Abstract

Despite the importance of snow in alpine regions, little attention has been given to the homogenization of snow depth time series. Snow depth time series are generally characterized by high spatial heterogeneity and low correlation among the time series, and the homogenization thereof is therefore challenging. In this work, we present a comparison between two homogenization methods for mean seasonal snow depth time series available for Austria: the standard normal homogeneity test (SNHT) and HOMOP. The results of the two methods are generally in good agreement for high elevation sites. For low elevation sites, HOMOP often identifies suspicious breakpoints (that cannot be confirmed by metadata and only occur in relation to seasons with particularly low mean snow depth), while the SNHT classifies the time series as homogeneous. We therefore suggest applying both methods to verify the reliability of the detected breakpoints. The number of computed anomalies is more sensitive to inhomogeneities than trend analysis performed with the Mann–Kendall test. Nevertheless, the homogenized dataset shows an increased number of stations with negative snow depth trends and characterized by consecutive negative anomalies starting from the late 1980s and early 1990s, which was in agreement with the observations available for several stations in the Alps. In summary, homogenization of snow depth data is possible, relevant and should be carried out prior to performing climatological analysis.

Highlights

  • standard normal homogeneity test (SNHT) as well as other homogenization methods has some level of uncertainty in the identification of the correct temporal location of the breakpoint, as discussed in Marcolini et al (2017a) and Lindau and Venema (2016)

  • The detection algorithm PRODIGE is more sensitive than the SNHT to changes at low snow depths

  • The breakpoints found by PRODIGE in the time series of Weitensfeld and Weitra were classified as suspicious because they were close to the end of the tested time series (1 and 3 years from the end, respectively)

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Summary

Introduction

We compare the performances of the SNHT and HOMOP homogenization algorithms by applying them to an Austrian snow depth time series dataset. The breakpoints identified in six time series (Innerkrems, Kals, Holzgau, Umhausen, Mayrhofen and Wien Hohe Warte) were considered suspicious due to low snow depth.

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