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Assessment of ecosystems: A system for rigorous and rapid mapping of floodplain forest condition for Australia's most important river

Methods that provide rapid assessments of changing ecosystems at multiple scales are needed to inform management to address undesirable change. We developed a remote‐sensing method in partnership with, and for use by, natural resource managers to predict annually stand condition of floodplain forest...

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Published in:Land degradation & development 2018-01, Vol.29 (1), p.127-137
Main Authors: Cunningham, Shaun C., Griffioen, Peter, White, Matt D., Nally, Ralph Mac
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Language:English
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Nally, Ralph Mac
description Methods that provide rapid assessments of changing ecosystems at multiple scales are needed to inform management to address undesirable change. We developed a remote‐sensing method in partnership with, and for use by, natural resource managers to predict annually stand condition of floodplain forests along Australia's longest river, the Murray River. A measure of stand condition, which was developed in collaboration with responsible natural resource managers, is a function of plant area index, crown extent, and the percentage live basal area. We surveyed a broad range of spatial and temporal variation in condition, built predictive stand‐condition models using satellite‐derived variables, and validated predictions with surveys of new sites. A multiyear model using data from 2 drought years and a year following extensive floods provided better predictions of stand condition than did models on the basis of the data for individual years. The model provided good predictions for data collected after the build for 50 sites and for resurveys of build sites in later years (R2 ≥ 0.86). There was limited, temporary improvement in stand condition after the extensive flooding (2010 to late 2010) that followed a 13‐year (1997 to early 2010) drought. Forest condition can be mapped accurately and annually at medium resolution (25 × 25 m) for large areas (100,000s ha) if quantitative ground surveys, satellite imagery, machine learning, and future validation are combined. Regular assessments of forest condition can be related to likely causes of change by using regular, rapid assessments and hence can provide important management information.
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subjects Aquatic ecosystems
Assessments
climate change
Drought
Ecosystem assessment
Environmental changes
Eucalyptus camaldulensis
Flood predictions
Flooding
Floodplains
forest condition
Forests
Hydrologic data
Information management
Learning algorithms
Machine learning
Mathematical models
Natural resources
Polls & surveys
RapidEye imaging
Remote sensing
river red gum
river regulation
Rivers
Satellite imagery
Satellites
Strategic management
Temporal variations
title Assessment of ecosystems: A system for rigorous and rapid mapping of floodplain forest condition for Australia's most important river
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