Low-resource dynamic loading identification of nonlinear system using pretraining

IF 5.6 1区 工程技术 Q1 ENGINEERING, CIVIL Engineering Structures Pub Date : 2024-11-03 DOI:10.1016/j.engstruct.2024.119238
Rui Zhu , Weixuan Yuan , Qingguo Fei , Qiang Chen , Gang Fan , Stefano Marchesiello , Dario Anastasio
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Abstract

To address the challenge of load identification in nonlinear systems, an audio neural network-based method called WaveNet is proposed that leverages its capability to capture long-term dependencies in mechanical systems, enabling accurate load identification. Unlike traditional dynamic load identification methods that often encounter difficulties with matrix solutions, this approach takes advantage of WaveNet’s capabilities, enhancing both accuracy and efficiency. We integrate pre-training and transfer learning techniques to address the data scarcity challenges often encountered in real-world engineering applications. By transferring features across distributed datasets, this method reduces the dependency on single-task data, thereby improving model robustness. The performance of the WaveNet method is rigorously evaluated against traditional benchmarks such as Multilayer Perceptron (MLP) and Convolutional Neural Network (CNN) benchmarks under random load conditions applied to a complex structural framework. The proposed method achieves a root mean squared error (RMSE) of 1.521 and a determination coefficient (R²) of 0.996 in the random load case, demonstrating superior accuracy compared to other approaches. Moreover, its applicability is verified through simulations of both impact load and harmonic load scenarios, showcasing the effectiveness of transfer learning in overcoming domain discrepancies. Finally, the method is tested in random experiments to validate its engineering applicability. The results highlight the significant accuracy improvement in low-resource tasks achieved through pre-training, showcasing the potential and value of the proposed method.
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利用预训练对非线性系统进行低资源动态负载识别
为了应对非线性系统中载荷识别的挑战,我们提出了一种基于音频神经网络的方法--WaveNet,利用其捕捉机械系统中长期依赖关系的能力,实现精确的载荷识别。传统的动态载荷识别方法在矩阵求解方面经常遇到困难,与之不同的是,这种方法利用了 WaveNet 的能力,提高了准确性和效率。我们整合了预训练和迁移学习技术,以解决实际工程应用中经常遇到的数据稀缺难题。通过在分布式数据集上转移特征,该方法减少了对单一任务数据的依赖,从而提高了模型的鲁棒性。在应用于复杂结构框架的随机载荷条件下,针对多层感知器(MLP)和卷积神经网络(CNN)等传统基准,对 WaveNet 方法的性能进行了严格评估。在随机载荷情况下,所提方法的均方根误差(RMSE)为 1.521,判定系数(R²)为 0.996,与其他方法相比精度更高。此外,通过模拟冲击载荷和谐波载荷两种情况,验证了该方法的适用性,展示了迁移学习在克服领域差异方面的有效性。最后,在随机实验中对该方法进行了测试,以验证其工程适用性。结果表明,通过预训练,在低资源任务中的准确率有了显著提高,展示了所提方法的潜力和价值。
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来源期刊
Engineering Structures
Engineering Structures 工程技术-工程:土木
CiteScore
10.20
自引率
14.50%
发文量
1385
审稿时长
67 days
期刊介绍: Engineering Structures provides a forum for a broad blend of scientific and technical papers to reflect the evolving needs of the structural engineering and structural mechanics communities. Particularly welcome are contributions dealing with applications of structural engineering and mechanics principles in all areas of technology. The journal aspires to a broad and integrated coverage of the effects of dynamic loadings and of the modelling techniques whereby the structural response to these loadings may be computed. The scope of Engineering Structures encompasses, but is not restricted to, the following areas: infrastructure engineering; earthquake engineering; structure-fluid-soil interaction; wind engineering; fire engineering; blast engineering; structural reliability/stability; life assessment/integrity; structural health monitoring; multi-hazard engineering; structural dynamics; optimization; expert systems; experimental modelling; performance-based design; multiscale analysis; value engineering. Topics of interest include: tall buildings; innovative structures; environmentally responsive structures; bridges; stadiums; commercial and public buildings; transmission towers; television and telecommunication masts; foldable structures; cooling towers; plates and shells; suspension structures; protective structures; smart structures; nuclear reactors; dams; pressure vessels; pipelines; tunnels. Engineering Structures also publishes review articles, short communications and discussions, book reviews, and a diary on international events related to any aspect of structural engineering.
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