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Stochastic dynamic response analysis via dimension-reduced probability density evolution equation (DR-PDEE) with enhanced tail-accuracy

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

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Externe Organisationen

  • Rice University
  • Technische Universität Dortmund
  • The University of Liverpool
  • Tongji University

Details

OriginalspracheEnglisch
Aufsatznummer103735
FachzeitschriftProbabilistic Engineering Mechanics
Jahrgang79
Frühes Online-Datum25 Jan. 2025
PublikationsstatusVeröffentlicht - Jan. 2025

Abstract

The stochastic dynamic analysis of high-dimensional nonlinear systems is a critical concern in engineering fields, especially when considering the reliability analysis of low-probability events. To address this challenge, the dimension-reduced probability density evolution equation (DR-PDEE) method has recently emerged as a promising tool. The DR-PDEE is the analytical governing equation for the probability density function (PDF) evolution of any path-continuous stochastic process. For a single response quantity of interest in a multi-dimensional nonlinear dynamic system, the corresponding DR-PDEE is merely a one- or two-dimensional partial differential equation. After estimating the intrinsic drift coefficient (IDC) in the DR-PDEE from sample data, this equation can be easily solved with rather high accuracy. However, if only a limited number of deterministic analyses are affordable, there is usually no sample information for the tail estimation of the IDC, resulting in an inaccurate PDF solution in the tail. In this work, a scheme is tailored for the DR-PDEE to further enhance its tail accuracy. Specifically, to increase the occurrence probability of tail samples, an additional set of samples is obtained by simply magnifying the excitation intensity of the system. Then, at each time step, samples in the response tail from this additional set are identified. By merging these samples with samples from the original system, a better IDC estimation in the tail is achieved. Several numerical examples are investigated to validate the effectiveness of the proposed DR-PDEE method. Comparisons with MCS and the classical DR-PDEE method show that the proposed scheme improves the accuracy and robustness of the PDF results in the tail.

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Stochastic dynamic response analysis via dimension-reduced probability density evolution equation (DR-PDEE) with enhanced tail-accuracy. / Luo, Yi; Dang, Chao; Broggi, Matteo et al.
in: Probabilistic Engineering Mechanics, Jahrgang 79, 103735, 01.2025.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

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abstract = "The stochastic dynamic analysis of high-dimensional nonlinear systems is a critical concern in engineering fields, especially when considering the reliability analysis of low-probability events. To address this challenge, the dimension-reduced probability density evolution equation (DR-PDEE) method has recently emerged as a promising tool. The DR-PDEE is the analytical governing equation for the probability density function (PDF) evolution of any path-continuous stochastic process. For a single response quantity of interest in a multi-dimensional nonlinear dynamic system, the corresponding DR-PDEE is merely a one- or two-dimensional partial differential equation. After estimating the intrinsic drift coefficient (IDC) in the DR-PDEE from sample data, this equation can be easily solved with rather high accuracy. However, if only a limited number of deterministic analyses are affordable, there is usually no sample information for the tail estimation of the IDC, resulting in an inaccurate PDF solution in the tail. In this work, a scheme is tailored for the DR-PDEE to further enhance its tail accuracy. Specifically, to increase the occurrence probability of tail samples, an additional set of samples is obtained by simply magnifying the excitation intensity of the system. Then, at each time step, samples in the response tail from this additional set are identified. By merging these samples with samples from the original system, a better IDC estimation in the tail is achieved. Several numerical examples are investigated to validate the effectiveness of the proposed DR-PDEE method. Comparisons with MCS and the classical DR-PDEE method show that the proposed scheme improves the accuracy and robustness of the PDF results in the tail.",
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author = "Yi Luo and Chao Dang and Matteo Broggi and Michael Beer",
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AU - Luo, Yi

AU - Dang, Chao

AU - Broggi, Matteo

AU - Beer, Michael

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N2 - The stochastic dynamic analysis of high-dimensional nonlinear systems is a critical concern in engineering fields, especially when considering the reliability analysis of low-probability events. To address this challenge, the dimension-reduced probability density evolution equation (DR-PDEE) method has recently emerged as a promising tool. The DR-PDEE is the analytical governing equation for the probability density function (PDF) evolution of any path-continuous stochastic process. For a single response quantity of interest in a multi-dimensional nonlinear dynamic system, the corresponding DR-PDEE is merely a one- or two-dimensional partial differential equation. After estimating the intrinsic drift coefficient (IDC) in the DR-PDEE from sample data, this equation can be easily solved with rather high accuracy. However, if only a limited number of deterministic analyses are affordable, there is usually no sample information for the tail estimation of the IDC, resulting in an inaccurate PDF solution in the tail. In this work, a scheme is tailored for the DR-PDEE to further enhance its tail accuracy. Specifically, to increase the occurrence probability of tail samples, an additional set of samples is obtained by simply magnifying the excitation intensity of the system. Then, at each time step, samples in the response tail from this additional set are identified. By merging these samples with samples from the original system, a better IDC estimation in the tail is achieved. Several numerical examples are investigated to validate the effectiveness of the proposed DR-PDEE method. Comparisons with MCS and the classical DR-PDEE method show that the proposed scheme improves the accuracy and robustness of the PDF results in the tail.

AB - The stochastic dynamic analysis of high-dimensional nonlinear systems is a critical concern in engineering fields, especially when considering the reliability analysis of low-probability events. To address this challenge, the dimension-reduced probability density evolution equation (DR-PDEE) method has recently emerged as a promising tool. The DR-PDEE is the analytical governing equation for the probability density function (PDF) evolution of any path-continuous stochastic process. For a single response quantity of interest in a multi-dimensional nonlinear dynamic system, the corresponding DR-PDEE is merely a one- or two-dimensional partial differential equation. After estimating the intrinsic drift coefficient (IDC) in the DR-PDEE from sample data, this equation can be easily solved with rather high accuracy. However, if only a limited number of deterministic analyses are affordable, there is usually no sample information for the tail estimation of the IDC, resulting in an inaccurate PDF solution in the tail. In this work, a scheme is tailored for the DR-PDEE to further enhance its tail accuracy. Specifically, to increase the occurrence probability of tail samples, an additional set of samples is obtained by simply magnifying the excitation intensity of the system. Then, at each time step, samples in the response tail from this additional set are identified. By merging these samples with samples from the original system, a better IDC estimation in the tail is achieved. Several numerical examples are investigated to validate the effectiveness of the proposed DR-PDEE method. Comparisons with MCS and the classical DR-PDEE method show that the proposed scheme improves the accuracy and robustness of the PDF results in the tail.

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