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首页> 外文期刊>Structural health monitoring >Group sparsity-aware convolutional neural network for continuous missing data recovery of structural health monitoring
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Group sparsity-aware convolutional neural network for continuous missing data recovery of structural health monitoring

机译:集团稀疏感知卷积神经网络,用于连续缺失数据恢复结构健康监测

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摘要

In structural health monitoring, data quality is crucial to the performance of data-driven methods for structural damage identification, condition assessment, and safety warning. However, structural health monitoring systems often suffer from data imperfection, resulting in some entries being unusable in a data matrix. Discrete missing points are relatively easy to recover based on known adjacent points, whereas segments of continuous missing data are more common and also more challenging to recover in a practical scenario. Formulating the data recovery task as an optimization problem for matrix completion, we present a convolutional neural network to achieve simultaneous recovery for multi-channel data with the awareness of group sparsity. The data recovery process based on compressive sensing is formulated as a regression problem and achieved in the neural network. The basis matrix is utilized as the input and the incomplete data matrix as the output to provide partial information for approximation. Basis coefficient optimization is performed via convolutional operation. Group sparsity regularization is applied while updating the kernel of the convolutional layer. The recovery can be readily obtained after optimization (training) without further validation and testing. The proposed method does not need intact data prepared in advance for training; also, it can handle sporadic data loss and make the most of interrupted information. Recovery ability evaluations on synthetic data, field-test data, and monitoring data of seismic response indicate that the proposed method achieves a good recovery result with high loss ratio and continuous data loss. The code is available at https://github.com/dawnnao/Group-sparsity-aware-CNN .
机译:在结构健康监测中,数据质量对数据驱动方法进行结构损伤识别,条件评估和安全警告的性能至关重要。然而,结构健康监测系统通常遭受数据不完美,导致某些条目在数据矩阵中不可用。基于已知的相邻点的离散缺失点相对容易恢复,而连续缺失数据的片段更为常见,并且在实际情况下恢复也更具挑战性。将数据恢复任务作为矩阵完成的优化问题,我们展示了一个卷积神经网络,实现了多通道数据的同时恢复,具有群体稀疏性的认识。基于压缩感测的数据恢复过程被制定为回归问题并且在神经网络中实现。基矩阵用作输入和不完全数据矩阵作为输出,以提供近似的部分信息。基础系数优化通过卷积操作进行。在更新卷积层的内核时,应用组稀疏正常化。在无需进一步验证和测试的情况下,可以容易地获得恢复。该方法不需要提前准备的完整数据进行培训;此外,它可以处理偶发数据丢失,并充分发出中断的信息。恢复能力评估合成数据,现场测试数据和地震响应的监测数据表明,该方法实现了具有高损失比率和连续数据丢失的良好恢复结果。该代码可在https://github.com/dawnnao/group-sparsity-aware-cnn获得。

著录项

  • 来源
    《Structural health monitoring》 |2021年第4期|1738-1759|共22页
  • 作者

    Zhiyi Tang; Yuequan Bao; Hui Li;

  • 作者单位

    Key Lab of Structures Dynamic Behavior and Control of the Ministry of Education Harbin Institute of Technology|Key Lab of Smart Prevention and Mitigation of Civil Engineering Disasters of the Ministry of Industry and Information Technology Harbin Institute of Technology|School of Civil Engineering Harbin Institute of Technology;

    Key Lab of Structures Dynamic Behavior and Control of the Ministry of Education Harbin Institute of Technology|Key Lab of Smart Prevention and Mitigation of Civil Engineering Disasters of the Ministry of Industry and Information Technology Harbin Institute of Technology|School of Civil Engineering Harbin Institute of Technology;

    Key Lab of Structures Dynamic Behavior and Control of the Ministry of Education Harbin Institute of Technology|Key Lab of Smart Prevention and Mitigation of Civil Engineering Disasters of the Ministry of Industry and Information Technology Harbin Institute of Technology|School of Civil Engineering Harbin Institute of Technology;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Structural health monitoring; data recovery; convolutional neural network; group sparsity; non-convex optimization;

    机译:结构健康监测;数据恢复;卷积神经网络;小组稀疏;非凸优化;

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