Assessment of IMERG v06 Satellite Precipitation Products in the Canadian Great Lakes Region

Author:

Zhao Bo123ORCID,Hudak David4,Rodriguez Peter4,Mekis Eva5,Brunet Dominique4,Eckert Ellen6,Melo Stella7

Affiliation:

1. a Xiong’an Atmospheric Boundary Layer Key Laboratory, China Meteorological Administration, Xiong’an New Area, Hebei, China

2. b Key Laboratory of Meteorology and Ecological Environment of Hebei Province, Shijiazhuang, Hebei, China

3. c Xiong’an New Area Meteorological Service, Xiong’an New Area, Hebei, China

4. d Meteorological Research Division, Environment and Climate Change Canada, Toronto, Ontario, Canada

5. e Climate Research Division, Environment and Climate Change Canada, Toronto, Ontario, Canada

6. f Air Quality Research Division, Environment and Climate Change Canada, Toronto, Ontario, Canada

7. g Meteorological Services of Canada, Environment and Climate Change Canada, Toronto, Ontario, Canada

Abstract

Abstract The Integrated Multi-satellitE Retrievals for Global Precipitation Measurement (GPM; IMERG) is a high-resolution gridded precipitation dataset widely used around the world. This study assessed the performance of the half-hourly IMERG v06 Early and Final Runs over a 5-yr period versus 19 high-quality surface stations in the Great Lakes region of North America. This assessment not only looked at precipitation occurrence and amount, but also studied the IMERG Quality Index (QI) and errors related to passive microwave (PMW) sources. Analysis of bias in accumulated precipitation amount and precipitation occurrence statistics suggests that IMERG presents various uncertainties with respect to time scale, meteorological season, PMW source, QI, and land surface type. Results indicate that 1) the cold season’s (November–April) larger relative bias can be mitigated via backward morphing; 2) IMERG 6-h precipitation amount scored best in the warmest season (JJA) with a consistent overestimation of the frequency bias index − 1 (FBI-1); 3) the performance of five PMW sources is affected by the season to different degrees; 4) in terms of some metrics, skills do not always enhance with increasing QI; 5) local lake effects lead to higher correlation and equitable threat score (ETS) for the stations closest to the lakes. Results of this study will be beneficial to both developers and users of IMERG precipitation products. Significance Statement The purpose of the study was to assess the performance of the gridded precipitation product from the Integrated Multi-satellitE Retrievals for Global Precipitation Measurement (IMERG) version 6 over the Great Lakes region of North America. The assessment performs a statistical comparison of precipitation amounts from IMERG versus surface stations as a function of time scale, season, precipitation event threshold, and input source among satellites. Interpretation of the results identifies shortcomings in the IMERG algorithms, particularly in extreme precipitation events and over ice-covered surfaces. The results also describe spatial variability in the IMERG data quality due to the complex geography of the study area and offer a clear threshold in the Quality Index (QI) flag for optimal application of the precipitation products.

Funder

China Scholarship Council

The Service Center for Experts and Scholars of Hebei Province

S&T Program of Hebei

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference59 articles.

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2. Constraints on future changes in climate and the hydrologic cycle;Allen, M.,2002

3. Evaluation of Integrated Multisatellite Retrievals for GPM (IMERG) over southern Canada against ground precipitation observations: A preliminary assessment;Asong, Z. E.,2017

4. American Meteorological Society, 2021: Lake effect. Glossary of Meteorology, https://glossary.ametsoc.org/wiki/Lake_effect.

5. Historical spatiotemporal trends in snowfall extremes over the Canadian domain of the Great Lakes Basin;Baijnath-Rodino, J. A.,2018

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