利用梯度增强混合 PINN 预测结构地震响应

Chenxi Xing, Zidong Xu, Hao Wang
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摘要

为了快速有效地评估桥梁的抗震能力,必须对桥梁的地震反应进行有效预测。近年来,物理信息神经网络(PINN)取得了长足的进步,并被用于求解不同领域的微分方程。然而,如何提高其准确性和效率仍是一个有待解决的难题。在这项工作中,一种新型梯度增强四阶 Runge-Kutta PINN(gRK4-PINN)作为一种强大的混合 PINN 被用来实现这一目标。gRK4-PINN 并非简单地将物理信息嵌入损失函数,而是将 RK4 方法和物理模型与神经网络紧密结合。此外,为了提高预测性能,还在损失函数中直接嵌入了额外的梯度方程。通过对一座大跨度连续梁高速铁路(CGHSR)桥梁进行数值实验,验证了所提方法的准确性。结果表明,预测地震反应的平均绝对误差(MAE)相对较小,在大多数情况下都低于 0.014。这些较小的 MAE 值表明,所提出的 gRK4-PINN 在预测 CGHSR 桥梁的地震反应方面表现良好。
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Structural seismic responses prediction using the gradient-enhanced hybrid PINN
To rapidly and effectively assess the bridge seismic-resistant capability, it is essential to conduct efficient predictions of bridge seismic responses. Recently, physics informed neural network (PINN) has made great progress and utilized to solve differential equations in different fields. However, how to increase its accuracy and efficiency still remains an open challenge. In this work, a novel gradient-enhanced Fourth-Order Runge-Kutta PINN (gRK4-PINN), as a powerful hybrid PINN, is utilized to achieve this goal. As for gRK4-PINN, the physical information is not simply embedded into the loss function; instead, the RK4 method and the physical model is intricately integrated with the neural network. In addition, to improve the predictive performance, additional gradient equation is directly embedded in loss function. A large-span continuous girder high speed railway (CGHSR) bridge is adopted as numerical experiment to validate the fidelity of the proposed method. Results reveal that the Mean Absolute Error (MAE) of the predicting seismic responses is relatively small, whose value is below 0.014 in most of the time. These small MAE values indicate that the proposed gRK4-PINN performs well in predicting the seismic responses of the CGHSR bridge.
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