TL;DR
This paper introduces a new computational workflow to identify and analyze multistability in high-dimensional climate datasets, providing insights into alternative states and their interrelations.
Contribution
The work develops an algorithmic framework for detecting multistable states and introduces the intermingledness indicator, with applications to climate and exoplanet data.
Findings
Successfully identified multiple stable states in climate datasets.
The intermingledness indicator quantifies differences between states.
Open source code enables application to new high-dimensional data.
Abstract
Multistability is a phenomenon prevalent in many natural systems. In climate, for example, it allows the possibility of irreversible consequences on planetary scale as a result of climate change. Indeed, a climate ``tipping element'' is a multistable component that can undergo a transition to an alternative steady state due to an external perturbation. Despite the potential impact, multistability in realistic, complex simulations (e.g. climate models) remains poorly understood. Arguably a reason for this the lack of applicable methodology that explicitly targets finite yet high-dimensional datasets. In this work we utilize recent progress in computational nonlinear dynamics to formulate a workflow that analyses potentially multistable simulation data and decides algorithmically what are the alternative steady states contained within, if any. The framework undergoes an optimization…
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