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Analyzing acoustic emission data to identify cracking modes in cement paste using an artificial neural network

机译:分析声发射数据,用人工神经网络识别水泥浆料中的裂缝模式

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摘要

The focus of this research is the identification of cracking mechanisms for cement paste using acoustic emission data, recorded from compression and notched four-point bending tests. A procedure is developed for analyzing the data by employing an agglomerative hierarchical clustering method, an artificial neural network, and a ray-tracing source location algorithm. An agglomerative hierarchical clustering method is utilized to cluster the AE data from a compression test using frequency-dependent features. A neural network is trained using the compression test data and applied to the AE data emitted during the four-point bending test. The clustered data from the four-point bending test is localized using a ray-tracing algorithm. Based on the occurrence and locations of the clustered events and signal feature analyses, potential cracking mechanisms are identified and assigned. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本研究的重点是使用声发射数据识别水泥浆料的裂缝机制,从压缩和缺口四点弯曲试验中记录。通过采用附聚层聚类方法,人工神经网络和光线跟踪源定位算法来开发一种用于分析数据的过程。附加分层聚类方法用于使用依赖函数特征从压缩测试中聚类AE数据。使用压缩测试数据训练神经网络,并应用于在四点弯曲测试期间发出的AE数据。来自四点弯曲测试的聚类数据使用光线跟踪算法本地化。基于集群事件和信号特征分析的发生和位置,识别和分配潜在的开裂机制。 (c)2020 elestvier有限公司保留所有权利。

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