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An efficient method of solving design optimization problems with arbitrary random distributions in gradient-based design spaces

机译:解决基于梯度的设计空间中具有任意随机分布的设计优化问题的有效方法

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Reliability-Based Design Optimization (RBDO) algorithms, such as Reliability Index Approach (RIA) and Performance Measure Approach (PMA), have been developed to solve engineering optimization problems under design uncertainties. In some existing methods, the random design space is transformed to standard normal design space and the reliability assessment, such as reliability index from RIA or performance measure from PMA, is estimated in order to evaluate the failure probability. When the random variable is arbitrarily distributed and cannot be properly fitted to any known form of probability density function, the existing RBDO methods cannot perform reliability analysis in the original design space. This paper proposes a novel Ensemble of Gradient-based Transformed Reliability Analyses (EGTRA) to evaluate the failure probability of any arbitrarily distributed random variables in the original design space. The arbitrary distribution of the random variable is approximated by a merger of multiple Gaussian kernel functions in a single-variate coordinate that is directed toward the gradient of the constraint function. The failure probability is then estimated using the ensemble of each kernel reliability analysis. This paper further derives a linearly approximated probabilistic constraint at the design point with allowable reliability level in the original design space using the aforementioned fundamentals and techniques. Numerical examples with generated random distributions show that existing RBDO algorithms can improperly approximate the uncertainties as Gaussian distributions and provide solutions with poor assessments of reliabilities. On the other hand, the numerical results show EGTRA is capable of efficiently solving the RBDO problems with arbitrarily distributed uncertainties.
机译:已经开发了基于可靠性的设计优化(RBDO)算法,例如可靠性指数方法(RIA)和性能度量方法(PMA),以解决设计不确定性下的工程优化问题。在一些现有方法中,将随机设计空间转换为标准的正常设计空间,并评估可靠性评估,例如RIA的可靠性指标或PMA的性能指标,以评估故障概率。当随机变量是任意分布的并且不能适当地拟合到任何已知形式的概率密度函数时,现有的RBDO方法无法在原始设计空间中执行可靠性分析。本文提出了一种新颖的基于梯度的变换可靠性分析集成(EGTRA),以评估原始设计空间中任意分布的随机变量的失效概率。随机变量的任意分布是通过将多个高斯核函数合并到指向约束函数的梯度的单变量坐标中来近似的。然后使用每个内核可靠性分析的集合来估计故障概率。本文还使用上述基本原理和技术,在原始设计空间中以允许的可靠性级别在设计点上得出了线性近似概率约束。具有生成的随机分布的数值示例表明,现有的RBDO算法不能正确地将不确定性近似为高斯分布,并且提供的解决方案对可靠性的评估很差。另一方面,数值结果表明,EGTRA能够有效地解决具有任意分布的不确定性的RBDO问题。

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