Bayesian analysis of a marked point process: Application in seismic hazard assessment

被引:7
作者
Renata Rotondi
Elisa Varini
机构
[1] CNR-Istituto Matematica Applicatae Tecnologie Informatiche, 20133 Milano
[2] Università L. Bocconi, Milano
关键词
Data-constrained parameters; Magnitude distribution; Metropolis-Hastings algorithm; Stress release model;
D O I
10.1007/BF02511585
中图分类号
学科分类号
摘要
Point processes are the stochastic models most suitable for describing physical phenomena that appear at irregularly spaced times, such as the earthquakes. These processes are uniquely characterized by their conditional intensity, that is, by the probability that an event will occur in the infinitesimal interval (t, t + Δt), given the history of the process up to t. The seismic phenomenon displays different behaviours on different time and size scales; in particular, the occurrence of destructive shocks over some centuries in a seismogenic region may be explained by the elastic rebound theory. This theory has inspired the so-called stress release models: their conditional intensity translates the idea that an earthquake produces a sudden decrease in the amount of strain accumulated gradually over time along a fault, and the subsequent event occurs when the stress exceeds the strength of the medium. This study has a double objective: the formulation of these models in the Bayesian framework, and the assignment to each event of a mark, that is its magnitude, modelled through a distribution that depends at time t on the stress level accumulated up to that instant. The resulting parameter space is constrained and dependent on the data, complicating Bayesian computation and analysis. We have resorted to Monte Carlo methods to solve these problems. © Springer-Verlag 2003.
引用
收藏
页码:79 / 92
页数:13
相关论文
共 13 条
[1]  
Benioff H., Colloquium on plastic flow and deformation within the earth, Trans. Am. Geophys. Union, 32, pp. 508-514, (1951)
[2]  
Camassi R., Stucchi M., NT4.1.1 un catalogo parametfico di terremoti di area italiana al di sopra del danno, Gruppo Nazionale per la Difesa dai Terremoti, Milano, 1997, (1997)
[3]  
Chen M.-H., Shao Q.-M., Monte Carlo methods for Bayesian analysis of constrained pararneter problems, Biometrika, 85, pp. 73-87, (1998)
[4]  
Gelman A., Roberts G.O., Wilks W.R., Efficient Metropolis jumping rules, Bayesian statistics, 5, pp. 599-607, (1996)
[5]  
Liu J., Chen Y., Shi Y., Vere-Jones D., Coupled stress release model for time-dependent seismicity, Pure and Applied Geophysics, 155, pp. 567-649, (1999)
[6]  
Meletti C., Patacca E., Scandone P., Construction of a seismotectonic model: The case of Italy, Pure and Applied Geophysics, 157, pp. 11-35, (2000)
[7]  
Peruggia M., Santner T., Bayesian analysis of time evolution of earthquakes, Journal of the American Statistical Association, 91, pp. 1209-1218, (1996)
[8]  
Smith B.J., Bayesian output analysis program-BOA Manual version 0.5.0, (2000)
[9]  
Vere-Jones D., Earthquake prediction: A statistician's view, J. Physics Earth., 26, pp. 129-146, (1978)
[10]  
Vere-Jones D., Forecasting earthquakes and earthquake risk, International Journal of Forecasting, 11, pp. 503-538, (1995)