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Product Quality Reliability Analysis based on Rough Bayesian Network

机译:基于粗糙贝叶斯网络的产品质量可靠性分析

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摘要

Simultaneous quality reliability analysis can detect the weak links in production process as early as possible, which can significantly improve product reliability. Aiming at the reliability in product quality, a model based on rough set and Bayesian network (RS-BN) is proposed in this paper. Simplify expert knowledge and reduce product quality factors using rough set theory, and the minimal product quality rules can be obtained. Then the Bayesian network is constructed and trained by the minimum rules. Based on the minimal rules, the complexity of Bayesian network structure and the difficulties of product reliability analysis are largely decreased. To verify the performance of the proposed RS-BN model, a competition dataset is utilized and four evaluation indicators are investigated, i.e., accuracy, F1-score, recall, and precision. Experimental results indicated that the proposed model is superior to the other three comparative models.
机译:同时质量可靠性分析可以尽早检测生产过程中的弱链路,这可以显着提高产品可靠性。 针对产品质量的可靠性,本文提出了一种基于粗糙集和贝叶斯网络(RS-BN)的模型。 简化专家知识并减少使用粗糙集理论的产品质量因素,并且可以获得最小的产品质量规则。 然后由最低规则构建和培训贝叶斯网络。 基于最小规则,贝叶斯网络结构的复杂性和产品可靠性分析的困难在很大程度上降低。 为了验证所提出的RS-BN模型的性能,利用竞争数据集,并调查了四个评估指标,即精度,F1分数,召回和精度。 实验结果表明,所提出的模型优于其他三种比较模型。

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