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Satellite imagery as a single source of predictor variables for habitat suitability modelling: How Landsat can inform the conservation of a critically endangered lemur

机译:卫星图像作为一个单一的预测源变量生境适宜性模型:如何做陆地卫星可以通知的保护极度濒危的狐猴

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摘要

1. Statistical modelling of habitat suitability is an important tool for planning conservation interventions, particularly for areas where species distribution data are expensive or hard to collect. Sometimes however the predictor variables typically used in habitat suitability modelling are themselves difficult to obtain or not meaningful at the geographical extent of the study, as is the case for the Alaotran gentle lemur Hapalemur alaotrensis, a critically endangered lemur confined to the marshes of Lake Alaotra in Madagascar.2. We developed a habitat suitability model where all predictor variables, including vegetation indices and image texture measures at different scales (as surrogates for habitat structure), were derived from Landsat7 satellite imagery. Using relatively few presence records, the maximum entropy (Maxent) approach and AUC were used to assess the performance of candidate predictor variables, for studying the effect of scale, model selection and mapping suitable habitat.3. This study demonstrated the utility of satellite imagery as a single source of predictor variables for a Maxent habitat suitability model at the landscape level, within a restricted geographical extent and with a fine grain, in a case where predictor variables typically used at the macro-scale level (e.g. climatic and topographic) were not applicable.4. In the case of H. alaotrensis, the methodology generated a habitat suitability map to inform conservation management in Lake Alaotra and a replicable protocol to allow rapid updates to habitat suitability maps in the future. The exploration of candidate predictor variables allowed the identification of scales that appear ecologically relevant for the species.5. Synthesis and applications. This study presents a cost-effective combination of maximum entropy habitat suitability modelling and satellite imagery, where all predictor variables are derived solely from Landsat7 images. With a habitat modelling method like Maxent that shows good performance with few presence samples and Landsat images now freely available, the methodology can play an important role in rapid assessments of the status of species at the landscape level in data-poor regions, when typical macro-scale environmental predictors are of little use or difficult to obtain.
机译:1. 保护规划的一个重要工具干预措施,特别是对地方物种分布数据是昂贵或困难收集。变量通常用在栖息地适宜性造型本身难以获得或毫无意义的地理范围研究中,为Alaotran一样温柔狐猴Hapalemur alaotrensis,批判濒临灭绝的狐猴局限于湖泊的沼泽在Madagascar.2例。适应性模型,预测变量,包括植被指数和图像纹理措施在不同尺度(如的代理人栖息地结构),是来自Landsat7卫星图像。记录,最大熵(Maxent)方法和AUC是用来评估的性能候选预测变量,研究规模效应、模型选择和映射合适的habitat.3。实用的卫星图像为一个单一的来源的预测变量Maxent栖息地适应性模型在景观层面,内部一个受限制的地理范围和罚款粮食,情况预测变量通常使用在大规模的级别(例如气候和地形)没有applicable.4。对于h . alaotrensis方法论生成一个栖息地适宜性映射到通知保护管理例和一个湖复制协议允许快速更新栖息地适宜性在未来地图。候选预测变量的探索允许识别的尺度species.5生态有关。合成和应用程序。具有成本效益的最大熵的组合栖息地适宜性模型和卫星图像,所有的预测变量仅仅来自Landsat7图像。像Maxent显示生境建模方法样品和良好的性能几乎没有存在现在免费,陆地卫星图像在快速方法可以发挥重要作用评估的物种的地位景观水平分析法逐渐失宠地区,当典型的大规模的环境预测的使用或很难获得。

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