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    基于Apriori算法的失效分析案例文本挖掘方法

    The text mining method for failure analysis case based on Apriori algorithm

    • 摘要: 在复杂应用场景下,传统失效分析技术具有复杂度高、难度大、过分依赖专家经验等问题。提出了一种基于Apriori算法的失效分析案例文本挖掘方法框架,实现了失效原因辅助诊断和故障作用机制解释,并基于历史失效案例文本对该框架进行了应用验证。结果表明:该框架由失效分析案例文本预处理方法、基于TF-IDF算法的失效分析案例文本特征表示模型,以及基于Apriori算法的两阶段失效分析案例关联规则挖掘方法3个主要部分组成;该框架建立了可视化的失效因素-失效模式-失效原因传播路径,对提高失效分析效率、解耦失效原因推理过程具有借鉴意义。

       

      Abstract: In complex application scenarios, traditional failure analysis techniques have problems such as high complexity, difficulty, and excessive reliance on expert experience. A framework for text mining of failure analysis cases based on Apriori algorithm was proposed, which realized auxiliary diagnosis of failure causes and explanation of fault action mechanisms. The framework was applied and verified based on historical failure case texts. The results show that the framework consisted of three main parts, a text preprocessing method for failure analysis cases, a text feature representation model for failure analysis cases based on TF-IDF algorithm, and a two-stage association rule mining method for failure analysis cases based on Apriori algorithm. The visualized propagation path of failure factors, failure modes, and failure causes established by this framework had reference significance for improving the efficiency of failure analysis and decoupling the process of failure cause inference.

       

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