Stochastic earthquake models are often based on a marked point process approach as for instance presented in Vere-Jones (1995). This gives a fine resolution both in space and time making it possible to represent each earthquake with corresponding foreshocks and aftershocks separately. However, it is not obvious that this microscopic approach is advantageous when aiming at earthquake predictions. In the present paper we take a macroscopic point of view considering grid cells of 0.5ʿx 0.5ʿ, or about 50 km x 50 km, and time periods of 4 months, which seems suitable for predictions. Hereby, also the effects of foreshocks and aftershocks are circumvented. More specifically, we will discuss different alternative Bayesian hierarchical space-time m...
SUMMARY The reliable forecasting of seismic sequences following a main shock has...
This presentation outlines methodological aspects of earthquake forecasting. The recurring debates c...
In the immediate aftermath of a strong earthquake and in the presence of an ongoing aftershock sequ...
Two new different stochastic models for earthquake occurrence are discussed. Both models are focusin...
Two new different stochastic models for earthquake occurrence are discussed. Both models are focusin...
International audienceA simplified stochastic model for earthquake occurrence focusing on the spatio...
International audienceABSTRACT This article introduces a framework to supplement short historical ca...
This paper presents a robust parameter estimation technique for a probabilistic earthquake hazard mo...
Individual earthquakes cannot be predicted reliably at present. However, earthquake occurrence is n...
Online Material: Sensitivity to scaling of the d-parameter and to inhomogeneous background activity,...
We propose a Bayesian framework for the combination of catalogs of large earthquakes and dated cumul...
International audienceThe limits of a recently proposed universal scaling law for the probability di...
A Bayesian method to forecast the occurrence time of a large-scale earthquake utilizing temporal inf...
This thesis deals with recurrent earthquakes. Many earthquakes occur repeatedly at the s...
[[abstract]]Modeling spatial patterns and processes to assess the spatial variations of data over a ...
SUMMARY The reliable forecasting of seismic sequences following a main shock has...
This presentation outlines methodological aspects of earthquake forecasting. The recurring debates c...
In the immediate aftermath of a strong earthquake and in the presence of an ongoing aftershock sequ...
Two new different stochastic models for earthquake occurrence are discussed. Both models are focusin...
Two new different stochastic models for earthquake occurrence are discussed. Both models are focusin...
International audienceA simplified stochastic model for earthquake occurrence focusing on the spatio...
International audienceABSTRACT This article introduces a framework to supplement short historical ca...
This paper presents a robust parameter estimation technique for a probabilistic earthquake hazard mo...
Individual earthquakes cannot be predicted reliably at present. However, earthquake occurrence is n...
Online Material: Sensitivity to scaling of the d-parameter and to inhomogeneous background activity,...
We propose a Bayesian framework for the combination of catalogs of large earthquakes and dated cumul...
International audienceThe limits of a recently proposed universal scaling law for the probability di...
A Bayesian method to forecast the occurrence time of a large-scale earthquake utilizing temporal inf...
This thesis deals with recurrent earthquakes. Many earthquakes occur repeatedly at the s...
[[abstract]]Modeling spatial patterns and processes to assess the spatial variations of data over a ...
SUMMARY The reliable forecasting of seismic sequences following a main shock has...
This presentation outlines methodological aspects of earthquake forecasting. The recurring debates c...
In the immediate aftermath of a strong earthquake and in the presence of an ongoing aftershock sequ...