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Predictors of mortality for juvenile trees in a residential urban-to-rural cohort in Worcester, MA

机译:伍斯特驻伍斯特住宅城乡群岛少年树木死亡率预测因素

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This paper explores predictors of juvenile tree mortality in a newly planted cohort in Worcester, MA, following an episode of large-scale tree removal necessitated by an Asian Longhorned Beetle (Anoplophora glabripennis, ALB) eradication program. Trees are increasingly seen as important providers of ecosystem services for urban areas, including: climate moderation and thus reduction in heating/cooling costs; air and water filtration; carbon uptake and storage; storm water runoff control; and cultural and aesthetic values. Many cities have initiated tree planting programs to receive these benefits, typically seeking to complement existing urban forest. Conversely, Worcester's reforestation program was necessary to offset the loss of approximately 30,000 trees removed to eradicate the invasive pest ALB. Since then, more than 30,000 juvenile trees have been planted to offset the loss, creating the opportunity to study a highly dynamic urban forest. Tree planting effectiveness is contingent on high survivorship rates, particularly during the establishment phase during the first five years after planting. Using a large data set including biophysical and sociodemographic variables, this research uses Conditional Inference Trees (CIT), a machine learning technique, to explore predictors of mortality. The most important variables as determined by CIT were used to create a logistic regression to predict mortality. This analysis was run for all trees, and for several subsets of the sample based on tree type and season and year of planting, yielding twenty individual models. Results indicated that the following variables are important predictors of mortality during establishment, in descending order: adjacent home/building age, proportion renter occupancy, days since tree planted, tax parcel size, number of trees planted on property, and tax parcel value. Of these variables, proportion renter occupancy and days since tree planted were most frequently found to be significant in the logistic regression modeling.
机译:本文探讨了在马萨诸塞州伍斯特市一个新种植的群体中幼树死亡率的预测因素,该群体是在亚洲长角甲虫(Anoplophora glabripennis,ALB)根除计划导致大规模树木砍伐后发生的。树木越来越被视为城市地区生态系统服务的重要提供者,包括:气候缓和,从而降低供暖/制冷成本;空气和水过滤;碳吸收和储存;雨水径流控制;以及文化和审美价值。许多城市已经启动了植树计划来获得这些好处,通常是为了补充现有的城市森林。相反,伍斯特的重新造林计划是必要的,以抵消大约30000棵树木的损失,从而根除入侵性害虫ALB。从那时起,已经种植了3万多棵幼树以弥补损失,为研究高度动态的城市森林创造了机会。植树成效取决于高存活率,尤其是在植树后的前五年的建树阶段。本研究使用包括生物物理和社会人口统计学变量在内的大型数据集,使用机器学习技术条件推理树(CIT)探索死亡率的预测因子。CIT确定的最重要变量用于建立逻辑回归来预测死亡率。该分析针对所有树木,以及基于树木类型、种植季节和年份的几个样本子集,得出了20个单独的模型。结果表明,以下变量是建房期间死亡率的重要预测因子,按降序排列:相邻房屋/建筑年龄、租房者占比、植树后天数、税收地块大小、在房产上种植的树木数量和税收地块价值。在这些变量中,在逻辑回归模型中,最常见的是租房者占比和植树日数。

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