Use of Normalized Anomaly Fields to Anticipate Extreme Rainfall in the Mountains of Northern California

Author:

Junker Norman W.1,Grumm Richard H.2,Hart Robert3,Bosart Lance F.4,Bell Katherine M.5,Pereira Frank J.6

Affiliation:

1. NOAA/NCEP/Hydrometeorological Prediction Center/I. M. Systems Group, Camp Springs, Maryland

2. NWS, State College, Pennsylvania

3. Department of Meteorology, The Florida State University, Tallahassee, Florida

4. Department of Earth and Atmospheric Science, The University at Albany, State University of New York, Albany, New York

5. NOAA/NCEP/Ocean Prediction Center, Camp Springs, Maryland

6. NOAA/NCEP/Hydrometeorological Prediction Center, Camp Springs, Maryland

Abstract

Abstract Extreme rainfall events contribute a large portion of wintertime precipitation to northern California. The motivations of this paper were to study the observed differences in the patterns between extreme and more commonly occurring lighter rainfall events, and to study whether anomaly fields might be used to discriminate between them. Daily (1200–1200 UTC) precipitation amounts were binned into three progressively heavier categories (12.5–50.0 mm, light; 50–100 mm, moderate; and >100 mm, heavy) in order to help identify the physical processes responsible for extreme precipitation in the Sierra Nevada range between 37.5° and 41.0°N. The composite fields revealed marked differences between the synoptic patterns associated with the three different groups. The heavy composites showed a much stronger, larger-scale, and slower-moving negative geopotential height anomaly off the Pacific coast of Oregon and Washington than was revealed in either of the other two composites. The heavy rainfall events were also typically associated with an atmospheric river with anomalously high precipitable water (PW) and 850-hPa moisture flux (MF) within it. The standardized PW and MF anomalies associated with the heavy grouping were higher and were slower moving than in either of the lighter bins. Three multiday heavy rainfall events were closely examined in order to ascertain whether anomaly patterns could provide forecast utility. Each of the multiday extreme rainfall events investigated was associated with atmospheric rivers that contained highly anomalous 850-hPa MF and PW within it. Each case was also associated with an unusually intense negative geopotential height anomaly that was similarly located off of the west coast of the United States. The similarities in the anomaly pattern among the three multiday extreme events suggest that standardized anomalies might be useful in predicting extreme multiday rainfall events in the northern Sierra range.

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference31 articles.

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3. Army Corps of Engineers , 1999: Post-flood assessment for 1983, 1986, 1995, and 1997 in the Central Valley, California. The Army Corps of Engineers’ Sacramento and San Joaquin River Basins Comprehensive Study, 48 pp. [Available online at http://www.spk.usace.army.mil/projects/civil/compstudy/docs/post_flood/START.pdf.].

4. Baird, B. P., and R. R.Robles, 1997: Emergency management issues in the California floods of 1997: Lessons learned or lessons lost? California Specialized Training Institute Doc. G4173 N3, San Luis Obispo, CA, 54 pp. [Available from California Specialized Training Institute, P.O. Box 8123, San Luis Obispo, CA 93403-8123.].

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