Physics-informed renormalisation group flows
Friederike Ihssen, Jan M. Pawlowski

TL;DR
This paper introduces physics-informed renormalisation group flows (PIRG flows) that use scale-dependent transformations in field space to identify emergent composite degrees of freedom, simplifying the analysis of strongly correlated systems.
Contribution
The work develops a novel PIRG flow framework that systematically finds dynamical degrees of freedom and ground states, enhancing computational efficiency and conceptual understanding.
Findings
PIRG flows facilitate rapid convergence to physical ground states.
They enable systematic identification of emergent composite fields.
The approach reduces computational and analytical effort in RG analyses.
Abstract
The physics of strongly correlated systems offers some of the most intriguing physics challenges such as competing orders or the emergence of dynamical composite degrees of freedom. Often, the resolution of these physics challenges is computationally hard, but can be simplified enormously by a formulation in terms of the dynamical degrees of freedom and within an expansion about the physical ground state. Importantly, such a formulation does not only reduce or minimise the computational challenges, it also facilitates the access to the physics mechanisms at play. The tasks of finding the dynamical degrees of freedom and the physical ground state can be systematically addressed within the functional renormalisation group approach with flowing fields which accommodates both, emergent composites as well as the physical ground state. In the present work we use this approach to set up…
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Taxonomy
TopicsComplex Systems and Time Series Analysis
