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Snapshot Wisconsin: networking community scientists and remote sensing to improve ecological monitoring and management
Author(s) -
Townsend Philip A.,
Clare John D. J.,
Liu Nanfeng,
Stenglein Jennifer L.,
AnhaltDepies Christine,
Van Deelen Timothy R.,
Gilbert Neil A.,
Singh Aditya,
Martin Karl J.,
Zuckerberg Benjamin
Publication year - 2021
Publication title -
ecological applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.864
H-Index - 213
eISSN - 1939-5582
pISSN - 1051-0761
DOI - 10.1002/eap.2436
Subject(s) - snapshot (computer storage) , computer science , data science , environmental monitoring , environmental resource management , temporal scales , inference , data management , remote sensing , ecology , data mining , environmental science , geography , artificial intelligence , biology , operating system
Abstract Biological data collection is entering a new era. Community science, satellite remote sensing (SRS), and local forms of remote sensing (e.g., camera traps and acoustic recordings) have enabled biological data to be collected at unprecedented spatial and temporal scales and resolution. There is growing interest in developing observation networks to collect and synthesize data to improve broad‐scale ecological monitoring, but no examples of such networks have emerged to inform decision‐making by agencies. Here, we present the implementation of one such jurisdictional observation network (JON), Snapshot Wisconsin, which links synoptic environmental data derived from SRS to biodiversity observations collected continuously from a trail camera network to support management decision‐making. We use several examples to illustrate that Snapshot Wisconsin improves the spatial, temporal, and biological resolution and extent of information available to support management, filling gaps associated with traditional monitoring and enabling consideration of new management strategies. JONs like Snapshot Wisconsin further strengthen monitoring inference by contributing novel lines of evidence useful for corroboration or integration. SRS provides environmental context that facilitates inference, prediction, and forecasting, and ultimately helps managers formulate, test, and refine conceptual models for the monitored systems. Although these approaches pose challenges, Snapshot Wisconsin demonstrates that expansive observation networks can be tractably managed by agencies to support decision making, providing a powerful new tool for agencies to better achieve their missions and reshape the nature of environmental decision‐making.

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