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Combining non-invasive techniques for reliable prediction of soft stone strength in historic masonries

机译:结合非侵入性技术可靠预测历史砌体中的软石强度

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In this study, some NDTs (Ultrasonic Pulse Velocity UPV and Rebound Hammer) and uniaxial compressive test on microcores (UCSm) as a moderately destructive test, were investigated as tools for assessing the uniaxial compressive strength (UCS) of a soft limestone. Correlations between UCS and results of each above-mentioned tests were determined by a univariable regression analysis. Artificial Neural Network and the Multiple Regression Analyses were considered to search correlations between UCS and combined results of the non-invasive tests. An iterative cross-validation procedure was implemented to validate the predictive performances of the models. It was found that combining UPV and UCSm results gives the best reliability in the indirect estimation of UCS, with a notably reduced predictive error. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项研究中,研究了一些无损检测技术(超声波脉冲速度UPV和回弹锤)和对微芯的单轴压缩试验(UCSm)作为中等破坏性试验,作为评估软石灰石单轴压缩强度(UCS)的工具。通过单变量回归分析确定UCS与上述每个测试结果之间的相关性。考虑使用人工神经网络和多元回归分析来搜索UCS和无创检测组合结果之间的相关性。实施了迭代交叉验证程序以验证模型的预测性能。已经发现,将UPV和UCSm结果组合在一起,可以在UCS的间接估计中提供最佳的可靠性,并显着降低了预测误差。 (C)2017 Elsevier Ltd.保留所有权利。

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