A methodology is described for probabilistic predictions of future climate. This is based on a set of ensemble simulations of equilibrium and time-dependent changes, carried out by perturbing poorly constrained parameters controlling key physical and biogeochemical processes in the HadCM3 coupled ocean-atmosphere global climate model. These (ongoing) experiments allow quantification of the effects of earth system modelling uncertainties and internal climate variability on feedbacks likely to exert a significant influence on twenty-first century climate at large regional scales. A further ensemble of regional climate simulations at 25km resolution is being produced for Europe, allowing the specification of probabilistic predictions at spatial scales required for studies of climate impacts. The ensemble simulations are processed using a set of statistical procedures, the centrepiece of which is a Bayesian statistical framework designed for use with complex but imperfect models. This supports the generation of probabilities constrained by a wide range of observational metrics, and also by expert-specified prior distributions defining the model parameter space. The Bayesian framework also accounts for additional uncertainty introduced by structural modelling errors, which are estimated using our ensembles to predict the results of alternative climate models containing different structural assumptions. This facilitates the generation of probabilistic predictions combining information from perturbed physics and multi-model ensemble simulations. The methodology makes extensive use of emulation and scaling techniques trained on climate model results. These are used to sample the equilibrium response to doubled carbon dioxide at any required point in the parameter space of surface and atmospheric processes, to sample time-dependent changes by combining this information with ensembles sampling uncertainties in the transient response of a wider set of earth system processes, and to sample changes at local scales. The methodology is necessarily dependent on a number of expert choices, which are highlighted throughout the paper.

Download full-text PDF

Source
http://dx.doi.org/10.1098/rsta.2007.2077DOI Listing

Publication Analysis

Top Keywords

probabilistic predictions
16
ensemble simulations
12
climate
9
regional climate
8
perturbed physics
8
time-dependent changes
8
climate model
8
earth system
8
parameter space
8
processes sample
8

Similar Publications

The objective of this study was to identify the factors that best predict variations in tension, irritability, and fatigue (TIF) among university professors in Ecuador. Using a quantitative approach with a non-experimental, cross-sectional design, data were collected from a probabilistic sample of 364 participants. Psychometric measures were adapted and linguistically validated to assess TIF, and participants completed the Perceived Stress Questionnaire, alongside a sociodemographic questionnaire.

View Article and Find Full Text PDF

: This study examined how self-compassion and emotional regulation strategies have influenced perinatal anxiety, depression, and social anxiety during COVID-19. : A probabilistic sample, determined by convenience criteria of 265 Australian perinatal women completed an online survey containing measures of depression, anxiety, social anxiety, COVID-19 experiences, self-compassion, and emotional regulation strategies. : As hypothesised, correlation analyses showed that self-compassion and adaptive emotional regulation strategies were negatively related to anxiety, depression and social anxiety, and maladaptive strategies were positively related.

View Article and Find Full Text PDF

Networked datasets can be enriched by different types of information about individual nodes or edges. However, most existing methods for analyzing such datasets struggle to handle the complexity of heterogeneous data, often requiring substantial model-specific analysis. In this article, we develop a probabilistic generative model to perform inference in multilayer networks with arbitrary types of information.

View Article and Find Full Text PDF

We are not only passively immersed in a sensorial world, but we are active agents that directly produce stimulations. Understanding what is unique about sensory consequences can give valuable insight into the action-perception-cycle. Sensory attenuation is the phenomenon that self-produced stimulations are perceived as less intense compared to externally-generated ones.

View Article and Find Full Text PDF

Determining the harvest location of timber is crucial to enforcing international regulations designed to protect natural resources and to tackle illegal logging and associated trade in forest products. Stable isotope ratio analysis (SIRA) can be used to verify claims of timber harvest location by matching levels of naturally occurring stable isotopes within wood tissue to location-specific ratios predicted from reference data ("isoscapes"). However, overly simple models for predicting isoscapes have so far limited the confidence in derived predictions of timber provenance.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!