Research progress in monitoring hydraulic concrete damage based on acoustic emission

Huaizhi Su, Xiaoyang Xu, Shenglong Zuo, Shuai Zhang, Xiaoqun Yan
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引用次数: 0

Abstract

The acoustic emission (AE) technique is suitable for monitoring and evaluating hydraulic concrete damage due to its good response to material damage. While continuously advancing conventional AE analysis methods, various advanced digital processing technologies and intelligent algorithms have been applied to deeply explore the damage information and evaluate hydraulic concrete damage. An intelligent framework for evaluating hydraulic concrete damage based on AE has been established, according to the working principle of the AE monitoring system for hydraulic concrete damage. Based on the content involved in this framework, a review is conducted on the current research status of hot topics such as conventional analysis methods, signal processing methods, acoustic source localization (ASL) methods, AE source recognition methods, and deep learning technique applications. The complex characteristics of AE signals of hydraulic concrete damage and the research needs of how to overcome the adverse effects have been summarized, aiming to continuously improve the framework and achieve the construction of an intelligent platform for evaluating hydraulic concrete damage based on AE.
基于声发射的水工混凝土损伤监测研究进展
声发射技术对材料损伤具有良好的响应性,适合于水工混凝土损伤监测与评价。在不断推进传统声发射分析方法的同时,各种先进的数字处理技术和智能算法被应用于深入挖掘损伤信息和评估水工混凝土损伤。根据水工混凝土损伤声发射监测系统的工作原理,建立了基于声发射的水工混凝土损伤智能评估框架。基于该框架所涉及的内容,对传统分析方法、信号处理方法、声源定位(ASL)方法、声发射源识别方法、深度学习技术应用等热点课题的研究现状进行了综述。总结了水工混凝土损伤声发射信号的复杂特征以及如何克服其不利影响的研究需求,旨在不断完善框架,实现基于声发射的水工混凝土损伤智能评估平台的构建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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