基于可靠性的抗震结构优化设计,考虑与地动相关的随机性

S. Shrestha, Yongbo Peng
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引用次数: 0

摘要

在对结构进行动态可靠性分析时,有必要考虑多种极限状态函数或其组合。在结构受到随机激励的情况下,这会导致不同极限状态之间错综复杂的相互依存关系,而计算工作量会对确保足够精度构成巨大挑战。基于规范的设计主要确保构件层面的安全性,而确定性优化则无法顾及与外部激励或整个系统相关的固有不确定性。因此,在这种情况下,为了解决激励的不确定性和多种极限状态的存在,同时减轻计算上的挑战,在概率密度演化法的框架内采用了等效极值准则,以计算结构在由物理随机地动模型产生的随机地动作用下的整体可靠性。随后使用遗传算法进行数值优化,旨在最大限度地降低上部结构的成本,同时遵守与层间漂移比相关的设计性能标准,并考虑全局可靠性。此外,还使用 NSGA-II 进行了多目标优化,允许生成多个解决方案,人们可以根据需要从中选择最合适的解决方案。数值结果表明,该技术能有效实现结构成本与整体可靠性之间的最佳平衡,为随机激励下结构的动态可靠性分析和设计优化提供了全面的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability-based design optimization for seismic structures considering randomness associated with ground motions
When addressing the dynamic reliability analysis of structures, it becomes necessary to account for multiple limit state functions or their combinations. In scenarios where structures are subjected to random excitation, this can lead to intricate inter-dependencies among different limit states, and the computational workload can pose a substantial challenge in ensuring sufficient precision. Code-based design primarily ensures safety at the member level, while deterministic optimization fails to accommodate the inherent uncertainties associated with external excitation or the system as a whole. Therefore, in such cases, to address both the uncertainties in excitations and the presence of multiple limit states while mitigating computational challenges, equivalent extreme-value criteria are employed within the framework of the probability density evolution method to calculate the global reliability of the structure subjected to stochastic ground motions generated from the physically motivated stochastic ground motion model. Numerical optimization is subsequently conducted using genetic algorithms, aiming to minimize the cost of the superstructure while adhering to the design performance criteria related to the inter-story drift ratio and considering global reliability. Additionally, multi-objective optimization is carried out using NSGA-II, permitting the generation of multiple solutions, from which one can select the most suitable solution as needed. The numerical results illustrate the effectiveness of this technique in achieving an optimal balance between the cost of the structure and the consideration of global reliability, providing a comprehensive solution for dynamic reliability analysis and design optimization of structures under random excitations.
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