Logical analysis of data in predictive failure detection and diagnosis

Zhixuan Shao, Mustafa Kumral
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Abstract

PurposeThis study aims to address the critical issue of machine breakdowns in industrial settings, which jeopardize operation economy, worker safety, productivity and environmental compliance. It explores the efficacy of a predictive maintenance program in mitigating these risks by proactively identifying and minimizing failures, thereby optimizing maintenance activities for higher efficiency.Design/methodology/approachThe article implements Logical Analysis of Data (LAD) as a predictive maintenance approach on an industrial machine maintenance dataset. The aim is to (1) detect failure presence and (2) determine specific failure modes. Data resampling is applied to address asymmetrical class distribution.FindingsLAD demonstrates its interpretability by extracting patterns facilitating the failure diagnosis. Results indicate that, in the first case study, LAD exhibits a high recall value for failure records within a balanced dataset. In the second case study involving smaller-scale datasets, enhancement across all evaluation metrics is observed when data is balanced and remains robust in the presence of imbalance, albeit with nuanced differences in between.Originality/valueThis research highlights the importance of transparency in predictive maintenance programs. The research shows the effectiveness of LAD in detecting failures and identifying specific failure modes from diagnostic sensor data. This maintenance strategy exhibits its distinction by offering explainable failure patterns for maintenance teams. The patterns facilitate the failure cause-effect analysis and serve as the core for failure prediction. Hence, this program has the potential to enhance machine reliability, availability and maintainability in industrial environments.
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预测性故障检测和诊断中的数据逻辑分析
目的本研究旨在解决工业环境中机器故障这一关键问题,因为机器故障会危及运营经济性、工人安全、生产率和环境合规性。文章将数据逻辑分析(LAD)作为一种预测性维护方法应用于工业机器维护数据集。其目的是:(1) 检测故障是否存在;(2) 确定具体的故障模式。研究结果数据逻辑分析法通过提取有助于故障诊断的模式,证明了其可解释性。结果表明,在第一个案例研究中,LAD 对平衡数据集中的故障记录具有较高的召回值。在第二项涉及较小规模数据集的案例研究中,当数据平衡时,所有评估指标都有所提高,并且在存在不平衡的情况下仍然保持稳健,尽管两者之间存在细微差别。研究显示了 LAD 在检测故障和从诊断传感器数据中识别特定故障模式方面的有效性。这种维护策略为维护团队提供了可解释的故障模式,从而显示出其与众不同之处。这些模式有助于故障因果分析,是故障预测的核心。因此,该方案有望提高工业环境中机器的可靠性、可用性和可维护性。
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