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首页> 外文期刊>Ecological Applications >Habitat classification modeling with incomplete data: Pushing the habitat envelope
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Habitat classification modeling with incomplete data: Pushing the habitat envelope

机译:数据不完整的栖息地分类建模:推展栖息地范围

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摘要

Habitat classification models (HCMs) are invaluable tools for species conservation, land-use planning, reserve design, and metapopulation assessments, particularly at broad spatial scales. However, species occurrence data are often lacking and typically limited to presence points at broad scales. This lack of absence data precludes the use of many statistical techniques for HCMs. One option is to generate pseudo-absence points so that the many available statistical modeling tools can be used. Traditional techniques generate pseudo-absence points at random across broadly defined species ranges, often failing to include biological knowledge concerning the species-habitat relationship. We incorporated biological knowledge of the species-habitat relationship into pseudo-absence points by creating habitat envelopes that constrain the region from which points were randomly selected. We define a habitat envelope as an ecological representation of a species, or species feature's (e.g., nest) observed distribution (i.e., realized niche) based on a single attribute, or the spatial intersection of multiple attributes. We created HCMs for Northern Goshawk (Accipiter geatilis atricapillus) nest habitat during the breeding season across Utah forests with extant nest presence points and ecologically based pseudo-absence points using logistic regression. Predictor variables were derived from 30-m USDA Landfire and 250-m Forest Inventory and Analysis (FIA) map products. These habitat-envelope-based models were then compared to null envelope models which use traditional practices for generating pseudo-absences. Models were assessed for fit and predictive capability using metrics such as kappa, threshold-independent receiver operating characteristic (ROC) plots, adjusted deviance (Dad), and cross-validation, and were also assessed for ecological relevance. For all cases, habitat envelope-based models outperformed null envelope models and were more ecologically relevant, suggesting that incorporating biological knowledge into pseudo-absence point generation is a powerful tool for species habitat assessments. Furthermore, given some a priori knowledge of the species-habitat relationship, ecologically based pseudo-absence points can be applied to any species, ecosystem, data resolution, and spatial extent.
机译:栖息地分类模型(HCM)是进行物种保护,土地利用规划,保护区设计和后代种群评估的宝贵工具,尤其是在广泛的空间尺度上。然而,物种发生数据通常缺乏,并且通常限于大范围的存在点。由于缺少缺席数据,因此无法对HCM使用许多统计技术。一种选择是生成伪缺点,以便可以使用许多可用的统计建模工具。传统技术在广泛定义的物种范围内随机产生伪缺失点,通常无法包括有关物种与栖息地关系的生物学知识。我们通过创建栖息地信封来限制物种随机选择的区域,从而将有关物种与栖息地关系的生物学知识整合到伪缺失点中。我们将栖息地包围定义为物种的生态学表示,或基于单个属性或多个属性的空间交集的物种特征(例如巢)观察到的分布(即已实现的生态位)。我们在繁殖季节的犹他州森林中为北部苍鹰(Accipiter geatilis atricapillus)巢生境创建了HCM,并使用logistic回归分析得出了现存的巢存在点和基于生态的伪缺失点。预测变量来自30百万美元的美国农业部地面火力和250百万美元的森林清单与分析(FIA)地图产品。然后将这些基于栖息地信封的模型与使用传统方法生成伪缺席的空信封模型进行比较。使用诸如kappa,与阈值无关的接收器操作特征(ROC)图,调整后的偏差(Dad)和交叉验证等度量标准评估模型的拟合和预测能力,并评估其生态相关性。在所有情况下,基于栖息地包膜的模型均优于零空间包膜模型,并且在生态上更具相关性,这表明将生物学知识纳入伪缺失点生成是物种栖息地评估的强大工具。此外,给定一些物种-栖息地关系的先验知识,可以将基于生态的伪缺失点应用于任何物种,生态系统,数据分辨率和空间范围。

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