2016
DOI: 10.1002/asl.679
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Using highly resolved maximum gust speed as predictor for forest storm damage caused by the high‐impact winter storm Lothar in Southwest Germany

Abstract: Results from a newly available empirical maximum gust speed model were evaluated for their predictive power of forest storm damage caused by the high-impact winter storm 'Lothar' in the German federal state of Baden-Wuerttemberg. In this state, Lothar was the most severe storm event of the last decades, causing nearly 30 million m 3 of damaged timber. By applying a least squares boosting procedure, daily maximum gust speed values measured at 28 meteorological stations were used to empirically model highly reso… Show more

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Cited by 25 publications
(16 citation statements)
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“…A total of 37 PVs that are known to influence GS [22,23,25] were developed to model the spatial GS pattern at 25 m × 25 m resolution. One PV was the measuring height of GS (h), which is often (47%), but not always, 10 m above ground level as recommended by the World Meteorological Organization.…”
Section: Predictor Variables (Pv)mentioning
confidence: 99%
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“…A total of 37 PVs that are known to influence GS [22,23,25] were developed to model the spatial GS pattern at 25 m × 25 m resolution. One PV was the measuring height of GS (h), which is often (47%), but not always, 10 m above ground level as recommended by the World Meteorological Organization.…”
Section: Predictor Variables (Pv)mentioning
confidence: 99%
“…Among the approaches used to model storm characteristics including GS, mechanistic models [7,8] can be differentiated from statistical (empirical) models [20][21][22][23]. Mechanistic models are useful tools for characterizing and investigating physical processes that determine storm formation, storm life cycle and storm-related GS dynamics.…”
Section: Introductionmentioning
confidence: 99%
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“…The cumulative probabilities related to return periods (T) of 30, 50 or 100 yr were computed by [37]:…”
Section: Determination Of Gust Characteristicsmentioning
confidence: 99%
“…In addition, different approaches allowing more flexible model behaviour 81 than fully parametric GLMs have been used, such as generalized additive models (GAM; 82 Schmidt et al, 2010) that use non-parametric smooth functions to allow more flexibility in the 83 relationship of response variable and predictors (Hastie et al, 2009). Machine learning 84 approaches have also been successfully applied to wind disturbance modeling (see 85 Hanewinkel et al 2004 for an early example) and recently especially tree-based ensemble 86 models, such as random forests, have been shown to perform well in predicting wind 87 damage (Albrecht et al, 2019;Hart et al, 2019;Kabir et al, 2018;Schindler et al, 2016). 88…”
mentioning
confidence: 99%