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    王福吉

    • 教授     博士生导师   硕士生导师
    • 任职 : 辽宁省先进复合材料高性能制造重点实验室主任
    • 性别:男
    • 毕业院校:大连理工大学
    • 学位:博士
    • 所在单位:机械工程学院
    • 学科:机械电子工程. 机械制造及其自动化
    • 办公地点:知方楼7059
    • 联系方式:办公电话:0411-84707743,qq:66894581
    • 电子邮箱:wfjsll@dlut.edu.cn

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    多零件几何要素影响下的装配产品特性预测方法

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    论文类型:期刊论文

    发表时间:2022-06-29

    发表刊物:机械工程学报

    所属单位:机械工程学院

    期号:7

    页面范围:168-173

    ISSN号:0577-6686

    摘要:In the industrial production, assembled product with many parts usually has the feature of multiple system characteristics and multiple geometric elements effect. To get the exactly math model of the system so as to predict the system characteristics are essentially important for the manufacture process. Because of complexity of the assembled product system with multiple geometric elements and different effect degree, building the BP neural network forecasting model of the system directly along with increment of input neurons and hidden layer neurons leads to very complicated structure of neutral network, increase of study and training time, slow convergence rate, and low precision forecasting. A new method is proposed to build the forecasting model. After analyzing the multiple geometric elements of the system, the grey correlation model is used to obtain the main geometric elements. Then the main geometric elements are used to built the BP neural network and simplify the BP neural network model. The model can truly reflect the feature of the system and can achieve high-precision forecasting for the assembled product system characteristics with multiple geometric elements. In this way, the characteristics predicting of hydraulic valve system is achieved. The hydraulic valve, an assembled product with multiple geometric elements, is taken as example. Through the study on the correlation degree of multiple geometric elements of the hydraulic valve system, the main geometric elements that influence the system are used as input to build a simplified forecasting model of BP neural network. Experimental results indicate that the forecasting model features simple structure, quick convergence and high-precision forecasting. © Journal of Mechanical Engineering.

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