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Text data mining as a tool for the Asset Management decision support process

机译:文本数据挖掘作为资产管理决策支持流程的工具

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Utilities are facing significant challenges, driven for example by aging grid assets and the energy transition, in budgeting their operational (OPEX) and capital (CAPEX) expenditures. Data is key in addressing these challenges and will therefore help asset managers to make well-informed decisions. Often, this information is based on structured data, including the age and geographical location of the assets, which can easily be processed by computers. Yet, more than 80% of all the information is embedded in unstructured data such as text in documents. Therefore, analysing text may significantly improve the information quality of decision-making. However, due to its subjective nature, analysing text by computers is not a trivial task. In this paper, a topic model -called LDA (Latent Dirichlet Allocation) - is proposed to automatically cluster lengthy documents. As a case study, a set of DNV GL asset failure documents on cable failures have been analysed using the LDA algorithm. Based on the LDA algorithm, a "fingerprinting" method is presented, which provides a smart way to select the most relevant documents from a large set if only keywords are given.
机译:公用事业公司面临重大挑战,例如通过老化网桥资产和能源转型,预算其运作(OPEX)和资本(资本)支出。数据是解决这些挑战的关键,因此有助于资产管理人员做出明智的决策。通常,此信息基于结构化数据,包括资产的年龄和地理位置,这可以轻松由计算机处理。然而,超过80%的信息嵌入在非结构化数据中,例如文档中的文本。因此,分析文本可能会显着提高决策的信息质量。但是,由于其主观性质,通过计算机分析文本不是一个微不足道的任务。在本文中,提出了一个主题模型-Called LDA(潜在Dirichlet分配) - 以自动纳入冗长的文档。如案例研究,使用LDA算法分析了一组关于电缆故障的DNV GL资产故障文件。基于LDA算法,提出了“指纹”方法,它提供了一种智能方式,如果仅给出关键字,则从大型设置中选择最相关的文档。

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