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Published in: Structural and Multidisciplinary Optimization 5/2017

31-10-2016 | RESEARCH PAPER

An efficient estimation of probability of first-passage in a linear system

Authors: Mahdi Norouzi, Efstratios Nikolaidis

Published in: Structural and Multidisciplinary Optimization | Issue 5/2017

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Abstract

Reliability analysis of a structure under random vibratory loads involves estimation of the probability of the response exceeding a limit. The classical, brute force approach to such analysis is the Monte Carlo method. However, due to its slow convergence rate, it is often impractical for large-scale engineering structures. In many engineering applications, such as offshore platforms under wave loads, the excitation is represented by Power Spectral Density (PSD) functions. Random time histories of the excitation are generated using a linear combination of sinusoids that are consistent with the PSD of input load. This paper proposes a method that reduces the computational cost of MCs of a linear system with a separable performance function; that is, a function that can be decomposed into parts and calculated independently. The method generates sinusoidal functions of the excitation, finds the system response to each sinusoid, and stores the responses in a database. Then it samples with replacement the sinusoids of the response from the database, finds the system response to the superposition of these sinusoids and checks for failure. This procedure yields a very large number of values of the failure indicator function even from a database with a modest number of sinusoids because it uses sampling with replacement. The efficiency of the proposed approach is demonstrated by estimating the probability of the first excursion in a ten-bar truss model. In this example, the method predicts the probability of failure using less than 0.2 % of the calculated values of the failure indicator function than the standard MCs.

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Appendix
Available only for authorised users
Footnotes
1
White noise is a random signal with a PSD that is constant over a frequency range and zero outside that range.
 
Literature
go back to reference Andrieu-Renaud C, Sudret B, Lemaire M (2004) The PHI2 method: a way to compute time-variant reliability. Reliab Eng Syst Saf 84(1):75–86CrossRef Andrieu-Renaud C, Sudret B, Lemaire M (2004) The PHI2 method: a way to compute time-variant reliability. Reliab Eng Syst Saf 84(1):75–86CrossRef
go back to reference Au SK, Beck JL (2001a) First excursion probabilities for linear systems by very efficient importance sampling. Probabilistic Eng Mech 16(3):193–207CrossRef Au SK, Beck JL (2001a) First excursion probabilities for linear systems by very efficient importance sampling. Probabilistic Eng Mech 16(3):193–207CrossRef
go back to reference Au SK, Beck JL (2001b) Estimation of small failure probabilities in high dimensions by subset simulation. Probabilistic Eng Mech 16:263–277CrossRef Au SK, Beck JL (2001b) Estimation of small failure probabilities in high dimensions by subset simulation. Probabilistic Eng Mech 16:263–277CrossRef
go back to reference Bayer V, Bucher C (1999) Importance sampling for first passage problems of nonlinear structure. Probabilistic Eng Mech 14(1):27–32CrossRef Bayer V, Bucher C (1999) Importance sampling for first passage problems of nonlinear structure. Probabilistic Eng Mech 14(1):27–32CrossRef
go back to reference Beckman RJ, McKay MD (1987) Monte Carlo estimation under different distributions using the same simulation. Technometrics 29(2):153–160MathSciNetCrossRefMATH Beckman RJ, McKay MD (1987) Monte Carlo estimation under different distributions using the same simulation. Technometrics 29(2):153–160MathSciNetCrossRefMATH
go back to reference Bichon BJ, Eldred MS, Swiler LP, Mahadevan S, McFarland JM (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46(10):2459–2468CrossRef Bichon BJ, Eldred MS, Swiler LP, Mahadevan S, McFarland JM (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46(10):2459–2468CrossRef
go back to reference Chaudhuri A, Haftka RT (2013) Separable Monte Carlo combined with importance sampling for variance reduction. Int J Reliab Saf 7(3):201–215CrossRef Chaudhuri A, Haftka RT (2013) Separable Monte Carlo combined with importance sampling for variance reduction. Int J Reliab Saf 7(3):201–215CrossRef
go back to reference Chen J, Sun W, Li J, Xu J (2013) Stochastic harmonic function representation of stochastic processes. J Appl Mech 80(1):011001CrossRef Chen J, Sun W, Li J, Xu J (2013) Stochastic harmonic function representation of stochastic processes. J Appl Mech 80(1):011001CrossRef
go back to reference Craig RR, Kurdila AJ (2006) Fundamentals of structural dynamics. John Wiley & Sons Craig RR, Kurdila AJ (2006) Fundamentals of structural dynamics. John Wiley & Sons
go back to reference Efron B (1979) Bootstrap methods: another look at jackknife. Ann Stat (7), 1–26 Efron B (1979) Bootstrap methods: another look at jackknife. Ann Stat (7), 1–26
go back to reference Engelund S, Rackwitz R, Lange C (1995) Approximations of first-passage times for differentiable processes based on higher-order threshold crossings. Probabilistic Eng Mech 10(1):53–60CrossRef Engelund S, Rackwitz R, Lange C (1995) Approximations of first-passage times for differentiable processes based on higher-order threshold crossings. Probabilistic Eng Mech 10(1):53–60CrossRef
go back to reference Farizal F, Nikolaidis E (2007) Assessment of imprecise reliability using efficient probabilistic reanalysis (No. 2007-01-0552). SAE Technical Paper Farizal F, Nikolaidis E (2007) Assessment of imprecise reliability using efficient probabilistic reanalysis (No. 2007-01-0552). SAE Technical Paper
go back to reference Freund JE, Williams FJ (1966) Dictionary/outline of basic statistics. Courier Corporation Freund JE, Williams FJ (1966) Dictionary/outline of basic statistics. Courier Corporation
go back to reference Ghazizadeh S, Barbato M, Tubaldi E (2011) New analytical solution of the first-passage reliability problem for linear oscillators. J Eng Mech 138(6):695–706CrossRef Ghazizadeh S, Barbato M, Tubaldi E (2011) New analytical solution of the first-passage reliability problem for linear oscillators. J Eng Mech 138(6):695–706CrossRef
go back to reference Hesterberg TC (2003) Advances in importance sampling, PhD diss., Stanford University Hesterberg TC (2003) Advances in importance sampling, PhD diss., Stanford University
go back to reference Inman DJ (2013) Engineering vibrations. Pearson Inman DJ (2013) Engineering vibrations. Pearson
go back to reference Jehan, M, Nikolaidis E (2015) Bootstrapping and separable Monte Carlo simulation methods tailored for efficient assessment of probability of failure of structural systems. SAE Int J Mater Manufact 8 (2015-01-0420) Jehan, M, Nikolaidis E (2015) Bootstrapping and separable Monte Carlo simulation methods tailored for efficient assessment of probability of failure of structural systems. SAE Int J Mater Manufact 8 (2015-01-0420)
go back to reference Koo H, Der Kiureghian A, Fujimura K (2005) Design-point excitation for non-linear random vibrations. Probabilistic Eng Mech 20:136–147CrossRef Koo H, Der Kiureghian A, Fujimura K (2005) Design-point excitation for non-linear random vibrations. Probabilistic Eng Mech 20:136–147CrossRef
go back to reference Li J, Chen JB (2004) Probability density evolution method for dynamic response analysis of structures with uncertain parameters. Comput Mech 34:400–409CrossRefMATH Li J, Chen JB (2004) Probability density evolution method for dynamic response analysis of structures with uncertain parameters. Comput Mech 34:400–409CrossRefMATH
go back to reference Lutes LD, Sarkani S (2004) Random vibrations: analysis of structural and mechanical systems. Butterworth-Heinemann Lutes LD, Sarkani S (2004) Random vibrations: analysis of structural and mechanical systems. Butterworth-Heinemann
go back to reference Majcher M, Mourelatos ZP, Geroulas V, Baseski I, Singh A (2015) An efficient method to calculate the failure rate of dynamic systems with random parameters using the total probability theorem. SAE Int J Mater Manufact 8 (2015-01-0425) Majcher M, Mourelatos ZP, Geroulas V, Baseski I, Singh A (2015) An efficient method to calculate the failure rate of dynamic systems with random parameters using the total probability theorem. SAE Int J Mater Manufact 8 (2015-01-0425)
go back to reference Naess A (1990) Approximate first-passage and extremes of narrow-band Gaussian and non-Gaussian random vibrations. J Sound Vib 138(3):365–380CrossRef Naess A (1990) Approximate first-passage and extremes of narrow-band Gaussian and non-Gaussian random vibrations. J Sound Vib 138(3):365–380CrossRef
go back to reference Newland DE (1984) An introduction to random vibrations, spectral & wavelet analysis. Longman Scientific and Technical . Chapter 8: Statistics of Narrow Band Processes Newland DE (1984) An introduction to random vibrations, spectral & wavelet analysis. Longman Scientific and Technical . Chapter 8: Statistics of Narrow Band Processes
go back to reference Nikolaidis E, Mourelatos ZP, Pandey V (2011) Probabilistic analysis of dynamic systems. Chapter 5, Sections 5.6 and 5.7, Design decisions under uncertainty with limited information, CRC Press, Strucures and Infrastrures Series, Volume 5 Nikolaidis E, Mourelatos ZP, Pandey V (2011) Probabilistic analysis of dynamic systems. Chapter 5, Sections 5.6 and 5.7, Design decisions under uncertainty with limited information, CRC Press, Strucures and Infrastrures Series, Volume 5
go back to reference Norouzi M (2014) Random vibration Monte Carlo simulation using multiple harmonic function schemes. Int J Vehicle Noise Vibration 10(3):214–225CrossRef Norouzi M (2014) Random vibration Monte Carlo simulation using multiple harmonic function schemes. Int J Vehicle Noise Vibration 10(3):214–225CrossRef
go back to reference Norouzi M, Nikolaidis E (2012) Efficient method for reliability assessment under high-cycle fatigue. Int J Reliab Qual Saf Eng 19(05):1250022CrossRef Norouzi M, Nikolaidis E (2012) Efficient method for reliability assessment under high-cycle fatigue. Int J Reliab Qual Saf Eng 19(05):1250022CrossRef
go back to reference Norouzi M, Nikolaidis E (2013) Integrating subset simulation with probabilistic re-analysis to estimate reliability of dynamic systems. Struct Multidiscip Optim 48(3):533–548CrossRef Norouzi M, Nikolaidis E (2013) Integrating subset simulation with probabilistic re-analysis to estimate reliability of dynamic systems. Struct Multidiscip Optim 48(3):533–548CrossRef
go back to reference Ochi MK (1973) On prediction of extreme values. J Ship Res 17(1):29–37 Ochi MK (1973) On prediction of extreme values. J Ship Res 17(1):29–37
go back to reference Ochi MK (2005) Ocean waves: the stochastic approach (Vol. 6). Cambridge University Press Ochi MK (2005) Ocean waves: the stochastic approach (Vol. 6). Cambridge University Press
go back to reference Ravishankar B, Smarslok BP, Haftka RT, Sankar BV (2010) Error estimation and error reduction in separable Monte-Carlo method. AIAA J 48(11):2624–2630CrossRef Ravishankar B, Smarslok BP, Haftka RT, Sankar BV (2010) Error estimation and error reduction in separable Monte-Carlo method. AIAA J 48(11):2624–2630CrossRef
go back to reference Rubinstein RY, Kroese DP (2011) Simulation and the Monte Carlo method. John Wiley & Sons Rubinstein RY, Kroese DP (2011) Simulation and the Monte Carlo method. John Wiley & Sons
go back to reference Schall G, Faber MH (1991) The ergodicity assumption for sea states in the reliability estimation of offshore structures. J Offshore Mech Arctic Eng-Trans ASME 113(3):241–246CrossRef Schall G, Faber MH (1991) The ergodicity assumption for sea states in the reliability estimation of offshore structures. J Offshore Mech Arctic Eng-Trans ASME 113(3):241–246CrossRef
go back to reference Shinozuka M (1964) Probability of structural failure under random loading. J Eng Mech Div ASCE 90:147–170 Shinozuka M (1964) Probability of structural failure under random loading. J Eng Mech Div ASCE 90:147–170
go back to reference Shinozuka M (1972) Monte Carlo solution of structural dynamics. Comput Struct 2(5):855–874CrossRef Shinozuka M (1972) Monte Carlo solution of structural dynamics. Comput Struct 2(5):855–874CrossRef
go back to reference Shinozuka M, Deodatis G (1988) Stochastic process models for earthquake ground motion. Probabilistic Eng Mech 3(3):114–123CrossRef Shinozuka M, Deodatis G (1988) Stochastic process models for earthquake ground motion. Probabilistic Eng Mech 3(3):114–123CrossRef
go back to reference Smarslok BP, Haftka RT, Carraro L, Ginsbourger D (2010) Improving accuracy of failure probability estimates with separable Monte Carlo. Int J Reliab Saf 4:393–414CrossRef Smarslok BP, Haftka RT, Carraro L, Ginsbourger D (2010) Improving accuracy of failure probability estimates with separable Monte Carlo. Int J Reliab Saf 4:393–414CrossRef
go back to reference Sudret B, Blatman G, Berveiller M (2007) Quasi-random numbers in stochastic finite element analysis-application to global sensitivity analysis. Proc 10th Int Conf Appl Stat Prob Civil Eng (ICASP10), Tokyo, Japan Sudret B, Blatman G, Berveiller M (2007) Quasi-random numbers in stochastic finite element analysis-application to global sensitivity analysis. Proc 10th Int Conf Appl Stat Prob Civil Eng (ICASP10), Tokyo, Japan
go back to reference Veneziano D, Cornell CA, Grigoriu M (1977) Vector-process models for system reliability. J B Div 103(3):441–460 Veneziano D, Cornell CA, Grigoriu M (1977) Vector-process models for system reliability. J B Div 103(3):441–460
Metadata
Title
An efficient estimation of probability of first-passage in a linear system
Authors
Mahdi Norouzi
Efstratios Nikolaidis
Publication date
31-10-2016
Publisher
Springer Berlin Heidelberg
Published in
Structural and Multidisciplinary Optimization / Issue 5/2017
Print ISSN: 1615-147X
Electronic ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-016-1606-z

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