Enhancing precision in quantification and spatial distribution of logging residues in plantation stands

IF 2.6 2区 农林科学 Q1 FORESTRY
Alberto Udali, Bruce Talbot, Simon Ackerman, Jacob Crous, Stefano Grigolato
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引用次数: 0

Abstract

Forests, essential components of ecosystems, are managed for sustainable timber production in forest plantations to meet the growing demand for wood products. The intricate balance between sustainable forest management and logging residue management practices is crucial for ecological integrity and economic viability. Logging residues, byproducts of timber harvesting, significantly influence carbon and nutrient cycling, soil structure, and overall ecosystem health. Recent technological advancements, particularly the use of drones integrated with artificial intelligence, enable the processing of large datasets, providing meaningful insights into logging residues and forest dynamics. This study aims to evaluate the quantification and distribution of logging residues in forest plantations, utilizing machine learning classification models fed with drone-based images. The classification was performed using a Random Forest model fed with spectral and terrain variables, whereas the volume estimations were derived from field measurements and from the drone classification. Overall the classification achieved solid results (Overall Accuracy of 0.89), and the volume estimation resulting in solid comparison with field estimation (ratio 0.72–1.98), but poor correlation (R2 of 0.26 and 0.36). We concluded that the proposed methodology is suitable for classifying and assessing residues distribution over recently harvested areas, but further improvement of the volume estimation methodology is necessary to ensure comprehensive and precise assessment of residue distribution over recently harvested areas.

Abstract Image

提高人工林中伐木残留物的量化和空间分布精度
森林是生态系统的重要组成部分,为满足日益增长的木制品需求,人们对人工林进行可持续木材生产管理。可持续森林管理与伐木剩余物管理实践之间错综复杂的平衡对生态完整性和经济可行性至关重要。伐木剩余物是木材采伐的副产品,对碳和养分循环、土壤结构以及整个生态系统的健康有着重大影响。最近的技术进步,特别是无人机与人工智能的结合使用,使得处理大型数据集成为可能,从而为了解伐木残留物和森林动态提供了有意义的见解。本研究旨在利用基于无人机图像的机器学习分类模型,评估人工林中伐木残留物的量化和分布情况。分类是利用一个包含光谱和地形变量的随机森林模型进行的,而体积估算则来自实地测量和无人机分类。总的来说,分类取得了很好的结果(总体准确率为 0.89),体积估算结果与实地估算结果(比率为 0.72-1.98)进行了比较,但相关性较差(R2 为 0.26 和 0.36)。我们的结论是,建议的方法适用于对新近收获区域的残留物分布进行分类和评估,但有必要进一步改进体积估算方法,以确保对新近收获区域的残留物分布进行全面、精确的评估。
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来源期刊
CiteScore
5.10
自引率
3.60%
发文量
77
审稿时长
6-16 weeks
期刊介绍: The European Journal of Forest Research focuses on publishing innovative results of empirical or model-oriented studies which contribute to the development of broad principles underlying forest ecosystems, their functions and services. Papers which exclusively report methods, models, techniques or case studies are beyond the scope of the journal, while papers on studies at the molecular or cellular level will be considered where they address the relevance of their results to the understanding of ecosystem structure and function. Papers relating to forest operations and forest engineering will be considered if they are tailored within a forest ecosystem context.
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