Bayesian networks and the quest for reserve adequacy

被引:11
|
作者
Schapaugh, Adam W. [1 ]
Tyre, Andrew J. [1 ]
机构
[1] Univ Nebraska, Sch Nat Resources, Lincoln, NE 68510 USA
关键词
Bayesian network; Interior least tern; Persistence; Piping plover; Reserve adequacy; Reserve selection; Stochastic dynamic programming; Whooping crane; POPULATION VIABILITY; BELIEF NETWORKS; CONSERVATION; MODELS; SELECTION;
D O I
10.1016/j.biocon.2012.03.014
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
The fundamental goal of conservation planning is biodiversity persistence, yet most reserve selection methods prioritize sites using occurrence data. We describe a method that integrates correlates of persistence for multiple species into a single currency - site quality. Site quality is, in turn, an explicit measure of performance used in optimization. We develop a Bayesian network to assess site quality, which assigns an expected value to a property based on criteria arrayed into a causal diagram. We then use stochastic dynamic programming to determine whether an organization should acquire or reject a site placed on the public market. Our framework for assessing sites and making land acquisition decisions represents a compromise between the use of generic spatial design criteria and more intensive computational tools, like spatially-explicit population models. There is certainly a loss of precision by using site quality as a surrogate for more direct measures of persistence. However, we believe this simplification is defensible when sufficient data, expertise, or other resources are lacking. (C) 2012 Elsevier Ltd. All rights reserved.
引用
收藏
页码:178 / 186
页数:9
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