预测阿拉斯加多物种树皮甲虫(鞘翅目:Curculionidae: Scolytinae)的发生:首次使用开放获取的大数据挖掘和开源GIS为森林保护的进展提供可靠的推断和榜样

Khodabakhsh Zabihi, F. Huettmann, Brian D. Young
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引用次数: 4

摘要

原生树皮甲虫(鞘翅目:甲虫科:甲虫科)是北美西部针叶林的主要干扰物种之一。已知许多景观层面的变量会影响甲虫的爆发,例如适宜的气候条件、早期种群的空间布局、地形、成熟寄主树的丰度以及包括以前的爆发和火灾在内的干扰历史。我们收集了第一批开放获取的数据,这些数据可以用于开源GIS平台,以了解阿拉斯加树皮甲虫生物的生态。我们使用增强分类和回归树作为机器学习数据挖掘算法来建模预测14个环境变量(作为模型预测因子)与阿拉斯加68种树皮甲虫的838个发生记录之间的关系。模式预测因子包括与地形和气候有关的预测因子以及特征接近度和人为因子。除了为公众提供免费访问的高质量环境数据集外,我们还能够以1公里的空间分辨率对阿拉斯加州的多物种树皮甲虫事件进行建模、预测和绘制。根据目前的气候条件和景观生物物理属性,预计树皮甲虫将占据混交林的16%和常绿林的59%。我们准备的开放获取数据集,以及我们使用的机器学习建模方法,不仅可以为未来的研究提供基础,而且可以为其他多物种问题提供基础,例如森林落叶动物,以及世界范围内的小型和大型野生动物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting multi-species bark beetle (Coleoptera: Curculionidae: Scolytinae) occurrence in Alaska: First use of open access big data mining and open source GIS to provide robust inference and a role model for progress in forest conservation
Native bark beetles (Coleoptera: Curculionidae: Scolytinae) are a multi-species complex that rank among the key disturbances of coniferous forests of western North America. Many landscape-level variables are known to influence beetle outbreaks, such as suitable climatic conditions, spatial arrangement of incipient populations, topography, abundance of mature host trees, and disturbance history that include former outbreaks and fire. We assembled the first open access data, which can be used in open source GIS platforms, for understanding the ecology of the bark beetle organism in Alaska. We used boosted classification and regression tree as a machine learning data mining algorithm to model-predict the relationship between 14 environmental variables, as model predictors, and 838 occurrence records of 68 bark beetle species compared to pseudo-absence locations across the state of Alaska. The model predictors include topography- and climate-related predictors as well as feature proximities and anthropogenic factors. We were able to model, predict, and map the multi-species bark beetle occurrences across the state of Alaska on a 1-km spatial resolution in addition to providing a good quality environmental dataset freely accessible for the public. About 16% of the mixed forest and 59% of evergreen forest are expected to be occupied by the bark beetles based on current climatic conditions and biophysical attributes of the landscape. The open access dataset that we prepared, and the machine learning modeling approach that we used, can provide a foundation for future research not only on scolytines but for other multi-species questions of concern, such as forest defoliators, and small and big game wildlife species worldwide.
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