Khum B. Thapa-Magar, Eric R. Sokol, Michael N. Gooseff, Mark R. Salvatore, John E. Barrett, Joseph S. Levy, Paul Knightly, Sarah N. Power
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引用次数: 0
摘要
在物种分布模型中,就地观测数据常被用作物种发生响应变量。然而,利用高分辨率多光谱遥感图像的远程观测数据作为物种分布模型存在/不存在数据的来源仍然不够发达。本文利用4 m分辨率WorldView-2和WorldView-3图像的存在/缺失点,描述了南极洲Taylor Valley Fryxell湖盆地地区黑色微生物席(Nostoc spp.)的整体物种分布模型。在我们的模型中,环境和地形特征(如土壤湿度、积雪、海拔、坡度和坡向)被用作预测变量。我们证明,我们可以使用从遥感数据中获得的因变量和自变量建立和运行集合物种分布模型,以生成空间明确的栖息地适宜性图。雪和土壤湿度是最重要的变量,约占整个Fryxell盆地黑垫分布变化的80%。这项研究强调了高分辨率遥感对物种分布建模的潜在贡献,并为将远程衍生的物种发生纳入物种分布模型的新研究提供了信息,特别是在获取原位数据往往有限的偏远地区。
Remote sensing for species distribution models: An illustration from a sentinel taxon of the world's driest ecosystem
In situ observed data are commonly used as species occurrence response variables in species distribution models. However, the use of remotely observed data from high-resolution multispectral remote-sensing images as a source of presence/absence data for species distribution models remains under-developed. Here, we describe an ensemble species distribution model of black microbial mats (Nostoc spp.) using presence/absence points derived from the unmixing of 4-m resolution WorldView-2 and WorldView-3 images in the Lake Fryxell basin region of Taylor Valley, Antarctica. Environmental and topographical characteristics such as soil moisture, snow, elevation, slope, and aspect were used as predictor variables in our models. We demonstrate that we can build and run ensemble species distribution models using both dependent and independent variables derived from remote-sensing data to generate spatially explicit habitat suitability maps. Snow and soil moisture were found to be the most important variables accounting for about 80% of the variation in the distribution of black mats throughout the Fryxell basin. This study highlights the potential contribution of high-resolution remote-sensing to species distribution modeling and informs new studies incorporating remotely derived species occurrences in species distribution models, especially in remote areas where access to in situ data is often limited.
期刊介绍:
Ecology publishes articles that report on the basic elements of ecological research. Emphasis is placed on concise, clear articles documenting important ecological phenomena. The journal publishes a broad array of research that includes a rapidly expanding envelope of subject matter, techniques, approaches, and concepts: paleoecology through present-day phenomena; evolutionary, population, physiological, community, and ecosystem ecology, as well as biogeochemistry; inclusive of descriptive, comparative, experimental, mathematical, statistical, and interdisciplinary approaches.