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Modeling of yield strength for IF steel based on BP neural network

机译:基于BP神经网络的IF钢屈服强度建模。

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Deep-drawn interfacial free (IF) steel is one of the important raw materials in the automotive industry. Due to the complex production processes and numerous influence factors, it is difficult to construct the predicted model between microstructure and yield strength using the quantitative mathematical method. So, it is proposed to use BP neural network to construct the model to describe the relationship between the microstructure and yield strength of the IF steel. And the learning properties of the BP neural network under the different inputs are surveyed by means of simulations. The results of simulation show when the size, distribution uniformity degree, shape factor of the ferrite grain and the size, distribution uniformity degree of the second phase particle are used as the input, the average relative error of the BP neural network can arrives at 2.2%, which can meet the need of practical production.
机译:深冲无界面(IF)钢是汽车工业中重要的原材料之一。由于生产过程复杂且影响因素众多,因此难以使用定量数学方法在微观结构和屈服强度之间构建预测模型。因此,建议使用BP神经网络构建模型来描述IF钢的组织与屈服强度之间的关系。并通过仿真研究了不同输入下的BP神经网络的学习特性。仿真结果表明,以铁素体晶粒的尺寸,分布均匀度,形状因子和第二相粒子的尺寸,分布均匀度为输入,BP神经网络的平均相对误差可达2.2。 %,可以满足实际生产的需要。

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