliers forming the function: : f(n_i)=\ln(W)+\alpha\left(N-\sum n_i\right)+\beta\left(E-\sum n_i \varepsilon_i\right). Using Stirling's approximation for the factorials, taking the derivative with respect to ''ni'', setting the result to zero, and solving for ''ni'' yields the Fermi–Dirac population numbers: : n_i = \frac. By a process similar to that outlined in the Maxwell–Boltzmann statistics article, it can be shown thermodynamically that \beta = \frac and \alpha = - \frac, so that finally, the probability that a state will be occupied is: : \bar_i = \frac = \frac.


See also

* Grand canonical ensemble *
Pauli exclusion principle In quantum mechanics, the Pauli exclusion principle states that two or more identical particles with half-integer spins (i.e. fermions) cannot occupy the same quantum state within a quantum system simultaneously. This principle was formula ...
* Complete Fermi-Dirac integral *
Fermi level The Fermi level of a solid-state body is the thermodynamic work required to add one electron to the body. It is a thermodynamic quantity usually denoted by ''µ'' or ''E''F for brevity. The Fermi level does not include the work required to remove ...
*
Fermi gas An ideal Fermi gas is a state of matter which is an ensemble of many non-interacting fermions. Fermions are particles that obey Fermi–Dirac statistics, like electrons, protons, and neutrons, and, in general, particles with half-integer ...
* Maxwell–Boltzmann statistics * Bose–Einstein statistics * Parastatistics *
Logistic function A logistic function or logistic curve is a common S-shaped curve (sigmoid curve) with equation f(x) = \frac, where For values of x in the domain of real numbers from -\infty to +\infty, the S-curve shown on the right is obtained, with the ...


Notes


References


Further reading

* * * {{DEFAULTSORT:Fermi-Dirac statistics Statistical mechanics