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Modular neural network modeling of compressive strength of high-alumina bricks by using tangent function

机译:基于切线函数的高铝砖抗压强度模块化神经网络建模

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In this study, a feed forward modular neural network consists of four layer is presented to predict the compressive strength of the high-alumina bricks. Model hierarchy consists of 12 parameters that affect the production directly. The inputs of the model consist of chemical composition (SiO_2 percent, Al_2O_3 percent, TiO_2 percent, Fe_2O_3 percent, CaO percent, MgO percent, Na_2O percent and K_2O percent), brick volume, sintering temperature, bulk density and apparent porosity and the output of the model is compressive strength. The transfer function used in the each neural mode was tangent function. Errors of the training feedback to the system by back propagation algorithm (BPA). Because of the limited data range used for training, the prediction results and the level of error 2.78 percent were satisfactory only within the same range. The ability of the model developed has proven that prediction of the compressive strength of high-alumina bricks established successfully. Sensitivity analysis indicated that bulk density and apparent porosity were the most significant inputs affecting compressive strength within the limits of the model whereas sintering temperature and brick volume were found to be relatively significant in the model.
机译:在这项研究中,提出了由四层组成的前馈模块化神经网络来预测高铝砖的抗压强度。模型层次结构由12个直接影响生产的参数组成。该模型的输入包括化学成分(SiO_2%,Al_2O_3%,TiO_2%,Fe_2O_3%,CaO%,MgO%,Na_2O%和K_2O%),砖块体积,烧结温度,堆积密度和表观孔隙率以及该模型是抗压强度。在每个神经模式中使用的传递函数是切线函数。反向传播算法(BPA)将训练反馈给系统的错误。由于用于训练的数据范围有限,仅在相同范围内,预测结果和误差水平为2.78%才令人满意。所开发模型的能力已证明成功建立了对高铝砖抗压强度的预测。敏感性分析表明,在模型范围内,堆密度和表观孔隙率是影响抗压强度的最重要输入,而模型中烧结温度和砖体积则相对重要。

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