Predictable skill and its attribution to sea-surface temperature variability in an ensemble climate simulation

Journal Article
Predictable skill and its attribution to sea-surface temperature variability in an ensemble climate simulation
Schlosser, C.A., and B. Kirtman (2005)
J. of Geophysical Research, 110: D19107

Abstract/Summary:

Simulated near?surface air temperature (Ta) and precipitation in an ensemble climate simulation is assessed. The ensemble climate?simulation was constructed with the Center for Ocean?Land?Atmosphere (COLA) atmospheric general circulation model (AGCM) in conjunction with the Atmospheric Model Intercomparison Project Phase II (AMIP II). To diagnose the ensemble simulation, a measure of “predictable skill” is formalized. This diagnostic is based upon the statistical significance of spatial correlation over any given region (for this analysis, North America) between the ensemble mean and observed anomalies and the inter?member scatter of the spatial anomaly correlation. Using this measure as a function of time, periods of predictable skill within the COLA AMIP II ensemble simulation are identified, and through a point?wise, multiple correlation technique, spatial patterns of contemporaneous sea?surface temperature (SST) variability are also constructed. This diagnosis can essentially define which skillfully simulated climate signals over North America (given by predictable skill) can be attributed to specific SST anomalies. Spatially coherent patterns of SST variability are found to be associated with predictable skill. These patterns are, not surprisingly, primarily related to the El Niño Southern Oscillation (ENSO). One of the more prevalent ENSO associations to predictable skill (for the COLA AGCM) is found in sub?tropical regions of the western Pacific. Moreover, a skillful episode of simulated North American precipitation is seen to be associated with SST variability over the east Indian Ocean. In addition, a strong contemporaneous association of Ta predictable skill with tropical Atlantic SST variability is found. Complementary simulations are performed with the COLA AGCM to further assess the degree of attribution of predictable skill to these regions of SST variability. The results of the experimental simulations suggest that, for the AMIP II simulation period, the COLA AGCM can be skillfully attributed to SST variability primarily associated with ENSO, warm tropical Atlantic anomalies, and an abrupt, cooling event over the east Indian Ocean. © 2001 American Association for the Advancement of Science

Citation:

Schlosser, C.A., and B. Kirtman (2005): Predictable skill and its attribution to sea-surface temperature variability in an ensemble climate simulation. J. of Geophysical Research, 110: D19107 (http://www.agu.org/journals/jgr/)
  • Journal Article
Predictable skill and its attribution to sea-surface temperature variability in an ensemble climate simulation

Schlosser, C.A., and B. Kirtman

Abstract/Summary: 

Simulated near?surface air temperature (Ta) and precipitation in an ensemble climate simulation is assessed. The ensemble climate?simulation was constructed with the Center for Ocean?Land?Atmosphere (COLA) atmospheric general circulation model (AGCM) in conjunction with the Atmospheric Model Intercomparison Project Phase II (AMIP II). To diagnose the ensemble simulation, a measure of “predictable skill” is formalized. This diagnostic is based upon the statistical significance of spatial correlation over any given region (for this analysis, North America) between the ensemble mean and observed anomalies and the inter?member scatter of the spatial anomaly correlation. Using this measure as a function of time, periods of predictable skill within the COLA AMIP II ensemble simulation are identified, and through a point?wise, multiple correlation technique, spatial patterns of contemporaneous sea?surface temperature (SST) variability are also constructed. This diagnosis can essentially define which skillfully simulated climate signals over North America (given by predictable skill) can be attributed to specific SST anomalies. Spatially coherent patterns of SST variability are found to be associated with predictable skill. These patterns are, not surprisingly, primarily related to the El Niño Southern Oscillation (ENSO). One of the more prevalent ENSO associations to predictable skill (for the COLA AGCM) is found in sub?tropical regions of the western Pacific. Moreover, a skillful episode of simulated North American precipitation is seen to be associated with SST variability over the east Indian Ocean. In addition, a strong contemporaneous association of Ta predictable skill with tropical Atlantic SST variability is found. Complementary simulations are performed with the COLA AGCM to further assess the degree of attribution of predictable skill to these regions of SST variability. The results of the experimental simulations suggest that, for the AMIP II simulation period, the COLA AGCM can be skillfully attributed to SST variability primarily associated with ENSO, warm tropical Atlantic anomalies, and an abrupt, cooling event over the east Indian Ocean. © 2001 American Association for the Advancement of Science