Book contents
- Frontmatter
- Dedication
- Contents
- Preface
- 1 Thermodynamics
- 2 Statistical Mechanics
- 3 Hydrodynamics
- 4 Stochastic Processes
- 5 Fluctuation Relations for Energy and Particle Fluxes
- 6 Path Probabilities, Temporal Disorder, and Irreversibility
- 7 Driven Brownian Particles and Related Systems
- 8 Effusion Processes
- 9 Processes in Dilute and Rarefied Gases
- 10 Fluctuating Chemohydrodynamics
- 11 Reactions
- 12 Active Processes
- 13 Transport in Hamiltonian Dynamical Models
- 14 Quantum Statistical Mechanics
- 15 Transport in Open Quantum Systems
- Appendix A Complements on Thermodynamics
- Appendix B Complements on Dynamical Systems Theory
- Appendix C Complements on Statistical Mechanics
- Appendix D Complements on Hydrodynamics
- Appendix E Complements on Stochastic Processes
- Appendix F Complements on Fluctuation Relations
- References
- Index
4 - Stochastic Processes
Published online by Cambridge University Press: 14 July 2022
- Frontmatter
- Dedication
- Contents
- Preface
- 1 Thermodynamics
- 2 Statistical Mechanics
- 3 Hydrodynamics
- 4 Stochastic Processes
- 5 Fluctuation Relations for Energy and Particle Fluxes
- 6 Path Probabilities, Temporal Disorder, and Irreversibility
- 7 Driven Brownian Particles and Related Systems
- 8 Effusion Processes
- 9 Processes in Dilute and Rarefied Gases
- 10 Fluctuating Chemohydrodynamics
- 11 Reactions
- 12 Active Processes
- 13 Transport in Hamiltonian Dynamical Models
- 14 Quantum Statistical Mechanics
- 15 Transport in Open Quantum Systems
- Appendix A Complements on Thermodynamics
- Appendix B Complements on Dynamical Systems Theory
- Appendix C Complements on Statistical Mechanics
- Appendix D Complements on Hydrodynamics
- Appendix E Complements on Stochastic Processes
- Appendix F Complements on Fluctuation Relations
- References
- Index
Summary
At the mesoscale, the fluctuating phenomena are described using the theory of stochastic processes. Depending on the random variables, different stochastic processes can be defined. The properties of stationarity, reversibility, and Markovianity are defined and discussed. The classes of discrete- and continuous-state Markov processes are presented including their master equation, their spectral theory, and their reversibility condition. For discrete-state Markov processes, the entropy production is deduced and the network theory is developed, allowing us to obtain the affinities on the basis of the Hill–Schnakenberg cycle decomposition. Continuous-state Markov processes are described by their master equation, as well as stochastic differential equations. The spectral theory is also considered in the weak-noise limit. Furthermore, Langevin stochastic processes are presented in particular for Brownian motion and their deduction is carried out from the underlying microscopic dynamics.
Keywords
- Type
- Chapter
- Information
- The Statistical Mechanics of Irreversible Phenomena , pp. 147 - 201Publisher: Cambridge University PressPrint publication year: 2022