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An intelligent method for generating artificial earthquake records based on hybrid PSO-parallel brain emotional learning inspired model

机译:基于混合PSO-并行脑情感学习启发模型的人工地震记录智能生成方法

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摘要

Simplicity and high speed of brain emotional model made it an effective computational method, which is used in various applications. In this study, a modified model of brain emotional learning is used for generating artificial earthquake records. In fact, in earthquake engineering, strong ground motions are valuable information, which are recorded in each earthquake. These records could be used for linear and nonlinear time-history analysis of structures. Unfortunately, the numbers of recorded strong ground motions are not enough for most areas of the world. Therefore, many seismic codes permit to use artificial records, which contain specific characteristics. Because of the advantages of emotional models, a hybrid PSO–parallel brain emotional learning model is used for generating artificial records based on a dataset of real records in this research. PSO algorithm is combined with the model for finding the best values of learning parameters. In addition, wavelet packet transform is used for decomposing the earthquake signal to use as the suitable output of network. Despite of original brain emotional model, the proposed modified parallel model is applicable on multiinput–output data. Numerical examples show that the proposed model in this research could be successfully used for generating artificial records with acceptable error for statistical properties of the required pseudo spectral acceleration.
机译:大脑情感模型的简单性和高速性使其成为一种有效的计算方法,被广泛应用于各种应用中。在这项研究中,大脑情绪学习的改进模型用于生成人工地震记录。实际上,在地震工程中,强烈的地面运动是有价值的信息,它们记录在每次地震中。这些记录可用于结构的线性和非线性时程分析。不幸的是,对于世界上大多数地区,记录下来的强烈地面运动的次数还不够。因此,许多地震法规都允许使用包含特定特征的人工记录。由于情感模型的优势,本研究使用混合PSO-平行脑情感学习模型基于真实记录的数据集生成人工记录。 PSO算法与模型相结合,以找到学习参数的最佳值。另外,小波包变换用于分解地震信号,作为网络的合适输出。尽管有原始的大脑情感模型,但提出的改进的并行模型适用于多输入输出数据。数值算例表明,该研究中提出的模型可以成功地用于产生人工记录,具有可接受误差的伪记录加速度的统计特性。

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