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A Multiplicative-Noise Mechanism for Variability Amplification under Radiative Forcing in an Arctic Energy-Balance Model

Gianmarco Del Sarto, Franco Flandoli, Marta Lenzi

Abstract

We propose and analyse a mechanism by which $\mathrm{CO}_2$-driven radiative forcing can increase Arctic temperature variability in a stochastic Sellers-type energy-balance model. Starting from a fast-slow formulation in which insolation is modelled by a rapidly mean-reverting Ornstein-Uhlenbeck process while temperature evolves on a slow macroweather timescale, a Wong-Zakai reduction leads to a stochastic energy-balance equation with \emph{multiplicative} noise. After linearising around the stable equilibrium $T^{*,λ}$, we derive an explicit expression for the stationary variance of the temperature anomaly and prove that it increases monotonically with the forcing parameter $λ$ whenever $T^{*,λ}$ lies in the ice-sensitive regime of the co-albedo. We then consider a spatial anomaly model and its finite-difference semi-discretisation, obtaining a finite-dimensional SDE. Under natural stability conditions and nonnegative noise correlations, we establish a component-wise monotone increase of the stationary covariance matrix with respect to $λ$, including its off-diagonal entries. In particular, radiative forcing amplifies not only local variances but also the covariance between temperature anomalies at distinct spatial locations, indicating increased similarity in the variability of the anomaly field across space.

A Multiplicative-Noise Mechanism for Variability Amplification under Radiative Forcing in an Arctic Energy-Balance Model

Abstract

We propose and analyse a mechanism by which -driven radiative forcing can increase Arctic temperature variability in a stochastic Sellers-type energy-balance model. Starting from a fast-slow formulation in which insolation is modelled by a rapidly mean-reverting Ornstein-Uhlenbeck process while temperature evolves on a slow macroweather timescale, a Wong-Zakai reduction leads to a stochastic energy-balance equation with \emph{multiplicative} noise. After linearising around the stable equilibrium , we derive an explicit expression for the stationary variance of the temperature anomaly and prove that it increases monotonically with the forcing parameter whenever lies in the ice-sensitive regime of the co-albedo. We then consider a spatial anomaly model and its finite-difference semi-discretisation, obtaining a finite-dimensional SDE. Under natural stability conditions and nonnegative noise correlations, we establish a component-wise monotone increase of the stationary covariance matrix with respect to , including its off-diagonal entries. In particular, radiative forcing amplifies not only local variances but also the covariance between temperature anomalies at distinct spatial locations, indicating increased similarity in the variability of the anomaly field across space.
Paper Structure (14 sections, 9 theorems, 154 equations, 7 figures)

This paper contains 14 sections, 9 theorems, 154 equations, 7 figures.

Key Result

Lemma 1.1

For any $t>0$, it holds

Figures (7)

  • Figure 1: Geographical distribution of the Arctic Ocean and its marginal seas. Numbered labels indicate: (1) Norwegian Sea, (2) Barents Sea, (3) Kara Sea, (4) Laptev Sea, (5) East Siberian Sea, (6) Chukchi Sea, (7) Beaufort Sea, (8) Baffin Bay, (9) Greenland Sea, and (10) Arctic Ocean.
  • Figure 2: Kara Sea. Top-left: location of the study area. Top-right: comparison between the histograms (number of days) of the spatial-averaged daily August SST for the first decade (1983-1992, blue) and the last calculable decade (2016-2025, red), along with their respective mean and standard deviation values. Bottom-left: decadal spatial mean trend of August SST (centred on the mid-year of each decade, one year moving window). Bottom-right: decadal spatial standard deviation trend of August SST (centred on the mid-year of each decade, one year moving window). The blue-to-red colour scale represents the progression of time across the decades, in accordance with the colour scheme used in the histogram.
  • Figure 3: Laptev Sea. Top-left: location of the study area. Top-right: comparison between the histograms (number of days) of the spatial-averaged daily August SST for the first decade (1983-1992, blue) and the last calculable decade (2016-2025, red), along with their respective mean and standard deviation values. Bottom-left: decadal spatial mean trend of August SST (centred on the mid-year of each decade, one year moving window). Bottom-right: decadal spatial standard deviation trend of August SST (centred on the mid-year of each decade, one year moving window). The blue-to-red colour scale represents the progression of time across the decades, in accordance with the colour scheme used in the histogram.
  • Figure 4: Arabic Sea. Top-left: location of the study area (long-lat). Top-right: comparison between the histograms (number of days) of the spatial-averaged daily August SST for the first decade (1983-1992, blue) and the last calculable decade (2016-2025, red), along with their respective mean and standard deviation values. Bottom-left: decadal spatial mean trend of August SST (centred on the mid-year of each decade, one year moving window). Bottom-right: decadal spatial standard deviation trend of August SST (centred on the mid-year of each decade, one year moving window). The blue-to-red colour scale represents the progression of time across the decades, in accordance with the colour scheme used in the histogram.
  • Figure 5: Kara Sea (panel 3, Figure \ref{['fig: area_arctic']}). Top: density distribution of annual August mean SST values across all individual grid points of the study area. Bottom: interannual standard deviation (dashed line with markers), together with its growth trend (dashed red line).
  • ...and 2 more figures

Theorems & Definitions (21)

  • Lemma 1.1
  • proof
  • Remark 1.2: On the stability condition \ref{['eq: b positive section 1']}
  • Proposition 1.3
  • proof
  • Proposition 1.4
  • proof
  • Definition 2.1: Spatial Variance
  • Remark 2.2: Stationary spatial variance and extreme weather events
  • Theorem 2.3
  • ...and 11 more