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Proportioning of self-compacting steel-fiber reinforced concrete mixes based on target plastic viscosity and compressive strength: Mix-design procedure & experimental validation

机译:基于目标塑性粘度和抗压强度的自密实钢纤维增强混凝土混合物的比例:混合物设计程序和实验验证

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This paper presents a novel proportioning methodology for self-compacting steel-fiber reinforced concrete (SCSFRC), based on a previous methodology for plain self-compacting concrete [Journal of Sustainable Cement-Based Materials 5:4 (2016) 199-216 & 217-232]. The procedure is based on the target plastic viscosity and the compressive strength required for the mix and it accounts for fiber parameters such as volume fraction and aspect ratio. The procedure is valid for fiber contents up to 1% and for compressive cube strengths within the range of 30-80 MPa. The effective plastic viscosity of the SCSFRC is estimated from the plastic viscosity of the cement paste by means of micro-mechanical models that consider fibers as a phase of the mix. The procedure can be programmed numerically to generate practical mix-design charts to determine the dosage of the components. The paper provides an example of an application that uses these design charts. Likewise, the methodology is validated through the design of six mixes, which are actually prepared in the laboratory and whose properties are measured in fresh and hardened states. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文基于以前的普通自密实混凝土方法,提出了一种用于自密实钢纤维增强混凝土(SCSFRC)的新型配料方法[Journal of Sustainable Cement-Based Materials 5:4(2016)199-216&217 -232]。该程序基于目标塑料粘度和混合物所需的抗压强度,并考虑了纤维参数,例如体积分数和长宽比。该程序适用于纤维含量不超过1%的情况,并且立方体抗压强度在30-80 MPa范围内。 SCSFRC的有效塑性粘度是通过将纤维视为混合物相的微机械模型,根据水泥浆的塑性粘度来估算的。可以对该程序进行数字编程以生成实用的混合设计图,以确定各组分的用量。本文提供了使用这些设计图的应用程序示例。同样,通过设计六种混合物来验证该方法,这六种混合物实际上是在实验室中制备的,其性质在新鲜和硬化状态下进行了测量。 (C)2018 Elsevier Ltd.保留所有权利。

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