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Fixture Variation Diagnosis of Compliant Assembly Using Sensitivity Matrix 被引量:3

Fixture Variation Diagnosis of Compliant Assembly Using Sensitivity Matrix
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摘要 An automotive body is composed of compliant sheet metal parts.Fast and exactly diagnosing variation sources is very important when assembly variations happen.This paper proposes a diagnosis method of multi fixture variations based on the variation model of compliant sheet metal assembly.The assembly variation model is obtained by using the method of influence coefficients(MIC) and considering the manufacturing variations of compliant parts and multi fixture variations.The measurement point variations induced by part manufacturing variations are firstly removed from the measurement data.The variation patterns of multi fixture variations are constructed by column vectors of fixture variation sensitivity matrix.This method is proved to be feasible for exactly diagnosing the fixture variations and has higher diagnosis efficiency than designated component analysis(DCA). An automotive body is composed of compliant sheet metal parts. Fast and exactly diagnosing variation sources is very important when assembly variations happen. This paper proposes a diagnosis method of multi fixture variations based on the variation model of compliant sheet metal assembly. The assembly variation model is obtained by using the method of influence coefficients (MIC) and considering the manufacturing variations of compliant parts and multi fixture variations. The measurement point variations induced by part manufacturing variations are firstly removed from the measurement data. The variation patterns of multi fixture variations are constructed by column vectors of fixture variation sensitivity matrix. This method is proved to be feasible for exactly diagnosing the fixture variations and has higher diagnosis efficiency than designated component analysis (DCA).
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2009年第6期707-712,共6页 上海交通大学学报(英文版)
基金 the National Natural Science Foundation of China (No. 50705056) the National High Technology Research and Development Program (863) of China (No.2006AA04Z148)
关键词 compliant assembly multi fixture variation diagnosis sensitivity analysis root cause identification 灵敏度矩阵 诊断方法 夹具 变异 零件制造 装配模型 成分分析仪 汽车车身
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参考文献12

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同被引文献22

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