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首页> 外文期刊>International Journal of Computer Integrated Manufacturing >Manufacture process quality control of interferometric fibre optic gyroscope using analyses of multi-type assembly and test data
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Manufacture process quality control of interferometric fibre optic gyroscope using analyses of multi-type assembly and test data

机译:使用多型组装和测试数据的分析制造干涉纤维陀螺仪的过程质量控制

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摘要

Quality control of manufacture process of a type of interferometric fibre optic gyroscope (IFOG) optical path, which uses computer analyses of multi-type assembly and test data, is proposed. Two quality control algorithms are developed. The first is the Monte Carlo (MC) and Support Vector Machine (SVM) iteration algorithm, i.e. the MC_SVM algorithm. The MC is used to generate random values of the assembly correction data, while the SVM is employed to forecast the assembly quality degree of IFOG. Then, the MC_SVM can tune the multi-type assembly errors. The second algorithm is the Series Feature Analysis (SFA) and Analytic Hierarchy Process (AHP) ranking algorithm, i.e. the SFA_AHP algorithm. The SFA is used to calculate the signal features of multi-type data from an IFOG environment adaptability test experiment. The AHP is employed to analyse the importance ranking of potential faults. Then, the SFA_AHP can detect and locate product faults. The above methods can correct errors before the product assembly and locate faults after the assembly. The experiential knowledge of assembly can be inherited and the multidisciplinary restriction of complex manufacturing can be broken. Their analysis results are easy to be understood by users. Many experiments have demonstrated the effectiveness of proposed algorithms.
机译:提出了一种干涉式光纤陀螺(IFOG)光路的制造过程的质量控制,其使用计算机分析的多型组装和测试数据。开发了两个质量控制算法。首先是Monte Carlo(MC)和支持向量机(SVM)迭代算法,即MC_SVM算法。 MC用于生成组装校正数据的随机值,而SVM用于预测IFOG的组装质量程度。然后,MC_SVM可以调整多型装配错误。第二种算法是串联特征分析(SFA)和分析层次处理(AHP)排名算法,即SFA_AHP算法。 SFA用于计算来自IFOG环境适应性测试实验的多型数据的信号特征。采用AHP分析潜在断层的重要性排名。然后,SFA_AHP可以检测和定位产品故障。上述方法可以在产品组件之前纠正错误,并在组装后定位故障。组装的体验知识可以继承,并且可以破坏复杂制造的多学科限制。用户易于理解它们的分析结果。许多实验表明了所提出的算法的有效性。

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