通过回归模型评估和预测环境控制对中低塔特拉地区风灾扰动的影响

IF 1.8 2区 社会学 Q2 GEOGRAPHY Moravian Geographical Reports Pub Date : 2023-12-01 DOI:10.2478/mgr-2023-0020
Vladimír Šagát, V. Falťan, J. Škvarenina
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引用次数: 0

摘要

摘要 如今,山区森林的大规模干扰和随后的临时毁林现象已被广泛讨论。在本研究中,我们建立了一个逻辑回归模型(LRM)和一个广义相加模型(GAM),以了解斯洛伐克中低塔特拉山区在伊丽莎白风灾(2004 年)后森林砍伐的驱动因素。一系列地形和生物特征被选为解释变量,而森林砍伐的存在则是响应变量。结果表明,最容易受到风灾破坏的是生长在高海拔地区、山脊周围以及在扰动期间暴露在风中的缓坡上的森林。此外,挪威云杉所占比例较高且树木直径中等的林分也更容易受到风灾的影响,这些林分正在进行森林管理。此外,这两个模型还用于识别那些最容易受到未来风灾破坏的林分。根据 LRM 的解释能力和构建效率,我们建议在类似的大规模研究中使用 LRM 而不是 GAM。这些方法可用于当地的森林管理,因为基于科学的决策对于维护山林以抵御大风和其他干扰因素至关重要。
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Assessing and forecasting the influence of environmental controls on windstorm disturbances in the Central Low Tatras, through regression models
Abstract Nowadays, the large-scale disturbance and subsequent temporary deforestation of mountain forests are widely discussed phenomena. In this study, we built both a logistic regression model (LRM) and a generalised additive model (GAM), in order to understand the drivers of deforestation after the Elisabeth windstorm (2004) in the Central Low Tatras, Slovakia. A set of topographic and biotic characteristics was selected as explanatory variables, while the presence of deforestation was a response variable. The results show that the most prone to windstorm-driven damage are forests growing at a high elevation, in the ridge’s surroundings, and on gentle slopes exposed to the wind during the disturbance. Moreover, the stands with a high proportion of Norway spruce and with medium-diameter trees, which are under forest management, were identified as more vulnerable. Additionally, both models were used to identify those stands, which would be most susceptible to damage by future windstorms. According to its explanatory power and building efficiency, we propose using of LRM rather than GAM in similar large-scale studies. The addressed methods can be used in local forest management, as scientifically based decision-making appears to be crucial for maintaining mountain forests resistant to gusty winds, as well as other disturbing agents.
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来源期刊
CiteScore
4.10
自引率
4.00%
发文量
14
期刊介绍: Moravian Geographical Reports je mezinárodní časopis, publikovaný v anglickém jazyce od roku 1993 Ústavem geoniky Akademie věd ČR. Publikuje příspěvky geografů a odborníků příbuzných disciplin včetně geověd a geoekologie, které mají výraznou regionální orientaci. Základní otázku, před níž stojí v současné době tito odborníci, lze položit následovně: „Jaká je úloha regionů a lokalit v globalizované společnosti, daném geografickém měřítku a jak ji můžeme hodnotit?“
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