Seminar: A Statistical Reduced Complexity Climate Model for Probabilistic Analyses and Projections

Talks
Arrangør

Copenhagen Business School

Dato

October 29, 2024

Speaker: Mikkel Bennedsen, Aarhus University

Time and place: Tuesday, October 29, 11:00, room SPs07, Copenhagen Business School (Solbjerg Pl. 3, 2000 Frederiksberg)

Title: A Statistical Reduced Complexity Climate Model for Probabilistic Analyses and Projections

Abstract We propose a new statistical reduced complexity climate model. The center piece of the model consists of a set of physical equations for the global climate system which we show how to cast in non-linear state space form. The parameters in the model are estimated using the method of maximum likelihood with the likelihood function being evaluated by the extended Kalman filter. Our statistical framework is based on well-established methodology and is computationally feasible. In an empirical analysis, we estimate the parameters for a data set comprising the period 1959-2022. A likelihood ratio test sheds light on the most appropriate equation for converting the level of atmospheric concentration of carbon dioxide into radiative forcing. Using the estimated model, and different future paths of greenhouse gas emissions, we project global mean surface temperature until the year 2100. Our results illustrate the potential of combining statistical modelling with physical insights to arrive at rigorous statistical analyses of the climate system.

There is a working paper available on arxiv: https://arxiv.org/abs/2407.04351.

For a detailed overview of planned future seminars at the section of Statistics, CBS, see https://www.cbs.dk/en/research/departments-and-centres/department-of-finance/center-statistics/seminars