Climate Research

Inter-Research
Climate Research

IR Home



CR
Home
Editors
Forthcoming
Information
Subscribe
CR SPECIAL 1
CR SPECIAL 2
CR SPECIAL 3
CR SPECIAL 4
CR SPECIAL 5
CR SPECIAL 6
CR SPECIAL 7
CR SPECIAL 8
CR SPECIAL 9
CR SPECIAL 10
CR SPECIAL 11


Journals
Home
MEPS
AME
CR
DAO
ESEP
Search
Subscribe

Book Series
EE Books
Top Books
ESEP Books
Order

EEIU Brochures
(pdf format)

Discussion Forums
Home

Research
Endangered Species Programs

Institutions
International Ecology Institute
Eco-Ethics International Union

Foundation
Otto Kinne Foundation

CR 20:167-185 (2002)

Abstract

Techniques for estimating uncertainty in climate change scenarios and impact studies

Richard W. Katz*

Environmental and Societal Impacts Group, National Center for Atmospheric Research**, Boulder, Colorado 80307, USA

*E-mail: rwk@ucar.edu **Sponsored by the National Science Foundation

ABSTRACT: Methodology for quantifying uncertainty in global climate change studies is reviewed. The focus is on recent developments in statistics, such as hierarchical modeling and Markov chain Monte Carlo simulation techniques, that could enable more full-fledged uncertainty analyses to be performed as part of integrated assessments of climate change and its impacts. First an overview of uncertainty analysis, including its sources and how it propagates, is provided. Presently employed techniques in climate change assessments, such as sensitivity, scenario, and Monte Carlo simulation analyses, are then surveyed. Next alternative approaches, based on more formal statistical theory (especially the Bayesian statistical paradigm), are described. Finally, some tentative recommendations on strategies for achieving the goal of more reliably quantifying uncertainty in global climate change are made.

KEY WORDS: Aggregation/scaling · Bayesian statistics · Extremes · Monte Carlo simulation · Scenario analysis · Sensitivity analysis

Full text in pdf format

Published in CR Vol. 20, No. 2 (2002) on February 21
Print ISSN: 0936-577X; Online ISSN: 1616-1572. Copyright © Inter-Research, Oldendorf/Luhe, 2002

Copyright © 2003; Inter-Research
Webmaster: webmaster@int-res.com