Predicting Instabilities in Transient Landforms and Interconnected Ecosystems
Taylor Smith, Andreas Morr, Bodo Bookhagen, Niklas Boers

TL;DR
This paper introduces a new method for assessing the stability of Earth systems directly from data, enabling early detection of shifts in ecosystems and landforms without extensive data preprocessing.
Contribution
The authors develop a novel eigenvalue-based approach using Floquet Multipliers that works on raw data, applicable to diverse spatiotemporal systems, including climate and ecological systems.
Findings
Successfully applied to synthetic data for validation.
Predicted glacier surge onset from surface velocity data.
Analyzed Amazon rainforest productivity to identify destabilization patterns.
Abstract
Many parts of the Earth system are thought to have multiple stable equilibrium states, with the potential for rapid and sometimes catastrophic shifts between them. The most common frameworks for analyzing stability changes, however, require stationary (trend- and seasonality-free) data, which necessitates error-prone data pre-processing. Here we propose a novel method of quantifying system stability based on eigenvalue tracking and Floquet Multipliers, which can be applied directly to diverse data without first removing trend and seasonality, and is robust to changing noise levels, as can be caused by merging signals from different sensors. We first demonstrate this approach with synthetic data and further show how glacier surge onset can be predicted from observed surface velocity time series. We then show that our method can be extended to analyze spatio-temporal data and illustrate…
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