Kim Seunggoo, Lee Donwoo, Lee Seungjae
School of Industrial Design & Architectural Engineering, Korea University of Technology & Education, 1600 Chungjeol-ro, Byeongcheon-myeon, Cheonan 31253, Republic of Korea.
Biomimetics (Basel). 2025 Jul 24;10(8):490. doi: 10.3390/biomimetics10080490.
Accurate and rapid prediction of structural responses to seismic loading is critical for ensuring structural safety. Recently, there has been active research focusing on the application of deep learning techniques, including Physics-Informed Neural Networks (PINNs) and Long Short-Term Memory (LSTM) networks, to predict the dynamic behavior of structures. While these methods have shown promise, each comes with distinct limitations. PINNs offer physical consistency but struggle with capturing long-term temporal dependencies in nonlinear systems, while LSTMs excel in learning sequential data but lack physical interpretability. To address these complementary limitations, this study proposes a hybrid LSTM-PINN model, combining the temporal learning ability of LSTMs with the physics-based constraints of PINNs. This hybrid approach allows the model to capture both nonlinear, time-dependent behaviors and maintain physical consistency. The proposed model is evaluated on both single-degree-of-freedom (SDOF) and multi-degree-of-freedom (MDOF) structural systems subjected to the El-Centro ground motion. For validation, the 1940 El-Centro NS earthquake record was used, and the ground acceleration data were normalized and discretized for numerical simulation. The proposed LSTM-PINN is trained under the same conditions as the conventional PINN models (e.g., same optimizer, learning rate, and loss structure), but with fewer training epochs, to evaluate learning efficiency. Prediction accuracy is quantitatively assessed using mean error and mean squared error (MSE) for displacement, velocity, and acceleration, and results are compared with PINN-only models (PINN-1, PINN-2). The results show that LSTM-PINN consistently achieves the most stable and precise predictions across the entire time domain. Notably, it outperforms the baseline PINNs even with fewer training epochs. Specifically, it achieved up to 50% lower MSE with only 10,000 epochs, compared to the PINN's 50,000 epochs, demonstrating improved generalization through temporal sequence learning. This study empirically validates the potential of physics-guided time-series AI models for dynamic structural response prediction. The proposed approach is expected to contribute to future applications such as real-time response estimation, structural health monitoring, and seismic performance evaluation.
准确快速地预测结构对地震荷载的响应对于确保结构安全至关重要。最近,人们积极开展研究,聚焦于应用深度学习技术,包括物理信息神经网络(PINNs)和长短期记忆(LSTM)网络,来预测结构的动力行为。虽然这些方法已展现出前景,但每种方法都有明显的局限性。PINNs提供了物理一致性,但在捕捉非线性系统中的长期时间依赖性方面存在困难,而LSTMs在学习序列数据方面表现出色,但缺乏物理可解释性。为解决这些互补的局限性,本研究提出了一种混合LSTM - PINN模型,将LSTMs的时间学习能力与PINNs基于物理的约束相结合。这种混合方法使模型能够捕捉非线性、与时间相关的行为并保持物理一致性。所提出的模型在单自由度(SDOF)和多自由度(MDOF)结构系统上进行了评估,这些系统受到埃尔 - 森特罗地面运动的作用。为进行验证,使用了1940年埃尔 - 森特罗NS地震记录,并对地面加速度数据进行了归一化和离散化处理以进行数值模拟。所提出的LSTM - PINN在与传统PINN模型相同的条件下(例如,相同的优化器、学习率和损失结构)进行训练,但训练轮次更少,以评估学习效率。使用位移、速度和加速度的平均误差和均方误差(MSE)对预测精度进行定量评估,并将结果与仅使用PINN的模型(PINN - 1、PINN - 2)进行比较。结果表明,LSTM - PINN在整个时域内始终能实现最稳定、最精确的预测。值得注意的是,即使训练轮次更少,它也优于基线PINNs。具体而言,与PINN的50,000轮次相比,它在仅10,000轮次时MSE降低了高达50%,通过时间序列学习展示了改进的泛化能力。本研究通过实证验证了物理引导的时间序列人工智能模型在动态结构响应预测方面的潜力。所提出的方法有望为实时响应估计、结构健康监测和地震性能评估等未来应用做出贡献。