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Data analysis and feature selection for predictive maintenance: A case-study in the metallurgic industry

机译:预测性维护的数据分析和特征选择:冶金行业的案例研究

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Proactive Maintenance practices are becoming more standard in industrial environments, with a direct and profound impact on the competitivity within the sector. These practices demand the continuous monitorization of industrial equipment, which generates extensive amounts of data. This information can be processed into useful knowledge with the use of machine learning algorithms. However, before the algorithms can effectively be applied, the data must go through an exploratory phase: assessing the meaning of the features and to which degree they are redundant. In this paper, we present the findings of the analysis conducted on a real-world dataset from a metallurgic company. A number of data analysis and feature selection methods are employed, uncovering several relationships, which are systematized in a rule-based model, and reducing the feature space from an initial 47-feature dataset to a 32-feature dataset.
机译:主动维护实践在工业环境中正变得越来越标准化,对行业内的竞争力产生了直接而深刻的影响。这些做法要求对工业设备进行连续监视,从而生成大量数据。可以使用机器学习算法将此信息处理为有用的知识。但是,在有效地应用算法之前,数据必须经历一个探索阶段:评估特征的含义以及冗余的程度。在本文中,我们介绍了在冶金公司的真实数据集上进行的分析结果。采用了许多数据分析和特征选择方法,揭示了在基于规则的模型中系统化的几种关系,并将特征空间从最初的47个特征数据集减少到32个特征数据集。

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