Information field dynamics for simulation scheme construction
Torsten A. En{\ss}lin

TL;DR
Information field dynamics (IFD) offers a novel framework for deriving numerical simulation schemes that rigorously incorporate sub-grid physics and data assimilation, improving accuracy over traditional ad-hoc methods.
Contribution
The paper introduces IFD as a general, data-driven approach to construct simulation schemes without assuming specific sub-grid structures, using information theory principles.
Findings
Provides a new simulation scheme based on IFD for Klein-Gordon fields
Demonstrates how IFD can incorporate measurement data seamlessly
Suggests potential for applying IFD to complex systems like turbulence
Abstract
Information field dynamics (IFD) is introduced here as a framework to derive numerical schemes for the simulation of physical and other fields without assuming a particular sub-grid structure as many schemes do. IFD constructs an ensemble of non-parametric sub-grid field configurations from the combination of the data in computer memory, representing constraints on possible field configurations, and prior assumptions on the sub-grid field statistics. Each of these field configurations can formally be evolved to a later moment since any differential operator of the dynamics can act on fields living in continuous space. However, these virtually evolved fields need again a representation by data in computer memory. The maximum entropy principle of information theory guides the construction of updated datasets via entropic matching, optimally representing these field configurations at the…
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