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BP Network Based Mix Proportion Design of Self-Compacting Concrete

机译:基于BP网络的自密实混凝土配合比设计。

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It was known that many parameters of raw materials, such as, strength of cement, mud content and modulus of fineness of river sand, maximum size of aggregate, content of needle-like/sheet-like crushed stone, loss of ignition and fineness of fly ash, may exert significant influence on the theology and mechanical properties of self compacting concrete(SCC). It is a dream of researchers to identify the influencing degree of various factors on performance of SCC so as to obtain optimal properties. By virtue of BP neural network approach, this paper employed strength of cement, mud content and fineness modulus of fineness of river sand, maximum size of aggregate, content of needle-like/sheet-like crushed stone, loss of ignition and fineness of fly ash as the input parameters, and the corresponding optimized mix proportion as the output to describe the nonlinear relationship between them. And the orthogonal experiment was designed for the purpose of training and verification of network. The results demonstrated that the pre-trained BP neural network trained by orthogonal test data may employ to predict the optimal concrete mix proportion. This approach may replace some waste-time and heavy laboratory tests. In addition, such method may real-time optimize mixture proportion. of self-compacting concrete, which has great effect on the quality control of manufacturing self-compacting concrete.
机译:已知许多原材料参数,例如水泥强度,泥浆含量和河砂细度模数,骨料最大尺寸,针状/片状碎石的含量,灼烧性和细度等。粉煤灰可能对自密实混凝土(SCC)的流变学和力学性能产生重大影响。确定各种因素对SCC性能的影响程度,以获得最佳性能,是研究人员的梦想。借助BP神经网络方法,本文采用了水泥强度,泥浆含量和细度,河砂细度模数,集料的最大尺寸,针状/片状碎石的含量,着火性和粉煤灰的细度。灰作为输入参数,相应的优化混合比例作为输出来描述它们之间的非线性关系。并设计了正交实验,以训练和验证网络为目的。结果表明,通过正交试验数据训练得到的预训练BP神经网络可用于预测最佳混凝土配合比。这种方法可以代替一些浪费时间和繁重的实验室测试。另外,这种方法可以实时优化混合物比例。自密实混凝土的配方,对制造自密实混凝土的质量控制有很大影响。

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