Abstract

Key messageThe potential of airborne laser scanning (ALS) and multispectral remote sensing data to aid in generating improved wind damage risk maps over large forested areas is demonstrated. This article outlines a framework to generate such maps, primarily utilizing the horizontal structural information contained in the ALS data. Validation was done over an area in Eastern Finland that had experienced sporadic wind damage.ContextWind is the most prominent disturbance element for Finnish forests. Hence, tools are needed to generate wind damage risk maps for large forested areas, and their possible changes under planned silvicultural operations.Aims(1) How effective are ALS-based forest variables (e.g. distance to upwind forest stand edge, gap size) for identifying high wind damage risk areas? (2) Can robust estimates of predicted critical wind speeds for uprooting of trees be derived from these variables? (3) Can these critical wind speed estimates be improved using wind multipliers, which factor in topography and terrain roughness effects?MethodsWe first outline a framework to generate several wind damage risk–related parameters from remote sensing data (ALS + multispectral). Then, we assess if such parameters have predictive power. That is, whether they help differentiate between damaged and background points. This verification exercise used 42 wind damaged points spread over a large area.ResultsParameters derived from remote sensing data are shown to have predictive power. Risk models based on critical wind speeds are not that robust, but show potential for improvement.ConclusionOverall, this work described a framework to get several wind risk–related parameters from remote sensing data. These parameters are shown to have potential in generating wind damage risk maps over large forested areas.

Highlights

  • Wind storms have caused a significant amount of forest damage and economic losses in European forests over the last few decades (Seidl et al 2014; Reyer et al 2017)

  • These results imply that the damage observed was mostly caused by winds from the northwest direction, some damage may be associated with other directions as well

  • We developed a methodology by which airborne laser scanning (ALS) and aerial image data could be used to develop several useful predictor variables for wind damage risk

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Summary

Introduction

Wind storms have caused a significant amount of forest damage and economic losses in European forests over the last few decades (Seidl et al 2014; Reyer et al 2017). In Finland, in total, 25 million m3 of timber has Extended author information available on the last page of the article. This is a substantial amount considering that, for example, the average annual roundwood removal in Finland in the past few years has been around 65 to 70 million m3 (Vaahtera et al 2018). The increased amount of wind damage may at least partially be explained by increasing volume of growing stock and changes in forest structure (e.g. age, size, tree species composition) due to forest management interventions. Increasing forest disturbances under a changing climate may even cancel out the expected higher forest productivity (Reyer et al 2017)

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