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首页> 外文期刊>Forest Ecology and Management >Mapping eastern hemlock: comparing classification techniques to evaluate susceptibility of a fragmented and valued resource to an exotic invader, the hemlock woolly adelgid.
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Mapping eastern hemlock: comparing classification techniques to evaluate susceptibility of a fragmented and valued resource to an exotic invader, the hemlock woolly adelgid.

机译:绘制东部铁杉:比较分类技术,以评估零碎的珍贵资源对异国入侵者铁杉羊毛adelgid的敏感性。

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摘要

Eastern hemlock (Tsuga canadensis Carriere), an ecologically important foundation species in forests of eastern North America, is currently threatened by the hemlock woolly adelgid (HWA, Adelges tsugae Annand, Hemiptera: Adelgidae), an aggressive invasive insect herbivore. HWA colonization of eastern hemlock results in rapid tree mortality. There is a pressing need to accurately determine eastern hemlock distribution in the face of expanding HWA populations to preserve this important forest species. However, efficient modeling of large geographic extents of eastern hemlock habitats to facilitate state-wide HWA management is lacking. We employ two modeling approaches, decision tree classification (based on presence-absence data) and maximum entropy (MaxEnt, based on presence-only data) method, to map eastern hemlock distribution in eastern Kentucky using a comprehensive suite of environmental parameters as predictor variables. Results demonstrate moderate model accuracies around 70%, supporting the practicality of mapping hemlock distribution over extensive regions. Comparison of the two modeling techniques suggests that decision tree classification has higher overall accuracies, while MaxEnt method was more efficient in model construction. In comparison to the decision tree method, MaxEnt suffered from possibly over-fitting as indicated by increased producer's accuracies yet lower user's accuracies. Our study provides useful references for selecting optimized approaches in accordance with study region characteristics and end user's preferences.
机译:东部铁杉(Tsuga canadensis Carriere)是北美东部森林中生态上重要的基础物种,目前受到铁杉羊毛adelgid(HWA, Adelges tsugae Annand,Hemiptera)的威胁:Adelgidae),一种侵略性的昆虫食草动物。 HWA在铁杉东部定居导致树木迅速死亡。迫切需要面对不断增长的HWA种群来准确确定东部铁杉的分布,以保护这一重要的森林物种。但是,缺乏对东部铁杉生境栖息地的较大地理范围进行建模以促进全州HWA管理的有效模型。我们采用决策树分类(基于存在数据)和最大熵(MaxEnt,基于仅存在数据)两种建模方法,使用一套完整的环境参数作为预测变量来绘制肯塔基州东部的铁杉分布图。结果表明,模型的准确度约为70%,这支持了在较宽的区域映射铁杉分布的实用性。两种建模技术的比较表明,决策树分类具有较高的总体准确性,而MaxEnt方法在模型构建中效率更高。与决策树方法相比,MaxEnt可能会因生产者精度提高而用户精度降低而过拟合。我们的研究为根据研究区域特征和最终用户的偏好选择优化方法提供了有用的参考。

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