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Data-based mechanistic modelling and forecasting globally averaged surface temperature
Authors:Peter C Young
Institution:Lancaster Environment Centre, Lancaster University, UK;Integrated Catchment Assessment and Management Centre, Australian National University College of Medicine, Biology & Environment Canberra, ACT, Australia
Abstract:The main objective of this paper it to model the dynamic relationship between global averaged measures of Total Radiative Forcing (RTF) and surface temperature, measured by the Global Temperature Anomaly (GTA), and then use this model to forecast the GTA. The analysis utilizes the Data-Based Mechanistic (DBM) approach to the modelling and forecasting where, in this application, the unobserved component model includes a novel hybrid Box-Jenkins stochastic model in which the relationship between RTF and GTA is based on a continuous time transfer function (differential equation) model. This model then provides the basis for short term, inter-annual to decadal, forecasting of the GTA, using a transfer function form of the Kalman Filter, which produces a good prediction of the ‘pause’ or ‘levelling’ in the temperature rise over the period 2000 to 2011. This derives in part from the effects of a quasi-periodic component that is modelled and forecast by a Dynamic Harmonic Regression (DHR) relationship and is shown to be correlated with the Atlantic Multidecadal Oscillation (AMO) index.
Keywords:Global Temperature Anomaly  Data-Based mechanistic modelling  Differential equation model  Quasi-cyclic variations  Adaptive forecasting
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