Abstract
Dynamic-vibration-based structural damage identifcation (SDI) represents the main target for structural health monitoring (SHM). It is signifcant to consider the unavoidable uncertainties arising from both the structure and measuring noise. On the other hand, nonuniform measurement conditions often appear in actual SHM applications, which consist of two parts, i.e., spatial nonuniform characteristics for noises are induced by various intensities of input noise in every single sampling channel and multisensor stays in a damaged state. Tis paper proposes a new method for the SDI considering uncertainties in nonuniform measurement conditions integrating convolutional neural network (CNN). Herein, the great ability of feature extraction from the measurement associated with the convolutional network is used to handle the input data, and the mapping connection between the selected features and damage states is established. Time histories of structural responses, such as acceleration, are applied for damage identifcation. Te application and accuracy of the CNN, which is trained with input uncertain parameters contaminated by stochastic noises, are verifed by the fnite element numerical and experimental results. Both uncertain parameters and measurement conditions are considered in the verifcation. Te responses obtained from the numerical and experimental approach show that the proposed neural network model can identify the structural damage with high accuracy. Te great robustness of the proposed method is examined by studying the infuence of uncertainties, even considering the nonuniform measurement condition.
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CITATION STYLE
Zhu, S., & Xiang, T. (2023). Structural Damage Identification considering Uncertainties in Nonuniform Measurement Conditions Based on Convolution Neural Networks. Structural Control and Health Monitoring, 2023. https://doi.org/10.1155/2023/8325686
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