通过整合树环和气候变量加强森林昆虫疫情检测

IF 3.4 2区 农林科学 Q1 FORESTRY
Yao Jiang, Zhou Wang, Zhongrui Zhang, Xiaogang Ding, Shaowei Jiang, Jianguo Huang
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引用次数: 0

摘要

人们普遍认为,树木年轮是量化和重建历史森林干扰的宝贵工具。然而,气候的影响会使干扰信号的检测复杂化,导致现有方法的准确性有限。在这项研究中,我们提出了一种随机采样不足提升(RUB)分类器,它综合了树环和气候变量,以增强对森林昆虫爆发的检测。研究重点是加拿大阿尔伯塔省的 32 个地点,这些地点记录了从 1939 年到 2010 年的昆虫爆发情况。通过全面的特征工程、模型开发和十倍交叉验证,构建了多个机器学习(ML)模型。这些模型使用环宽指数(RWIs)和 11 年窗口内的气候变量作为输入特征,并将暴发和非暴发情况作为相应的输出变量。我们的研究结果表明,RUB 模型的整体性能和稳定性一直很出色,准确率达到 88.1%,超过了其他 ML 模型。此外,特征变量的相对重要性依次为 RWIs >;5 月至 7 月的平均最高气温(Tmax) >;7 月的平均总降水量(Pmean) >;10 月的平均最低气温(Tmin)。更重要的是,dfoliatR(用于检测昆虫落叶的 R 软件包)和曲线干预检测方法不如 RUB 模型。我们的研究结果表明,在机器学习中整合树环宽度和气候变量作为预测因子,为提高检测森林昆虫爆发的准确性提供了一个很有前景的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhancing forest insect outbreak detection by integrating tree-ring and climate variables

Enhancing forest insect outbreak detection by integrating tree-ring and climate variables

Annual tree rings are widely recognized as valuable tools for quantifying and reconstructing historical forest disturbances. However, the influence of climate can complicate the detection of disturbance signals, leading to limited accuracy in existing methods. In this study, we propose a random under-sampling boosting (RUB) classifier that integrates both tree-ring and climate variables to enhance the detection of forest insect outbreaks. The study focused on 32 sites in Alberta, Canada, which documented insect outbreaks from 1939 to 2010. Through thorough feature engineering, model development, and tenfold cross-validation, multiple machine learning (ML) models were constructed. These models used ring width indices (RWIs) and climate variables within an 11-year window as input features, with outbreak and non-outbreak occurrences as the corresponding output variables. Our results reveal that the RUB model consistently demonstrated superior overall performance and stability, with an accuracy of 88.1%, which surpassed that of the other ML models. In addition, the relative importance of the feature variables followed the order RWIs > mean maximum temperature (Tmax) from May to July > mean total precipitation (Pmean) in July > mean minimum temperature (Tmin) in October. More importantly, the dfoliatR (an R package for detecting insect defoliation) and curve intervention detection methods were inferior to the RUB model. Our findings underscore that integrating tree-ring width and climate variables as predictors in machine learning offers a promising avenue for enhancing the accuracy of detecting forest insect outbreaks.

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来源期刊
CiteScore
7.30
自引率
3.30%
发文量
2538
期刊介绍: The Journal of Forestry Research (JFR), founded in 1990, is a peer-reviewed quarterly journal in English. JFR has rapidly emerged as an international journal published by Northeast Forestry University and Ecological Society of China in collaboration with Springer Verlag. The journal publishes scientific articles related to forestry for a broad range of international scientists, forest managers and practitioners.The scope of the journal covers the following five thematic categories and 20 subjects: Basic Science of Forestry, Forest biometrics, Forest soils, Forest hydrology, Tree physiology, Forest biomass, carbon, and bioenergy, Forest biotechnology and molecular biology, Forest Ecology, Forest ecology, Forest ecological services, Restoration ecology, Forest adaptation to climate change, Wildlife ecology and management, Silviculture and Forest Management, Forest genetics and tree breeding, Silviculture, Forest RS, GIS, and modeling, Forest management, Forest Protection, Forest entomology and pathology, Forest fire, Forest resources conservation, Forest health monitoring and assessment, Wood Science and Technology, Wood Science and Technology.
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