Spatiotemporal estimation of ambient forest phytoncides: Unveiling patterns through geospatial-based machine learning approach

IF 7 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Aji Kusumaning Asri , Hao-Ting Chang , Chia-Pin Yu , Wan-Yu Liu , Yinq-Rong Chern , Rui-Hao Xie , Shih-Chun Candice Lung , Kai Hsien Chi , Yu-Cheng Chen , Sen-Sung Cheng , Gary Adamkiewicz , John D. Spengler , Chih-Da Wu
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Abstract

This study investigated biogenic volatile organic compounds (BVOCs) emitted by tree species, with a specific focus on estimating their ambient air concentrations within the Xitou Nature Education Area, Taiwan. Employing geospatial-based machine learning approaches, which are rarely applied in this context, we aimed to estimate the ambient levels of key forest phytoncides which are representative compounds within the BVOC group. Data on phytoncide, including camphene and α-pinene, were directly collected from the study area. Geospatial data including meteorological factors, topography, land cover, and nearby landmarks were additionally collected and set as predictor variables influencing phytoncides. Random Forest (RF), Gradient Boosting (GB), Extreme Gradient Boosting (XGB), and Light Gradient Boosting Machine (LGBM) were integrated with an explainable artificial intelligence tool to develop the model estimates. To evaluate model performance, we conducted overfitting tests, 10-fold cross-validation, and stratified analysis. The results showed that RF and XGB were the most effective algorithms, explaining approximately 83.3% and 98.4% of the spatiotemporal variability in camphene and α-pinene, respectively. The robustness of these models was confirmed through extensive validation. Spatial pattern analysis revealed that variations in these biogenic compound concentrations were linked to meteorological conditions and vegetation types. Finally, this study presented an innovative approach to accurately estimating and mapping the spatial distribution of forest phytoncides, providing valuable insights to support environmental management, urban planning, and public health.
环境森林杀植物剂的时空估计:通过基于地理空间的机器学习方法揭示模式
摘要本研究以台湾西头自然教育区内的树种为研究对象,研究其生物源性挥发性有机化合物(BVOCs)的排放,并估算其环境空气浓度。采用基于地理空间的机器学习方法(在这种情况下很少应用),我们旨在估计关键森林杀植物剂的环境水平,这些杀植物剂是BVOC组中具有代表性的化合物。植物杀菌剂的数据,包括樟烯和α-蒎烯,直接从研究区收集。此外,还收集了地理空间数据,包括气象因素、地形、土地覆盖和附近地标,并将其设置为影响植物杀虫剂的预测变量。随机森林(RF)、梯度增强(GB)、极端梯度增强(XGB)和光梯度增强机(LGBM)与可解释的人工智能工具相结合,开发模型估计。为了评估模型的性能,我们进行了过拟合检验、10倍交叉验证和分层分析。结果表明,RF和XGB是最有效的算法,分别解释了约83.3%和98.4%的莰烯和α-蒎烯的时空变异。这些模型的稳健性通过广泛的验证得到了证实。空间格局分析表明,这些生物源化合物浓度的变化与气象条件和植被类型有关。最后,本研究提出了一种准确估计和绘制森林杀植物剂空间分布的创新方法,为支持环境管理、城市规划和公共卫生提供了有价值的见解。
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来源期刊
Ecological Indicators
Ecological Indicators 环境科学-环境科学
CiteScore
11.80
自引率
8.70%
发文量
1163
审稿时长
78 days
期刊介绍: The ultimate aim of Ecological Indicators is to integrate the monitoring and assessment of ecological and environmental indicators with management practices. The journal provides a forum for the discussion of the applied scientific development and review of traditional indicator approaches as well as for theoretical, modelling and quantitative applications such as index development. Research into the following areas will be published. • All aspects of ecological and environmental indicators and indices. • New indicators, and new approaches and methods for indicator development, testing and use. • Development and modelling of indices, e.g. application of indicator suites across multiple scales and resources. • Analysis and research of resource, system- and scale-specific indicators. • Methods for integration of social and other valuation metrics for the production of scientifically rigorous and politically-relevant assessments using indicator-based monitoring and assessment programs. • How research indicators can be transformed into direct application for management purposes. • Broader assessment objectives and methods, e.g. biodiversity, biological integrity, and sustainability, through the use of indicators. • Resource-specific indicators such as landscape, agroecosystems, forests, wetlands, etc.
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