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Crowd jumping load simulation with generative adversarial networks

机译:具有生成对抗性网络的人群跳跃负荷模拟

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To mathematically represent crowd jumping loads, the features of the jumping load of each person, including pulse curve patterns, pulse interval sequences, and pulse energy sequences are considered. These features are essentially highdimensional random variables. However, they have to be represented in a practically simplified model due to the lack of mathematical tools. The recently emerged generative adversarial networks (GANs) can model high-dimensional random variables well, as demonstrated in image synthesis and text generation. Therefore, this study adopts GANs as a new method for modelling crowd jumping loads. Conditional GANs (CGANs) combined with Wasserstein GANs with gradient penalty (WGANs-GP) are used in pulse curve pattern modelling, where a multi-layer perceptron and convolutional neural network are selected as the discriminator and generator, respectively. For the pulse energy sequence and pulse interval sequence modelling, similar GANs are used, where recurrent neural networks are selected as both the generator and discriminator. Finally, crowd jumping loads can be simulated by connected the pulse samples based on the pulse energy sequence samples and interval sequence samples, generated by the three proposed GANs. The experimental individual and crowd jumping load records are utilized in training GANs to ensure their output can simulate real load records well. Finally, the feasibility of the proposed GANs was verified by comparing the measured structural responses of an existing floor to the predicted structural responses.
机译:为了数学方式表示人群跳跃载荷,考虑了每个人的跳跃负载的特征,包括脉冲曲线图案,脉冲间隔序列和脉冲能量序列。这些功能基本上是高度的随机变量。然而,由于缺乏数学工具,它们必须以实际简化的模型代表。正如图像合成和文本生成中所示,最近出现的生成的对抗网络(GANS)可以良好地模拟高维随机变量。因此,本研究采用GANS作为建模人群跳跃负荷的新方法。有条件的GANS(CGANS)与梯度惩罚(WGANS-GP)结合的WASSERTEIN GANS用于脉冲曲线图案建模,其中分别选择多层Perceptron和卷积神经网络作为鉴别器和发电机。对于脉冲能量序列和脉冲间隔序列建模,使用类似的GAN,其中选择复发性神经网络作为发电机和鉴别器。最后,可以通过基于脉冲能量序列样本和间隔序列样本连接脉冲样本来模拟人群跳跃载荷,由三个提出的GAN产生。实验性的个人和人群跳跃负荷记录用于培训GAN,以确保其输出能够良好地模拟真正的负荷记录。最后,通过将现有地板的测量结构响应与预测的结构反应进行比较来验证所提出的GAN的可行性。

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