Atmospheric Rivers are Responsible for Cyclicity in Sierra Nevada Precipitation

Author:

Williams A. P.123,Anchukaitis K. J.453,Varuolo-Clarke A. M.3678

Affiliation:

1. a Department of Geography, University of California, Los Angeles, Los Angeles, California

2. b Department of Atmospheric and Oceanic Sciences, University of California, Los Angeles, Los Angeles, California

3. c Lamont-Doherty Earth Observatory, Columbia University, Palisades, New York

4. d School of Geography, Development, and Environment, The University of Arizona, Tucson, Arizona

5. e Laboratory of Tree-Ring Research, The University of Arizona, Tucson, Arizona

6. f Department of Earth and Environmental Sciences, Columbia University, New York, New York

7. g Cooperative Programs for the Advancement of Earth System Science, University Corporation for Atmospheric Research, Boulder, Colorado

8. h Cooperative Institute for Research in Environmental Science, University of Colorado Boulder, Boulder, Colorado

Abstract

Abstract Cool-season (November–March) precipitation contributes critically to California’s water resources and flood risk. In the Sierra Nevada, approximately half of cool-season precipitation is derived from a small proportion of storms classified as atmospheric rivers (ARs). The frequency and intensity of ARs are highly variable from year to year and unreliable climate teleconnections limit forecasting. However, previous research provides intriguing evidence of cycles with biennial (2.2 years) and decadal (10–20 years) periodicities in Sierra Nevada cool-season precipitation, suggesting it is not purely stochastic. To identify the source of this cyclicity, we decompose daily precipitation records (1949–2022) into contributions from ARs versus non-ARs, as well as into variations in frequency and intensity. We find that the biennial and decadal spectral peaks in Sierra Nevada precipitation totals are entirely due to precipitation delivered by ARs, and primarily due to variations in the frequency of days with AR precipitation. While total non-AR precipitation correlates with sea surface temperature (SST) and atmospheric pressure patterns associated with the El Niño–Southern Oscillation, AR precipitation shows no consistent remote teleconnections at any periodicity. Supporting this finding, atmospheric simulations forced by observed SSTs do not reproduce the biennial or decadal precipitation variations identified in observations. These results, combined with the lack of long-term stable cycles in previously published tree-ring reconstructions, suggest that the observed biennial and decadal quasi-cyclicity in Sierra Nevada precipitation is unreliable as a forecasting tool. Significance Statement In California’s Sierra Nevada, where most of the state’s above-ground water resources originate, cool-season precipitation totals exhibited year-to-year and decadal cyclicity over the past century. Long-range forecasts are notoriously unskillful in this region, so nonrandom cycles would be intriguing to water managers challenged to simultaneously minimize flood and drought risk. Over 1949–2022, precipitation cycles were driven by variations in the number of atmospheric river (AR) storms per year even though ARs account for just half of total precipitation. These findings bring us a step closer to understanding the causes of precipitation cyclicity, but we find no evidence that the cycles were underpinned by larger-scale ocean–atmosphere circulations so we caution against relying on continued cycles into the future.

Funder

California Department of Water Resources

Publisher

American Meteorological Society

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