基于随机森林的爱沙尼亚阿尔瓦草原植被土地适宜性分析

Q3 Social Sciences GI_Forum Pub Date : 2020-01-01 DOI:10.1553/giscience2020_01_s63
I. Ismayilova, E. Uuemaa, A. Helm, Christian Röger, S. Timpf
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引用次数: 1

摘要

钙质阿尔瓦草原是爱沙尼亚物种最丰富的栖息地之一。在过去的一个世纪里,土地利用的变化和传统农业实践的停止导致了这些宝贵的草原面积的减少。因此,它们的保护和恢复变得越来越重要。近年来,人们已经为恢复这些栖息地做出了努力。本研究首次利用机器学习技术随机森林(Random Forest, RF)对潜在恢复地点进行了土地适宜性分析,旨在评估随机森林在阿尔瓦草地适宜性分析中的应用。RF预测爱沙尼亚有610.91平方公里的面积适合恢复alvar草地或创造alvar样栖息地。这些地区包括所有现有的阿尔瓦区,以及另外140.91平方公里适合建立类似钙质阿尔瓦草原的新栖息地。本文讨论了适宜性分析对恢复规划的帮助,认为适宜性分析是一种合理有效的工具,具有提供相关信息的潜力。预报的质量可以通过纳入与阿尔瓦草地有关的额外数据(如土壤深度)来提高,但不幸的是无法获得这类数据。
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Land Suitability Analysis of Alvar Grassland Vegetation in Estonia Using Random Forest
Calcareous alvar grasslands are one of the most species-rich habitats in Estonia. Land-use change and cessation of traditional agricultural practices have led to a decrease of the area of these valuable grasslands during the past century. Therefore, their conservation and restoration are becoming increasingly important. Efforts to restore these habitats have already been made in recent years. Land suitability analysis for potential restoration sites, using the machine learning technique Random Forest (RF), was performed for the first time in this study, which aimed to assess the use of RF for a suitability analysis of alvar grassland. RF predicted 610.91 km2 of areas suitable for restoring alvar grasslands or for creating alvarlike habitats in Estonia. These areas include all existing alvar areas as well an additional 140.91 km2 suitable for establishing new habitat similar to calcareous alvar grasslands. We discuss suitability analysis to help with restoration planning and find it to be a reasonable and efficient tool that has potential to provide relevant information. The quality of the prediction could be improved by including additional data relevant for alvar grasslands, such as soil depth, but such data was unfortunately unavailable.
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来源期刊
GI_Forum
GI_Forum Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
1.10
自引率
0.00%
发文量
9
审稿时长
23 weeks
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