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Prediction of Compressive Strength of Green Concrete with Admixtures Using Neural Networks

机译:基于神经网络的掺加料绿色混凝土抗压强度预测

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Concrete is manufactured by mixing cement, water, fine aggregates and coarse aggregates in certain proportions to obtain a desired strength. In addition, fly ash, super plasticizers, retarders are added to enhance any desired property depending upon the function of use of concrete in structures. Compressive strength of concrete is dependent upon several parameters most likely to be water-cement ratio, cement strength, quality of concrete material, and quality control during production of concrete. In this work, we present a neural network model for prediction of compressive strength of concrete. Different sets of data based upon several concrete design mixes were taken and were fed to the model. The model is then such trained for prediction, which are being influenced by several input attributes and were jotted down a linear regression analysis.
机译:通过将水泥,水,细骨料和粗骨料按一定比例混合以获得所需强度来制造混凝土。此外,根据在结构中使用混凝土的功能,添加了粉煤灰,超级增塑剂,缓凝剂以增强任何所需的性能。混凝土的抗压强度取决于几个参数,最可能是水灰比,水泥强度,混凝土材料的质量以及混凝土生产过程中的质量控制。在这项工作中,我们提出了一种用于预测混凝土抗压强度的神经网络模型。基于几种具体的设计组合,获取了不同的数据集,并将其输入到模型中。然后对模型进行训练以进行预测,这些模型受多个输入属性的影响,并沿线性回归分析进行定位。

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