• CN:11-2187/TH
  • ISSN:0577-6686

›› 2013, Vol. 49 ›› Issue (15): 105-114.

• 论文 • 上一篇    下一篇

基于多准则修正的产品性能多参数关联分析与预测方法

刘振宇;周思杭;谭建荣;唐宏亮   

  1. 浙江大学CAD&CG国家重点实验室;上海航天控制技术研究所
  • 发布日期:2013-08-05

Multiple Parameters Correlation Analysis and Prediction Method of Product Performance Based on Multi-criteria Modification

LIU Zhenyu; ZHOU Sihang; TAN Jianrong; TANG Hongliang   

  1. State Key Laboratory of CAD &CG, Zhejiang University Shanghai Aerospace Control Technology Institute
  • Published:2013-08-05

摘要: 复杂产品的性能往往受到多个特征参数的关联影响。建立特征参数与产品性能的关联映射关系,是准确预测产品性能的关键。提出基于多准则修正的产品性能多参数关联分析方法,分别从特征参数粗大误差处理、特征参数数量精简、特征参数有限元修正与神经网络预测模型修正四个角度实现产品性能预测,对特征参数进行基于测量数据拓扑距离的粗大误差处理,采用灰熵关联分析对特征参数进行筛选,找到影响产品性能的关键特征参数,缩减预测模型的规模,并对装配后发生变化的特征参数通过有限元方法修正,通过基于AMESim模型的性能基准值计算和基于广义回归神经网络的性能偏差预测相结合,实现产品性能预测。以某型双喷嘴挡板电液伺服阀的性能预测为例,验证方法的有效性。

关键词: 粗大误差, 多准则, 灰熵关联, 神经网络, 性能预测, 有限元

Abstract: The performance of complex products is always synthetically affected by multiple feature parameters. Thereby, it is the key to create a mapping between feature parameters and product performance for product performance prediction. It proposes a method of multiple parameters correlation analysis and prediction of product performance based on multi-criteria modification. In the proposed method, the product performance prediction is realized with four steps that are correcting the gross error of feature parameters, reducing the number of feature parameters, modifying the feature parameters by finite element method (FEM) and improving the product performance prediction model based on neural network, respectively. The gross error processing of feature parameters is implemented based on topological distance of the measured data, the key feature parameters, influencing product performance, are selected by associative analysis of gray entropy to reduce the complexity of the model. Following that, the feature parameters changed after assembling are modified by FEM. The product performance is predicted based on generalized regression neural network with AMESim. The validity of the proposed method is verified by an instance of performance prediction for a double nozzle baffle electro-hydraulic servo valve.

Key words: Associative analysis of gray entropy, Finite element, Gross error, Multi-criteria, Neural network, Performance prediction

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