IMPROVING THE LEVEL OF PREDICTIVE MAINTENANCE MATURITY MATRIX IN INDUSTRIAL ENTERPRISE

IF 0.8 Q4 ENGINEERING, INDUSTRIAL
Jana Mesárošová, Klaudia Martinovicova, H. Fidlerová, Henrieta Hrablik Chovanová, D. Babčanová, J. Samáková
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引用次数: 2

Abstract

Predictive maintenance is a maintenance strategy that applies advanced statistical methods and artificial intelligence to determine the appropriate maintenance time. The article focuses on future recommendations for industry and logistics to achieve a higher level of predictive maintenance maturity, which requires real-time monitoring of the state of the company's machinery and equipment. The article's main objective is to propose recommendations to increase effectiveness by improving the predictive maintenance maturity matrix from the current level to a higher level in the industrial enterprise. The current state of maturity has been indicated using the modified model of predictive maintenance and following recommendations from the document Manual for companies for the introduction of artificial intelligence. Simultaneously within the analysis, a predictive maintenance simulation was performed on a selected production line, including essential machines and equipment. The study also identified the individual assumptions (processes, data, infrastructure, personnel, applications, organization) necessary to implement predictive maintenance successfully. The presented case study results contribute to understanding how individual assumptions can be obtained for predictive maintenance improvement and how innovative solutions in the context of Industry 4.0 and Logistics 4.0 can be achieved in enterprises.
提高工业企业预测性维修成熟度矩阵的水平
预测性维护是一种应用先进的统计方法和人工智能来确定适当的维护时间的维护策略。本文重点介绍了未来工业和物流实现更高水平的预测性维护成熟度的建议,这需要实时监控公司机械设备的状态。本文的主要目标是提出建议,通过将工业企业中的预测性维护成熟度矩阵从当前级别改进到更高级别来提高有效性。使用改进的预测性维护模型和以下文档手册中对公司引入人工智能的建议表明了当前的成熟状态。同时,在分析中,对选定的生产线(包括基本机器和设备)进行了预测性维护模拟。该研究还确定了成功实施预测性维护所需的各个假设(流程、数据、基础设施、人员、应用程序、组织)。所介绍的案例研究结果有助于理解如何获得个体假设以进行预测性维护改进,以及如何在工业4.0和物流4.0的背景下在企业中实现创新解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Acta Logistica
Acta Logistica Engineering-Industrial and Manufacturing Engineering
CiteScore
1.80
自引率
28.60%
发文量
36
审稿时长
4 weeks
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