Sequential sampling strategy for extreme event statistics in nonlinear dynamical systems

Author:

Mohamad Mustafa A.ORCID,Sapsis Themistoklis P.ORCID

Abstract

We develop a method for the evaluation of extreme event statistics associated with nonlinear dynamical systems from a small number of samples. From an initial dataset of design points, we formulate a sequential strategy that provides the “next-best” data point (set of parameters) that when evaluated results in improved estimates of the probability density function (pdf) for a scalar quantity of interest. The approach uses Gaussian process regression to perform Bayesian inference on the parameter-to-observation map describing the quantity of interest. We then approximate the desired pdf along with uncertainty bounds using the posterior distribution of the inferred map. The next-best design point is sequentially determined through an optimization procedure that selects the point in parameter space that maximally reduces uncertainty between the estimated bounds of the pdf prediction. Since the optimization process uses only information from the inferred map, it has minimal computational cost. Moreover, the special form of the metric emphasizes the tails of the pdf. The method is practical for systems where the dimensionality of the parameter space is of moderate size and for problems where each sample is very expensive to obtain. We apply the method to estimate the extreme event statistics for a very high-dimensional system with millions of degrees of freedom: an offshore platform subjected to 3D irregular waves. It is demonstrated that the developed approach can accurately determine the extreme event statistics using a limited number of samples.

Funder

DOD | United States Navy | Office of Naval Research

DOD | USAF | AFMC | Air Force Office of Scientific Research

DOD | United States Army | RDECOM | Army Research Office

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

Reference17 articles.

1. Fouque J Papanicolaou G Sircar R Sølna K (2011) Multiscale Stochastic Volatility for Equity, Interest-Rate and Credit Derivatives (Cambridge Univ Press, Cambridge, UK).

2. A chronology of freaque wave encounters;Liu;Geofizika,2007

3. Hense A Friederichs P (2006) Wind and precipitation extremes in Earth’s atmosphere. Extreme Events in Nature and Society, eds Albeverio S Jentsch V Kantz H (Springer, Berlin, Germany), pp 169–187.

4. Nicodemi M (2012) Extreme value statistics. Computational Complexity: Theory, Techniques, and Applications, ed Meyers RA (Springer, New York), pp 1066–1072.

5. Varadhan S (1984) Large deviations and applications, CBMS-NSF Regional Conference Series in Applied Mathematics (Society for Industrial and Applied Mathematics, Philadephia).

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