Product quality improvement method in manufacturing process based on kernel optimisation algorithm
Zhe Wei,
Yixiong Feng,
Zhaoxi Hong,
Rongxia Qu and
Jianrong Tan
International Journal of Production Research, 2017, vol. 55, issue 19, 5597-5608
Abstract:
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.
Date: 2017
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Persistent link: https://EconPapers.repec.org/RePEc:taf:tprsxx:v:55:y:2017:i:19:p:5597-5608
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DOI: 10.1080/00207543.2017.1324223
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