Statistical Methods Applied in Physics Bo Yuan. Zhang* Renmin University of China, Beijing, China



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Statistical Methods Applied in Physics Bo Yuan. Zhang* Renmin University of China, Beijing, China Email:zhangboyuanruc@gmail.com Abstracts Statistical methods are used in statistics physics, which is a momentous interdiscipline, to provide a conceptual link between the 'macroscopic world' and the 'microscopic world'. When studying gases, we can examine the statistical distribution of particle velocities and energies by using Maxwell-Boltzmann statistics, which can be solve as a problem of combination, to gain a comprehensive understanding of the relationship between the macroscopically observable quantities and the microscopic energies of individual particles, which make up the gas. Also, applying statistical approaches to thermodynamics can lead to deeper understanding models such as Brownian motion and provide some useful insights and general ways to deal with other physical stochastic processes. Another crucial contribution of statistics to physics is Monte Carlo method, which bases on the law of large numbers and Central Limit Theorems, has applications in a wide range of fields from computational physics, molecular dynamics and related applied fields. Key Word: Brownian motion, Maxwell-Boltzmann statistics, Monte Carlo method,ising model, Statistical Physics Introduction In recent several hundred years, the theoretical system of physics has been largely improved, part of which came from the combination of the statistics and physics, which solves problems from a brand new perspectives. And the statistical theories are applied more and more widely in Physics, have made great contributions for the development of physics. All the following content in this paper are three major contributions of statistical methods to physics. 1. Maxwell-Boltzmann statistics The main contribution of Statistics is in the statistical thermodynamics. Statistical thermodynamics is a branch of physics that applies probability theory, which contains statistics tools for dealing with large population, to probe into the thermodynamic behavior of systems consisted of a large number of particles. Statistical thermodynamics provides a conceptual link between the microscopic properties of atoms and molecules to the macroscopic materials that can be observed in everyday life. In statistical thermodynamics, two central quantities are Maxwell-Boltzmann statistics and its partition function. Maxwell-Boltzmann statistics describes the statistical distribution of particles over various energy states in thermal equilibrium, which throw a light on microstate, and Maxwell-Boltzmann statistics is valid when the temperature is high enough and density is low enough to omit quantum effects. First, suppose we have a container with plenty of particles, which have the same properties but can be distinguishable. All of these particles are moving in the container in random directions with great speed and thus possessing different energy. Therefore, the Maxwell Boltzmann distribution is a function that explains how many particles in the

container that have certain energy. To describe this system, we assume that N (i=1,2,3 ) is the occupation number of the energy level 𝜀 (i=1,2,3 ). To begin with, let s assume that there is only one single way to put 𝑁 particles into the energy level 𝜀. Obviously, the number of different ways of selecting n objects from N objects without order is 𝐶. If we have a set of boxes labeled a, b, c, d, e z, then we select 𝑁 objects from N objects and put them in the box a (𝑊 = 𝐶 ), and then we selects 𝑁 from the remaining 𝑁 𝑁 objects and put them in the box b (𝑊 = 𝐶 ), and continuing until all objects are in boxes. The total number of the different ways is: 𝑊= 𝑊 = 𝐶 𝐶 𝐶 𝐶 𝑁 = = 𝑁 𝑁 𝑁 𝑁 𝑁 𝑁 𝑁 𝑁 𝑁 𝑁 1 𝑁 Now considering the degeneracy of each particle. If the i-th box has a "degeneracy" of 𝑛, which means 𝑛 objects have the same energy level 𝜀 ; there are 𝑛 sub-boxes in the i-th box. So in the i-th box, the number of ways of placing 𝑁 objects in 𝑛 sub-boxes is 𝑛. Thus the number of ways of putting 𝑁 objects into i-th boxes is 𝑛 instead of 1, and we can right down W as: 𝑛 𝑊 = 𝑁 𝑁 We wish to find the 𝑁 for which the function W is maximized. Apparently, when W reaches its maximum, ln 𝑊 reaches its maximum with the same values of 𝑁. We will select the latter function to find the 𝑁, because it is quite handy to calculate. ln 𝑊 = ln 𝑁 + 𝑁 ln 𝑛 ln 𝑁 Using the Stirling formula that 𝑙𝑛 𝑁 = 𝑚(𝑙𝑛 𝑚 1) when 𝑚 1, we can write W as: ln 𝑊 = 𝑁 ln 𝑁 + 𝑁 ln 𝑛 𝑁 ln 𝑁 With the constraint that 𝑁 = 𝑁 and 𝐸 = 𝑁 𝜀 in the container, we will find N by using Lagrange multipliers and form the function: 𝑓 𝑁 = ln 𝑊 + 𝛼 𝑁 𝑁 + 𝛽 𝐸 = 𝛼𝑁 + 𝛽𝐸 + 𝑁 ln 𝑁 + 𝑁 𝜀 [ 𝑁 ln 𝑛 𝑁 ln 𝑁 (𝛼 + 𝛽 𝜀 ) 𝑁 ] In order to find the 𝑁 when the function W is maximized, 𝑓 = ln 𝑛 ln 𝑁 𝛼 + 𝛽𝜀 = 0 𝑁 = 𝑛 𝑒 ( ) 𝑁 Here is the Maxwell Boltzmann distribution. As for 𝛼 𝑎𝑛𝑑 𝛽, assume that 𝑁 1, then:

ln W = αn + βe de = 1 β d ln W α β dn According to the second law of thermodynamics:de = TdS + μdn and Boltzmann's equation: S = k ln W, we can immediately find that β = and α =. So the " " Maxwell Boltzmann distribution can be written as: N = n e = n e ( ) " Alternatively, we may use the fact that N = N " N = N. To obtain the population numbers as, where Z is the partition function defined by Z = g e " By knowing Maxwell Boltzmann distribution and partition function, we can calculate the distribution of a given amount of energy E over N identical systems and further understand and interpret the measurable macroscopic properties of materials in terms of the properties of their constituent particles and the interactions between them. Another two theories---fermi Dirac distribution and Bose Einstein statistics, which considers quantum effects---derive from Maxwell Boltzmann statistics, describe the indistinguishable particles. By knowing these three statistical distributions, physicians could describe all kinds of particles and probe into the profound nature. 2. Brownian motion Statistical theory is also wildly applied in physical stochastic processes. Much of probability theory is devoted to describing the macroscopic picture emerging in random systems defined by a host of microscopic random effects. Brownian motion, as a typical physical stochastic process, is the macroscopic picture emerging from a particle moving randomly in d-dimensional space, and is interpreted perfectly by statistics. Brownian motion is a kind of random moving of particles suspended in a fluid, which results from their constant collision by the high-speed atoms or molecules. Brownian motion is the simplest of the continuous-time stochastic processes, and is closely linked to the normal distribution. In most cases, it is often statistical convenience rather than the real motion function of the fluid that solve Brownian motion. This is because Brownian motion can be approximated as actual random physical processes, which have a finite time scale. In statistics, Brownian motion is described by the Wiener process, which is characterized by following facts: W = 0; W is almost surely continuous and has independent increments; W W ~N 0, t s. N μ, σ is the normal distribution with certain value μ and variance σ. According to Wiener process, Einstein established his own theory to describe Brownian motion. Einstein s theory was to determine how far a Brownian particle moves in a given time interval. Because of the enormous number of collision a Brownian particle will experience, Classical mechanics is unable to determine this distance. Thus Einstein was led to consider using Wiener process to describe the collective motion of Brownian particles. Assuming ρ x, t is the density of Brownian particles at the point x at time t, he found that ρ satisfies the diffusion equation:

" = D ", where D is the mass diffusivity. Assuming that all the particles start from the origin at the initial time t=0, the diffusion equation has the solution: ρ x, t = e ", which can transfer into the standard normal distribution. "# This expression allowed Einstein to calculate the moments directly. The first moment is seen to vanish. However, the second moment is non-vanishing, being given by x = 2Dt From this expression Einstein argued that the displacement of a Brownian particle is proportional to the square root of the elapsed time. His argument is based on a conceptual switch from the "ensemble" of Brownian particles to the "single" Brownian particle: we can speak of the relative number of particles at a single instant just as well as of the time it takes a Brownian particle to reach a given point. Now, statistical theories provide efficient tools for the analysis of physical stochastic processes. When we meet an unknown physical stochastic process, we will consider whether it can be described by the Wiener process or whether there is a relationship between " and ". If the answer is yes, we could solve it with statistical method immediately. Especially, this method is wildly used in molecular dynamics, which contains abundant stochastic processes, and makes a marvelous contribution. 3. Monte Carlo method Monte Carlo methods, as an important contribution of statistics, helps physicians solve thousands of profound conundrums and are applied in different branches of physics. The Monte Carlo method provides approximate solutions to a variety of physical and mathematical problems by performing statistical sampling experiment on a compute. They are most suited to be applied when it is impossible to obtain a closed-form expression or infeasible to apply a deterministic algorithm. Remarkably, the method applies to problems with absolutely no probabilistic content as well as to those with inherent probabilistic structure. The Monte Carlo method is based on Law of large numbers and Central Limit Theorem. According to the Law of large numbers, the average of the results obtained from a large number of trials should be close to the expected value, and will tend to become closer as more trials are performed. And the sampling error will be determined by n and σ through Central Limit Theorem. Usually, the procedure of Monte Carlo method is: 1.According to the properties of the physical system that we want to delve, we set up Theoretical model that could describe the system characteristics, and form the probability density function of the certain characteristics. 2.Basis on probability density function, we conduct random sampling and get the characteristics of the simulation results. 3.We could predict some of the features of a physical system through the analysis of the simulation results.

Let s see an example. The Ising model is a famous mathematical model of ferromagnetism in statistical mechanics. The model consists of discrete variables that represent magnetic dipole moments of atomic spins that can be either +1 or -1(up and down). The spins are arranged in a lattice, and each spin can interact with its neighbors. The model simulates the whole process from the state that all spins are in absolute random direction to the state that the lattice becomes ferromagnetic which means all of the points are in the same direction. This shows us a phase transition process. In two-dimensional square-lattice Ising model, assuming there is a L L lattice. Since every spin site has ±1 spin, there are 2 different states are possible. It will be a great deal of calculation to do if we use traditional theory. This motivates us to simulate Ising model by using Monte Carlo Methods. The Hamiltonian Function that is commonly used representing the energy of the model when using Monte Carlo Methods is: E = H s = j s s, J > 0 is exchange constant " For each spin, when a spin is chosen, we should calculate the E "#$, which is the difference between the present energy and the energy if the spin is flipped. If E "#$ < 0, the spin is flipped and the system moves into a different microstate. If E "#$ > 0, we generate a random number R that is distributed uniformly between 0 and 1. For a system in equilibrium with a heat bath, the probability of finding the system in any particular state is proportional to the Boltzmann factor, assumes that P = exp ( "#$ ). If P>R, the spin is flipped; otherwise, the spin is left undisturbed. After each sweep is completed, record the new energy and so does the rest spins. When we perform this simulation is different temperature, we will clearly find the relationship between the energy of the spin and the temperature and predict the critical temperature of the phase transition. Through the example above, we would see the great importance of Monte Carlo methods applied in Physics. Furthermore, Monte Carlo methods also play significant role in quantum dynamics, physical chemistry, and related applied fields. In quantum dynamics, Quantum Monte Carlo methods solve the multi-body problems for quantum system. In experimental particle physics, Monte Carlo Methods are use for designing detectors, understanding their behavior and comparing experimental data to theory. In astrophysics, they are used in such diverse manners as to model both the evolution of galaxies and the transmission of microwave radiation through a rough planetary surface. Conclusions The contributions of Statistical methods in the past few hundred years for science is enormous, especially for physical, which is obvious to all. The three major contributions of Statistical methods to Physics mentioned above is just a tip of iceberg, there are still large number of typical examples for that. Indeed, statistics not only helps physicists understand and improve the theories of thermodynamics and statistical mechanics, but also provides a new perspective of physical conundrum for each branch of physics, which made a major contribution to the development of physics. I believe there will still be more physical model based on statistical methods and principles waiting for us to discover in the future.

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