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Evaluation of habitat suitability index models by global sensitivity and uncertainty analyses: a case study for submerged aquatic vegetation

机译:通过全球敏感性和不确定性分析评估栖息地适宜性指数模型:以水下水生植被为例

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摘要

Habitat suitability index (HSI) models are commonly used to predict habitat quality and species distributions and are used to develop biological surveys, assess reserve and management priorities, and anticipate possible change under different management or climate change scenarios. Important management decisions may be based on model results, often without a clear understanding of the level of uncertainty associated with model outputs. We present an integrated methodology to assess the propagation of uncertainty from both inputs and structure of the HSI models on model outputs (uncertainty analysis: UA) and relative importance of uncertain model inputs and their interactions on the model output uncertainty (global sensitivity analysis: GSA). We illustrate the GSA/UA framework using simulated hydrology input data from a hydrodynamic model representing sea level changes and HSI models for two species of submerged aquatic vegetation (SAV) in southwest Everglades National Park: Vallisneria americana (tape grass) and Halodule wrightii (shoal grass). We found considerable spatial variation in uncertainty for both species, but distributions of HSI scores still allowed discrimination of sites with good versus poor conditions. Ranking of input parameter sensitivities also varied spatially for both species, with high habitat quality sites showing higher sensitivity to different parameters than low-quality sites. HSI models may be especially useful when species distribution data are unavailable, providing means of exploiting widely available environmental datasets to model past, current, and future habitat conditions. The GSA/UA approach provides a general method for better understanding HSI model dynamics, the spatial and temporal variation in uncertainties, and the parameters that contribute most to model uncertainty. Including an uncertainty and sensitivity analysis in modeling efforts as part of the decision-making framework will result in better-informed, more robust decisions.
机译:栖息地适应性指数(HSI)模型通常用于预测栖息地质量和物种分布,并用于开展生物调查,评估保护区和管理重点,并预测在不同管理或气候变化情景下可能发生的变化。重要的管理决策可能是基于模型结果的,往往没有清楚地了解与模型输出相关的不确定性水平。我们提出了一种综合的方法来评估来自HSI模型的输入和结构的不确定性在模型输出上的传播(不确定性分析:UA)以及不确定的模型输入及其在模型输出不确定性上的相互作用的相对重要性(全局敏感性分析:GSA) )。我们使用模拟的水文学输入数据(来自代表海平面变化的水动力模型和HSI模型)来说明GSA / UA框架,该模型用于西南大沼泽国家公园的两种水下水生植物(SAV):美国长谷草(Tape grass)和Halodule wrightii(浅滩)草)。我们发现两个物种的不确定性都有相当大的空间差异,但是HSI分数的分布仍然可以区分条件好坏的地点。两种物种的输入参数敏感性的排名在空间上也各不相同,高栖息地质量的地点对不同参数的敏感性高于低质量地点。当没有物种分布数据时,HSI模型可能特别有用,它提供了利用广泛可用的环境数据集来模拟过去,当前和未来栖息地条件的方法。 GSA / UA方法提供了一种通用方法,可以更好地了解HSI模型动力学,不确定性的时空变化以及对模型不确定性影响最大的参数。将不确定性和敏感性分析包括在建模工作中作为决策框架的一部分,将导致获得更明智,更可靠的决策。

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