TY - JOUR
T1 - Curating and Visualizing Dense Networks of Monsoon Precipitation Data
T2 - Integrating Computer Science Into Forward Looking Climate Services Development
AU - McMahan, Ben
AU - Granillo, Rey L.
AU - Delgado, Benni
AU - Herrera, Mauricio
AU - Crimmins, Michael A.
N1 - Funding Information: This work was supported in part by the University of Arizona’s office of Research Discover and Innovation (now the office of Research, Innovation, and Impact - RII), and Climate Assessment for the Southwest (CLIMAS), which is part of the National Oceanic and Atmospheric Administration (NOAA) Regional Integrated Sciences and Assessments (RISA) program (Award Number: NA17OAR4310288). Publisher Copyright: Copyright © 2021 McMahan, Granillo, Delgado, Herrera and Crimmins.
PY - 2021/4/20
Y1 - 2021/4/20
N2 - Monsoon precipitation demonstrates a wide range of spatial and temporal variability in the U.S. Southwest. A variety of precipitation monitoring networks, including official networks, municipal flood control districts, and citizen science observers, can help improve our characterization and understanding of the monsoon. The data management challenges of integrating these diverse data sources can be formidable. Computer science and data management techniques provide a pathway for the design of forward looking climate services, especially those developed in collaboration with experts in this field. In this paper we present such a collaboration, integrating natural, social and computer science expertise. We document how we identified data networks and their sources and the computer science and data management workflow we employed to integrate and curate these data. We also present the web based data visualization tool and API that we developed as part of this process (monsoon.environment.arizona.edu). We use case study examples from the Tucson, AZ region to demonstrate the visualizer. We also discuss how this type of collaboration could be extended to existing or potential stakeholder collaborations, as we facilitate access to a curated set of data that gives an increasingly granular perspective on monsoon precipitation variability. We also discuss what this collaborative approach integrating natural, social and computer science perspectives can add to the evolution of climate services.
AB - Monsoon precipitation demonstrates a wide range of spatial and temporal variability in the U.S. Southwest. A variety of precipitation monitoring networks, including official networks, municipal flood control districts, and citizen science observers, can help improve our characterization and understanding of the monsoon. The data management challenges of integrating these diverse data sources can be formidable. Computer science and data management techniques provide a pathway for the design of forward looking climate services, especially those developed in collaboration with experts in this field. In this paper we present such a collaboration, integrating natural, social and computer science expertise. We document how we identified data networks and their sources and the computer science and data management workflow we employed to integrate and curate these data. We also present the web based data visualization tool and API that we developed as part of this process (monsoon.environment.arizona.edu). We use case study examples from the Tucson, AZ region to demonstrate the visualizer. We also discuss how this type of collaboration could be extended to existing or potential stakeholder collaborations, as we facilitate access to a curated set of data that gives an increasingly granular perspective on monsoon precipitation variability. We also discuss what this collaborative approach integrating natural, social and computer science perspectives can add to the evolution of climate services.
KW - climate services
KW - computer science
KW - data science
KW - data visualization
KW - monsoon
KW - precipitation
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U2 - 10.3389/fclim.2021.602573
DO - 10.3389/fclim.2021.602573
M3 - Article
SN - 2624-9553
VL - 3
JO - Frontiers in Climate
JF - Frontiers in Climate
M1 - 602573
ER -