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Estimation of slump value and Bingham parameters of fresh concrete mixture composition with artificial neural network modelling

机译:人工神经网络模型估算新鲜混凝土混合料坍落度和Bingham参数。

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High performance is the most important expectation from concrete which is commonly used in today’s construction technology. To form a high performance concrete “HPC”, two fundamental properties are required. These properties are optimization of the materials used to form the concrete and the workability of fresh concrete during shaping. Many scientists have used rheological properties in conjunction with Bingham model to determine the workability of fresh concrete. Bingham model is represented by two parameters: yield stress and plastic viscosity. Even though, many models are developed to explain rheological properties, there is no acceptable easy to use method. In this study,artificial neural network “ANN” is used to determine the rheological properties of fresh concrete. Ferraris and de Larrard’s experimental slump, yield stress and viscosity data from different composed concretes is used in this study. Slump, yield stress and viscosity are estimated with respect to mixture design parameters. Obtained results from this study indicates that ANN is a utilizable method to determine the rheological proporties (Bingham model) of fresh concrete.
机译:高性能是当今建筑技术中常用的混凝土最重要的期望。为了形成高性能混凝土“ HPC”,需要两个基本特性。这些性能优化了用于形成混凝土的材料以及成型过程中新鲜混凝土的可加工性。许多科学家将流变特性与Bingham模型结合使用来确定新鲜混凝土的可加工性。宾厄姆模型由两个参数表示:屈服应力和塑性粘度。即使开发了许多模型来解释流变特性,也没有可接受的易于使用的方法。在这项研究中,人工神经网络“ ANN”用于确定新鲜混凝土的流变性能。这项研究使用了Ferraris和de Larrard的实验坍落度,屈服应力和粘度数据。根据混合物设计参数估算坍落度,屈服应力和粘度。这项研究获得的结果表明,人工神经网络是一种可用于确定新混凝土流变性质(宾汉模型)的方法。

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