基于自然语言处理和机器学习的故障日志文本分类

A. Darlington-NjokuChidinma, B. Mishra, William K. P. Sayers
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引用次数: 1

摘要

近年来,各行各业一直在寻求从他们产生的数据中获得新的知识和信息。当这些数据得到充分利用时,它们可以创建用于改进业务流程、产品质量和服务的框架。然而,更常见的是,数据采用非结构化和半结构化数据格式。因此,在文本数据中发现关键问题变得具有挑战性。在过去的几年中,采用自然语言处理(NLP)和机器学习(ML)技术在探索文本文档中的知识方面越来越受欢迎,这些知识可以帮助决策者和专家解决业务挑战并改进其业务流程和系统。这项研究正在英国一家航空航天工业的商业MRO(维护、修理和大修)供应商的故障日志上进行NLP和ML实验,以支持决策。第一阶段系统地利用文本分析从许多客户的故障通知中提取有价值的信息,并将其与专家的维护行为的相似性进行比较,然后将其分为修改、替换和未发现故障三类。在第二阶段,将提取的特征输入到机器学习器中,对商用飞机燃油量指示系统(FQIS)的故障诊断进行分类和预测,以自动排除故障,支持维护操作,并改善MRO服务中的决策。
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Fault Log Text Classification Using Natural Language Processing And Machine Learning For Decision Support
In recent years, various industries have been on the quest to derive new knowledge and information from the data they produce. When these data are well utilised, they can create frameworks for improving business processes, product quality, and services. However, more often, data are in unstructured and semi-structured data formats. Because of this, the discovery of critical issues within textual data becomes challenging. In the past few years, the adoption of natural language prepossessing (NLP) and machine learning (ML) techniques are increasingly becoming popular for exploring knowledge within text documents that could help decision-makers and experts to solve business challenges and improve their business processes and systems. This research is being experimented with NLP and ML on the fault log of a UK-based commercial MRO (Maintenance, Repair, and Overhaul) provider in the Aerospace Industry to support decision-making. The first stage systematically leverages text analysis to extract valuable information from many customers' fault notifications, compares its similarity with the expert's maintenance action, and then classifies them into three categories which are Modification, Replacement, and No-fault-found. In the second phase, the extracted features get fed into the machine learner to categorise and predict future faults diagnosis in commercial aircraft’ FQIS (Fuel Quantity Indicating System) to automate troubleshooting, support maintenance operations, and improve decision-making in MRO services.
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