In: Mathematical Geosciences, 2014, vol. 46, no. 5, p. 625-645
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In: Mathematical Geosciences, 2014, vol. 46, no. 2, p. 187-204
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In: Mathematical Geosciences, 2011, vol. 43, no. 3, p. 305-328
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In: Mathematical Geosciences, 2013, vol. 45, no. 2, p. 131-147
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In: Mathematical Geosciences, 2011, vol. 43, no. 8, p. 879-903
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In: Mathematical Geosciences, 2011, vol. 43, no. 7, p. 783-797
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In: Stochastic Environmental Research and Risk Assessment, 2018, vol. 32, p. 321-340
Daily rainfall is a complex signal exhibiting alternation of dry and wet states, seasonal fluctuations and an irregular behavior at multiple scales that cannot be preserved by stationary stochastic simulation models. In this paper, we try to investigate some of the strategies devoted to preserve these features by comparing two recent algorithms for stochastic rainfall simulation: the first one is...
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In: Hydrology and Earth System Sciences, 2014, vol. 18, p. 3015-3031
The direct sampling technique, belonging to the family of multiple-point statistics, is proposed as a nonparametric alternative to the classical autoregressive and Markovchain-based models for daily rainfall time-series simulation. The algorithm makes use of the patterns contained inside the training image (the past rainfall record) to reproduce the complexity of the signal without inferring its...
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In: Geomorphology, 2014, vol. 214, p. 148-156
A new method is proposed to generate successive topographies in a braided river system. Indeed, braided river morphologymodels are a key factor influencing river–aquifer interactions and have repercussions in ecosystems, flood risk or water management. It is essentially based on multivariate multiple-point statistics simulations and digital elevation models as training data sets. On the one...
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In: Computers & Geosciences, 2013, vol. 52, p. 307-324
The Direct Sampling (DS) algorithm is a recently developed multiple-point statistical simulation technique. It directly scans the training image (TI) for a given data event instead of storing the training probability values in a catalogue prior to simulation. By using distances between the given data events and the TI patterns, DS allows to simulate categorical, continuous and multivariate...
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