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An accurate penalty-based approach for reliability-based design optimization

机译:一种基于惩罚的精确方法,用于基于可靠性的设计优化

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摘要

A typical reliability-based design optimization (RBDO) problem is usually formulated as a stochastic optimization model where the performance of a system is optimized with the reliability requirements being satisfied. Most existing RBDO methods divide the problem into two sub-problems: one relates to reliability analysis, the other relates to optimization. Traditional approaches nest the two sub-problems with the reliability analysis as the inner loop and the optimization as the outer loop. Such nested approaches face the challenge of prohibitive computational expense that drives recent research focusing on decoupling the two loops or even fundamentally transforming the two-loop structure into one deterministic optimization problem. While promising, the potential issue in these computationally efficient approaches is the lowered accuracy. In this paper, a new decoupled approach, which performs the two loops sequentially, is proposed. First, a deterministic optimization problem is solved to locate the means of the uncertain design variables. After the mean values are determined, the reliability analysis is performed. A new deterministic optimization problem is then restructured with a penalty added to each limit-state function to improve the solution iteratively. Most existing research on decoupled approaches linearizes the limit-state functions or introduces the penalty into the limit-state functions, which may suffer the approximation error. In this research, the penalty term is introduced to change the right hand side (RHS) value of the deterministic constraints. Without linearizing or transforming the formulations of limit-state function, this penalty-based approach effectively improves the accuracy of RBDO. Comparison experiments are conducted to illustrate how the proposed method obtains improved solutions with acceptable computational cost when compared to other RBDO approaches collected from literature.
机译:通常将典型的基于可靠性的设计优化(RBDO)问题表述为随机优化模型,其中在满足可靠性要求的情况下优化系统性能。现有的大多数RBDO方法将问题分为两个子问题:一个涉及可靠性分析,另一个涉及优化。传统方法将两个子问题嵌套在一起,其中可靠性分析作为内部循环,而优化则作为外部循环。这种嵌套的方法面临着巨大的计算费用的挑战,这驱使最近的研究集中在将两个循环解耦,甚至从根本上将两个循环结构转换为一个确定性优化问题。尽管很有希望,但这些计算有效方法中的潜在问题是准确性降低。本文提出了一种新的解耦方法,该方法可以依次执行两个循环。首先,解决确定性优化问题以定位不确定设计变量的均值。确定平均值之后,执行可靠性分析。然后,对新的确定性优化问题进行重组,并在每个极限状态函数中添加惩罚以迭代地改善求解。对解耦方法进行的大多数现有研究使极限状态函数线性化或将惩罚引入极限状态函数中,这可能会遭受近似误差。在这项研究中,引入惩罚项来更改确定性约束的右侧(RHS)值。在不线性化或变换极限状态函数公式的情况下,这种基于惩罚的方法有效地提高了RBDO的精度。进行比较实验以说明与从文献收集的其他RBDO方法相比,所提出的方法如何以可接受的计算成本获得改进的解决方案。

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