Limit States of Structures and Global Sensitivity Analysis Based on Cramér-von Mises Distance

Q3 Engineering
Z. Kala
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引用次数: 4

Abstract

This article presents a stochastic computational model for the analysis of the reliability of a drawn steel bar. The whole distribution of the limit state function is studied using global sensitivity analysis based on Cramér-von Mises distance. The algorithm for estimating the sensitivity indices is based on one loop of the Latin Hypercube Sampling method in combination with numerical integration. The algorithm is effective due to the approximation of resistance using a threeparameter lognormal distribution. Goodness-of-fit tests and other comparative studies demonstrate the significant accuracy and suitability of the three-parameter lognormal distribution, which provides better results and faster response than sampling-based methods. Global sensitivity analysis is evaluated for two load cases with proven dominant effect of the long-term variation load action, which is introduced using Gumbel probability density function. The Cramér-von Mises indices are discussed in the context of other types of probability-oriented sensitivity indices whose performance has been studied earlier.
基于Cramér-von Mises距离的结构极限状态及全局灵敏度分析
本文提出了一种拉拔钢筋可靠度分析的随机计算模型。采用基于cram -von Mises距离的全局灵敏度分析方法研究了极限状态函数的整体分布。灵敏度指标的估计算法是基于拉丁超立方采样法的一环,并与数值积分相结合。该算法采用三参数对数正态分布对阻力进行近似,是有效的。拟合优度检验和其他比较研究表明,三参数对数正态分布具有显著的准确性和适用性,比基于抽样的方法提供了更好的结果和更快的响应。采用Gumbel概率密度函数引入长期变化荷载作用的主导作用,对两种荷载情况进行全局敏感性分析。本文将cram -von Mises指数与其他类型的概率型灵敏度指数结合起来讨论,这些指数的性能已经得到了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Mechanics
International Journal of Mechanics Engineering-Computational Mechanics
CiteScore
1.60
自引率
0.00%
发文量
17
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