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基于粗糙集约简算法的加注系统风险预测模型
引用本文:赵继广,肖威,安娜,宋建军.基于粗糙集约简算法的加注系统风险预测模型[J].装备指挥技术学院学报,2011,22(1):116-119.
作者姓名:赵继广  肖威  安娜  宋建军
作者单位:1. 装备指挥技术学院,航天装备系,北京,101416
2. 装备指挥技术学院,研究生管理大队,北京,101416
摘    要:基于粗糙集理论,提出了加注系统风险预测模型:首先,应用属性约简算法,将加注系统风险源权重的确定问题转化为粗糙集理论中属性重要性的评价问题,通过计算得到加注系统各风险源的权重,从而使加注系统风险源权重的确定更具客观性和合理性;其次,采用BP人工神经网络的自学习功能,建立一个加注系统风险预测模型,将相对约简的风险源作为系统输入,可较好地提高预测模型的效率。实例表明,该模型具有良好的扩展性和较低的运行开销。

关 键 词:粗糙集  加注系统  BP神经网络  风险预测

A Risk Prediction Model for Filling System Based on Rough Set Reduction Algorithm
ZHAO Jiguang,XIAO Wei,AN Na,SONG Jianjun.A Risk Prediction Model for Filling System Based on Rough Set Reduction Algorithm[J].Journal of the Academy of Equipment Command & Technology,2011,22(1):116-119.
Authors:ZHAO Jiguang  XIAO Wei  AN Na  SONG Jianjun
Affiliation:ZHAO Jiguang1,XIAO Wei2,AN Na1,SONG Jianjun2(1.Department of Space Equipment,the Academy of Equipment Command & Technology,Beijing 101416,China,2.Company of Postgraduate Management,China)
Abstract:A risk prediction model of BP neural network is produced based on rough set theory.First,the decision of risk source proportion is transferred into the evaluation of attribution import by attribution reduction arithmetic.The attribution import can be calculated under the rough set theory,which made the decision of risk proportion more external and reasonable.Then,a model of import system risk prediction is produced by the self-generation function BP neural network,in which can enhance the efficiency by cont...
Keywords:rough set  filling system  BP neural network  risk prediction  
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