Optimal investment to enable evolutionary rescue

被引:0
|
作者
Jaime Ashander
Lisa C. Thompson
James N. Sanchirico
Marissa L. Baskett
机构
[1] University of California—Davis,Center for Population Biology
[2] University of California—Davis,Department of Environmental Sciences and Policy
[3] Resources for the Future,Land Water and Nature Program
[4] University of California—Davis,Department of Wildlife, Fish, and Conservation Biology
[5] Sacramento Area Sewer District,Regional San (Sacramento Regional County Sanitation District)
来源
Theoretical Ecology | 2019年 / 12卷
关键词
Bioeconomics; Optimal control; Evolutionary rescue; Population enhancement; Climate change; Management intervention; Endangered species;
D O I
暂无
中图分类号
学科分类号
摘要
“Evolutionary rescue” is the potential for evolution to enable population persistence in a changing environment. Even with eventual rescue, evolutionary time lags can cause the population size to temporarily fall below a threshold susceptible to extinction. To reduce extinction risk given human-driven global change, conservation management can enhance populations through actions such as captive breeding. To quantify the optimal timing of, and indicators for engaging in, investment in temporary enhancement to enable evolutionary rescue, we construct a model of coupled demographic-genetic dynamics given a moving optimum. We assume “decelerating change”, as might be relevant to climate change, where the rate of environmental change initially exceeds a rate where evolutionary rescue is possible, but eventually slows. We analyze the optimal control path of an intervention to avoid the population size falling below a threshold susceptible to extinction, minimizing costs. We find that the optimal path of intervention initially increases as the population declines, then declines and ceases when the population growth rate becomes positive, which lags the stabilization in environmental change. In other words, the optimal strategy involves increasing investment even in the face of a declining population, and positive population growth could serve as a signal to end the intervention. In addition, a greater carrying capacity relative to the initial population size decreases the optimal intervention. Therefore, a one-time action to increase carrying capacity, such as habitat restoration, can reduce the amount and duration of longer term investment in population enhancement, even if the population is initially lower than and declining away from the new carrying capacity.
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页码:165 / 177
页数:12
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