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The effects of El Niño and La Niña on snow and avalanche patterns in British Columbia, Canada, and central Chile

Published online by Cambridge University Press:  10 July 2017

D.M. McClung*
Affiliation:
Department of Geography, University of British Columbia, Vancouver, British Columbia, Canada E-mail: mcclung@geog.ubc.ca
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Abstract

El Niño and La Niña affect global climate and atmospheric circulation to determine winter temperature and precipitation patterns. Both winter temperatures and the associated precipitation patterns have effects on mountain snow deposition and snow avalanche occurrences. Approximately 25 000 slab avalanches from 30 winters were analyzed in relation to snowfall patterns contrasted for El Niño and La Niña winters for two avalanche areas with different snow climates in British Columbia (BC), Canada. La Niña winters were shown to produce more snow, more avalanches and a higher percentage of dry avalanches than wet avalanches. The data and analysis show that the avalanche patterns depend on the altitude and snow climate. Analysis of snowfall and accident data from the Andes of Chile suggests behavior opposite to BC. El Niño winters in central Chile produced the most snow and, by inference, the most avalanches. This paper is the first to show the links of El Niño and La Niña to snow avalanche activity.

Type
Research Article
Copyright
Copyright © International Glaciological Society 2013

1. Introduction

In Canada, snow avalanches account for more fatalities than any other natural hazard. In British Columbia (BC), Canada, avalanches have major effects on the transportation routes: every railway is threatened, and 62 areas along British Columbia highways, with 1350 avalanche paths, need forecasting, protection and avalanche control. Snow avalanches have important effects on the biggest industries in British Columbia including forestry, mining and winter tourism (Reference McClung and SchaererMcClung and Schaerer, 2006). In BC, La Niña winters are known to produce more snow and generally lower temperatures than El Niño winters (Reference Moore and McKendryMoore and McKendry, 1996; Reference Stahl, Moore and McKendryStahl and others, 2006). In this paper, the amount of snow received and the avalanching characteristics are contrasted for El Niño and La Niña winters for two avalanche areas in BC (Bear Pass and Kootenay Pass (Fig. 1)) with 30 winters of avalanche occurrence records (24560). Total amounts of snow received and the number of slab avalanches recorded, stratified by avalanche size and water content (dry or wet), are considered. Figure 2 shows a dry slab avalanche of size 3 in motion (Table 7 in Appendix A describes the Canadian avalanche size system (Reference McClung and SchaererMcClung and Schaerer, 2006)). The definition of El Niño and La Niña winters is similar to that of Reference RedmondRedmond (2005) based on analysis of sea surface temperatures (SSTs) off the west coast of South America.

Fig. 1. Locations of the four snow stations analyzed.

Fig. 2. A dry slab avalanche (size 3) in motion at Whistler Bowl, BC. Photograph by T. Salway.

The results provide the first comprehensive study to contrast the effects of El Niño and La Niña winters on snow avalanche activity. There are numerous papers dealing with avalanches and time/climate effects (e.g. Reference Laternser and SchneebeliLaternser and Schneebeli, 2002; Reference KeylockKeylock, 2003; Reference García-Sellés, Peña, Marti, Oller and MartinezGarcía-Sellés and others, 2010; Reference Castebrunet, Eckert and GiraudCastebrunet and others, 2012). However, none of these contain snow data, nor mention of El Niño/La Niña, and all deal with European mountain areas. Reference FitzharrisFitzharris (1981) made an extensive pioneering study of the frequency and climatology of major avalanches at Rogers Pass, BC. However, the effects of La Niña/El Niño and snow amounts were not considered. The results here show more snow, more avalanches and a higher percentage of dry avalanches for La Niña winters. The effect on avalanche size is best illustrated from Bear Pass data which show correlation of maximum annual snow depth and total number of large dry avalanches (≥ size 3) is negligible. Analysis of snow data from central Chile provides results opposite to BC: El Niño winters produce the most snow and, by inference, the most avalanches.

Reference Stahl, Moore and McKendryStahl and others (2006) provide the physical reasons for the contrasting winter snow and temperature patterns between El Niño and La Niña in BC, backed by analysis from climate stations. One factor is that El Niño winters favour a split in the jet stream in the mid-Pacific to produce storm tracks that avoid southern BC. The reader is referred to Reference Stahl, Moore and McKendryStahl and others (2006) for more information. In Chile, the SSTs off the coast influence the storm tracks, with warmer SSTs during El Niño (low pressure off the coast; Reference BryantBryant, 2005) favouring more snow storms striking the Andes than during La Niña winters or normal conditions with cold SSTs (high pressure off the coast). The Chilean data are important since they show the results from BC cannot be extrapolated directly to other areas.

2. Definition of El Niño and La Niña Winters From Sea Surface Temperatures

The definition of El Niho and La Niña winters used here is similar to that by Reference RedmondRedmond (2005). The preceding July through December (3 month moving average SSTs provided by the US National Weather Service (USNWS, 2011)) were used to determine a yearly index. The Oceanic Niho Index (ONI; °C) (USNWS, 2011) was an average of six monthly values per year to determine a mean SST index based on SST anomalies in the Niho 3.4 region (5°N–5°S, 120–170°W). The values are relative to the mean for the 1971–2000 base period (USNWS, 2011). This gave 61 individual values (1950/51 through 2010/11). Figure 3 shows the calculated values for the ONI by year. Below, the units on the ONI are omitted for brevity and the ONI values are denoted by x.

Fig. 3. ONI vs year. The index was calculated from the average of SST values using six monthly (each a 3 month moving average) values from July through December.

The mean value of the ONI (95% confidence limits) is +0.025 (−0.18 to 0.23) and the median is −0.1. The range is −1.6 to +2.2 and with skewness 0.18. The skewness is not statistically significant since the ratio of skewness to standard error of skewness is 0.6 and less than the value of 2 needed for significance. A time-series trend analysis is performed on the ONI data in Figure 3. The Mann–Kendall test gave p = 0.13 which is not statistically significant.

Two definitions of El Niño and La Niña winters are used in this study. An El Niño winter was specified when x > 0.23, and a La Niña winter was specified when x < –0.18.The winter was defined neutral for values between these 95% confidence limits on the mean of x. The second definition was for strong winters. A strong El Niño winter was defined when x > 0.6 (upper 25%), and a strong La Niña winter when x < −0.6 (lower 25%), with neutral winters for |x| ≤ 0.6.

The 61 yearly index values (x) were fit to a probability density function (PDF). The cumulative distribution function (CDF) allowed estimates of return period for different index values. For the analysis, 65 PDFs were tried and a fit was obtained for 39 of them. The best fit was based on five goodness-of-fit criteria: the Kolmogorov–Smirnov (K-S) statistic (0.056; 0.135), the Anderson–Darling (A-D) statistic (0.20, 1.37), the Chi-Squared (C-S) statistic (3.23, 7.29), the probability plot (P-P) and the quantile (Q-Q) plot. In the parentheses, the first number is the statistic, and the second is the critical value based on the level-of-significance parameter α = 0.2 (Reference Walpole and MyersWalpole and Myers, 1978), which is more stringent than the usual value (α = 0.05).

The best fit was provided by a generalized extreme value (GEV) PDF with k, σ, μ (shape, scale, location parameters) as −0.24, 0.81, −0.28. The CDF for the GEV PDF is given by F(x) = exp (−(1 + kz)−1/k ) where z = (x −μ) / σ. Figure 4 shows the ONI on a quantile probability plot with a least-squares line (R 2 = 0.99). The quantile is defined by μ + (σ/k)[(− ln {F(x)}−1) −1] using rank order statistics with the CDF represented by Hazen plotting positions with non-exceedance probability P = (i − 0.5) /61, with i as the rank ( 1–61) from the lowest to highest value of x.

The return periods, T(x), for strong El Niño and La Niña winters were defined as T(0.6) = 1/[1 − F(0.6)]; T(−0.6) = 1/F(−0.6) respectively. The 25% (x = –0.6) or 75% (x = 0.6) quartile values gave return periods equal to 4 years for strong La Niña or El Niño years. Calculations of sample statistics gave 12 strong La Niña years (x < –0.6) and 13 strong El Niño years (x >0.6). The discrepancy between these values and the expected return period values (∼15 values each) arose since some of the years had values equal to −0.6 and 0.6. Throughout the analysis below, the sample values were used: 12 strong La Niña years and 13 strong El Niño years for the 61 year dataset. The extreme El Niho year of 1997 (x = 2.2; Fig. 4) was estimated to have a return period of -250 years {T(2.2) = 1/[1 − F(2.2)]}. However, the return period estimate is an unreasonable extrapolation given only 61 years of data.

Fig. 4. Probability plot for the ONI vs quantiles for the GEV PDF. The outlier at the right (2.2) is the record year of 1997.

3. Methods and Data Characteristics

The variables used in this study are given in Table 8 in Appendix A. To help place Bear Pass and Kootenay Pass within climate zones, maximum annual snow depth data were analyzed. Since the main emphasis here is on avalanche activity, the annual maximum snow data are contained in Appendix B which includes the locations (Fig. 1) and descriptive statistics for both snow stations.

At Bear Pass, personnel of the BC Ministry of Environment (Province of British Columbia, 2011) measured the annual maximum snow depths from monthly measurements throughout the snow season. The annual maximum snow depths for Kootenay Pass were determined from daily depth measurements by the BC Ministry of Transportation and Infrastructure.

The total snow amounts for El Indio, Chile (3869 m a.s.l.), and Minera Los Pelambres (3130 m a.s.l.) in central Chile (Section 6) were obtained by mine personnel by summing the total depth of snow from individual storms over the course of the snow season. The El Indio site is 500 km north of Santiago, and Minera Los Pelambres is 200 km north of Santiago.

The avalanche occurrence records at Bear and Kootenay Pass were from daily observations by resident avalanche technicians of the BC Ministry of Transportation and Infrastructure. Among the variables reported were the avalanche size; whether the avalanches were slab (those used in this study) or loose; and the water content of the avalanche deposit (dry, moist or wet) (Reference FierzFierz and others, 2009).

All Canadian data adhered to the observation and recording standards published by the Canadian Avalanche Association (2007), the first edition of which was published in 1981 as Technical Memorandum No. 132 from the National Research Council of Canada.

3.1. Snow climates for Bear Pass and Kootenay Pass

Alpine snow climates (Reference Armstrong and ArmstrongArmstrong and Armstrong, 1987; Reference Hägeli and McClungHägeli and McClung, 2003; Reference HaegeliHaegeli, 2004; Reference McClung and SchaererMcClung and Schaerer, 2006) are classified as maritime, continental or transitional between the two. A maritime snow climate usually has high amounts of snow, winter temperatures that can fluctuate to produce rain at any time during the winter and a relatively warm snowpack. A continental snow climate generally has low amounts of snow, mostly low temperatures throughout the winter and a dry snowpack. A transitional snow climate lies between these two extremes. The character of a snowpack and the avalanches that occur also depend on altitude, with the amount of snow received increasing sharply with altitude, and snowpack temperatures decreasing with increasing altitude.

Of the two areas here with avalanche data, Bear Pass, Coast Mountains, is in a maritime snow climate (Reference HaegeliHaegeli, 2004; Reference McClung and SchaererMcClung and Schaerer, 2006) and Kootenay Pass, Columbia Mountains, is in a transitional one (Reference Hägeli and McClungHägeli and McClung, 2003; Reference HaegeliHaegeli, 2004; Reference McClung and SchaererMcClung and Schaerer, 2006). The altitude dependence of the snow stations is also important. Bear Pass (Province of British Columbia, 1982) has an altitude of 450 m and is very close to the coast, and Kootenay Pass (Province of British Columbia, 1989) has an altitude of 1775 m with a location far into the interior of BC (Fig. 1). Appendix B (Tables 9 and 10) contains information to help place the stations in climate and altitude zones for BC

The total numbers of avalanches for 30 winters, stratified by water content of the debris, snow climate and altitude, are listed in Table 1. The larger number of avalanches for Bear Pass (Table 1) arose mainly because Bear Pass (Province of British Columbia, 1982) has more active avalanche paths than Kootenay Pass (Province of British Columbia, 1989).

Table 1. Total avalanches (size 2 or greater; Appendix A) for Bear Pass and Kootenay Pass, stratified by the water content of the debris (Reference FierzFierz and others, 2009), from 1981/82 through 2010/11

3.2. Tests of significance for differences between means of annual maximum snow depth

Sample statistics for annual maximum snow depth at the two snow stations showed that data were not highly skewed and the medians were equal to the means (Table 10 in Appendix B). Thus, it is meaningful to compare the means of maximum snow depth for winters classified as El Niño and La Niña. Table 2 shows results of the t-tests on the means for strong La Niña (x < –0.6) and strong El Niño (x > 0.6) years as well as the means for neutral years. The chosen level for statistical significance is the probability value p ≤ 0.05 (Reference Walpole and MyersWalpole and Myers, 1978) which is used throughout this paper.

Table 2. Mean of annual maximum snow on the ground for strong El Niño and La Niña winters including t-test results for significance of the differences. The differences are considered significant statistically for p < 0.05. The means increase in the order: El Niño → neutral → La Niña. The p-values for comparison of neutral years to El Niño and La Niña years are not significant (p > 0.05) except for neutral/La Niña at Kootenay Pass

The results (Table 2) show the mean of the maximum snow depths measured in strong La Niña years is higher than in neutral or strong El Niño years. I made similar calculations for Grouse Mountain, BC (maritime snow climate; 1126 m a.s.l.; latitude 49-23, longitude 132-04; p = 0.002) and Mount Fidelity, Rogers Pass, BC (transitional snow climate; 1852 m a.s.l.; latitude 51-14, longitude 117- 41; p <0.001). All four stations (Fig. 1) exhibited higher annual maximum snow during strong La Niña winters, with three of the four (not Bear Pass) showing highly significant differences.

For comparison with Table 2, Mount Fidelity had means of 3.7 m (8 strong La Niña years), 3.2 m (29 neutral years) and 2.9 m (12 strong El Niño years), with p = 0.04 for both La Niña/neutral and El Niño/neutral t-test comparisons. These indicated statistically significant differences between all three groups. Grouse Mountain had means of 4.0m (12 La Niña years), 2.8m (36 neutral years) and 2.6m (13 El Niño years), with p =0.002 for the t-test contrast between La Niña/neutral years but without significant (p =0.48) contrast between neutral and El Niño years. The ranking was the same for all four areas, with mean snow amounts decreasing in the order: La Niña → neutral → El Niño.

4. Comparison of Slab Avalanche Activity at Bear Pass and Kootenay Pass for La Niño and El Niño Winters

The effects of La Niña/El Niño on slab avalanche activity were studied for 30 winters of snow and avalanche records from 1981/82 through 2010/11 for Bear Pass and Kootenay Pass. The analysis included number of avalanches, avalanche size on the Canadian avalanche size classification system, and percentage of avalanches with deposits that were dry or wet.

Slab avalanches of sizes ≥2 were analyzed. Size 1 avalanches were excluded since they consist mostly of small sloughs which are usually not harmful and are not considered in planning. Another reason for excluding size 1 avalanches is that many are small and unlikely to be recorded in highways operations since they may not reach highway level and lack of visibility may prevent accurate recording.

4.1. Number and percentage of dry and wet avalanches

Here I compare results for strong La Niña and El Niño years. Table 3 gives the results of t-tests on the annual means of the total number of avalanches (≥ size 2), the total number of dry and wet avalanches and the percentage of dry and wet avalanches. Analysis of moist avalanches was also completed, but there was no significant difference between the means for number or percentage for the two types of winter in this subsection or Section 4.2.

Table 3. Significance (t-tests for difference between the annual means) comparing strong El Niño and La Niña years with avalanche activity. The asterisk indicates lack of significance (p > 0.05). Variables not listed are not statistically significant. The p-values for comparison of neutral years to El Niño and La Niña years are not significant (p > 0:05)

The data (Table 3) show that the total number of dry avalanches and the percentage of dry avalanches were significantly higher for Bear Pass during La Niña years. Although not statistically significant, the total number of wet avalanches (not shown in Table 3) and the percentage of wet avalanches were both higher during El Niño years for Bear Pass. Table 3 also contains annual means for neutral winters. The data show that neutral winters consistently had values intermediate between strong La Niña and El Niño winters, and the largest contrast between the three groups is between La Niña and El Niño winters.

The t-tests contained the assumption that variables were approximately Gaussian-distributed, which I verified for the variables in Table 3 by constructing probability plots. To compare the results with non-parametric assumptions, I repeated the calculations in Table 3 using Mann–Whitney U tests based on ranks. The p-values were not altered except for total dry avalanches at both Bear Pass and Kootenay Pass. Both had p = 0.06 (Mann–Whitney) compared to p = 0.04 (Bear Pass) and p = 0.03 (Kootenay Pass) using t-tests. Both Bear Pass and Kootenay Pass had mean and median values of total number of dry avalanches in strong La Niña years which were approximately double those in strong El Niño years.

The combined results (Tables 13) suggest more snow, more avalanches and a higher percentage of dry avalanches for La Niña winters, with the latter being strongly dependent on altitude and snow climate. The low-altitude Bear Pass location exhibited the effects of El Niño on the type of avalanche (wet or dry), whereas Kootenay Pass showed the effects of a higher, interior location with receipt of more snow and more avalanches during La Niña winters. The number of wet avalanches at Kootenay Pass was so low (Table 1) that the statistics had very little meaning. Both areas displayed a higher mean percentage of moist avalanches in El Niño years compared to La Niña, but the differences were not statistically significant (p > 0.05).

4.2. Rank correlation of avalanche activity and snow amounts vs the Oceanic Niño Index (ONI)

Table 4 contains Spearman rank correlation of avalanche activity variables, amounts of snow and the ONI to compare El Niño and La Niña winters. Since the ONI and maximum annual snow were not Gaussian-distributed, Spearman rank correlation coefficients are reported. The results (Table 4) are consistent with those in Table 3, showing a lower number and percentage of dry avalanches and amount of snow during El Niño winters. The values (Table 4) are consistent for both areas since the total number of avalanches and total number of dry avalanches decreased during El Niño years.

Table 4. Rank correlations for snow and avalanche activity vs ONI for 30 years of records. The results are significant (p = 0.05) if the correlation coefficient is ≤ –0.305. Variables not listed are not statistically significant

4.3. Rank correlation of avalanche activity vs the maximum annual snow depth

Spearman rank correlations of avalanche activity variables vs the maximum annual snow depth are reported here for Bear Pass and Kootenay Pass, stratified by La Niña and El Niño winters.

For Bear Pass (Table 5), there was no significant correlation with avalanche activity (number of avalanches, water content of debris, or size) with annual maximum snow amounts for La Niña winters. The total number of dry avalanches (size ≥ 3) was included (Table 5) since it shows that the correlation of the total number of these large avalanches was due to moist and wet avalanches during El Niño winters. From Table 5, the strong effects of El Niño are evident on the water content of the avalanches at Bear Pass.

Table 5. Rank correlations for variables that have significant rank correlation with maximum annual snow depth for 14 El Niño winters at Bear Pass. The critical value for significance is 0.457 (p = 0.05). The asterisk indicates lack of significance. Variables not reported are not statistically significant

At Kootenay Pass (Table 6), in contrast, there was no significant correlation for avalanche activity and maximum snow depth during El Niño winters. The results in Table 6 (La Niña winters) and lack of significant correlation results for El Niño years show the dominance of the drier, colder conditions at Kootenay Pass. The results suggest that La Niña dominates the results at Kootenay Pass to yield more avalanches, more dry avalanches and a significant decrease in moist avalanches. Since the percentage of wet avalanches is so low at Kootenay Pass (Table 1), the percentage of moist avalanches must decrease as the percentage of dry avalanches increases.

Table 6. Rank correlations for variables that have significant correlation with maximum annual snow depth for 13 La Niña winters at Kootenay Pass. The critical absolute value is 0.475 (p = 0.05). Variables not reported are not statistically significant

The correlations of maximum annual snow amounts with the avalanche variables (Tables 5 and 6) are not trivial. Both the lack of significant correlations during La Niña winters at Bear Pass (Table 5) and the lack of significant correlations for El Niño winters at Kootenay Pass (Table 6) are important, as well as information on avalanche size.

Figure 5 contains time series for the annual total number of avalanches for Bear Pass and Kootenay Pass. For Bear Pass, the lowest avalanche total occurred in the record El Niño year of 1997 (x = 2.2) with the second lowest snow total. However, the highest avalanche total was in 2006, also an El Niño year (x = 0.6), but with the highest snow total. These results agree with Table 5 which shows high correlation (0.93) between total snow and total avalanches for El Niño winters. For Kootenay Pass, the highest total of avalanches was in a weak El Niño year (1992; x = 0.4) with a below-average snow total. However, the lowest avalanche total was in a strong El Niño year (2002; x = 1.2) with snow total near the median. These results are consistent with the analysis from Kootenay Pass (Table 6) that total avalanches do not have significant rank correlation with total snow depth during El Niño winters. These extremes show complexity and that the correlations with the ONI (Table 4) can only be taken to apply on average, not to individual years.

Fig. 5. Time series for total avalanches from (a) Bear Pass and (b) Kootenay Pass.

4.4. Results for large avalanches

The previous results are largely for avalanches with sizes ≥2. Bear Pass has enough avalanches for an analysis of large avalanches with size ≥3. These are responsible for the majority of backcountry fatalities in Canada (CAA, 2011) and are of primary importance in land-use planning (CAA, 2002a,b).. However, size 2 avalanches account for about one-quarter of avalanche fatalities in Canada; they also block roads, and are much more numerous than size 3 avalanches.

The results of t-tests comparing the annual mean number of large avalanches (size ≥3) and contrasting El Niño and La Niña years showed no statistical difference between the two types of winter for either Bear Pass or Kootenay Pass. These results hold for either ONI grouping (1. outside 195% confidence limits on the mean; or 2. strong: |x| > 0.6).

At Bear Pass, rank correlation of total number of avalanches of sizes ≥3 with the ONI (30 years of record) was −0.05, which is not close to being statistically significant. Rank correlation of the total number of dry avalanches (size ≥3) with the ONI (30 years of record) was −0.29 compared to the significance level (−0.305).

Calculations were also made for the total numbers of avalanches and dry avalanches with sizes ≥3 for Kootenay Pass. Results similar to Bear Pass were obtained, with no statistical difference between the mean numbers (t-tests) for the two different types of winter. The rank correlations (sizes ≥3) of the total number of avalanches and total number of dry avalanches with the ONI (30 years of record) were −0.16 and −0.22 respectively. These results and those in Table 5 are important since they imply that the character of an El Niño/ La Niña winter may not be important in land-use planning where extreme avalanches are considered. However, these results cannot be extrapolated to highway applications or backcountry travel, since size 2 avalanches are important for those applications.

5. Effects of Avalanche Control

Avalanche paths at Kootenay Pass and Bear Pass are subject to avalanche control by use of explosives. At Kootenay Pass the majority of paths are regularly controlled by explosives while the proportion at Bear Pass is only ∼10% (Reference McClungMcClung, 2003). At Bear Pass, of 13 475 avalanches (sizes ≥2) with recorded triggers, 77% (10 339) were naturals, with 23% (3136) triggered by explosives. For sizes ≥3, 79% were naturals and 21% triggered by explosives. Thus, some of the Kootenay Pass results may be affected by avalanche control. However, this is less likely for Bear Pass. An analysis of avalanche paths both with and without avalanche control was performed at Rogers Pass on variables which affect avalanche frequency (Reference McClungMcClung, 2003), and the results were nearly identical, indicating little effect of avalanche control on frequency.

Explosive control is used mainly to control the timing of avalanche release on highways so the public is not threatened. In order to achieve results with avalanche control, a slab and weak layer are required (as with any slab avalanche). The slab–weak-layer combination is not a product of avalanche control. Avalanche control will not affect the snow supply or water content. Time-series trend analysis (Fig. 5) for total number of avalanches (30 years; sizes ≥2) from both Bear and Kootenay Pass using the Mann–Kendall test gave p = 0.33 (Bear Pass) and p = 0.87 (Kootenay Pass). Both imply no significant time trend in the number of avalanches.

The main objective of this paper is to understand the pattern of avalanching in relation to El Niho/La Niña effects. In general, the avalanching pattern is heavily influenced by snow supply (Reference Smith and McClungSmith and McClung, 1997; Reference McClungMcClung, 2003). The most likely effect of avalanche control should be on the size distribution, with a slight predominance of smaller avalanches. However, the main avalanche size result in this paper comes from Bear Pass which is not subject to heavy avalanche control. At Bear Pass, the median and mean sizes for avalanches (sizes ≥2) were found to be the same (size 2.5) both for avalanches triggered by explosives and naturals.

6. Analysis of Snow Data for the Central Chilean Andes

Here I present analysis of snow data from high-mountain stations at El Indio and Minera Los Pelambres. No companion avalanche records exist and temperature data are not available. The data consist of total storm snow amounts for 24 years (1981–2004) for El Indio and 21 years (1990–2010) at Minera Los Pelambres.

For El Indio, t-tests for the difference in means (total storm snow) for all years gave 3.5 m (El Niño years) compared with 1.7m (La Niña years) (p = 0.06) and 4.3 m (7 strong El Niño years) and 1.2 m (3 strong La Niña years) (p = 0.05). These results are opposite to those from BC, which show more snow in La Niña years. Rank correlation of the ONI with total snow amounts gave 0.59 (24 years; p <0.005), 0.68 (12 El Niño years; p <0.025) and 0.10 (10 La Niña years), with the latter not being significant. The data from Minera Los Pelambres had Spearman rank correlation with the ONI vs total snowfall of 0.40 (21 years; p <0.05 ) with 0.99 (6 strong El Niño years; p <0.01) and 0.00 (3 strong La Niña years).

Cross-correlation time-series analysis of maximum snow amounts with the ONI showed significant positive correlation at zero lag for the two Chilean stations and significant negative correlation for all four stations in BC. Figure 6 shows cross-correlation plots from Grouse Mountain, BC, and Minera Los Pelambres, Chile. The Chilean results are opposite to those for BC, which is characterized by high snow amounts in La Niha years and negative correlation with the ONI (Table 4). For the largest value of the ONI (2.2 in 1997; Fig. 4), the third highest snow total was measured at El Indio (7.0m) and the largest storm total (7.2 m) was measured at Minera Los Pelambres. For 1997/98, Bear Pass had the lowest total number of avalanches and second lowest snow total for the 30 years of record. The corresponding prediction for the central Chilean Andes is the opposite: a relatively high number of avalanches for 1997. In fact, extensive and exceptional avalanche activity was observed in central Chile during 1997 (personal communication from C.J. Stethem, 2012). Since snow supply is a primary determinant of avalanche frequency (Reference Smith and McClungSmith and McClung, 1997; Reference McClungMcClung, 2003) this is expected.

Fig. 6. Cross-correlation time-series plots of maximum snow depth vs ONI: (a) Grouse Mountain, BC, showing negative correlation at lag zero; and (b) Minera Los Pelambres, Chile, showing positive correlation with total annual snowfall amounts. The correlations are significant when they fall outside the lines representing two standard errors.

Without avalanche records, the expectation for El Niño winters to be big avalanche winters in central Chile was not confirmed here. However, Reference León and PerlaLeón (1978) reported statistics for 182 avalanche fatalities in central Chile (1926–76), including accidents (fatalities in parentheses) in the El Niño years (Reference BryantBryant, 2005) of 1926 (9), 1941 (7) and 1944 (120). Of accidents before 1950, only one was not in an El Niño year, in 1936 (3). Years with fatal accidents reported since 1950 (with ONI in parentheses) included: 1953 (0.4); 1959 (−0.3); 1965 (1.0): 2 accidents; 1969 (0.6); and 1972 (1.2). In addition, the Boston Globe newspaper reported 2 dead and more than 60 missing on 30 November 1987 (1.6). Thus, only 1 of the 7 fatal accidents since 1950 occurred during a weak La Niña year (1959), with 4 of the remaining 6 accidents occurring during strong El Niño years, and another with a large ONI of 0.6. Of fatal accidents reported since 1926, 10 were in El Niño years and 2 were not. Reference León and PerlaLeón (1978) provided a detailed description of the Caracoles railway accident in the big El Niño year of 1941 (7) and reported that the same large, climax-type avalanche ran again in the strong El Niño year 1972 (ONI of 1.2) but with no fatalities.

The snow data from Chile are important since they show that the results from BC cannot be easily extrapolated to other areas. In fact, the picture is quite complex. The results from central Chile should not be extended north, even as far as the Bolivian Altiplano which generally experiences drought during El Niño (Reference Vuille, Kaser and JuenVuille and others, 2008). Glaciar Zongo, Cordillera Real, Bolivia (16-25S, 68-17W; Les Services d’Observation GLACIOCLIM, 2012) has mass balance controlled by precipitation variability (Reference Vuille, Kaser and JuenVuille and others, 2008). I calculated rank correlation with annual net mass-balance data with the ONI from Glaciar Zongo for 19 years of data. I obtained rank correlation −0.57 (p < 0.01). The highest negative mass balance was from the record El Niho year of 1997, which implies the opposite of the snowfall records from central Chile.

7. Conclusions and Discussion

The results suggest that altitude and snow climate affect both the temperature regime and the amount of snow which control the pattern of avalanching. In BC more snow arrives during La Niña winters and this is linked to the higher numbers of avalanches.

Reference Stahl, Moore and McKendryStahl and others (2006) showed that El Niño winters are warmer than normal in southern BC and along the coast, while La Niña winters are colder than normal along the coast and in central and northern BC. More importantly, Reference Stahl, Moore and McKendryStahl and others (2006) showed that winter temperatures are significantly lower in La Niña years than in El Niño years. Temperature effects are not directly analyzed here but are evident in the data and consistent with the analysis of Reference Stahl, Moore and McKendryStahl and others (2006). At Bear Pass, the mix of water content of avalanche debris was affected, with double the percentage of wet avalanches at Bear Pass for El Niño compared to La Niña years and a progressive increase in water content from La Niña → neutral → El Niño. The colder La Niña winters show an increasing percentage of dry avalanches at Kootenay Pass compared to moist. For both Bear Pass and Kootenay Pass, the snow supply (Table 2) and total numbers of avalanches (Table 3) follow the same trend decreasing from La Niña → neutral → El Niño winters. Not all differences between the three groups of winters are statistically significant, but the trends found in all variables (Table 3) show that differences between the three groups cannot be dismissed as insignificant.

El Niño/La Niña modify both winter temperatures and snowfall in BC (Reference Moore and McKendryMoore and McKendry, 1996; Reference Stahl, Moore and McKendryStahl and others, 2006). Temperature effects on avalanche forecasting have been analyzed extensively at both Kootenay Pass (Reference McClung and TweedyMcClung and Tweedy, 1994) and Bear Pass (Reference FloyerFloyer, 2003; Reference Floyer and McClungFloyer and McClung, 2003). The results of the forecasting temperature analyses are in excellent correspondence with the snow and avalanche patterns in this paper and the results of Reference Stahl, Moore and McKendryStahl and others (2006).

At Kootenay Pass, temperature is not a significant predictor for dry avalanches (Reference McClung and TweedyMcClung and Tweedy, 1994). Most of the avalanches here are dry (Table 1). Table 3 shows that at Kootenay Pass the only significant variables in the progression La Niña → El Niño winters are decreases in total number and total number of dry avalanches. The significant snow total differences (Table 2) dominate in this case. The reason is that Kootenay Pass is a cold, high-elevation location far from the coast so that the effects of El Niño (Table 6) do not dominate. At Kootenay Pass, the only significant variable directly associated with temperature effects in all the tables is percent decrease in moist avalanches correlated with maximum annual snow depth for La Niña winters (Table 6).

At Bear Pass (Reference FloyerFloyer, 2003; Reference Floyer and McClungFloyer and McClung, 2003), present temperature, in combination with snowfall, is the most significant variable for predicting dry avalanches, but the correlation is negative, meaning decreasing chance of dry avalanches with increasing temperature. For Bear Pass (Table 3), the most significant change in the progression La Niña → El Niño is the percent decrease in dry avalanches and there is also a progressive increase in percent wet avalanches. The snow totals also decrease from La Niña → El Niño, but the differences are not statistically significant (Table 2). At Bear Pass, the results show that for El Niño (Table 5) the associated temperature and snowfall effects dominate for the low-altitude, coastal location. However, at Kootenay Pass, La Niña (Table 6) and the associated increased snow amounts dominate (Table 2) for the high-altitude, interior location.

The avalanche results (Tables 36) are consistent with those of Reference Stahl, Moore and McKendryStahl and others (2006): warmer conditions with less snow during El Niño winters and the reverse in La Niña winters for BC. These results, although expected, are not trivial. From the perspective of global climate change, the results suggest that both mountain snowfall amounts and winter temperatures must be predicted a long time into the future in order to specify the pattern of snow avalanching.

The occurrence of El Niño and La Niña winters is predictable. My results suggest that the general character of snow avalanche activity in a given winter can be roughly predicted, which may facilitate planning. In BC, La Niña brings more snow and lower temperatures which are good for tourism since better skiing is likely. However, La Niña should bring an increase in the total number of avalanches and the percentage of dry ones. Dry avalanches are the major concern for BC’s industries since they generate the highest impact forces, run the furthest (Reference McClung and SchaererMcClung and Schaerer, 2006) and kill the most people (CAA, 2011). In central Chile, El Niño brings the big snow years. In Chile, avalanches impact on transportation routes, mining and tourism (León, 1976). The link to climate is also of interest for the study of glaciers since snow avalanching makes an important contribution to mass balance of glaciers (Reference Benn and EvansBenn and Evans, 1998), whose accumulation zones are bordered by steep terrain.

The results showing lack of correlation for avalanches of sizes ≥3 must be treated carefully. Size 2 avalanches are important for backcountry safety purposes since they account for a significant number of avalanche fatalities (CAA, 2011). Size 2 avalanches can also block highway and railway lines. For land-use planning such as for occupied buildings where return periods of avalanches are on the order of hundreds of years, my results suggest El Niño/La Niña effects are not significant.

Avalanches of sizes ≥3 often have persistent forms (surface hoar, facets, depth hoar) as weak layers rather than new snow (Reference HaegeliHaegeli, 2004). Such weak-layer forms require short-term (1 day to weeks) periods of good weather for their formation. Thus, the formation of such large avalanches often depends importantly on weather in addition to the effects of climate. The need for persistent-form weak layers may help to explain the lack of correlation of large avalanches with the effects of El Niño/La Niña, but it cannot be proven with the data in this paper.

This paper is the first to illustrate avalanche patterns likely as a result of El Niño/La Niña. However, the effects of El Niño/La Niña should not be taken, in general, as dominant. People forecast avalanches on the basis of current conditions and weather, not climate (Reference McClung and SchaererMcClung and Schaerer, 2006), and the El Niño/La Niña contrast is only one of several climate effects. Many of the correlations in this paper are just at or above the significance level (p ≤ 0.05), and that is expected since there are numerous factors that determine the pattern of slab avalanches. What this paper demonstrates is that the effect of El Niño/La Niña is one of those factors. The time-series analysis for total avalanches (Section 4.3; Fig. 5) clearly shows that one cannot form expectations entirely on the basis of a general prediction for an El Niño/ La Niña winter.

Acknowledgements

This work was funded by the Natural Science and Engineering Research Council of Canada, Canadian Mountain Holidays and the University of British Columbia. Avalanche occurrence records were provided by the Ministry of Transportation and Infrastructure, Victoria, British Columbia, Canada. I am grateful for all of the support and data records.

Appendix A: Summary of the Canadian Avalanche Size Classification System and List of Variables

Table 7 contains the Canadian avalanche size classification and the descriptors.

The basic variables used in this study are listed in Table 8 along with descriptions. All variables refer to totals for each snow season.

In Table 8, the water content (dry, moist, wet) (Reference McClung and SchaererMcClung and Schaerer, 2006; Reference FierzFierz and others, 2009) refers to that in the deposit of the avalanche.

Table 7. The Canadian avalanche size classification system based on destructive potential

Table 8. Variables used in the study

Appendix B: Descriptive Statistics for Bear Pass and Kootenay Pass

Table 9 contains the basic characteristics and locations for both areas. Table 10 contains a summary of the basic descriptive statistics for both stations. All values refer to the maximum snow depth measured each winter.

Table 9. Variables used in the study

Table 10. Variables used in the study

References

Armstrong, RL and Armstrong, BR (1987) Snow and avalanche climates of the western United States: a comparison of maritime, intermountain and continental conditions. IAHS Publ. 162 (Symposium at Davos 1986 – Avalanche Formation, Movement and Effects), 281294 Google Scholar
Benn, DI and Evans, DJA (1998) Glaciers and glaciation. Arnold, London Google Scholar
Bryant, E (2005) Natural hazards, 2nd edn. Cambridge University Press, Cambridge Google Scholar
Canadian Avalanche Association (CAA) (2002a) Guidelines for snow avalanche risk determination and mapping. Canadian Avalanche Association, Revelstoke, B.C.Google Scholar
CAA (2002b) Land managers’ guide to snow avalanche hazards in Canada . Canadian Avalanche Association, Revelstoke, B.C.Google Scholar
CAA (2007) Observation guidelines and recording standards for weather, snowpack, and avalanches. Canadian Avalanche Association, Revelstoke, B.C.Google Scholar
Castebrunet, H, Eckert, N and Giraud, G (2012) Snow and weather climatic control on snow avalanche occurrence fluctuations over 50 yr in the French Alps. Climate Past, 8(2), 855875 (doi: 10.5194/cp-8-855-2012)Google Scholar
Fierz, C and 8 others (2009) The international classification for seasonal snow on the ground. (IHP Technical Documents in Hydrology 83) UNESCO–International Hydrological Programme, Paris Google Scholar
Fitzharris, BB (1981) Frequency and climatology of major avalanches at Rogers Pass, 1909 to 1977. (DBR Paper 956/NRCC Paper 19020) Division of Building Research, National Research Council of Canada, Ottawa, Ont.Google Scholar
Floyer, JA (2003) Statistical avalanche forecasting using meteorological data from Bear Pass, British Columbia, Canada. (MSc thesis, University of British Columbia)Google Scholar
Floyer, JA and McClung, DM (2003) Numerical avalanche prediction: Bear Pass, British Columbia, Canada. Cold Reg. Sci. Technol., 37(3), 333342 (doi: 10.1016/S0165-232X(03)00074-0)Google Scholar
García-Sellés, C, Peña, JC, Marti, G, Oller, P and Martinez, P (2010) WeMOI and NAOi influence on major avalanche activity in the Eastern Pyrenees. Cold Reg. Sci. Technol., 64(2), 137145 (doi: 10.1016/j.coldregions.2010.08.003)Google Scholar
Haegeli, PT (2004) Scale analysis of avalanche activity on persistent snowpack weaknesses with respect to large-scale backcountry avalanche forecasting. (PhD thesis, University of British Columbia)Google Scholar
Hägeli, P and McClung, DM (2003) Avalanche characteristics of a transitional snow climate – Columbia Mountains, British Columbia, Canada. Cold Reg. Sci. Technol., 37(3), 255276 (doi: 10.1016/S0165-232X(03)00069-7)CrossRefGoogle Scholar
Keylock, CJ (2003) The North Atlantic Oscillation and snow avalanching in Iceland. Geophys. Res. Lett., 30(5), 1254 (doi: 10.1029/2002GL016272)CrossRefGoogle Scholar
Laternser, M and Schneebeli, M (2002) Temporal trend and spatial distribution of avalanche activity during the last 50 years in Switzerland. Natur. Hazards, 27(3), 201230 (doi: 10.1023/A:1020327312719)Google Scholar
León, RE (1978) An avalanche tragedy in Chile. In Perla, R ed. Proceedings of the International Snow Science Workshop, 1– 4 November 1976, Banff, Alberta. National Research Council Canada, Ottawa, Ont., 219224 Google Scholar
Les Services d’Observation GLACIOCLIM (2012) Les sites de mesure de GLACIOCLIM-Andes. Laboratoire de Glaciologie et Géophysique de l’Environnement, Grenoble http://wwwlgge.ujf-grenoble.fr/ServiceObs/SiteWebAndes/sitesmesure.htm Google Scholar
McClung, DM (2003) Magnitude and frequency of avalanches in relation to terrain and forest cover. Arct. Antarct. Alp. Res., 35(1), 8290 Google Scholar
McClung, D and Schaerer, P (2006) The avalanche handbook, 3rd edn. The Mountaineers, Seattle, WA Google Scholar
McClung, DM and Tweedy, J (1994) Numerical avalanche prediction: Kootenay Pass, British Columbia, Canada. J. Glaciol., 40(135), 350358 Google Scholar
Moore, RD and McKendry, IG (1996) Spring snowpack anomaly patterns and winter climatic variability, British Columbia, Canada. Water Resour. Res., 32(3), 623632 (doi: 10.1029/95WR03640)Google Scholar
Province of British Columbia. Ministry of Environment (2011) Historic snow survey data: station selection. Province of British Columbia, Ministry of Environment http://a100.gov.bc.ca/pub/mss/stationlist.do Google Scholar
Province of British Columbia. Ministry of Transportation and Highways, Snow Avalanche Section (1982) Snow avalanche atlas, Bear Pass, Stewart–Hyder. Province of British Columbia, Ministry of Transportation and Highways, Vancouver, B.C.Google Scholar
Province of British Columbia. Ministry of Transportation and Highways, Snow Avalanche Section (1989) Snow avalanche atlas: Kootenay Pass, 2nd edn. Province of British Columbia, Ministry of Transportation and Highways, Vancouver, B.C.Google Scholar
Redmond, K (2005) Classification of El Niño and La Niña winters. Western Regional Climate Center, Desert Research Institute, Reno, NV http://www.wrcc.dri.edu/enso/ensodef.html Google Scholar
Smith, MJ and McClung, DM (1997) Avalanche frequency and terrain characteristics at Rogers Pass, British Columbia, Canada. J. Glaciol., 43(143), 165171 CrossRefGoogle Scholar
Stahl, K, Moore, RD and McKendry, IG (2006) The role of synoptic-scale circulation in the linkage between large-scale ocean– atmosphere indices and winter surface climate in British Columbia, Canada. Int. J. Climatol., 26(4), 541560 (doi: 10.1002/joc.1268)Google Scholar
US National Weather Service (USNWS), Climate Prediction Center (2011) Cold and warm episodes by season: changes to the Oceanic Niño Index (ONI). National Oceanic and Atmospheric Administration, Madison, WI http://www.cpc.ncep.noaa.gov/products/analysis_monitoring/ensostuff/ensoyears.shtml Google Scholar
Vuille, M, Kaser, G and Juen, I (2008) Glacier mass balance variability in the Cordillera Blanca, Peru and its relationship with climate and the large-scale circulation. Global Planet. Change, 62(1–2), 1418 (doi: 10.1016/j.gloplacha.2007.11.003)Google Scholar
Walpole, R and Myers, R (1978) Probability and statistics for engineers and scientists, 2nd edn. Macmillan, New York CrossRefGoogle Scholar
Figure 0

Fig. 1. Locations of the four snow stations analyzed.

Figure 1

Fig. 2. A dry slab avalanche (size 3) in motion at Whistler Bowl, BC. Photograph by T. Salway.

Figure 2

Fig. 3. ONI vs year. The index was calculated from the average of SST values using six monthly (each a 3 month moving average) values from July through December.

Figure 3

Fig. 4. Probability plot for the ONI vs quantiles for the GEV PDF. The outlier at the right (2.2) is the record year of 1997.

Figure 4

Table 1. Total avalanches (size 2 or greater; Appendix A) for Bear Pass and Kootenay Pass, stratified by the water content of the debris (Fierz and others, 2009), from 1981/82 through 2010/11

Figure 5

Table 2. Mean of annual maximum snow on the ground for strong El Niño and La Niña winters including t-test results for significance of the differences. The differences are considered significant statistically for p < 0.05. The means increase in the order: El Niño → neutral → La Niña. The p-values for comparison of neutral years to El Niño and La Niña years are not significant (p > 0.05) except for neutral/La Niña at Kootenay Pass

Figure 6

Table 3. Significance (t-tests for difference between the annual means) comparing strong El Niño and La Niña years with avalanche activity. The asterisk indicates lack of significance (p > 0.05). Variables not listed are not statistically significant. The p-values for comparison of neutral years to El Niño and La Niña years are not significant (p > 0:05)

Figure 7

Table 4. Rank correlations for snow and avalanche activity vs ONI for 30 years of records. The results are significant (p = 0.05) if the correlation coefficient is ≤ –0.305. Variables not listed are not statistically significant

Figure 8

Table 5. Rank correlations for variables that have significant rank correlation with maximum annual snow depth for 14 El Niño winters at Bear Pass. The critical value for significance is 0.457 (p = 0.05). The asterisk indicates lack of significance. Variables not reported are not statistically significant

Figure 9

Table 6. Rank correlations for variables that have significant correlation with maximum annual snow depth for 13 La Niña winters at Kootenay Pass. The critical absolute value is 0.475 (p = 0.05). Variables not reported are not statistically significant

Figure 10

Fig. 5. Time series for total avalanches from (a) Bear Pass and (b) Kootenay Pass.

Figure 11

Fig. 6. Cross-correlation time-series plots of maximum snow depth vs ONI: (a) Grouse Mountain, BC, showing negative correlation at lag zero; and (b) Minera Los Pelambres, Chile, showing positive correlation with total annual snowfall amounts. The correlations are significant when they fall outside the lines representing two standard errors.

Figure 12

Table 7. The Canadian avalanche size classification system based on destructive potential

Figure 13

Table 8. Variables used in the study

Figure 14

Table 9. Variables used in the study

Figure 15

Table 10. Variables used in the study