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Big data oriented root cause identification approach based on PCA and SVM for product infant failure

机译:基于PCA和SVM的大数据导向根原因识别方法,用于产品婴幼儿衰竭

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Due to the increasing complexity and huge number of uncontrolled operational factors in manufacturing, the produced product usually comes with an exceptional high infant failure rate, and the root cause identification of product infant failure has been a very challenging issue for manufacturers. Especially in the era of big data, the large number of data could be collected from the product life cycle easily, these high-dimensional big data always bear many un-correlation noise information, which has caused serious problem that not only the accuracy may not be remarkable, but also the model-training time may be redundant to most of the current small data-driven method. Furthermore, traditional small data oriented analytic techniques are not applicable to the new big data environment. In order to solve this dilemma, this paper proposed a new method to identify the root cause of infant failure from the big data using the principal component analysis (PCA) and support vector machine (SVM). Firstly, data collected from design, manufacturing, and usage related to product infant failure mechanism has been divided into training data and test data. Secondly, PCA is applied to eliminate redundancy and reducing data dimension of original process feature parameters from raw data in low-dimensional space so that the key variables as the potential root cause candidates can be extracted. Thirdly, an SVM-based optimal hyper-plane to separate these candidates' features data is presented, and one-versus-all SVM classifier is designed to identify the final list of the root cause for infant failure by radial basis kernel function. Finally, the feasibility and validity of the proposed methods are demonstrated through a case study of computer board failure analysis.
机译:由于复杂性越来越多,不受控制的不受控制的运营因素在制造中,所生产的产品通常具有出色的高婴幼儿失败率,并且产品婴儿失败的根本原因是制造商的一个非常具有挑战性的问题。特别是在大数据的时代,可以容易地从产品生命周期收集大量数据,这些高维大数据总是承担许多不相关的噪声信息,这导致了不仅精度可能不是的错误问题对于大多数当前的小数据驱动方法,模型训练时间也可能是多余的。此外,传统的小数据面向的分析技术不适用于新的大数据环境。为了解决这一难题,提出了一种新的方法,以从大数据识别失败婴儿的根本原因使用主成分分析(PCA)和支持向量机(SVM)。首先,从设计,制造和使用与产品婴儿失败机制相关的数据收集的数据已分为培训数据和测试数据。其次,PCA应用于消除从低维空间中的原始数据的原始过程特征参数的冗余和减少数据维度,以便可以提取作为潜在根本原因候选的键变量。第三,呈现了基于SVM的最佳超平面,以分离这些候选的功能数据,并且旨在通过径向基础内核函数识别婴儿失败的根本原因的最终列表。最后,通过对计算机板故障分析的案例研究证明了所提出的方法的可行性和有效性。

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