Abstract

There is as yet no theoretical framework to guide the search for emergent constraints. As a result, there are significant risks that indiscriminate data-mining of the multidimensional outputs from GCMs could lead to spurious correlations and less than robust constraints on future changes. To mitigate against this risk, Cox et al (hereafter CHW18) proposed a theory-motivated emergent constraint, using the one-box Hasselmann model to identify a linear relationship between ECS and a metric of global temperature variability involving both temperature standard deviation and autocorrelation ($\Psi$). A number of doubts have been raised about this approach, some concerning the theory and the application of the one-box model to understand relationships in complex GCMs which are known to have more than the single characteristic timescale. We illustrate theory driven testing of emergent constraints using this as an example, namely we demonstrate that the linear $\Psi$-ECS proportionality is not an artifact of the one-box model and rigorously features to a good approximation in more realistic, yet still analytically soluble conceptual models, namely the two-box and diffusion models. Each of the conceptual models predict different power spectra with only the diffusion model's pink spectrum being compatible with observations and the complex CMIP5 GCMs. We also show that the theoretically predicted $\Psi$-ECS relationship exists in the \texttt{piControl} as well as \texttt{historical} CMIP5 experiments and that the differing gradients of the proportionality are inversely related to the effective forcing in that experiment.

Highlights

  • Emergent constraints (Hall and Qu 2006; Allen and Ingram, 2002) provide a promising way to relate observations of the present day to future projections of the climate

  • We show that the linear Ψ–equilibrium climate sensitivity (ECS) proportionality in the one-box model is not generally true in the two-box and diffusion models

  • We show that the theoretically predicted Ψ–ECS relationship exists in the piControl as well as historical CMIP5 experiments and that the differing gradients of the proportionality are inversely related to the effective forcing in that experiment

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Summary

Results

We show that the linear Ψ–ECS proportionality in the one-box model is not generally true in the two-box and diffusion models. The linear proportionality is a very good approximation for parameter ranges applicable to the current state-of-the-art CMIP5 climate models This is not obvious—due to structural differences between the conceptual models, their predictions differ. We argue that emergent constraints should ideally be derived by such theory-driven hypothesis testing, in part to protect against spurious correlations from blind data-mining but mainly to aid understanding. In this approach, an underlying model is proposed, the model is used to predict a potential emergent relationship between an observable and an unknown future projection, and the hypothesized emergent relationship is tested against an ensemble of GCMs

Introduction
Conceptual models relating global temperature variability to ECS
Comparison with CMIP5 models and observations
Discussion and conclusions
Full Text
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