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Sensitivity Analyses of Spatial Population Viability Analysis Models for Species at Risk and Habitat Conservation Planning

机译:具有风险和栖息地保护规划的物种空间种群生存力分析模型的敏感性分析

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Population viability analysis (PVA) is an effective framework for modeling species- and habitat-recovery efforts, but uncertainty in parameter estimates and model structure can lead to unreliable predictions. Integrating complex and often uncertain information into spatial PVA models requires that comprehensive sensitivity analyses be applied to explore the influence of spatial and nonspatial parameters on model predictions. We reviewed 87 analyses of spatial demographic PVA models of plants and animals to identify common approaches to sensitivity analysis in recent publications. In contrast to best practices recommended in the broader modeling community, sensitivity analyses of spatial PVAs were typically ad hoc, inconsistent, and difficult to compare. Most studies applied local approaches to sensitivity analyses, but few varied multiple parameters simultaneously. A lack of standards for sensitivity analysis and reporting in spatial PVAs has the potential to compromise the ability to learn collectively from PVA results, accurately interpret results in cases where model relationships include nonlinearities and interactions, prioritize monitoring and management actions, and ensure conservation-planning decisions are robust to uncertainties in spatial and nonspatial parameters. Our review underscores the need to develop tools for global sensitivity analysis and apply these to spatial PVA.
机译:种群生存力分析(PVA)是对物种和栖息地恢复工作进行建模的有效框架,但是参数估计和模型结构的不确定性可能导致不可靠的预测。将复杂且通常不确定的信息集成到空间PVA模型中,要求进行全面的敏感性分析,以探索空间和非空间参数对模型预测的影响。我们回顾了87种植物和动物的空间人口统计PVA模型分析,以确定最近发表的敏感性分析的常用方法。与更广泛的建模社区推荐的最佳实践相反,空间PVA的敏感性分析通常是临时性的,不一致的且难以比较。大多数研究将局部方法应用于敏感性分析,但很少同时改变多个参数。缺乏空间PVA中的敏感性分析和报告标准可能会损害以下能力:从PVA结果中集体学习,在模型关系包括非线性和相互作用的情况下准确解释结果,确定监测和管理措施的优先级以及确保保护规划决策对于空间和非空间参数的不确定性具有鲁棒性。我们的审查强调需要开发用于全局敏感性分析的工具,并将其应用于空间PVA。

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