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Research of classification for defective components of automotive recall based on clustering algorithm

机译:基于聚类算法的汽车召回缺陷组件分类研究

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The classification of Recall defective components in China is unsuitable for further research and facial operation. Hierarchical clustering algorithm was present to cluster the classification of vehicle parts and components which will be used in vehicle defects recall. Based on QC/T 265-2004 named regulation of vehicle parts and components and American NHTSA recall data, 32 classes was clustered through digital processing of the attribute value of every dimension of data samples that can distinguish one component from the other. Obviously the clustered results are suitable for facial operation and reasonable, meanwhile they partly avoided from unreasonable classes.
机译:召回中国的审议缺陷组件的分类不适合进一步的研究和面部操作。存在分层聚类算法以集中用于车辆缺陷召回的车辆部件和部件的分类。基于QC / T 265-2004的车辆零部件和组件和美国NHTSA召回数据的命名规定,通过数字处理可以通过可以将一个组件与另一个组件区分开来的数据样本的属性值来聚集32个类。显然,聚类结果适用于面部操作和合理,同时他们部分避免了不合理的课程。

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