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Using of Backpropagation Neural Network in Estimating of Compressive Strength of Waste Concrete

机译:反向传播神经网络在废弃混凝土抗压强度估算中的应用。

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Waste concrete is one of the most usable and economic kind of concrete which is used in many civil projects all around the world, and its importance is undeniable. Also, the explanation of constructional process and destruction of them cause the extensive growth of irreversible waste to the industry cycle, which can be as one of the main damaging factors to the economy. In this investigation, with using of constructional waste included concrete waste, brick, ceramic and tile and stone new aggregate was made, also it was used with different weight ratios of cement in mix design. The results of laboratory studies showed that, the using of ratio of sand to cement 1 and waste aggregate with 20% weight ratio (W20), replacing of normal aggregate, increased the 28 days compressive strength to the maximum stage 45.23 MPa. In the next stage, in order to develop the experimental results backpropagation neural network was used. This network with about 91% regression, 0.24 error, and 1.41 seconds, is a proper method in estimating of results.
机译:废混凝土是世界上许多民用工程中使用最经济的一种混凝土,其重要性是不可否认的。同样,对施工过程的解释和对它们的破坏导致不可逆废物在工业周期中的大量增长,这可能是对经济的主要破坏因素之一。在这项调查中,利用包括混凝土废料在内的建筑废料,制得了砖,陶瓷,瓷砖和石材新的骨料,并在混合料设计中使用了不同重量比的水泥。实验室研究结果表明,使用砂/水泥1的比例和20%(重量比)的废骨料(W20)代替普通骨料,可将28天抗压强度提高到最大阶段45.23 MPa。在下一步中,为了发展实验结果,使用了反向传播神经网络。该网络具有约91%的回归,0.24的误差和1.41秒的时间,是估计结果的合适方法。

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