A machine learning approach to fill gaps in dendrometer data

IF 2.1 3区 农林科学 Q2 FORESTRY Trees Pub Date : 2024-10-15 DOI:10.1007/s00468-024-02573-y
Eileen Kuhl, Emanuele Ziaco, Jan Esper, Oliver Konter, Edurne Martinez del Castillo
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引用次数: 0

Key message

The machine learning algorithm extreme gradient boosting can be employed to address the issue of long data gaps in individual trees, without the need for additional tree-growth data or climatic variables.

Abstract

The susceptibility of dendrometer devices to technical failures often makes time-series analyses challenging. Resulting data gaps decrease sample size and complicate time-series comparison and integration. Existing methods either focus on bridging smaller gaps, are dependent on data from other trees or rely on climate parameters. In this study, we test eight machine learning (ML) algorithms to fill gaps in dendrometer data of individual trees in urban and non-urban environments. Among these algorithms, extreme gradient boosting (XGB) demonstrates the best skill to bridge artificially created gaps throughout the growing seasons of individual trees. The individual tree models are suited to fill gaps up to 30 consecutive days and perform particularly well at the start and end of the growing season. The method is independent of climate input variables or dendrometer data from neighbouring trees. The varying limitations among existing approaches call for cross-comparison of multiple methods and visual control. Our findings indicate that ML is a valid approach to fill gaps in individual trees, which can be of particular importance in situations of limited inter-tree co-variance, such as in urban environments.

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填补树枝仪数据空白的机器学习方法
关键信息机器学习算法极端梯度提升可用于解决单棵树木数据缺口过长的问题,而无需额外的树木生长数据或气候变量。 摘要由于树枝仪设备容易出现技术故障,因此时间序列分析往往具有挑战性。由此造成的数据缺口缩小了样本量,并使时间序列的比较和整合变得复杂。现有的方法要么侧重于弥补较小的差距,要么依赖于其他树木的数据,要么依赖于气候参数。在这项研究中,我们测试了八种机器学习(ML)算法,以填补城市和非城市环境中单个树木的树枝仪数据缺口。在这些算法中,极端梯度提升算法(XGB)在弥合个体树木整个生长季节中人为造成的差距方面表现出最佳技能。个体树木模型适合填补长达连续 30 天的空白,在生长季节的开始和结束时表现尤为出色。该方法不受气候输入变量或邻近树木的树干计数据的影响。现有方法的局限性各不相同,因此需要对多种方法进行交叉比较和视觉控制。我们的研究结果表明,ML 是一种有效的方法,可以填补单棵树木的空白,这在树木间共变异有限的情况下尤为重要,例如在城市环境中。
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来源期刊
Trees
Trees 农林科学-林学
CiteScore
4.50
自引率
4.30%
发文量
113
审稿时长
3.8 months
期刊介绍: Trees - Structure and Function publishes original articles on the physiology, biochemistry, functional anatomy, structure and ecology of trees and other woody plants. Also presented are articles concerned with pathology and technological problems, when they contribute to the basic understanding of structure and function of trees. In addition to original articles and short communications, the journal publishes reviews on selected topics concerning the structure and function of trees.
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