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Lacking oceanic-driven internal multidecadal climate variability is compensated by forced variability in model simulations (2504.09939v1)

Published 14 Apr 2025 in physics.ao-ph

Abstract: Regional climate change in the $21{st}$ century will result from the interplay between human-induced changes and internal climate variability. Competing effects from greenhouse gas warming and aerosol cooling have historically caused multidecadal forced climate variations overlapping with internal variability. Despite extensive historical observations, disentangling the contributions of internal and forced variability remains debated, largely due to the uncertain magnitude of anthropogenic aerosols. Here, we show that, after removing CO${2}$-congruent variability, multidecadal temperature variability in instrumental data is largely attributable to internal processes of oceanic origin. This follows from an emergent relationship, identified in historical climate model simulations, between the driver of variability in oceanic regions and the land-ocean variance ratio in the mid-latitudes. Thus, climate models with higher residual (non-CO${2}$) forced variability, largely linked to volcanic and anthropogenic aerosols, exhibit more spatially coherent and amplified temperature patterns over land compared to observations. In contrast, models with higher internal variability agree better with the instrumental data. Our results underscore that internal modes of ocean-driven variability may be too weak in many climate models, and that current projections may be underestimating the range of internal variability in regions with high oceanic influence.

Summary

Analysis of Climate Variability Compensated by Forced Variability in Model Simulations

The paper conducted by Raphaƫl A Ebert and Thomas Laepple examines the intricacies of climate change in the 21st century, focusing particularly on the interaction between human-induced changes and natural internal climate variability. This interaction results in multidecadal climate patterns, which are affected by fluctuating atmospheric compositions and natural oceanic processes. The paper emphasizes the challenges in disentangling the contributions from anthropogenic activities, notably aerosol releases, from those inherent to internal variability, such as the Atlantic Meridional Overturning Circulation (AMOC).

Key Findings

  • Discrepancies in Model Simulations: Climate models exhibit significant discrepancies when compared to observed instrumental data. Models with higher residual forced variability linked to volcanic and anthropogenic aerosols show amplified temperature patterns, whereas models with higher internal variability align more closely with real-world observations. This raises concerns about the efficacy of climate models in simulating natural variability.
  • Ocean-Driven Variability: Internal oceanic processes are cited as predominant drivers of multidecadal variability in mid-latitude regions, challenging previous notions that emphasized aerosol forcing. Yet, these oceanic processes are potentially underestimated in many models.
  • Land-Ocean Contrast: The land-ocean variance ratio is a critical component not only in interpreting spatial temperature patterns but also in understanding model biases. Results suggest that oceanic influences significantly affect regional climate variability, often resulting in contradictory land-to-ocean temperature dynamics observed in models versus empirical data.

Implications

This work elucidates the limitations of current climate models in capturing the amplitude and spatial patterns of supra-decadal variability. It suggests a reevaluation of climate sensitivity estimates and the role of aerosols, which could lead to recalibrated models yielding more accurate climate projections. The insights regarding oceanic variability also indicate that regions heavily influenced by ocean dynamics might face more unpredictable climate changes than presently projected, emphasizing the need for models that realistically simulate oceanic influence and feedback mechanisms.

Speculations and Future Directions

Future developments in AI could enhance climate model simulations by improving the representation of complex feedback loops and computational constraints arising from large datasets. These AI-driven models might offer superior capabilities in processing real-time data, which could substantially reduce the uncertainty tied to aerosol forcings and oceanic variability. Additionally, advancements in paleoclimate data assimilation could refine our understanding of historical climate patterns, further bolstering predictions of future climate trajectories.

In conclusion, Ebert and Laepple's paper calls for a synergized approach, incorporating detailed empirical observations with enhanced model simulations, to achieve a comprehensive understanding of multidecadal climate variability. Such insights are paramount for policymakers and researchers, striving to develop accurate forecasts that anticipate the broader impacts of climate change across different global regions.

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