森林属性图在自动雪崩地形暴露比例尺(ATES)建模中的应用

IF 1.8 3区 农林科学 Q2 FORESTRY Scandinavian Journal of Forest Research Pub Date : 2022-05-19 DOI:10.1080/02827581.2022.2096921
J. Schumacher, Håvard Toft, J. Mclean, M. Hauglin, R. Astrup, J. Breidenbach
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引用次数: 1

摘要

摘要近年来,在娱乐活动中受雪崩影响的人数有所增加。减少这些数字的一个工具是改进的地形分类系统。一个这样的系统是雪崩地形暴露量表(ATES)。森林可以为雪崩提供一些保护,有关森林属性的信息可以纳入雪崩危险模型,如自动ATES模型(AutoATES)。本研究的目的是(i)根据国家森林调查和遥感数据绘制森林树干密度和冠层覆盖图,(ii)将这些森林属性用作AutoATES模型的输入。我们预测了挪威一个20 Mha研究区的树干密度并直接计算了冠层覆盖率。森林属性已映射为16 m × 16 m像素,这些像素被用作AutoATES模型的输入。树干数和冠层覆盖图的不确定性分别为30%和31%。挪威西部52条总长282公里的滑雪旅游路线的总体分类准确率从没有森林信息的模型中的55%提高到了利用树冠覆盖的67%。三个预测的ATES等级的F1分数分别提高了31%、9%和6%。
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The utility of forest attribute maps for automated Avalanche Terrain Exposure Scale (ATES) modelling
ABSTRACT The number of people affected by snow avalanches during recreational activities has increased over the recent years. An instrument to reduce these numbers are improved terrain classification systems. One such system is the Avalanche Terrain Exposure Scale (ATES). Forests can provide some protection from avalanches, and information on forest attributes can be incorporated into avalanche hazard models such as the automated ATES model (AutoATES). The objectives of this study were to (i) map forest stem density and canopy-cover based on National Forest Inventory and remote sensing data and, (ii) use these forest attributes as input to the AutoATES model. We predicted stem density and directly calculated canopy-cover in a 20 Mha study area in Norway. The forest attributes were mapped for 16 m × 16 m pixels, which were used as input for the AutoATES model. The uncertainties of the stem number and canopy-cover maps were 30% and 31%, respectively. The overall classification accuracy of 52 ski-touring routes in Western Norway with a total length of 282 km increased from 55% in the model without forest information to 67% when utilizing canopy cover. The F1 score for the three predicted ATES classes improved by 31%, 9%, and 6%.
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来源期刊
CiteScore
3.00
自引率
5.60%
发文量
26
审稿时长
3.3 months
期刊介绍: The Scandinavian Journal of Forest Research is a leading international research journal with a focus on forests and forestry in boreal and temperate regions worldwide.
期刊最新文献
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