A Lightweight Convolutional Neural Network Model for Concrete Damage Classification using Acoustic Emissions

Yuxuan Zhang, S. Bader, B. Oelmann
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引用次数: 2

Abstract

In this study, a convolutional neural network (CNN) model was developed for non-destructive damage classification of concrete materials based on acoustic emission techniques. The raw acoustic emission signal is used as the network model input, while the damage type is used as the output. In the study, 15,000 acoustic emission signals were used as the dataset, of which 12,000 signals were used for training, 1,500 signals for validation, and 1,500 signals for testing. Adaptive moment estimation (Adam) was used as the learning algorithm. Batch normalization and dropout layers were used to solve the overfitting problem generated in earlier versions of the model. The proposed model achieves an accuracy of 99.70% with 20,243 parameters, which provides a significant improvement over previous models. As a result, the classification of damages and decisions based upon them in non-destructive structural health monitoring applications can be improved.
基于声发射的混凝土损伤分类轻量级卷积神经网络模型
基于声发射技术,建立了一种基于卷积神经网络(CNN)的混凝土材料无损损伤分类模型。原始声发射信号作为网络模型的输入,损伤类型作为网络模型的输出。本研究使用15000个声发射信号作为数据集,其中12000个信号用于训练,1500个信号用于验证,1500个信号用于测试。采用自适应矩估计(Adam)作为学习算法。使用批处理归一化和dropout层来解决模型早期版本中产生的过拟合问题。该模型使用20,243个参数,准确率达到99.70%,与以前的模型相比有了显著的提高。因此,在非破坏性结构健康监测应用中,损伤的分类和基于它们的决策可以得到改进。
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