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Neural network based hygrothermal prediction for deterioration risk analysis of surface-protected concrete facade element

机译:基于神经网络的湿热预测,用于表面保护混凝土外墙构件的劣化风险分析

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Accurate prediction of hygrothermal behavior in the concrete is vital requirements to make more realistic service-life extension decisions. In this work, a neural network based hygrothermal prediction model to estimate a temporal hygrothermal condition in surface-protected concrete facade members is developed and presented. The model learns the case-specific features of hygrothermal behavior using the two years temperature and relative humidity data obtained from the installed probes. The performance evaluation confirms that the model describes the hygrothermal behavior inside the concrete facade with a high accuracy. This in turn enables to assess the corrosion rate as well as deterioration risk levels caused by frost and chemical attacks while identifying the appropriate surface protection system. (C) 2016 Elsevier Ltd. All rights reserved.
机译:准确预测混凝土中的湿热行为是做出更现实的使用寿命延长决策的关键要求。在这项工作中,开发并提出了一种基于神经网络的湿热预测模型,用于估计表面保护的混凝土外墙构件中的瞬时湿热条件。该模型使用从安装的探头获得的两年温度和相对湿度数据来了解特定情况下的湿热行为。性能评估证实,该模型以高精度描述了混凝土立面内部的湿热行为。这继而可以在确定适当的表面保护系统的同时评估腐蚀速率以及由于霜冻和化学侵蚀而导致的劣化风险等级。 (C)2016 Elsevier Ltd.保留所有权利。

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