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Recycled Aggregates Concrete Compressive Strength Prediction Using Artificial Neural Networks (ANNs)

机译:使用人工神经网络再循环聚集混凝土压缩强度预测(ANNS)

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The recycled aggregate is an alternative with great potential to replace the conventional concrete alongside with other benefits such as minimising the usage of natural resources in exploitation to produce new conventional concrete. Eventually, this will lead to reducing the construction waste, carbon footprints and energy consumption. This paper aims to study the recycled aggregate concrete compressive strength using Artificial Neural Network (ANN) which has been proven to be a powerful tool for use in predicting the mechanical properties of concrete. Three different ANN models where 1 hidden layer with 50 number of neurons, 2 hidden layers with (50 10) number of neurons and 2 hidden layers (modified activation function) with (60 3) number of neurons are constructed with the aid of Levenberg-Marquardt (LM) algorithm, trained and tested using 1030 datasets collected from related literature. The 8 input parameters such as cement, blast furnace slag, fly ash, water, superplasticizer, coarse aggregate, fine aggregate, and age are used in training the ANN models. The number of hidden layers, number of neurons and type of algorithm affect the prediction accuracy. The predicted recycled aggregates compressive strength shows the compositions of the admixtures such as binders, water–cement ratio and blast furnace–fly ash ratio greatly affect the recycled aggregates mechanical properties. The results show that the compressive strength prediction of the recycled aggregate concrete is predictable with a very high accuracy using the proposed ANN-based model. The proposed ANN-based model can be used further for optimising the proportion of waste material and other ingredients for different targets of concrete compressive strength.
机译:再循环骨料是替代潜力,潜力与其他益处一起取代传统的混凝土,例如最小化利用利用以生产新的传统混凝土的自然资源。最终,这将导致降低建筑物废物,碳足迹和能耗。本文旨在研究使用人工神经网络(ANN)的再循环骨料混凝土抗压强度,这些抗压抗压强度被证明是一种用于预测混凝土机械性能的强大工具。三种不同的ANN型号,其中1个隐藏层,具有50个神经元,2个隐藏层(50 10)神经元数和2个隐藏层(改性激活功能),借助Levenberg-构建了(60 3)的神经元Marquardt(LM)算法,使用相关文献中收集的1030个数据集进行培训和测试。 8个输入参数,如水泥,高炉炉渣,粉煤灰,水,超级塑化剂,粗骨料,细骨料和年龄,用于训练ANN型号。隐藏层的数量,神经元数和算法类型影响预测精度。预测的再循环抗压强菌抗压强度显示了粘合剂,水水水泥比和高炉飞行灰比的混合物的组合物大大影响了再循环的聚集体机械性能。结果表明,使用所提出的基于ANN的模型,再循环骨料混凝土的压缩强度预测可预测,可预测非常高的精度。所提出的基于安基的模型可以进一步用于优化废料和其他成分的比例,用于不同的混凝土抗压强度的靶标。

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