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Supervised Machine Learning for Knowledge-Based Analysis of Maintenance Impact on Profitability

机译:监督机器学习基于知识的维护对盈利影响的分析

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Recent empirical studies reveal that predictive maintenance is essential for accomplishing business objectives of manufacturing enterprises. Knowledge-based maintenance strategies for optimal operation of industrial machines and physical assets reasonably require explaining and predicting long term economic impacts, based on exploring historical data. This paper examines how supervised machine learning (ML) techniques may enhance anticipating the economic impact of maintenance on profitability (IMP). Planning and monitoring of maintenance activities supported by various statistical learning and supervised ML algorithms have been investigated in the literature of production management. However, data-driven prediction of IMP has not been largely addressed. A novel data-driven framework is proposed comprising cause-and-effect dependencies between maintenance and profitability, which constructs a set of appropriate features as independent variables.
机译:最近的实证研究表明,预测维护对于实现制造企业的业务目标至关重要。基于知识的维护策略,用于工业机器和物理资产的最佳运行合理要求根据探索历史数据来解释和预测长期经济影响。本文研究了监督机器学习(ML)技术如何增强预期维护对盈利能力(IMP)的经济影响。在生产管理的文献中已经调查了各种统计学习和监督ML算法支持的维护活动的规划和监测。但是,DIM的数据驱动预测尚未在很大程度上地解决。提出了一种新颖的数据驱动框架,包括维护和盈利能力之间的原因和效果依赖性,其构造了一组适当的特征作为独立变量。

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