Robustness of Risk Maps and Survey Networks to Knowledge Gaps About a New Invasive Pest |
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Authors: | Denys Yemshanov Frank H. Koch Yakov Ben‐Haim William D. Smith |
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Affiliation: | 1. Natural Resources Canada, Canadian Forest Service, Great Lakes Forestry Centre, 1219 Queen Street East, Sault Ste. Marie, ON P6A 2E5, Canada.;2. Department of Forestry and Environmental Resources, North Carolina State University, USDA Forest Service, Forest Health Monitoring Program, 3041 Cornwallis Road, Research Triangle Park, NC 27709, USA.;3. Technion, Israel Institute of Technology, Faculty of Mechanical Engineering, Haifa 32000, Israel.;4. USDA Forest Service, Southern Research Station, 3041 Cornwallis Road, Research Triangle Park, NC 27709, USA. |
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Abstract: | In pest risk assessment it is frequently necessary to make management decisions regarding emerging threats under severe uncertainty. Although risk maps provide useful decision support for invasive alien species, they rarely address knowledge gaps associated with the underlying risk model or how they may change the risk estimates. Failure to recognize uncertainty leads to risk‐ignorant decisions and miscalculation of expected impacts as well as the costs required to minimize these impacts. Here we use the information gap concept to evaluate the robustness of risk maps to uncertainties in key assumptions about an invading organism. We generate risk maps with a spatial model of invasion that simulates potential entries of an invasive pest via international marine shipments, their spread through a landscape, and establishment on a susceptible host. In particular, we focus on the question of how much uncertainty in risk model assumptions can be tolerated before the risk map loses its value. We outline this approach with an example of a forest pest recently detected in North America, Sirex noctilio Fabricius. The results provide a spatial representation of the robustness of predictions of S. noctilio invasion risk to uncertainty and show major geographic hotspots where the consideration of uncertainty in model parameters may change management decisions about a new invasive pest. We then illustrate how the dependency between the extent of uncertainties and the degree of robustness of a risk map can be used to select a surveillance network design that is most robust to knowledge gaps about the pest. |
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Keywords: | Decision theory info‐gap robustness to uncertainty Sirex noctilio survey network |
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