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河岸鸟类对植被结构的响应:利用激光雷达测量冠层高度进行的多尺度分析。

Riparian bird response to vegetation structure: a multiscale analysis using LiDAR measurements of canopy height.

作者信息

Seavy Nathaniel E, Viers Joshua H, Wood Julian K

机构信息

PRBO Conservation Science, 3820 Cypress Drive, Number 11, Petaluma, California 94954, USA.

出版信息

Ecol Appl. 2009 Oct;19(7):1848-57. doi: 10.1890/08-1124.1.

Abstract

The ability to measure vegetation structure at spatial scales that are biologically meaningful for wildlife is often limited because information about the spatial scale of habitat selection is lacking and there are logistical constraints to measuring vegetation structure at ever larger spatial scales. To address this challenge, we used LiDAR-derived measurements of vegetation canopy height to quantify habitat associations of riparian birds at the Cosumnes River Preserve in central California, USA. Our objectives were (1) to evaluate the utility of LiDAR (light detection and ranging) measurements for describing habitat associations of riparian passerine birds, and (2) to capitalize on the ease with which LiDAR measurements can be summarized at multiple spatial scales to evaluate the predictive performance of vegetation measurements across spatial scales from 0.2 to 50 ha. At each location where we conducted point-count surveys of the avian community, we summarized the mean and coefficient of variation of canopy height measured at five spatial scales (0.2, 0.8, 3.1, 12.6, and 50.2 ha). For each of these spatial scales, we used stepwise model selection to identify the best logistic-regression model describing patterns of occurrence for 16 species of passerine birds that were sufficiently abundant for analysis. We then used area-under-the-curve (AUC) values to identify models that performed well (AUC > 0.75) on a temporally independent data set. Of the 16 species, 10 species had logistic-regression models with AUC values > 0.75. For six of these species, AUC values were highest for the models with vegetation measurements at the 0.2-3 ha scale. For the other four species, AUC values were highest for the model with vegetation variables measured at the 50-ha scale. These results illustrate the utility of using LiDAR-derived measurements of vegetation to understand habitat associations of riparian birds and underscore the importance of using multiscale approaches to modeling wildlife habitat use.

摘要

在对野生动物具有生物学意义的空间尺度上测量植被结构的能力往往受到限制,这是因为缺乏有关栖息地选择空间尺度的信息,并且在越来越大的空间尺度上测量植被结构存在后勤方面的限制。为应对这一挑战,我们利用激光雷达测量得出的植被冠层高度,来量化美国加利福尼亚州中部科斯芒斯河保护区河岸鸟类的栖息地关联。我们的目标是:(1)评估激光雷达(光探测和测距)测量在描述河岸食虫鸟类栖息地关联方面的效用;(2)利用激光雷达测量能够在多个空间尺度上轻松汇总这一特点,评估从0.2到50公顷的空间尺度上植被测量的预测性能。在我们对鸟类群落进行点计数调查的每个地点,我们汇总了在五个空间尺度(0.2、0.8、3.1、12.6和50.2公顷)上测量的冠层高度的平均值和变异系数。对于这些空间尺度中的每一个,我们使用逐步模型选择来确定描述16种食虫鸟类出现模式的最佳逻辑回归模型,这些鸟类数量足够多,可以进行分析。然后,我们使用曲线下面积(AUC)值来确定在时间上独立的数据集上表现良好(AUC>0.75)的模型。在这16个物种中,有10个物种的逻辑回归模型的AUC值>0.75。对于其中6个物种,在0.2 - 3公顷尺度上进行植被测量的模型的AUC值最高。对于其他4个物种,在50公顷尺度上测量植被变量的模型的AUC值最高。这些结果说明了利用激光雷达测量得出的植被数据来理解河岸鸟类栖息地关联的效用,并强调了使用多尺度方法对野生动物栖息地利用进行建模的重要性。

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