磁流变阻尼器结构模糊控制器多目标可靠性优化设计

Pei Pei, S. Quek, Yongbo Peng
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引用次数: 0

摘要

为了设计地震地震动作用下MR阻尼器结构的最优鲁棒模糊控制器,采用自适应Kriging模型进行多目标可靠性设计优化(RBDO),确定模糊控制器的参数。优化问题以层间位移最小和结构平均控制力最小为目标函数,并对结构在随机刚度和随机地震荷载作用下的动力响应进行了概率约束。为了降低可靠性评估的计算成本,在增广空间中构造了全局Kriging模型作为计算评估的替代。随后,将训练好的元模型结合非支配排序遗传算法(NSGA-II)集成到RBDO框架中,求解模糊逻辑控制(FLC)优化问题。最后通过对线性和非线性结构的数值模拟,验证了多目标RBDO在FLC设计中的可行性和有效性。在线性情况下,由多目标确定性设计优化得到的模糊控制器比由多目标确定性设计优化得到的模糊控制器具有更强的鲁棒性。在非线性情况下,使用多目标DDO预先定位粗安全域可以显著减少元模型训练的样本数量,有利于多目标RBDO的实现;此外,在指定模糊控制器的情况下,考虑磁流变阻尼器分布优化,可以进一步提高被控结构的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiobjective Reliability-Based Design Optimization of the Fuzzy Logic Controller for MR Damper-Based Structures
To devise an optimum and robust fuzzy logic controller for MR damper-based structures subjected to earthquake ground motions, the multiobjective reliability-based design optimization (RBDO) using the adaptive Kriging model is performed to determine the parameters of the fuzzy logic controller. The optimization problem is formulated with two objective functions, namely, the minimization of interstory drift and average control force of the concerned structure, and subjected to a probability constraint on structural dynamic responses under the effects of random structural stiffness and stochastic earthquake loadings. To reduce the computational cost of reliability assessment, a global Kriging model is constructed in an augmented space as a surrogate for computational evaluations. Subsequently, the trained metamodel combined with the nondominated sorting genetic algorithm (NSGA-II) is integrated into the framework of RBDO for solving the fuzzy logic control (FLC) optimization problem. The feasibility and effectiveness of the multiobjective RBDO in the FLC design are finally validated by conducting numerical simulations on both linear and nonlinear structures. As demonstrated in the linear case, the fuzzy logic controllers obtained from the multiobjective RBDO show more robustness than those derived from the multiobjective deterministic design optimization (DDO). In the nonlinear case, using the multiobjective DDO to prelocate a coarse safety domain can significantly reduce the number of samples for training the metamodel and facilitate the implementation of the multiobjective RBDO; in addition, the controlled structural performance with a specified fuzzy logic controller can be further improved by considering MR damper distribution optimization.
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