基于BP神经网络的钢丝连续退火后抗拉强度的预测
BP neural network prediction on tensile strength of continuous annealed wire-line
代秋芬
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作者单位:河北机电职业技术学院材料工程系
中文关键字:钢丝连续退火;BP神经网络;归一化;预测
英文关键字:wire continuous annealing;BP neural network;normalization ;prediction
中文摘要:通过对Q195钢丝在不同温度、时间下的退火处理,测试了退火前后的抗拉强度。采用BP神经网络建立了Q195钢丝连续退火后抗拉强度与初始抗拉强度、钢丝直径、保温时间和退火温度之间的预测模型,对钢丝连续退火后抗拉强度进行预测,结果表明BP网络预测最大相对误差为3.49%。该预测模型对于Q195钢丝连续退火抗拉强度的预测是有效的,可行的。
英文摘要:Q195 steel wire was annealed at different temperatures and times,and the tensile strength was tested before and after annealing. A predicting model based on BP neural network was constructed .The mapping relationship between tensile strength of Q195 steel wire continuous annealed and initial tensile strength,diameter,holding time,annealing temperature was established. The tensile strength of continuous annealed steel wire is predicted ,which shows that the neurl network training error is less than 3.49%.The model is valid, and feasible to predict the tensile strength of Q195steel wire after continue annealing.