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Failure prediction and reliability analysis of ferrocement composite structures by incorporating machine learning into acoustic emission monitoring technique

机译:机器学习与声发射监测技术相结合的组合结构失效预测与可靠性分析

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摘要

This paper introduces suitable features and methods to define hazard rate function by acoustic emission (AE) parametric analysis to develop robust damage statement index and reliability analysis. AE signal energy was first examined to find out the relation between damage progress and AE signal energy so that a damage index based on AE signal energy could be proposed to quantify progressive damage imposed to ferrocement composite slabs. Moreover, by using AE signal strength, historic index could be computed and utilized to develop a modified hazard rate function through integration of bathtub curve and Weibull function. Furthermore, to provide a practical scheme for real condition monitoring, support vector regression was utilized to produce a robust tools for failure prediction considering uncertainties exist in real structures. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文介绍了通过声发射(AE)参数分析来定义危险率函数的合适特征和方法,以开发可靠的损伤说明指标和可靠性分析。首先检查了AE信号能量,以找出损伤进程与AE信号能量之间的关系,从而可以提出基于AE信号能量的损伤指数,以量化施加于加筋复合板的渐进式损伤。此外,利用声发射信号强度,可以计算历史指标,并利用浴缸曲线和威布尔函数的积分来开发修正的危险率函数。此外,为了提供一种用于实际状况监视的实用方案,考虑到真实结构中存在的不确定性,利用支持向量回归来生成用于故障预测的可靠工具。 (C)2016 Elsevier Ltd.保留所有权利。

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