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A stochastic model of sedimentation: probabilities and multifractality

Published online by Cambridge University Press:  25 September 2002

G. M. MOLCHAN
Affiliation:
International Institute of Earthquake Prediction Theory and Mathematical Geophysics, Russian Academy of Sciences, Warshavskoye sh.79, kor.2, Moscow, 113556, Russia CNRS, Observatoire de Nice, BP4229, F-06304 Nice Cedex 4, France
D. L. TURCOTTE
Affiliation:
Department of Geological Sciences, Cornell University, 2122 Snee Hall, Ithaca, NY 14853, USA

Abstract

We consider a one-dimensional stochastic model of sediment deposition in which the complete time history of sedimentation is the sum of a linear trend and a fractional Brownian motion wH(t) with self-similarity parameter H ∈ (0, 1). The thickness of the sedimentary layer as a function of time, d(t), looks like the Cantor staircase. The Hausdorff dimension of the points of growth of d(t) is found. We obtain the statistical distribution of gaps in the sedimentary record, periods of time during which the sediments have been eroded. These gaps define sedimentary unconformities. In the case H = 1/2 we obtain the statistical distribution of layer thicknesses between unconformities and investigate the multifractality of d(t). We show that the multifractal structures of d(t) and the local time function of Brownian motion are identical; hence d(t) is not a standard multifractal object. It follows that natural statistics based on local estimates of the sedimentation rate produce contradictory estimates of the range of local dimension for d(t). The physical object d(t) is interesting in that it involves the above anomalies, and also in its mechanism of fractality generation, which is different from the traditional multiplicative process.

Type
Research Article
Copyright
2002 Cambridge University Press

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