BER launches Environmental System Science Program. Visit our new website under construction!

U.S. Department of Energy Office of Biological and Environmental Research

BER Research Highlights

Estimating Changes in Temperature Distributions in a Large Ensemble of Climate Simulations Using Quantile Regression
Published: September 18, 2018
Posted: August 22, 2019

Seasonal changes in temperature distributions in climate model ensembles are investigated using quantile regression.

The Science
Understanding future changes in extreme temperature events in a transient climate is inherently challenging. A single model simulation is generally insufficient to characterize the statistical properties of the evolving climate, but ensembles of repeated simulations with different initial conditions greatly expand the amount of data available. We present here a new approach for using ensembles to characterize changes in temperature distributions based on quantile regression that more flexibly characterizes seasonal changes due to anthropogenic global warming.

The Impact
The work provides new insights and techniques to analyze seasonal changes in temperature distributions using quantile analysis. The method is particularly suited for analyzing extreme temperature in large climate model ensembles.

The abundance of data available in large, single-model ensembles allows using quantile regression to estimate high quantiles accurately within a single-model structure, avoiding assumptions about the shape of the distribution tail that are required to apply extreme value theory. The quantile regression approach described here enables the study of seasonal transitions with a flexible framework that allows different combinations of basis functions for seasonality, long-term trends, and changes in seasonality as appropriate for different datasets. While we analyze only temperature here, our method is intended to be general enough to be applied to other climate variables such as precipitation or humidity. These detailed insights into climate variable distributions may be valuable for risk assessment studies that emphasize extreme events.

Contacts (BER PM)
Bob Vallario
U.S. Department of Energy Office of Science, Office of Biological and Environmental Research
Climate and Environmental Sciences Division (SC-23.1)
Multisector Dynamics

(PI Contact)
John Weyant
Stanford University

This work was supported by the Department of Energy sponsored Program on Integrated Assessment Model Development, Diagnostics and Inter-Model Comparisons (PIAMDDI), DOE Cooperative Agreement Number DE-SC0016162; and the Program on Coupled Human and Earth Systems (PCHES) under DOE Cooperative Agreement Number DE-SC0016162.

Haugen, M. A., M. L. Stein, E. J. Moyer, and R. L Sriver. “Estimating changes in temperature distributions in a large ensemble of climate simulations using quantile regression.” Journal of Climate 31, 8573–8588 (2018). [DOI:10.1175/JCLI-D-17-0782.1]

Related Links

Topic Areas:

  • Research Area: Earth and Environmental Systems Modeling
  • Research Area: Multisector Dynamics (formerly Integrated Assessment)

Division: SC-33.1 Earth and Environmental Sciences Division, BER


BER supports basic research and scientific user facilities to advance DOE missions in energy and environment. More about BER

Recent Highlights

Mar 23, 2021
Molecular Connections from Plants to Fungi to Ants
Lipids transfer energy and serve as an inter-kingdom communication tool in leaf-cutter ants&rsqu [more...]

Mar 19, 2021
Microbes Use Ancient Metabolism to Cycle Phosphorus
Microbial cycling of phosphorus through reduction-oxidation reactions is older and more widespre [more...]

Feb 22, 2021
Warming Soil Means Stronger Microbe Networks
Soil warming leads to more complex, larger, and more connected networks of microbes in those soi [more...]

Jan 27, 2021
Labeling the Thale Cress Metabolites
New data pipeline identifies metabolites following heavy isotope labeling.

Analysis [more...]

Aug 31, 2020
Novel Bacterial Clade Reveals Origin of Form I Rubisco

  • All plant biomass is sourced from the carbon-fixing enzyme Rub [more...]

List all highlights (possible long download time)