2021
DOI: 10.3389/fclim.2021.761444
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Making a Water Data System Responsive to Information Needs of Decision Makers

Abstract: Evidence-based environmental management requires data that are sufficient, accessible, useful and used. A mismatch between data, data systems, and data needs for decision making can result in inefficient and inequitable capital investments, resource allocations, environmental protection, hazard mitigation, and quality of life. In this paper, we examine the relationship between data and decision making in environmental management, with a focus on water management. We focus on the concept of decision-driven data… Show more

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Cited by 12 publications
(13 citation statements)
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“…Focus group questions were derived from the preliminary interviews and guided by the statement following Cantor et al. 2018, 2021; “Who needs what data in what format to make what decisions”? To develop statements outlining user requirements, open‐ended questions were presented to the participants during the focus group in the following order: (1) decisions, (2) data format, (3) data type, and (4) data needs.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Focus group questions were derived from the preliminary interviews and guided by the statement following Cantor et al. 2018, 2021; “Who needs what data in what format to make what decisions”? To develop statements outlining user requirements, open‐ended questions were presented to the participants during the focus group in the following order: (1) decisions, (2) data format, (3) data type, and (4) data needs.…”
Section: Methodsmentioning
confidence: 99%
“…Oral consent was obtained to record focus groups and use a program to transcribe them for analysis (Creswell 2009). Focus group questions were derived from the preliminary interviews and guided by the statement following Cantor et al 2018Cantor et al , 2021"Who needs Two researchers were present during stakeholder engagement focus groups at all times. One researcher facilitated the focus group conversation while the other took notes and handled technical questions and managed feedback submitted in the group chat.…”
Section: Virtual Stakeholder Engagement Focus Groupsmentioning
confidence: 99%
“…Workshop participants received background information about recent efforts on the internet of water (Patterson et al 2017;Cantor et al 2018) and Texas water data security (Rosen et al 2017) in advance of the workshop. In addition to receiving advanced information, a portion of workshop participants met on the day immediately preceding the Connecting Texas Water Data Workshop in a roundtable discussion on the topic of "advancing the internet of water" in Texas.…”
Section: Methodsmentioning
confidence: 99%
“…Thus many observations are underutilized for ML despite large‐scale consolidation efforts such as the Water Quality Portal and GLORICH databases (Hartmann et al, 2014; Read et al, 2017), because it is labor‐intensive to harmonize and process data (Shaughnessy et al, 2019; Sprague et al, 2017). Recent efforts to make water data more broadly available and usable such as the U.S. Open Water Data Initiative and the California open water data system are essential for effective management and decision making (Blodgett et al, 2015; Cantor et al, 2021; Larsen et al, 2016). Because data preparation is one of the most time‐consuming aspects of model development, the development of benchmark datasets following FAIR (Findable, Accessible, Reusable, Interoperable) principles (Wilkinson et al, 2016), and the use of automated tools that make it easier to discover, synthesize, and assimilate data (e.g., Section 3.8) can accelerate adoption of ML approaches.…”
Section: Considerations For the Use Of ML In Water Quality Modelsmentioning
confidence: 99%