Can big data and random forests improve avalanche runout estimation compared to simple linear regression?
Permanent link
https://hdl.handle.net/10037/29184Date
2023-04-05Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Accurate prediction of snow avalanche runout-distances in a deterministic sense remains a challenge due to the
complexity of all the physical properties involved. Therefore, in many locations including Norway, it has been
common practice to define the runout distance using the angle from the starting point to the end of the runout
zone (α-angle). We use a large dataset of avalanche events from Switzerland (N = 18,737) acquired using optical
satellites to calculate the α-angle for each avalanche. The α-angles in our dataset are normally distributed with a
mean of 33◦ and a standard deviation of 6.1◦, which provides additional understanding and insights into α-angle
distribution. Using a feature importance module in the Random Forest framework, we found the most important
topographic parameter for predicting α-angles to be the average gradient from the release area to the β-point.
Despite the large dataset and a modern machine learning (ML) method, we found the simple linear regression
model to yield a higher performance than our ML attempts. This means that it is better to use a simple linear
regression in an operational context.
Publisher
ElsevierCitation
Toft, Müller, Hendrikx, Jaedicke, Bühler. Can big data and random forests improve avalanche runout estimation compared to simple linear regression?. Cold Regions Science and Technology. 2023;211Metadata
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