基于物理信息神经网络的桥梁影响线和多车荷载识别

Xingtian Li, Jinsong Zhu
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引用次数: 0

摘要

影响线(IL)和车辆荷载识别对于桥梁的设计、健康监测和损坏检测至关重要。传统上,大多数现有文献采用的方法是直接求解方程组。然而,这些方法需要进行复杂的计算,如矩阵分解和正则化系数优化,因此很难实现。此外,在获取准确的车轴信息和有效分离每辆车引起的桥梁响应方面也存在困难。因此,改进 IL 和多车辆负载的识别算法仍然具有重要意义。为解决这些问题,本文提出了一种将先验物理方程和神经网络相结合的新方法。具体做法是利用现有的车辆车轴信息获取方法,将反映车轴载荷与桥梁响应之间关系的方程集成到神经网络中。为了验证所提方法的有效性,首先将其应用于理论和模拟数据。然后,研究了噪声和动态效应对结果准确性的影响,以及神经网络层和采样间隔的范围。最后,该方法被用于识别多车负载。研究结果证实了所提方法的可行性和数值稳定性。所提出的方法无需复杂的计算过程,包括矩阵分解、对角化、正则化系数优化和解矢量平滑拟合。因此,算法的实施难度大大降低,识别精度也得到了提高。但值得注意的是,由于神经网络需要进行迭代学习和训练,因此建议的方法相对更耗时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of bridge influence line and multiple-vehicle loads based on physics-informed neural networks
Influence lines (ILs) and vehicle loads identification are critical in the design, health monitoring, and damage detection of bridges. Traditionally, the approach used in most existing literature has been to solve the system of equations directly. However, these approaches require complex calculations such as matrix decomposition and regularization coefficient optimization, making them difficult to implement. In addition, there are difficulties in obtaining accurate axle information and effectively separating the bridge response due to each vehicle. Thus, the improvement of identification algorithms for ILs and multi-vehicle loads remains of significant importance. To address these issues, this paper presents a novel approach that integrates prior physical equations and neural networks. This is achieved by integrating the equation that reflects the relationship between axle loads and bridge response into the neural network, utilizing existing methods for acquiring axle information of vehicles. To validate the effectiveness of the proposed method, it was first applied to theoretical and simulation data. The study then investigated the impact of noise and dynamic effects on the accuracy of the results, as well as the range of the neural network layers and sampling intervals. Finally, the method was implemented for identifying multiple-vehicle loads. The findings of the study confirm the feasibility and numerical stability of the proposed approach. The proposed method eliminates the need for complex computational processes, including matrix decomposition, diagonalization, regularization coefficient optimization, and solution vector smoothing fitting. As a result, the implementation of the algorithm is significantly less challenging, and identification accuracy is improved. It is important to note, however, that the proposed method is relatively more time-consuming due to the iterative learning and training required by the neural network.
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