An approach to improve asset maintenance and management priorities using machine learning techniques

IF 0.9 Q3 ENGINEERING, MULTIDISCIPLINARY
A. H. Nithin, Michael Hobbs, S. Sriramula, Yaji Sripada
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引用次数: 0

Abstract

Abstract Numerous services are available today to develop an optimised asset management solution to enhance asset operations by improving the system availability, decreasing down-time and operation and maintenance costs. Three cases of engineering problems are explored in this paper, with data-driven machine learning solutions proposed for these problems. The first case refers to the labour-intensive nature of criticality analysis which are used in asset management to prioritise assets. A machine learning solution is proposed by the development of a trained criticality analysis model, with a classification error of 12.35%, which could help in a better prediction of the end result by automating the process i.e. training the model. The second case looks at an application of machine learning on asset health prediction by analysing failure patterns and parameters for a machine. The model was evaluated with an error loss of 0.0024. The third case looks at an integration of the priorities related to asset maintenance and management through the development of a text classification machine learning service selector (landscape) tool and explores improvising the end-user selection of the services based on their challenges and perceived pain-points related to asset management. The model was evaluated with an accuracy of 84%.
一种使用机器学习技术改善资产维护和管理优先级的方法
目前有许多服务可用于开发优化的资产管理解决方案,通过提高系统可用性,减少停机时间和运营维护成本来增强资产运营。本文探讨了三个工程问题案例,并针对这些问题提出了数据驱动的机器学习解决方案。第一种情况是指在资产管理中用于对资产进行优先排序的关键性分析的劳动密集型性质。通过开发经过训练的临界性分析模型,提出了一种机器学习解决方案,其分类误差为12.35%,可以通过自动化过程(即训练模型)来帮助更好地预测最终结果。第二个案例通过分析机器的故障模式和参数,将机器学习应用于资产健康预测。模型的误差损失为0.0024。第三个案例通过开发文本分类机器学习服务选择器(横向)工具来整合与资产维护和管理相关的优先级,并探索根据最终用户面临的挑战和感知到的与资产管理相关的痛点来即兴选择服务。该模型的评估准确率为84%。
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来源期刊
CiteScore
1.70
自引率
25.00%
发文量
26
期刊介绍: IJRQSE is a refereed journal focusing on both the theoretical and practical aspects of reliability, quality, and safety in engineering. The journal is intended to cover a broad spectrum of issues in manufacturing, computing, software, aerospace, control, nuclear systems, power systems, communication systems, and electronics. Papers are sought in the theoretical domain as well as in such practical fields as industry and laboratory research. The journal is published quarterly, March, June, September and December. It is intended to bridge the gap between the theoretical experts and practitioners in the academic, scientific, government, and business communities.
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