In statistical mechanics, Bose–Einstein statistics (or more colloquially B–E statistics) determines the statistical distribution of identical indistinguishable bosons over the energy states in thermal equilibrium.
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Fermi–Dirac and Bose–Einstein statistics apply when quantum effects are important and the particles are "indistinguishable". Quantum effects appear if the concentration of particles (N/V) ≥ nq. Here nq is the quantum concentration, for which the interparticle distance is equal to the thermal de Broglie wavelength, so that the wavefunctions of the particles are touching but not overlapping. Fermi–Dirac statistics apply to fermions (particles that obey the Pauli exclusion principle), and Bose–Einstein statistics apply to bosons. As the quantum concentration depends on temperature; most systems at high temperatures obey the classical (Maxwell–Boltzmann) limit unless they have a very high density, as for a white dwarf. Both Fermi–Dirac and Bose–Einstein become Maxwell–Boltzmann statistics at high temperature or at low concentration.
Bosons, unlike fermions, are not subject to the Pauli exclusion principle: an unlimited number of particles may occupy the same state at the same time. This explains why, at low temperatures, bosons can behave very differently from fermions; all the particles will tend to congregate together at the same lowest-energy state, forming what is known as a Bose–Einstein condensate.
B–E statistics was introduced for photons in 1920 by Bose and generalized to atoms by Einstein in 1924.
The expected number of particles in an energy state i for B–E statistics is:
with and where:
This reduces to Maxwell–Boltzmann statistics for energies and to Rayleigh-Jeans distribution for , namely .
In the early 1920s Satyendra Nath Bose, a professor of University of Dhaka in British India was intrigued by Einstein's theory of light waves being made of particles called photons. Bose was interested in deriving Planck's radiation formula, which Planck obtained largely by guessing. In 1900 Max Planck had derived his formula by manipulating the math to fit the empirical evidence. Using the particle picture of Einstein, Bose was able to derive the radiation formula by systematically developing a statistics of massless particles without the constraint of particle number conservation. Bose derived Planck's Law of Radiation by proposing different states for the photon. Instead of statistical independence of particles, Bose put particles into cells and described statistical independence of cells of phase space. Such systems allow two polarization states, and exhibit totally symmetric wavefunctions.
He developed a statistical law governing the behaviour pattern of photons quite successfully. However, he was not able to publish his work; no journals in Europe would accept his paper, being unable to understand it. Bose sent his paper to Einstein, who saw the significance of it and used his influence to get it published.[1][2]
Suppose we have a number of energy levels, labeled by index , each level having energy and containing a total of particles. Suppose each level contains distinct sublevels, all of which have the same energy, and which are distinguishable. For example, two particles may have different momenta, in which case they are distinguishable from each other, yet they can still have the same energy. The value of associated with level is called the "degeneracy" of that energy level. Any number of bosons can occupy the same sublevel.
Let be the number of ways of distributing particles among the sublevels of an energy level. There is only one way of distributing particles with one sublevel, therefore . It is easy to see that there are ways of distributing particles in two sublevels which we will write as:
With a little thought (See Notes below) it can be seen that the number of ways of distributing particles in three sublevels is
so that
where we have used the following theorem involving binomial coefficients:
Continuing this process, we can see that is just a binomial coefficient (See Notes below)
The number of ways that a set of occupation numbers can be realized is the product of the ways that each individual energy level can be populated:
where the approximation assumes that . Following the same procedure used in deriving the Maxwell–Boltzmann statistics, we wish to find the set of for which is maximised, subject to the constraint that there be a fixed number of particles, and a fixed energy. The maxima of and occur at the value of and, since it is easier to accomplish mathematically, we will maximise the latter function instead. We constrain our solution using Lagrange multipliers forming the function:
Using the approximation and using Stirling's approximation for the factorials gives
Taking the derivative with respect to , and setting the result to zero and solving for , yields the Bose–Einstein population numbers:
It can be shown thermodynamically that , where is Boltzmann's constant and is the temperature.
It can also be shown that , where is the chemical potential, so that finally:
Note that the above formula is sometimes written:
where is the absolute activity.
A much simpler way to think of Bose–Einstein distribution function is to consider that n particles are denoted by identical balls and g shells are marked by g-1 line partitions. It is clear that the permutations of these n balls and g-1 partitions will give different ways of arranging bosons in different energy levels.
Say, for 3(=n) particles and 3 shells, therefore g=2, the arrangement may be like
|..|. or ||... or |.|.. etc.
Hence the number of distinct permutations of n + (g-1) objects which have n identical items and (g-1) identical items will be:
(n+g-1)!/n!(g-1)!
OR
The purpose of these notes is to clarify some aspects of the derivation of the Bose–Einstein (B–E) distribution for beginners. The enumeration of cases (or ways) in the B–E distribution can be recast as follows. Consider a game of dice throwing in which there are dice, with each die taking values in the set , for . The constraints of the game are that the value of a die , denoted by , has to be greater than or equal to the value of die , denoted by , in the previous throw, i.e., . Thus a valid sequence of die throws can be described by an n-tuple , such that . Let denote the set of these valid n-tuples:
(1) |
Then the quantity (defined above as the number of ways to distribute particles among the sublevels of an energy level) is the cardinality of , i.e., the number of elements (or valid n-tuples) in . Thus the problem of finding and expression for becomes the problem of counting the elements in .
Example n = 4, g = 3:
Subset is obtained by fixing all indices to , except for the last index, , which is incremented from to . Subset is obtained by fixing , and incrementing from to . Due to the constraint on the indices in , the index must automatically take values in . The construction of subsets and follows in the same manner.
Each element of can be thought of as a multiset of cardinality ; the elements of such multiset are taken from the set of cardinality , and the number of such multisets is the multiset coefficient
More generally, each element of is a multiset of cardinality (number of dice) with elements taken from the set of cardinality (number of possible values of each die), and the number of such multisets, i.e., is the multiset coefficient
(2) |
which is exactly the same as the formula for , as derived above with the aid of a theorem involving binomial coefficients, namely
(3) |
To understand the decomposition
(4) |
or for example, and
let us rearrange the elements of as follows
Clearly, the subset of is the same as the set
By deleting the index (shown in red with double underline) in the subset of , one obtains the set
In other words, there is a one-to-one correspondence between the subset of and the set . We write
Similarly, it is easy to see that
Thus we can write
or more generally,
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(5) |
and since the sets
are non-intersecting, we thus have
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(6) |
with the convention that
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(7) |
Continuing the process, we arrive at the following formula
Using the convention (7)2 above, we obtain the formula
(8) |
keeping in mind that for and being constants, we have
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(9) |
It can then be verified that (8) and (2) give the same result for , , , etc.
In recent years, Bose Einstein statistics have also been used as a method for term weighting in information retrieval. The method is one of a collection of DFR ("Divergence From Randomness") models, the basic notion being that Bose Einstein statistics may be a useful indicator in cases where a particular term and a particular document have a significant relationship that would not have occurred purely by chance. Source code for implementing this model is available from the Terrier project at the University of Glasgow.
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