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Extreme value modelling of storm damage in Swedish forests

Författare

  • Anders Bengtsson
  • Carin Nilsson

Summary, in English

Forests cover about 56% of the land area in Sweden and forest damage due to strong winds has been a recurring problem. In this paper we analyse recorded storm damage in Swedish forests for the years 1965-2007. During the period 48 individual storm events with a total damage of 164 Mm(3) have been reported with the severe storm on 8 to 9 January 2005, as the worst with 70 Mm(3) damaged forest. For the analysis, storm damage data has been normalised to account for the increase in total forest volume over the period. We show that, within the framework of statistical extreme value theory, a Poisson point process model can be used to describe these storm damage events. Damage data supports a heavy-tailed distribution with great variability in damage for the worst storm events. According to the model, and in view of available data, the return period for a storm with damage in size of the severe storm of January 2005 is approximately 80 years, i.e. a storm with damage of this magnitude will happen, on average, once every eighty years. To investigate a possible temporal trend, models with time-dependent parameters have been analysed but give no conclusive evidence of an increasing trend in the normalised storm damage data for the period. Using a non-parametric approach with a kernel based local-likelihood method gives the same result.

Publiceringsår

2007

Språk

Engelska

Sidor

515-521

Publikation/Tidskrift/Serie

Natural Hazards and Earth System Sciences

Volym

7

Issue

5

Dokumenttyp

Artikel i tidskrift

Förlag

Copernicus GmbH

Ämne

  • Probability Theory and Statistics
  • Physical Geography

Status

Published

ISBN/ISSN/Övrigt

  • ISSN: 1684-9981