Literature DB >> 27253190

A general risk-based adaptive management scheme incorporating the Bayesian Network Relative Risk Model with the South River, Virginia, as case study.

Wayne G Landis1, April J Markiewicz1, Kim K Ayre1, Annie F Johns1, Meagan J Harris1, Jonah M Stinson1, Heather M Summers1.   

Abstract

Adaptive management has been presented as a method for the remediation, restoration, and protection of ecological systems. Recent reviews have found that the implementation of adaptive management has been unsuccessful in many instances. We present a modification of the model first formulated by Wyant and colleagues that puts ecological risk assessment into a central role in the adaptive management process. This construction has 3 overarching segments. Public engagement and governance determine the goals of society by identifying endpoints and specifying constraints such as costs. The research, engineering, risk assessment, and management section contains the decision loop estimating risk, evaluating options, specifying the monitoring program, and incorporating the data to re-evaluate risk. The 3rd component is the recognition that risk and public engagement can be altered by various externalities such as climate change, economics, technological developments, and population growth. We use the South River, Virginia, USA, study area and our previous research to illustrate each of these components. In our example, we use the Bayesian Network Relative Risk Model to estimate risks, evaluate remediation options, and provide lists of monitoring priorities. The research, engineering, risk assessment, and management loop also provides a structure in which data and the records of what worked and what did not, the learning process, can be stored. The learning process is a central part of adaptive management. We conclude that risk assessment can and should become an integral part of the adaptive management process. Integr Environ Assess Manag 2017;13:115-126.
© 2016 SETAC. © 2016 SETAC.

Keywords:  Adaptive management; Bayesian Network Relative Risk Model; Ecological risk assessment; South River, VA

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Year:  2016        PMID: 27253190     DOI: 10.1002/ieam.1800

Source DB:  PubMed          Journal:  Integr Environ Assess Manag        ISSN: 1551-3777            Impact factor:   2.992


  1 in total

1.  Recommendations for environmental risk assessment of gene drive applications for malaria vector control.

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Journal:  Malar J       Date:  2022-05-25       Impact factor: 3.469

  1 in total

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