Predictability Study of the Observed and Simulated European Climate using Linear Regression

Monthly mean temperature anomalies in the regions England, Germany and Scandinavia are predicted by lin-ear regression. Two predictors are selected from monthly mean teleconnection indices, North Atlantic sea surface temperatures (SSTs) projected on the rst three empirical orthogonal functions (EOFs...

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Main Authors: Blender Ute Luksch, Klaus Fraedrich, Christoph C. Raible
Other Authors: The Pennsylvania State University CiteSeerX Archives
Format: Text
Language:English
Published: 2003
Subjects:
Online Access:http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.473.7904
http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf
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spelling ftciteseerx:oai:CiteSeerX.psu:10.1.1.473.7904 2023-05-15T17:32:07+02:00 Predictability Study of the Observed and Simulated European Climate using Linear Regression Blender Ute Luksch Klaus Fraedrich Christoph C. Raible The Pennsylvania State University CiteSeerX Archives 2003 application/pdf http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.473.7904 http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf en eng http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.473.7904 http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf Metadata may be used without restrictions as long as the oai identifier remains attached to it. http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf GCM evaluation Monthly forecast text 2003 ftciteseerx 2016-01-08T07:27:17Z Monthly mean temperature anomalies in the regions England, Germany and Scandinavia are predicted by lin-ear regression. Two predictors are selected from monthly mean teleconnection indices, North Atlantic sea surface temperatures (SSTs) projected on the rst three empirical orthogonal functions (EOFs), and European climate variables (temperature, sea level pressure, and precipitation) averaged in the three predictand regions. The predic-tors are chosen separately for each month according to their correlation with the predictand. Observations from 1870–1999 and data from a 600-year integration with the coupled atmosphere–ocean general-circulation model ECHAM/HOPE are used to assess and compare the forecast skill. The skill is measured by the anomaly correlation coef cient (ACC) and the explained variance (EV). For a one-month lead time the ACC for observations is up to 0:6 (EV 35%) for February–March and August–September in the three regions. The skill for the simulated data is lower (maximum values at ACC 0:5, EV 25%) and its seasonal dependence differs from that of the observations. Main predictors are the preceding temperatures in the predictand region. Using segments of the simulated data the spread of skill is estimated as 0.1 in ACC (10 % in EV). For lead times up to one year there is a small ACC (0.3–0.4) in the observations for England (spring and late summer), and Scandinavia (August–September), but none in Germany. The observed two-month mean England temperature in spring and late summer can be predicted with six months ’ lead time for 1971–96 with 1870–1969 as a training set, selecting the rst two North Atlantic SST EOF coef cients as predictors. A leave-two-out cross-validation in 1870–1999 shows a distinct reduction of skill. In simulated data, the skill beyond one month is negligible compared with the observations. Text North Atlantic Unknown
institution Open Polar
collection Unknown
op_collection_id ftciteseerx
language English
topic GCM evaluation Monthly forecast
spellingShingle GCM evaluation Monthly forecast
Blender Ute Luksch
Klaus Fraedrich
Christoph C. Raible
Predictability Study of the Observed and Simulated European Climate using Linear Regression
topic_facet GCM evaluation Monthly forecast
description Monthly mean temperature anomalies in the regions England, Germany and Scandinavia are predicted by lin-ear regression. Two predictors are selected from monthly mean teleconnection indices, North Atlantic sea surface temperatures (SSTs) projected on the rst three empirical orthogonal functions (EOFs), and European climate variables (temperature, sea level pressure, and precipitation) averaged in the three predictand regions. The predic-tors are chosen separately for each month according to their correlation with the predictand. Observations from 1870–1999 and data from a 600-year integration with the coupled atmosphere–ocean general-circulation model ECHAM/HOPE are used to assess and compare the forecast skill. The skill is measured by the anomaly correlation coef cient (ACC) and the explained variance (EV). For a one-month lead time the ACC for observations is up to 0:6 (EV 35%) for February–March and August–September in the three regions. The skill for the simulated data is lower (maximum values at ACC 0:5, EV 25%) and its seasonal dependence differs from that of the observations. Main predictors are the preceding temperatures in the predictand region. Using segments of the simulated data the spread of skill is estimated as 0.1 in ACC (10 % in EV). For lead times up to one year there is a small ACC (0.3–0.4) in the observations for England (spring and late summer), and Scandinavia (August–September), but none in Germany. The observed two-month mean England temperature in spring and late summer can be predicted with six months ’ lead time for 1971–96 with 1870–1969 as a training set, selecting the rst two North Atlantic SST EOF coef cients as predictors. A leave-two-out cross-validation in 1870–1999 shows a distinct reduction of skill. In simulated data, the skill beyond one month is negligible compared with the observations.
author2 The Pennsylvania State University CiteSeerX Archives
format Text
author Blender Ute Luksch
Klaus Fraedrich
Christoph C. Raible
author_facet Blender Ute Luksch
Klaus Fraedrich
Christoph C. Raible
author_sort Blender Ute Luksch
title Predictability Study of the Observed and Simulated European Climate using Linear Regression
title_short Predictability Study of the Observed and Simulated European Climate using Linear Regression
title_full Predictability Study of the Observed and Simulated European Climate using Linear Regression
title_fullStr Predictability Study of the Observed and Simulated European Climate using Linear Regression
title_full_unstemmed Predictability Study of the Observed and Simulated European Climate using Linear Regression
title_sort predictability study of the observed and simulated european climate using linear regression
publishDate 2003
url http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.473.7904
http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf
genre North Atlantic
genre_facet North Atlantic
op_source http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf
op_relation http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.473.7904
http://www.climate.unibe.ch/~raible/Ble-UL-KF-CR-pred-QJ.pdf
op_rights Metadata may be used without restrictions as long as the oai identifier remains attached to it.
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