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HYBRID ANALYSIS METHOD FOR RELIABILITY-BASED DESIGN OPTIMIZATION

机译:基于可靠性的设计优化混合分析方法

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Reliability-Based Design Optimization (RBDO) involves evaluation of probabilistic constraints, which can be done in two different ways, the Reliability Index Approach (RIA) and the Performance Measure Approach (PMA). It has been reported in the literature that RIA yields instability for some problems but PMA is robust and efficient in identifying a probabilistic failure mode in the RBDO process. However, several examples of numerical tests of PMA have also shown instability and inefficiency in the RBDO process if the Advanced Mean Value (AMV) method, which is a numerical tool for probabilistic constraint evaluation in PMA, is used, since it behaves poorly for a concave performance function, even though it is effective for a convex performance function. To overcome difficulties of the AMV method, the Conjugate Mean Value (CMV) method is proposed in this paper for the concave performance function in PMA. However, since the CMV method exhibits the slow rate of convergence for the convex function, it is selectively used for concave-type constraints. That is, once the type of the performance function is identified, either the AMV method or the CMV method can be adaptively used for PMA during the RBDO iteration to evaluate probabilistic constraints effectively. This is referred to as the Hybrid Mean Value (HMV) method. The enhanced PMA with the HMV method is compared to RIA for effective evaluation of probabilistic constraints in the RBDO process. It is shown that PMA with a spherical equality constraint is easier to solve than RIA with a complicated equality constraint in estimating the probabilistic constraint in the RBDO process.
机译:基于可靠性的设计优化(RBDO)涉及对概率约束的评估,这可以通过两种不同的方法来完成,即可靠性指数方法(RIA)和性能度量方法(PMA)。据文献报道,RIA在某些问题上会产生不稳定性,但是PMA在确定RBDO过程中的概率故障模式方面既强大又有效。但是,如果使用高级均值(AMV)方法(一种用于PMA中概率约束评估的数值工具),则PMA数值测试的几个示例也显示了RBDO过程的不稳定和效率低下,因为它对于APM的表现不佳。凹形性能函数,即使对凸形性能函数有效。为克服AMV方法的难点,针对PMA中的凹面性能函数,提出了共轭均值(CMV)方法。但是,由于CMV方法对凸函数的收敛速度较慢,因此有选择地用于凹型约束。也就是说,一旦确定了性能函数的类型,则可以在RBDO迭代期间将AMV方法或CMV方法自适应地用于PMA,以有效地评估概率约束。这称为混合均值(HMV)方法。将使用HMV方法增强的PMA与RIA进行比较,以有效评估RBDO过程中的概率约束。结果表明,在估计RBDO过程中的概率约束时,具有球形等式约束的PMA比具有复杂的等式约束的RIA更容易解决。

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