Review on Machine Learning-based Defect Detection of Shield Tunnel Lining

适应性 卷积神经网络 人工智能 支持向量机 机器学习 计算机科学 护盾 深度学习 功能(生物学) 集合(抽象数据类型) 领域(数学) 模式识别(心理学) 算法 数学 程序设计语言 岩石学 纯数学 地质学 生物 进化生物学 生态学
作者
Guixing Kuang,Bixiong Li,Site Mo,Xiangxin Hu,Lianghui Li
出处
期刊:Periodica Polytechnica-civil Engineering [Budapest University of Technology and Economics]
被引量:10
标识
DOI:10.3311/ppci.19859
摘要

At present, machine learning methods are widely used in various industries for their high adaptability, optimization function, and self-learning reserve function. Besides, the world-famous cities have almost built and formed subway networks that promote economic development. This paper presents the art states of Defect detection of Shield Tunnel lining based on Machine learning (DSTM). In addition, the processing method of image data from the shield tunnel is being explored to adapt to its complex environment. Comparison and analysis are used to show the performance of the algorithms in terms of the effects of data set establishment, algorithm selection, and detection devices. Based on the analysis results, Convolutional Neural Network methods show high recognition accuracy and better adaptability to the complexity of the environment in the shield tunnel compared to traditional machine learning methods. The Support Vector Machine algorithms show high recognition performance only for small data sets. To improve detection models and increase detection accuracy, measures such as optimizing features, fusing algorithms, creating a high-quality data set, increasing the sample size, and using devices with high detection accuracy can be recommended. Finally, we analyze the challenges in the field of coupling DSTM, meanwhile, the possible development direction of DSTM is prospected.
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