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An evolutionary optimization-based approach for simulation of endurance time load functions

机译:基于进化优化的耐久性时间负载函数的仿真方法

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摘要

A novel optimization method based on Imperialist Competitive Algorithm (ICA) for simulating endurance time (ET) excitations was proposed. The ET excitations are monotonically intensifying acceleration time histories that are used as dynamic loading. Simulation of ET excitations by using evolutionary algorithms has been challenging due to the presence of a large number of decision variables that are highly correlated due to the dynamic nature of the problem. Optimal parameter values of the ICA algorithm for simulating ETEFs were evaluated and were used to simulate ET excitations. In order to increase the capability of the ICA and provide further search in the optimization space, this algorithm was combined with simulated annealing (SA). The new excitation results were compared with the current practice for simulation of ET excitations. It was shown that the proposed ICA-SA method leads to more accurate ET excitations than the classical optimization methods.
机译:提出了一种基于帝国主义竞争算法(ICA)的新型优化方法,用于模拟耐久性时间(ET)激发。 ET激励是将用作动态加载的加速时间历史进行整理。 由于存在由于问题的动态性质,通过使用进化算法模拟Et激励是挑战,这一直是挑战,这是由于问题的动态性质高度相关的大量决策变量。 评估ICA算法的最佳参数值,并用于模拟ET激励。 为了提高ICA的能力并在优化空间中提供进一步搜索,将该算法与模拟退火(SA)相结合。 将新的励磁结果与目前的ET激励模拟进行了比较。 结果表明,所提出的ICA-SA方法导致比经典优化方法更准确的ET激励。

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