Abstract

The increased availability of publicly available data is, in many ways, changing our approach to conducting research. Not only are cloud-based information resources providing supplementary data to bolster traditional scientific activities (e.g., field studies, laboratory experiments), they also serve as the foundation for secondary data research projects such as indicator development. Indicators and indices are a convenient way to synthesize disparate information to address complex scientific questions that are difficult to measure directly (e.g., resilience, sustainability, well-being). In the current literature, there is no shortage of indicator or index examples derived from secondary data with a growing number that are scientifically focused. However, little information is provided describing the management approaches and best practices used to govern the data underpinnings supporting these efforts. From acquisition to storage and maintenance, secondary data research products rely on the availability of relevant, high-quality data, repeatable data handling methods and a multi-faceted data flow process to promote and sustain research transparency and integrity. The U.S. Environmental Protection Agency recently published a report describing the development of a climate resilience screening index which used over one million data points to calculate the final index. The pool of data was derived exclusively from secondary sources such as the U.S. Census Bureau, Bureau of Labor Statistics, Postal Service, Housing and Urban Development, Forestry Services and others. Available data were presented in various forms including portable document format (PDF), delimited ASCII and proprietary format (e.g., Microsoft Excel, ESRI ArcGIS). The strategy employed for managing these data in an indicator research and development effort represented a blend of business practices, information science, and the scientific method. This paper describes the approach, highlighting key points unique for managing the data assets of a smaller scale research project in an era of "big data."

Highlights

  • The current literature shows that there is growing support from the scientific community for using secondary or “found” data in both theoretical and applied research (Niemeijer and de Groot, 2008; Hampton et al, 2013; Davis-Kean et al, 2015)

  • This description seems aptly relevant as it emphasizes the enormity of the public access landscape as well as the tools needed to work with big data effectively

  • This paper describes the Climate Resilience Screening Index (CRSI) Scientific data management (SDM) approach which offers an inside peek at SDM from the “smallscience” perspective

Read more

Summary

Frontiers in Environmental Science

Are cloud-based information resources providing supplementary data to bolster traditional scientific activities (e.g., field studies, laboratory experiments), they serve as the foundation for secondary data research projects such as indicator development. There is no shortage of indicator or index examples derived from secondary data with a growing number that are scientifically focused. Little information is provided describing the management approaches and best practices used to govern the data underpinnings supporting these efforts. The strategy employed for managing these data in an indicator research and development effort represented a blend of business practices, information science, and the scientific method. This paper describes the approach, highlighting key points unique for managing the data assets of a small-scale research project in an era of “big data.”

INTRODUCTION
Data reuse Monitor and review
The CRSI SDM Concept
Organization and Storage of CRSI Data Resources
CRSI Data Security and Data Operations Continuity
Data owner
EXAMPLE OUTCOMES FROM HIGHLIGHTED SDM PROCESSES
Data Quality Assessments
DISCUSSION
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.