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A simulation method for reliability-based design optimization using probabilistic re-analysis and approximate metamodels.

机译:一种基于概率的重新分析和近似元模型的基于可靠性的设计优化的仿真方法。

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摘要

A simulation-based, system reliability-based design optimization (RBDO) method is presented which can in general handle problems with multiple failure regions. The method uses a Probabilistic Re-Analysis (PRRA) approach in conjunction with a trust-region optimization approach. PRRA calculates the system reliability of a design efficiently by performing a single Monte Carlo (MC) simulation. Although PRRA is based on MC simulation, it calculates "smooth" sensitivity derivatives, allowing the use of a gradient-based optimizer. The PRRA method is based on importance sampling. It provides accurate results if the support (set of all values for which a function is non zero) of the joint sampling PDF contains the support of the joint PDF of the input random variables. The sequential, trust-region optimization approach satisfies this requirement. PRRA improves the design within each trust region using a single MC simulation per trust region. Local approximate metamodels are constructed sequentially for each trust region taking advantage of the potential overlap of the trust regions. The metamodels are "accurate-on-demand," and serve as indicators to determine the failure and safe regions. Sample points close to limit states define transition regions between the safe and failure domains. A clustering technique identifies all transition regions which can be in general disjoint, and local metamodels of the actual limit states are generated for each transition region. Importance sampling generates sample points only in the identified transition and failure regions, providing accuracy in the areas near the failure boundary without using any computational effort for sample points in the safe domain. A robust maximin "space-filling" sampling technique is used to construct the metamodels. Examples demonstrate the accuracy and efficiency of the developed metamodeling, PRRA and trust-region RBDO methods.
机译:提出了一种基于仿真的,基于系统可靠性的设计优化(RBDO)方法,该方法通常可以处理具有多个故障区域的问题。该方法将概率重分析(PRRA)方法与信任区域优化方法结合使用。 PRRA通过执行单个Monte Carlo(MC)仿真来有效地计算设计的系统可靠性。尽管PRRA是基于MC模拟的,但它会计算“平滑”的灵敏度导数,从而允许使用基于梯度的优化器。 PRRA方法基于重要性抽样。如果联合采样PDF的支持(函数非零的所有值的集合)包含输入随机变量的联合PDF的支持,则它将提供准确的结果。顺序的信任区域优化方法可以满足此要求。 PRRA使用每个信任区域的单个MC模拟来改进每个信任区域内的设计。利用信任区域的潜在重叠,为每个信任区域顺序构造局部近似元模型。元模型是“按需准确”的,并且可以用作确定故障和安全区域的指标。接近极限状态的采样点定义了安全域和故障域之间的过渡区域。聚类技术识别通常可能不相交的所有过渡区域,并为每个过渡区域生成实际极限状态的局部元模型。重要采样仅在已识别的过渡和故障区域中生成采样点,从而在故障边界附近的区域中提供准确性,而无需对安全域中的采样点进行任何计算。鲁棒的极大值“空间填充”采样技术用于构建元模型。实例说明了开发的元建模,PRRA和信任区域RBDO方法的准确性和效率。

著录项

  • 作者

    Kuczera, Ramon C.;

  • 作者单位

    Oakland University.;

  • 授予单位 Oakland University.;
  • 学科 Statistics.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 210 p.
  • 总页数 210
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:03

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