Empirical Approaches for Near-term Climate Predictions

Empirical Approaches for Near-term Climate Predictions
Author :
Publisher :
Total Pages : 164
Release :
ISBN-10 : OCLC:1148478045
ISBN-13 :
Rating : 4/5 (45 Downloads)

Book Synopsis Empirical Approaches for Near-term Climate Predictions by : Daniela Faggiani Dias

Download or read book Empirical Approaches for Near-term Climate Predictions written by Daniela Faggiani Dias and published by . This book was released on 2020 with total page 164 pages. Available in PDF, EPUB and Kindle. Book excerpt: Climate variations on seasonal to decadal time scales can have enormous social, economical and environmental impacts. As such, the ability to make skilful and reliable climate predictions at these time scales offers many benefits for climate preparedness, adaptation and resilience. In the recent years, major progress has been made in the development of such predictions with the advent of simulations with global climate models that are initialized from the current climate state. However, many challenges remain including an understanding of the underlying physical mechanisms for skilful predictions and whether such predictions could be improved. The purpose of this thesis is to establish new benchmarks for seasonal to decadal predictions in diverse components of the climate system and to provide some pieces of evidence that help to understand what are the drivers for these predictable patterns. Specifically, we use a suite of empirical models to perform predictions of oceanic and atmospheric variables together with initialized climate predictions to: 1. Understand the contribution of remote and local factors to the predictability of North and Tropical Pacific Oceans Sea Surface Temperature and Land Surface Temperature over Western North America; 2. Provide a higher baseline level skill for the state-of-art global prediction systems, from seasonal to decadal time scales; 3. Explore possible sources of errors in the global climate model simulations using statistical predictive models. First, we isolate contributions to the forecast skill from different spatial and time scales in the Pacific Ocean using a Liner Inverse Modelling (LIM) approach, showing the importance of temporal scale interactions in improving the predictions on decadal time scales. Specifically, we show that the Extratropical North Pacific is a source of predictability for the tropics on seasonal to interannual time scales, while the tropics enhance the forecast skill for the decadal component. We then show that the skill for an empirically-built LIM is comparable to and sometimes better than that from two state-of-art global prediction systems, from seasonal to decadal timescales and for several regions around the globe. These results indicate that the evolution of the system in those areas may not be not fully driven by unpredictable dynamics and that there may be some room for improvement in the dynamical models predictions, given that a low-dimensional linear model is able to generate better skill than the fully-coupled nonlinear model. Bearing that in mind, we use the LIM linear feedback matrix to explore possible sources of errors in the dynamical model simulations and we find that some of the simulated atmospheric and oceanic local and remote feedbacks differ in several key regions from that obtained with observations. These results may indicate sources of error in the dynamical models and therefore in its prediction skill that merit focused attention. We then investigate the role of remote and local predictors in seasonal predictors of minimum and maximum air temperatures over the Western North America, using a Canonical Correlation Analysis approach. We show that remote predictors, in the form of Pacific climate modes, provide the best predictive skill for temperature over land, particularly during wintertime. Lastly, considering that persistence is the widely-used measure when evaluating the predictive skill for dynamical models, we suggest the use of CCA as a much higher benchmark for seasonal predictions of land surface air temperatures.


Empirical Approaches for Near-term Climate Predictions Related Books

Empirical Approaches for Near-term Climate Predictions
Language: en
Pages: 164
Authors: Daniela Faggiani Dias
Categories:
Type: BOOK - Published: 2020 - Publisher:

DOWNLOAD EBOOK

Climate variations on seasonal to decadal time scales can have enormous social, economical and environmental impacts. As such, the ability to make skilful and r
Empirical Methods in Short-Term Climate Prediction
Language: en
Pages: 253
Authors: Huug van den Dool
Categories: Language Arts & Disciplines
Type: BOOK - Published: 2007 - Publisher: Oxford University Press on Demand

DOWNLOAD EBOOK

The author describes the methods underlying short-term climate prediction at time scales of two weeks to a year. With an emphasis on the empirical approach, thi
Making Climate Forecasts Matter
Language: en
Pages: 189
Authors: National Research Council
Categories: Science
Type: BOOK - Published: 1999-05-27 - Publisher: National Academies Press

DOWNLOAD EBOOK

El Nino has been with us for centuries, but now we can forcast it, and thus can prepare far in advance for the extreme climatic events it brings. The emerging a
Empirical-statistical Downscaling
Language: en
Pages: 228
Authors: Rasmus E. Benestad
Categories: Science
Type: BOOK - Published: 2008 - Publisher: World Scientific

DOWNLOAD EBOOK

Empirical-statistical downscaling (ESD) is a method for estimating how local climatic variables are affected by large-scale climatic conditions. ESD has been ap
A Scientific Strategy for U.S. Participation in the GOALS (Global Ocean-Atmosphere-Land System) Component of the CLIVAR (Climate Variability and Predictability) Programme
Language: en
Pages: 83
Authors: National Research Council
Categories: Science
Type: BOOK - Published: 1998-08-13 - Publisher: National Academies Press

DOWNLOAD EBOOK