Hostname: page-component-586b7cd67f-2brh9 Total loading time: 0 Render date: 2024-11-26T14:04:09.774Z Has data issue: false hasContentIssue false

An alternate statistical interpretation of the strength of snow : comments on the paper by H. Gubler

Published online by Cambridge University Press:  30 January 2017

R. A. Sommerfeld*
Affiliation:
Rocky Mountain Forest and Range Experiment Station, U.S. Forest Service, 240 West Prospect Street, Fort Collins, Colorado 80526, U.S.A.
Rights & Permissions [Opens in a new window]

Abstract

Type
Correspondence
Copyright
Copyright © International Glaciological Society 1979

Sir,

Reference GublerGubler (1978[a], [b]) presents very interesting work which may lead to a greater understanding of the physical processes involved in snow failure. However, he raises a point in the second paper which I do not believe to be valid. To quote Gubler “From the strong dependence of the strength distribution on sample size, it follows that the link definition of Sommerfeld is very critical”. In fact, extreme-value statistics show that the large-volume strengths of materials do not depend much on sample size, but are critically dependent on the distribution of the weakest strengths in the material. Gubler’s calculations show this very clearly, as did Reference EpsteinEpstein’s (1948) analytical work. The way different distributions tail off at the low end critically determine the predicted large-volume strengths. If the samples are large enough, the volume dependence of the strength is low.

Actually, the most accurate way to determine the large-volume strength of a material is to measure the strengths of large volumes, not as Gubler seems to imply, very small volumes. In large-volume measurements, all questions of detailed material structure, like Gubler’s “link definitions” are necessarily ignored. Large volumes of snow are very difficult to handle and it would be very convenient if the large-volume strengths could be derived from measurements on smaller volumes. As I have shown (Reference SommerfeldSommerfeld, 1974) practical test-sample sizes probably do not measure the lowest strengths accurately. These inaccuracies result not from theoretical definitions but from the practical consideration of sample-wall interference with material flaws.

Concerning shear strengths, Gubler asks “But what happens if the measurements are performed with a different shear-frame size?” One answer, of course, is that Daniels’ statistics predict that the larger the frame size the lower the mean strength and the lower the standard deviation of the measurements. If Daniels’ statistics accurately apply to snow, the same large-volume failure stress would be predicted no matter what the test-sample size. This is clearly seen by considering Daniels’ example of a bundle of a large number of threads. The bundle will fail at some stress. This stress is predicted, according to Daniels, by sampling the strengths of the threads. It does not matter if we consider the strength distribution of single threads or, for example, pairs of threads. If the theory is correct, the predicted failure stress for each analysis would be correct and both equal to the actual failure stress. This is true of the prediction up to the trivial case of the sample consisting of one test on the whole bundle.

A properly designed test using different size samples would be one way to test the applicability of Daniels’ statistics to snow, Reference SommerfeldPerla (1977) presents one such experiment comparing 25 tests each with 0.01 m2and 0.25 m2 frames. He found a decrease in mean strength and standard deviation as predicted by Daniels, but did not determine the Daniels strength for each case.

Both Daniels’ and Gubler’s use of integral expressions implies they are dealing with a continuous medium and not a body made of discrete elements. With a large number of “threads” or “fundamental units”, the distinction is not important, but then, neither is the exact character of the elements so long as they are described accurately enough by the chosen distribution.

For these reasons, I strongly disagree with Gubler’s implication that the test-sample size is theoretically critical to the determination of large-volume strengths. I do agree that for extreme-value predictions of large-volume strengths, the exact distribution of the lowest strengths is critical. If Gubler’s analysis could lead to the determination of which of all possible distributions is the “natural” or most accurate one, more confidence could be attributed to the predictions. One result from Gubler’s definitions of fundamental units is that it eliminates the normal distribution from consideration. If “(b) Each fundamental unit acts as a force-conducting element in the snow”, then, by definition, there can be no fundamental units with zero strength since strength is needed to conduct force. The normal distribution with its finite probability of zero strength is thus eliminated. The field is not narrowed very much since it is still open to the log-normal and a wide variety of truncated distributions, but it does appear to me that a step has been made.

R, A. Sommerfeld

Rocky Mountain Forest and Range Experiment Station,

U.S. Forest Service,

240 West Prospect Street,

Fort Collins, Colorado 80526, U.S.A.

27 November 1978

References

Epstein, B. 1948. Statistical aspects of fracture problems. Journal of Applied Physics, Vol. 19, No. 2, p. 14047. CrossRefGoogle Scholar
Gubler, H. 1978[a]. An alternate statistical interpretation of the strength of snow. Journal of Glaciology, Vol. 20, No. 83, p. 34357. CrossRefGoogle Scholar
Gubler, H. I978[b], Determination of the mean number of bonds per snow grain and of the dependence of the tensile strength of snow on stereological parameters. Journal of Glaciology, Vol. 20, No. 83, p. 32941. CrossRefGoogle Scholar
Perla, R. I. 1977. Slab avalanche measurements. Canadian Geotechnical Journal, Vol. 14, No. 2, p. 20613. CrossRefGoogle Scholar
Sommerfeld, R. A. 1974. A Weibull prediction of the tensile strength—volume relationship of snow. Journal of Geophysical Research, Vol. 79, No. 23, p. 335356. CrossRefGoogle Scholar