Artículo de revista
Probabilistic inference for dynamical systems
Fecha
2018Registro en:
Entropy, Volumen 20, Issue 9, 2018
10994300
10.3390/e20090696
Autor
Davis, Sergio
González, Diego
Gutiérrez, Gonzalo
Institución
Resumen
A general framework for inference in dynamical systems is described, based on the language of Bayesian probability theory and making use of the maximum entropy principle. Taking the concept of a path as fundamental, the continuity equation and Cauchy's equation for fluid dynamics arise naturally, while the specific information about the system can be included using the maximum caliber (or maximum path entropy) principle.