Landscape-level likelihood estimation of eastern spruce dwarf mistletoe (Arceuthobium pusillum) infestations in lowland black spruce (Picea mariana) forests of Minnesota, USA

IF 1.7 3区 农林科学 Q2 FORESTRY Canadian Journal of Forest Research Pub Date : 2023-10-13 DOI:10.1139/cjfr-2023-0139
Ella R Gray, Matthew B. Russell, Marcella Anna Windmuller-Campione
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Abstract

Biotic disturbance agents are important factors influencing forest dynamics; incorporating them into management planning requires detailed understanding of their distribution, prevalence, and effects on stand dynamics. However, this information can be difficult to collect in remote forest systems, such as lowland black spruce (Picea mariana (Mill.) B. S. P.) forests affected by eastern spruce dwarf mistletoe (Arceuthobium pusillum Peck, hereafter ESDM). In such cases, predictive modeling is often needed to inform management decisions and address forest health questions. Here, we used two publicly available datasets to predict areas where black spruce is more likely to be infested with ESDM in northeastern Minnesota, USA. Using random forest modeling and logistic regression, we found location, stand age, basal area, site index, average diameter, and metrics of species composition to be among the most important predictors of ESDM occurrence. Predictions showed two regions of greater likelihood of infestation with distinct ecological characteristics and ownership patterns. By understanding how stand structural characteristics relate to ESDM infestations, managers can improve monitoring and management of ESDM at the stand and landscape scales. Additionally, our approach of using multiple datasets and modeling methods can serve as a framework for decision making for other forest health concerns.
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美国明尼苏达州低地黑云杉(Picea mariana)林中东部云杉矮槲寄生(Arceuthobium pusillum)侵染的景观水平可能性估计
生物干扰因子是影响森林动态的重要因素;将它们纳入管理规划需要详细了解它们的分布、流行程度和对林分动态的影响。然而,这些信息很难在偏远的森林系统中收集,例如低地黑云杉(Picea mariana)。B. S. P.)受东部云杉矮槲寄生(Arceuthobium pusillum Peck,简称ESDM)影响的森林。在这种情况下,往往需要预测建模来为管理决策提供信息并解决森林健康问题。在这里,我们使用两个公开可用的数据集来预测美国明尼苏达州东北部黑云杉更容易感染ESDM的地区。通过随机森林模型和logistic回归分析,我们发现位置、林龄、基底面积、立地指数、平均直径和物种组成指标是ESDM发生的最重要预测因子。预测显示,有两个区域更有可能发生虫害,它们具有不同的生态特征和所有权模式。通过了解林分结构特征与ESDM侵扰的关系,管理者可以在林分和景观尺度上改善ESDM的监测和管理。此外,我们使用多种数据集和建模方法的方法可以作为其他森林健康问题决策的框架。& # x0D;
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来源期刊
CiteScore
4.20
自引率
9.10%
发文量
109
审稿时长
3 months
期刊介绍: Published since 1971, the Canadian Journal of Forest Research is a monthly journal that features articles, reviews, notes and concept papers on a broad spectrum of forest sciences, including biometrics, conservation, disturbances, ecology, economics, entomology, genetics, hydrology, management, nutrient cycling, pathology, physiology, remote sensing, silviculture, social sciences, soils, stand dynamics, and wood science, all in relation to the understanding or management of ecosystem services. It also publishes special issues dedicated to a topic of current interest.
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