Automated habitat monitoring systems linked to adaptive management: a new paradigm for species conservation in an era of rapid environmental change

LANDSCAPE ECOLOGY(2022)

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摘要
Context Recent increases in ecological disturbances driven by climate change and our expanding human footprint make it challenging for natural resource managers to keep apprised of current conditions and adjust management plans accordingly. To effectively conserve species in highly dynamic landscapes requires more timely habitat monitoring and a more responsive adaptive management cycle. Objectives We introduce a framework to automatically monitor and assess species habitats over a range of spatial and temporal scales. We then apply this framework by developing an automated habitat monitoring system for the Mexican spotted owl (MSO) in Arizona and New Mexico, USA, that will be linked to federal agency adaptive management plans. Methods We automated the process of monitoring and assessing trends in MSO habitat on an annual schedule using the Google Earth Engine cloud-based spatial analysis platform and dynamic data repository. We ran this system retrospectively on historical data to monitor MSO habitat from 1986 to 2020. Results The automated habitat monitoring system provided a 35-year MSO habitat time series with high accuracy. Widespread habitat gains and losses occurred every year, underscoring the need for continuous monitoring and the benefits of an automated workflow. Conclusions Automated habitat monitoring linked to adaptive management holds great promise in helping managers track the impacts of recent disturbances and adjust plans to meet goals even in increasingly dynamic landscapes. In a companion paper, Jones et al. ( 2023 ) demonstrate the utility of this approach by analyzing our MSO habitat time series to assess trends, drivers of change, and management implications.
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关键词
Adaptive management,Big data,Climate change,Google Earth Engine,Habitat,Mexican spotted owl,Monitoring,Random forest,Species distribution model
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