Statistical Physics & Thermodynamics From Beginner To Expert
Published 8/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.31 GB | Duration: 11h 48m
Published 8/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.31 GB | Duration: 11h 48m
Understand the theoretical physics of statistical mechanics (classical and quantum level) and apply it to thermodynamics
What you'll learn
Basics: Tutorial of classical mechanics and statistics
Theory: Statistical physics of isolated, closed & open systems
Application: Thermodynamics with many examples
Advanced project: Phase transitions based on statistical physics and Monte Carlo algorithms
Requirements
Basics about derivatives and integrals (College level)
For everything else there will be a whole tutorial section
Description
This course is for everyone who wants to learn about statistical physics!A bit of college mathematics (basic derivatives) is all you need to know!Understanding the motion of a single object is possible using the laws of classical mechanics. However, when we want to consider billions of particles at the same time, we need a new method: Statistical physics. The theory behind this approach is fascinating due to its simplicity. Still, it allows to correctly predict the laws of thermodynamics.You are kindly invited to join this carefully prepared course in which we derive the following concepts from scratch. I will present examples and have prepared quizzes and exercises for all topics.Optional tutorial of the essential basics (2 hours)Laws of classical mechanicsStatistics & stochasticsTheory of statistical physics (3 hours)Isolated, closed and open systems (micro canonical, canonical and grand canonical ensembles)Probability density, partition function and average valuesApplications and examples (6 hours)Entropy, temperature and the laws of thermodynamics Thermodynamic properties of gases Phase transitionsAt the end of the course there is even an optional section in which we simulate a phase transition using python. This is state of the art research!Why me?My name is Börge Göbel and I am a postdoc working as a scientist on theoretical magnetism. Therefore, I use statistical physics very often but I have not forgotten the time when I learned about this theory and still remember the problems that I and other students had. I have refined my advisor skills as a tutor of Bachelor, Master and PhD students in theoretical physics and have other successful courses here on Udemy.I hope you are excited and I kindly welcome you to our course!
Overview
Section 1: Introduction & Physical background
Lecture 1 Overview of the course
Lecture 2 Classical mechanics background
Lecture 3 Newton's laws of motion
Lecture 4 Energy conservation law
Lecture 5 Hamiltonian mechanics
Lecture 6 What about statistical physics?
Lecture 7 Section summary
Lecture 8 Download the structure of this course
Lecture 9 Slides of this section
Section 2: [Optional] Mathematical background: Stochastics
Lecture 10 Section intro
Lecture 11 Probability & Tree diagrams for coin flip experiments
Lecture 12 Event & Counter event in a dice experiment
Lecture 13 Expectation values for coin, dice & urn problems
Lecture 14 Calculating probabilities: Urn problems
Lecture 15 Binomial distribution
Lecture 16 Discussion of the binomial distribution
Lecture 17 Normal distribution (Gaussian distribution)
Lecture 18 Poisson distribution
Lecture 19 Section outro
Lecture 20 [Exercises] Stochastics
Lecture 21 [Solution] Task 1 - Probabilities
Lecture 22 [Solution] Task 2 - Probabilities
Lecture 23 [Solution] Task 3 - Probabilities
Lecture 24 Slides of this section
Section 3: From microstates to the partition function of canonical ensembles
Lecture 25 Section intro
Lecture 26 Microstates
Lecture 27 Microstates versus macrostates
Lecture 28 Example: Statistical treatment of the harmonic oscillator
Lecture 29 Microcanonical ensemble
Lecture 30 Canonical ensemble
Lecture 31 Probability of the canonical ensemble
Lecture 32 Partition function
Lecture 33 Example: Kinetic energy of a gas - Definition of the temperature
Lecture 34 Example: Kinetic energy of a gas - Maxwell velocity distribution
Lecture 35 [Exercise] Barometric height formula
Lecture 36 [Solution] Potential energy of a gas - Barometric formula
Lecture 37 Equivalence of canonical and microcanonical ensemble in the thermodynamic limit
Lecture 38 Summary: Canonical and microcanonical ensembles
Lecture 39 Section outro
Lecture 40 Quantum statistics example: Quantum harmonic oscillator
Lecture 41 Optional: Liouville equation
Lecture 42 Slides of this section
Section 4: Laws of thermodynamics & Thermodynamic potentials
Lecture 43 Section intro
Lecture 44 First law of thermodynamics
Lecture 45 Thermodynamic Work
Lecture 46 Pressure
Lecture 47 Second law of thermodynamics
Lecture 48 Entropy
Lecture 49 Third law of thermodynamics
Lecture 50 [Exercise] Entropy of a die
Lecture 51 [Solution] Entropy of a die
Lecture 52 Entropy of a black hole
Lecture 53 Internal energy U as a thermodynamic potential
Lecture 54 Helmholtz free energy F
Lecture 55 Enthalpy H
Lecture 56 Gibbs free energy G
Lecture 57 Maxwell relations
Lecture 58 Section summary: Thermodynamic square
Lecture 59 Slides of this section
Section 5: Thermodynamics of gases
Lecture 60 Section intro
Lecture 61 Ideal gas
Lecture 62 Thermodynamic processes
Lecture 63 Isentropic processes
Lecture 64 Heat capacity
Lecture 65 Compressibility
Lecture 66 Thermal expansion
Lecture 67 Application: Thermodynamic cycles
Lecture 68 Efficiency of thermodynamic cycles
Lecture 69 Carnot cycle
Lecture 70 Real gas
Lecture 71 Slides of this section
Lecture 72 Section outro
Section 6: Phase transitions in Landau theory
Lecture 73 Section intro
Lecture 74 Phase transitions
Lecture 75 Landau theory
Lecture 76 Example: 2nd-order phase transition in Landau theory
Lecture 77 Example: 1st-order phase transition in Landau theory
Lecture 78 Slides of this section
Lecture 79 Section outro
Section 7: Grand canonical ensemble: Open systems with variable number of particles
Lecture 80 Section intro
Lecture 81 Partition function of the grand (macro) canonical ensemble
Lecture 82 Grand canonical potential & Entropy
Lecture 83 Non-interacting quantum gas
Lecture 84 Quantum statistics: Bosons versus fermions
Lecture 85 Fermions: Fermi-Dirac statistics
Lecture 86 Bosons: Bose-Einstein statistics
Lecture 87 Bose-Einstein condensate: Behavior at low temperature
Lecture 88 Transition to the classical Maxwell-Boltzmann distribution function
Lecture 89 Slides of this section
Lecture 90 Section summary
Section 8: [Advanced Project] Magnetism I: Statistical Physics
Lecture 91 Section intro
Lecture 92 Zeeman energy
Lecture 93 Ising model
Lecture 94 Partition function of a paramagnet
Lecture 95 Magnetization of a paramagnet
Lecture 96 Heisenberg interaction
Lecture 97 Ferromagnet in mean-field approximation
Lecture 98 Phase transition: Ferromagnet versus paramagnet
Section 9: [Advanced Project] Magnetism II: Monte Carlo Algorithm
Lecture 99 Section intro
Lecture 100 Installing Python and Jupyter Notebook
Lecture 101 About Monte Carlo algorithms
Lecture 102 Python template Part 1: Approximating Pi
Lecture 103 Calculating Pi - Explaining the idea behind the algorithm
Lecture 104 Approximating Pi
Lecture 105 Alternative solution and time comparison for approximating Pi
Lecture 106 Python template Part 2: Simulating a magnet
Lecture 107 Magnetism: Setting up & plotting the initial state
Lecture 108 Defining the energy
Lecture 109 Simulating a Metropolis step
Lecture 110 Running the Monte Carlo algorithm
Lecture 111 Adding finite temperatures
Lecture 112 Implement interaction with a magnetic field
Lecture 113 Dzyaloshinskii–Moriya interaction
Lecture 114 Python template Part 3: Temperature and field dependence of the magnetization
Lecture 115 Clean up the code and use functions
Lecture 116 Magnetization versus temperature
Lecture 117 Magnetization versus magnetic field
Lecture 118 Magnetization versus magnetic field in a paramagnet
Lecture 119 Thank you & Goodbye!
Students in science & engineering,Everyone who knows about classical mechanics and wonders what comes next