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A Deep Learning Prediction Model for Structural Deformation Based on Temporal Convolutional Networks

机译:基于时间卷积网络的结构变形深学习预测模型

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The structural engineering is subject to various subjective and objective factors, the deformation is usually inevitable, the deformation monitoring data usually are nonstationary and nonlinear, and the deformation prediction is a difficult problem in the field of structural monitoring. Aiming at the problems of the traditional structural deformation prediction methods, a structural deformation prediction model is proposed based on temporal convolutional networks (TCNs) in this study. The proposed model uses a one-dimensional dilated causal convolution to reduce the model parameters, expand the receptive field, and prevent future information leakage. By obtaining the long-term memory of time series, the internal time characteristics of structural deformation data can be effectively mined. The network hyperparameters of the TCN model are optimized by the orthogonal experiment, which determines the optimal combination of model parameters. The experimental results show that the predicted values of the proposed model are highly consistent with the actual monitored values. The average RMSE, MAPE, and MAE with the optimized model parameters reduce 44.15%, 82.03%, and 66.48%, respectively, and the average running time is reduced by 45.41% compared with the results without optimization parameters. The average RMSE, MAE, and MAPE reduce by 26.88%, 62.16%, and 40.83%, respectively, compared with WNN, DBN-SVR, GRU, and LSTM models.
机译:结构工程受到各种主观和客观因素的影响,变形通常是不可避免的,变形监测数据通常是非间断的和非线性的,并且变形预测是结构监测领域的难题。针对传统结构变形预测方法的问题,基于本研究中的时间卷积网络(TCNS)提出了一种结构变形预测模型。该建议的模型使用一维扩张的因果卷积来减少模型参数,扩展接收领域,并防止未来的信息泄漏。通过获得时间序列的长期记忆,可以有效地开采结构变形数据的内部时间特性。 TCN模型的网络超参数由正交实验进行了优化,其确定了模型参数的最佳组合。实验结果表明,所提出的模型的预测值与实际监测值高度一致。具有优化模型参数的平均RMSE,MAPE和MAE分别降低44.15%,82.03%和66.48%,与没有优化参数的结果相比,平均运行时间减少了45.41%。与WNN,DBN-SVR,GRU和LSTM模型相比,平均RMSE,MAE和MAPE分别减少了26.88%,62.16%和40.83%。

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