机器学习方法在制造业预测性维护中的比较研究

P. Karrupusamy
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引用次数: 5

摘要

预测性维护是改善每个制造业资产管理的途径。在处理工业中先进昂贵的机械时,预测性维护知识对于在机械性能退化之前保护机器至关重要。近年来,制造业中出现了涉及良好系统的业务,定期维护流程、预测性维护(PdM)、机器学习(ML)方法被广泛应用于处理业务仪器的健康状况。现在是向工业4.0的数字化转型,数据技术、流程化管理和通信网络;可以收集生成的大量操作和工艺条件信息,对组件的许多项进行分类,并收集信息,以创建自动故障检测和诊断,从而缩短时间,提高部件的利用率,并延长其剩余有效寿命。预见性维修是40年代物产良好生产的必然要求。本文旨在对工业4.0时代广泛应用于PdM的公制容量单位技术的最新进展进行综述,对公制容量单位算法、ML类别、信息获取中使用的机械和仪器设备、知识大小和种类的分类进行分类分析,并强调研究人员的主要贡献,从而为进一步的分析提供指导和基础。本文构建了一个随机森林模型来预测制造业中各种机器的故障。将预测结果与决策树(DT)算法进行了比较,证明了DT算法在准确度和精密度上的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Approach to Predictive Maintenance in Manufacturing Industry - A Comparative Study
Predictive maintenance is the way to improve asset management in every manufacturing industry. While handling advance costlier machinery in the industry, the predictive maintenance knowledge will be essential to protect the machinery before gets degradation performance. Recently, the emergence of business in manufacturing industry deals with good systems, regular intervals maintenance process, predictive maintenance (PdM), machine learning (ML) approaches are extensively applied for handling the health standing of business instrumentation. Now the digital transformation towards I4.0, data techniques, processed management and communication networks; it’s doable to gather huge amounts of operational and processes conditions information generated type many items of kit and harvest information for creating an automatic fault detection and diagnosing with the aim to attenuate period of time and increase utilization rate of the parts and increase their remaining helpful lives. The predictive maintenance is inevitable for property good producing in I40. This paper aims to provide a comprehensive review of the recent advancements of metric capacity unit techniques wide applied to PdM for good producing in I4.0 by classifying the analysis consistent with metric capacity unit algorithms, ML class, machinery and instrumentation used device employed in information acquisition, classification of knowledge size and kind, and highlight the key contributions of the researchers and so offers pointers and foundation for additional analysis. In this research paper we constructed a Random Forest model to predict the failure of the various machine in manufacturing industry. It compares the prediction result with Decision Tree (DT) algorithm and proves its superiority in accuracy and precision.
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