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Quality Control Method of Engine Manufacturing Process Using Data Mining Technique

机译:基于数据挖掘技术的发动机制造过程质量控制方法

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Objectives: This study analyzes the major defect factors that influence the defective percentage of an engine manufacturing processes and to find the processes that influence other defect factors. Methods/Statistical Analysis: This study uses the process data from actual manufacturing sites, and analyzes the major defect factors occurring in the manufacturing processes using the data mining techniques. Analysis on the process data has two steps: The first step is to preprocess to reorganize the raw data into accurate data, and the second step is to analyze for each defect factor to classify defects by factors. Findings: As a result of the analysis, it found defects of LEAK during operation of the engine, defects in components of the inlet and outlet systems of the engine and defects in components of the electronic system of the engine influence the percent defective. This study also analyzes the main defect types of product using big data from the engine manufacturing process. To solve the problem that was hard to find analytic data or useful information out of the huge data collected in real time, the data mining technique was employed. It is a practical methodology to offer beneficial information for decision making in the database marketing field. In terms of product quality management, estimating the defect types in the manufacturing process stage will shorten the time consumption in resolving the problems. By reducing the defective products in advance, it also lowers the cost accompanied with defect occurrences and raw materials. Improvements/Applications: This study suggests methods to control quality in manufacturing processes with an application of preventing defects in advance and further to control the future defects.
机译:目标:这项研究分析了影响发动机制造过程中缺陷百分比的主要缺陷因素,并找到了影响其他缺陷因素的过程。方法/统计分析:本研究使用来自实际制造场所的过程数据,并使用数据挖掘技术分析制造过程中发生的主要缺陷因素。对过程数据的分析包括两个步骤:第一步是预处理以将原始数据重组为准确的数据,第二步是分析每个缺陷因素以按因素对缺陷进行分类。结果:分析的结果是,发现了发动机运行期间的泄漏缺陷,发动机进出口系统部件的缺陷以及发动机电子系统部件的缺陷会影响缺陷率。这项研究还使用来自发动机制造过程的大数据来分析产品的主要缺陷类型。为了解决难以从实时收集的海量数据中找到分析数据或有用信息的问题,采用了数据挖掘技术。为数据库营销领域的决策提供有益的信息是一种实用的方法。在产品质量管理方面,在制造过程阶段估计缺陷类型将缩短解决问题的时间。通过提前减少次品,还可以降低发生次品和原材料的成本。改进/应用:这项研究提出了通过预先预防缺陷并进一步控制未来缺陷的方法来控制制造过程中质量的方法。

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