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Product quality improvement method in manufacturing process based on kernel optimisation algorithm

机译:基于核优化算法的制造过程中产品质量改进方法

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摘要

Quality data in manufacture process has the features of mixed type, uneven distribution, dimension curse and data coupling. To apply the massive manufacturing quality data effectively to the quality analysis of the manufacture enterprise, the data pre-processing algorithm based on equivalence relation is employed to select the characteristic of hybrid data and preprocess data. KML-SVM (Optimised kernel-based hybrid manifold learning and support vector machines algorithm) is proposed. KML is adopted to solve the problems of manufacturing process quality data dimension curse. SVM is adopted to classify and predict low-dimensional embedded data, as well as to optimise support vector machine kernel function so that the classification accuracy can be maximised. The actual manufacturing process data of AVIC Shenyang Liming Aero-Engine Group Corporation Ltd is demonstrated to simulate and verify the proposed algorithm.
机译:制造过程中的质量数据具有混合类型,分布不均,维数诅咒和数据耦合的特点。为了将海量制造质量数据有效地应用于制造企业的质量分析中,采用基于等价关系的数据预处理算法选择混合数据和预处理数据的特征。提出了KML-SVM(基于内核的优化混合流形学习和支持向量机算法)。采用KML解决了制造过程质量数据维诅咒的问题。采用支持向量机对低维嵌入数据进行分类和预测,并优化支持向量机的核函数,使分类精度达到最大。对中航工业沉阳黎明航空发动机集团有限公司的实际制造过程数据进行了仿真和验证。

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