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基于神经网络的双辉等离子渗金属工艺预测
引用本文:李超,姚正军,张平则,邹戈,李莉平. 基于神经网络的双辉等离子渗金属工艺预测[J]. 材料科学与工程学报, 2007, 25(3): 426-429
作者姓名:李超  姚正军  张平则  邹戈  李莉平
作者单位:南京航空航天大学,材料科学与技术学院,江苏,南京,210016;南京航空航天大学,材料科学与技术学院,江苏,南京,210016;南京航空航天大学,材料科学与技术学院,江苏,南京,210016;南京航空航天大学,材料科学与技术学院,江苏,南京,210016;南京航空航天大学,材料科学与技术学院,江苏,南京,210016
摘    要:将人工神经网络理论及Back propagation(BP)算法应用于双层辉光等离子渗金属工艺的研究,并针对BP神经网络收敛速度慢、易陷入局部极小的缺点,提出一种新的动态退火算法优化网络的训练,进而建立了双层辉光等离子渗金属工艺参数与渗层元素总质量分数、渗层厚度和表面硬度之间的数学模型,最后将模拟预测结果与实验数据进行比较和误差分析, 证明该模型具有较高的预测精度.

关 键 词:双层辉光  数学模型  人工神经网络  动态退火算法
文章编号:1673-2812(2007)03-0426-04
收稿时间:2006-09-07
修稿时间:2006-09-072006-10-20

Forecast on Process of Double Glow Plasma Surface Alloying Based on Artificial Neural Network
LI Chao,YAO Zheng-jun,ZHANG Ping-ze,ZOU Ge,LI Li-ping. Forecast on Process of Double Glow Plasma Surface Alloying Based on Artificial Neural Network[J]. Journal of Materials Science and Engineering, 2007, 25(3): 426-429
Authors:LI Chao  YAO Zheng-jun  ZHANG Ping-ze  ZOU Ge  LI Li-ping
Abstract:The Artificial Neural Network and Back propagation(BP) algorithm are applied in the double glow plasma surface alloying.To avoid long training time and local minimum points during training BP network,this paper provided a new Dynamic Annealing algorithm that can be used to optimize the training of neural network.Then,the mathematic model was built based on the relationship between technological parameters of double glow plasma surface alloying processing and the composition,gross mass fraction of element,thickness of surface alloying layer and surface hardness.Finally,it is proved that this model has a higher predictive accuracy through error analysis and comparing the data between theoretical model and experiment.
Keywords:double glow   mathematic model   Artificial Neural Network   Dynamic Annealing algorithm
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