利用贝叶斯神经网络检测 CFRP 复合材料的超声波λ波损伤

IF 2.6 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Kai Luo, Jiayin Zhu, Zhenliang Li, Huimin Zhu, Ye Li, Runjiu Hu, Tiankuo Fan, Xiangqian Chang, Long Zhuang, Zhibo Yang
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引用次数: 0

摘要

在复杂的条件和工作环境下,复合材料板很容易受到各种损坏,这可能会降低结构的可靠性,并威胁到设备和人身安全。因此,为这些复合材料结构实施稳健的在线结构健康监测(SHM)系统势在必行。为了提高可靠性和安全性,我们引入了一种稳健的在线 SHM 系统,该系统以我们新开发的损伤检测贝叶斯神经网络(DD-BNN)为基础。本研究的主要贡献在于 DD-BNN 无需任何信号/特征预处理和人工干预,仅使用一对致动器-接收器就能对复合材料板进行精确可靠的损伤检测和定位。所提出的 DD-BNN 模型创新性地将概率建模与深度学习相结合,以解决基于λ波的复合板损伤检测和模型性能中的不确定性问题,其特点是通过贝叶斯推理训练出一个专门的概率层,以有效封装和管理模型权重和激活中的不确定性。值得注意的是,我们的方法大大简化了 SHM 系统的设计和人工操作要求。此外,正如高斯和泊松噪声扰动分析实验所证实的那样,这种方法不仅减少了过拟合,还增强了对噪声的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Ultrasonic Lamb Wave Damage Detection of CFRP Composites Using the Bayesian Neural Network

Ultrasonic Lamb Wave Damage Detection of CFRP Composites Using the Bayesian Neural Network

Ultrasonic Lamb Wave Damage Detection of CFRP Composites Using the Bayesian Neural Network

Composite plates are susceptible to various damages in complex conditions and working environments, which may reduce the reliability of the structure and threaten equipment and personal safety. Thus, the implementation of a robust online Structural health monitoring (SHM) system for these composite structures becomes imperative. To enhance reliability and safety, we introduce a robust online SHM system anchored by our newly developed damage detection Bayesian neural network (DD-BNN). The main contribution of this study lies in the DD-BNN to perform precise and reliable damage detection and localization in composite plates using only one actuator-receiver pair without any signal/feature pre-processing and human intervention. The proposed DD-BNN model innovatively combines probabilistic modeling with deep learning to address uncertainty in Lamb wave-based damage detection and model performance for composite plates, featuring a specialized probabilistic layer trained through Bayesian inference to efficiently encapsulate and manage uncertainty in model weights and activation. Notably, our method significantly simplifies the SHM system design and manual operation requirements. In addition, this approach not only reduces overfitting but also enhances robustness to noise, as confirmed by experiments on perturbation analysis of Gaussian and Poisson noise.

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来源期刊
Journal of Nondestructive Evaluation
Journal of Nondestructive Evaluation 工程技术-材料科学:表征与测试
CiteScore
4.90
自引率
7.10%
发文量
67
审稿时长
9 months
期刊介绍: Journal of Nondestructive Evaluation provides a forum for the broad range of scientific and engineering activities involved in developing a quantitative nondestructive evaluation (NDE) capability. This interdisciplinary journal publishes papers on the development of new equipment, analyses, and approaches to nondestructive measurements.
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