4.6 Article

Dynamical Field Inference and Supersymmetry

Related references

Note: Only part of the references are listed.
Article Physics, Multidisciplinary

Field Dynamics Inference for Local and Causal Interactions

Philipp Frank et al.

Summary: Inference of fields defined in space and time from observational data is a core discipline in many scientific areas. The proposed method in this work is based on statistically homogeneous random fields defined in space and time and demonstrates how to reconstruct the field together with its prior correlation structure from data. The prior model of the correlation structure is described in a non-parametric fashion and solely builds on fundamental physical assumptions such as space-time homogeneity, locality, and causality.

ANNALEN DER PHYSIK (2021)

Article Astronomy & Astrophysics

The Galactic Faraday depth sky revisited

Sebastian Hutschenreuter et al.

ASTRONOMY & ASTROPHYSICS (2020)

Article Physics, Applied

Chaos as a symmetry-breaking phenomenon

Igor Ovchinnikov et al.

MODERN PHYSICS LETTERS B (2019)

Article Astronomy & Astrophysics

Charting nearby dust clouds using Gaia data only

R. H. Leike et al.

ASTRONOMY & ASTROPHYSICS (2019)

Review Physics, Multidisciplinary

Information Theory for Fields

Torsten A. Ensslin

ANNALEN DER PHYSIK (2019)

Article Physics, Fluids & Plasmas

Towards information-optimal simulation of partial differential equations

Reimar H. Leike et al.

PHYSICAL REVIEW E (2018)

Article Physics, Fluids & Plasmas

Field dynamics inference via spectral density estimation

Philipp Frank et al.

PHYSICAL REVIEW E (2017)

Article Computer Science, Artificial Intelligence

SymPy: symbolic computing in Python

Aaron Meurer et al.

PEERJ COMPUTER SCIENCE (2017)

Review Physics, Multidisciplinary

Introduction to Supersymmetric Theory of Stochastics

Igor V. Ovchinnikov

ENTROPY (2016)

Review Physics, Particles & Fields

Supersymmetric Quantum Mechanics and Topology

Muhammad Abdul Wasay

ADVANCES IN HIGH ENERGY PHYSICS (2016)

Article Multidisciplinary Sciences

Probabilistic numerics and uncertainty in computations

Philipp Hennig et al.

PROCEEDINGS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES (2015)

Article Geosciences, Multidisciplinary

High-resolution atmospheric reconstruction for Europe 1948-2012: coastDat2

B. Geyer

EARTH SYSTEM SCIENCE DATA (2014)

Article Physics, Fluids & Plasmas

Information field dynamics for simulation scheme construction

Torsten A. Ensslin

PHYSICAL REVIEW E (2013)

Article Physics, Multidisciplinary

Stochastic generalization for a hyperbolic model of spinodal decomposition

P. K. Galenko et al.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2010)

Review Astronomy & Astrophysics

Information field theory for cosmological perturbation reconstruction and nonlinear signal analysis

Torsten A. Ensslin et al.

PHYSICAL REVIEW D (2009)

Article Astronomy & Astrophysics

A new method for reconstruction of the vertical electron density distribution in the upper ionosphere and plasmasphere

SM Stankov et al.

JOURNAL OF GEOPHYSICAL RESEARCH-SPACE PHYSICS (2003)