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Predicting Performance of Lightweight Concrete with Granulated Expanded Glass and Ash Aggregate by Means of Using Artificial Neural Networks

机译:利用人工神经网络预测粒状膨胀玻璃灰骨料轻质混凝土的性能。

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摘要

Lightweight concrete (LWC) is a group of cement composites of the defined physical, mechanical, and chemical performance. The methods of designing the composition of LWC with the assumed density and compressive strength are used most commonly. The purpose of using LWC is the reduction of the structure’s weight, as well as the reduction of thermal conductivity index. The highest possible strength, durability and low thermal conductivity of construction materials are important factors and reasons for this field’s development, which lies largely in modification of materials’ composition. Higher requirements for construction materials are related to activities aiming at environment protection. The purpose of the restrictions is the reduction of energy consumption and, as a result, the reduction of CO2 emission. To limit the scope of time-consuming and often high-cost laboratory works necessary to calibrate models used in the test methods, it is possible to apply Artificial Neural Networks (ANN) to predict any of the concrete properties. The aim of this study is to demonstrate the applicability of this tool for solving the problems, related to establishing the relation between the choice of type and quantity of lightweight aggregates and the porosity, bulk density and compressive strength of LWC. For the tests porous lightweight Granulated Expanded Glass Aggregate (GEGA) and Granulated Ash Aggregate (GAA) have been used.
机译:轻质混凝土(LWC)是一组具有定义的物理,机械和化学性能的水泥复合材料。最常用的是设计具有假定密度和抗压强度的轻质水成分的方法。使用LWC的目的是减轻结构的重量,并降低导热系数。建筑材料尽可能高的强度,耐久性和低导热性是该领域发展的重要因素和原因,而这主要取决于材料成分的改变。对建筑材料的更高要求与旨在环境保护的活动有关。限制的目的是减少能源消耗,从而减少CO2排放。为了限制校准测试方法中使用的模型所需的耗时且通常是高成本的实验室工作的范围,可以应用人工神经网络(ANN)来预测任何具体性能。这项研究的目的是证明该工具可用于解决问题,与建立轻质骨料的类型和数量的选择与轻质骨料的孔隙率,堆积密度和抗压强度之间的关系有关。为了进行测试,使用了多孔轻质粒状膨胀玻璃骨料(GEGA)和粒状灰骨料(GAA)。

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