基于BP和RBF神经网络的刚构-连续梁桥挠度预测研究

Jingyang Liu, Hexiang Wu, Quansheng Sun
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引用次数: 0

摘要

为了解决刚构-连续梁桥后期运行过程中出现的过大挠度问题,并为其初始弯度的设置提供依据,本文在有限元分析结果的基础上,采用三种方法对刚构-连续梁桥的挠度进行了预测和验证。结果表明,平均挠度法可以拟合较长一段时间内的平均挠度值,并预测下一段较长时间内的平均挠度值。反向传播(BP)神经网络模型和径向基函数(RBF)神经网络模型都能很好地预测偏转,但RBF神经网络模型的预测精度更高,平均绝对误差(MAE)为2.55 cmm,相对误差不超过1%。RBF神经网络建立的预测模型具有较高的稳定性、较好的泛化能力和较好的综合预测性能。所建立的模型对类似工程具有一定的参考意义,可以实现结构参数的优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Prediction of Rigid Frame-Continuous Girder Bridge Deflection Using BP and RBF Neural Networks
To solve the problem of excessive deflection in the post-operation process of a rigid frame-continuous girder bridge and provide a basis for the setting of its initial camber, this paper, based on the results of finite element analysis, uses three methods to predict and verify the deflection of a rigid frame-continuous girder bridge. The results show that the average deflection method can be used to fit the average deflection value for a relatively long period of time and predict the average deflection value for the next longer period of time. Both the back-propagation (BP) neural network model and the radial basis function (RBF) neural network model can predict deflection well, but the RBF neural network model has higher prediction accuracy, with a mean absolute error (MAE) of 2.55 cmm and a relative error not exceeding 1%. The prediction model established by the RBF neural network has higher stability, better generalization ability, and better overall prediction performance. The established model has some reference significance for similar engineering projects and can achieve the optimization of structural parameters.
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