Oecologia (2001). 126, 216-224.

Martin Predavec1, Charles Kreb2,  Kajell Danell3 and Rob J Hyndman2

  1. Department of Biological Sciences, Monash University, Clayton VIC 3800, Australia.
  2. Department of Zoology, University of British Columbia, Vancouver, BC, Canada.
  3. Department of Animal Ecology, Swedish University of Agricultural Sciences, Umea, Sweden.
  4. Department of Econometrics and Business Statistics, Monash University, Clayton VIC 3800, Australia.

Abstract: Lemming populations are generally characterised by their cyclic nature, yet empirical data to support this are lacking for most species, largely because of the time and expense necessary to collect long-term population data. In this study we use the relative frequency of yearly willow scarring by lemmings as an index of lemming abundance, allowing us to plot population changes over a 34-year period. Scars were collected from 18 sites in Arctic North America separated by 2-1,647 km to investigate local synchrony among separate populations. Over the period studied, populations at all 18 sites showed large fluctuations but there was no regular periodicity to the patterns of population change. Over all possible combinations of pairs of sites, only sites that were geographically connected and close (<6 km) showed significant synchrony in fluctuations. The populations studied may not even be cyclic, at least for the time period 1960 to 1994, and although fluctuating, randomisation tests could not reject the null hypothesis of random fluctuations. These data have implications for the testing of hypotheses regarding lemming cycles and highlight the need for long-term trapping data to characterise the lemming cycle.

Keywords: lemming cycle; synchrony; dicrostonyx groenlandicus.Online article


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