维护的开源分析解决方案

E. Jantunen, Jaime Campos, Pankaj Sharma, M. McKay
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引用次数: 1

摘要

本文回顾了现有的数据挖掘和大数据分析开源解决方案。在工业维护工程领域,作为这些解决方案的一部分的算法已经开始被研究并引入该领域。此外,对大数据和分析的兴趣在几个领域有所增加,因为产生的数据量增加了,并且达到了惊人的速度及其变化,即所谓的3v (Volume, Velocity和Variety)。公司和组织已经看到了在数据挖掘和大数据分析的支持下优化决策过程的必要性。这种解决方案的开发可能是一个漫长的过程,对于一些公司来说,由于许多原因,这是他们无法实现的。因此,理解开放源码解决方案的特征是很重要的。因此,作者使用了一个框架来组织他们的发现。因此,所使用的框架被称为数据库中的知识发现(KDD)过程,用于从大量数据中提取有用的知识。作者建议修改KDD框架,以便能够理解各自的数据挖掘/大数据解决方案是否足够,是否适合用于工业维护工程领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open Source Analytics Solutions for Maintenance
The current paper reviews existent data mining and big data analytics open source solutions. In the area of industrial maintenance engineering, the algorithms, which are part of these solutions, have started to be studied and introduced into the domain. In addition, the interest in big data and analytics have increased in several areas because of the increased amount of data produced as well as a remarkable speed attained and its variation, i.e. the so-called 3 V's (Volume, Velocity, and Variety). The companies and organizations have seen the need to optimize their decision-making processes with the support of data mining and big data analytics. The development of this kind of solutions might be a long process and for some companies something that is not within their reach for many reasons. It is, therefore, important to understand the characteristics of the open source solutions. Consequently, the authors use a framework to organize their findings. Thus, the framework used is called the knowledge discovery in databases (KDD) process for extracting useful knowledge from volumes of data. The authors suggest a modified KDD framework to be able to understand if the respective data mining/big data solutions are adequate and suitable to use in the domain of industrial maintenance engineering.
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