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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Integrating land surface phenology with cluster density and size improves spatially explicit models of animal density
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Integrating land surface phenology with cluster density and size improves spatially explicit models of animal density

机译:整合土地表面候选簇密度和大小改善了动物密度的空间显式模型

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Abstract Models of animal density often use coarse landcover categories that homogenize vegetation attributes, thereby limiting specificity of results. Alternatively, models including land surface phenology (LSP) metrics derived from Moderate Resolution Imaging Spectroradiometer (MODIS) satellite imagery capture continuous time-series data describing plant growth and senescence. LSP metrics may better discriminate the vegetation conditions influencing species habitat and distribution. Additionally, applications modeling animal density often use clusters (i.e., groups of individuals) but omit differences in cluster sizes. Ignoring how cluster size varies with landscape characteristics risks misrepresenting the spatial distribution of an animals' density. Using lesser prairie-chickens (LEPC; Tympanuchus pallidicinctus) as an example, we integrated the spatial distributions of cluster density and cluster size with LSP metrics to better predict its density in Texas, USA. We modeled LEPC cluster density using hierarchical distance sampling and cluster size with zero-truncated generalized linear modeling. Variables included landcover categories, LSP metrics, human infrastructure and topography. Models incorporating LSP metrics received most support and identified conservation areas that landcover models missed. Cluster density associated with LSP metrics, road density, oil and gas well density, topography, and grassland to shrubland ratio. Cluster size associated with topography and LSP metrics. Omitting the spatial distribution of cluster size underestimated LEPC density. Our approach generates geospatial predictions for prioritizing LEPC protection, habitat restoration, and evaluating impacts from development or phenological change. This study demonstrates the utility of integrating LSP metrics, cluster density and cluster size for predicting species density across large and heterogeneous landscapes. Highlights ? Phenology and cluster size data benefit spatially-explicit animal density models. ? Models that include phenology outperform models based on thematic landcover. ? Including the spatial distribution of cluster size better estimates animal density. ? Technique applied to lesser prairie-chicken density but useful for other species. ? Results guide habitat protection and can predict impacts from development.
机译:<![cdata [ 抽象 动物密度的型号通常使用均匀化植被属性的粗糙地利性类别,从而限制了结果的特异性。或者,包括从中等分辨率成像分光辐射计(MODIS)卫星图像衍生的陆地表面酚类学(LSP)度量的模型捕获描述植物生长和衰老的连续时间序列数据。 LSP度量可以更好地区分影响物种栖息地和分布的植被条件。另外,应用建模动物密度通常使用簇(即,个人组),但省略了集群大小的差异。忽略集群大小如何随着景观特征而变化的风险歪曲了动物密度的空间分布。用较少的Prairie-Chickens(LEPC; Tympanuchus pallidicince )作为一个例子,我们将集群密度和簇大小的空间分布与LSP度量集成,以更好地预测其在美国德克萨斯州的密度。我们使用分层距离采样和集群大小建模了LEPC集群密度,具有零截断的广义线性建模。变量包括Landcover类别,LSP指标,人力基础架构和地形。包含LSP指标的模型获得了大多数支持,并确定了Landcover模型错过的保护区。与LSP度量,道路密度,石油和气井密度,地形和草原有关的簇密度与灌木丛的比率。与地形和LSP度量相关的群集大小。省略簇大小低估LEPC密度的空间分布。我们的方法产生了优先考虑LEPC保护,栖息地修复和评估从开发或纯种变革的影响的地理空间预测。本研究展示了整合LSP度量,集群密度和簇大小的效用,以预测大型和异构景观的物种密度。 突出显示 ?< / ce:标签> 吩咐和群集大小数据效益空间显式的动物密度模型。 包含基于主题覆盖物的苯版优先级模型的型号。 包括集群大小的空间分布更好地估计动物密度。 ?< / ce:label> 技术应用于较小的草原鸡密度,但适用于其他物种。 结果指南栖息地保护,可以预测开发的影响。

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