An effective active learning strategy for reliability-based design optimization under multiple simulation models

IF 5.7 1区 工程技术 Q1 ENGINEERING, CIVIL Structural Safety Pub Date : 2023-12-08 DOI:10.1016/j.strusafe.2023.102426
Seonghyeok Yang , Mingyu Lee , Yongsu Jung , Hyunkyoo Cho , Weifei Hu , Ikjin Lee
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Abstract

This paper proposes an effective active learning strategy for reliability-based design optimization (RBDO) problems in which the constraint functions are acquired from multiple simulation models. To achieve this goal, a new active learning function (ALF) is derived by estimating the increased reliability of active constraint functions after adding one point to the train points of constraint functions in each simulation model. The proposed ALF distinguishes possibly active constraint functions that seem active near the current optimum and considers how the constraint functions are active. In the proposed RBDO method, a Kriging model is iteratively updated by adding the best point to the train points of constraint functions included in the crucial simulation model until the optimum converges and the Kriging model is sufficiently accurate. The best point and the crucial simulation model are obtained by comparing the proposed ALF. The ALF is further modified to apply to problems where the cost of each simulation model is different. To verify the effectiveness of the proposed method, two numerical and one engineering examples are analyzed. The results show that the proposed method efficiently and accurately obtains the RBDO optimum involving multiple simulation models, regardless of simulation cost.

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多仿真模型下基于可靠性的设计优化的有效主动学习策略
本文针对基于可靠性的设计优化(RBDO)问题提出了一种有效的主动学习策略,即从多个仿真模型中获取约束函数。为了实现这一目标,本文通过在每个仿真模型中的约束函数训练点上添加一个点后,估计主动约束函数增加的可靠性,从而推导出一种新的主动学习函数(ALF)。所提出的 ALF 可以区分在当前最优点附近看似活跃的可能活跃的约束函数,并考虑约束函数是如何活跃的。在建议的 RBDO 方法中,通过将最佳点添加到关键模拟模型中包含的约束函数列车点来迭代更新克里金模型,直到最佳点收敛且克里金模型足够精确。通过比较所提出的 ALF,可获得最佳点和关键模拟模型。对 ALF 做了进一步修改,以适用于每个仿真模型成本不同的问题。为了验证所提方法的有效性,分析了两个数值实例和一个工程实例。结果表明,无论仿真成本如何,所提出的方法都能高效、准确地获得涉及多个仿真模型的 RBDO 最佳值。
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来源期刊
Structural Safety
Structural Safety 工程技术-工程:土木
CiteScore
11.30
自引率
8.60%
发文量
67
审稿时长
53 days
期刊介绍: Structural Safety is an international journal devoted to integrated risk assessment for a wide range of constructed facilities such as buildings, bridges, earth structures, offshore facilities, dams, lifelines and nuclear structural systems. Its purpose is to foster communication about risk and reliability among technical disciplines involved in design and construction, and to enhance the use of risk management in the constructed environment
期刊最新文献
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