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首页> 外文期刊>KSCE journal of civil engineering >Identification of Water/Cement Ratio of Cement Pastes, Basing on the Microstructure Image Analysis Data and using Artificial Neural Network
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Identification of Water/Cement Ratio of Cement Pastes, Basing on the Microstructure Image Analysis Data and using Artificial Neural Network

机译:基于微结构图像分析数据并使用人工神经网络识别水泥浆的水灰比

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Artificial Neural Network (ANN) analysis has been established to forecast the Water/Cement (w/c) ratio values of cement pastes by using image analysis techniques in the scope of this study. W/c ratio values have reasonably great effects on the performance of cement based structural members. The service life or ultimate performances such as strength and durability characteristics are strongly affected by w/c ratios of cementitious materials. In this study, the relationship between microstructural phases such as unhydrated cement part, hydration products, capillary porosity, and w/c ratios predicted by ANN analysis, has been established. The predicted values are compared with estimated values obtained by proposed method in the literature. The study indicated that, using a contemporary data analysis technique, which is capable of searching nonlinear relationships more thoroughly, would result in more realistic prediction of the w/c ratios compared to the proposed method.
机译:在本研究范围内,已经建立了人工神经网络(ANN)分析技术,以通过使用图像分析技术来预测水泥浆的水/水泥(w / c)比值。 W / c比值对水泥基结构构件的性能具有相当大的影响。水泥材料的w / c比会严重影响使用寿命或极限性能(例如强度和耐用性)。在这项研究中,已经建立了微观结构相之间的关系,如未水合的水泥部分,水合产物,毛细管孔隙率和通过ANN分析预测的w / c比。将预测值与通过文献中提出的方法获得的估计值进行比较。研究表明,与提出的方法相比,使用能够更彻底地搜索非线性关系的当代数据分析技术,可以对w / c比进行更实际的预测。

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