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Dealing with missing data for prognostic purposes

机译:处理用于预后目的的数据丢失

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Centrifugal compressors are considered one of the most critical components in oil industry, making the minimization of their downtime and the maximization of their availability a major target. Maintenance is thought to be a key aspect towards achieving this goal, leading to various maintenance schemes being proposed over the years. Condition based maintenance and prognostics and health management (CBM/PHM), which is relying on the concepts of diagnostics and prognostics, has been gaining ground over the last years due to its ability of being able to plan the maintenance schedule in advance. The successful application of this policy is heavily dependent on the quality of data used and a major issue affecting it, is that of missing data. Missing data's presence may compromise the information contained within a set, thus having a significant effect on the conclusions that can be drawn from the data, as there might be bias or misleading results. Consequently, it is important to address this matter. A number of methodologies to recover the data, called imputation techniques, have been proposed. This paper reviews the most widely used techniques and presents a case study with the use of actual industrial centrifugal compressor data, in order to identify the most suitable ones.
机译:离心式压缩机被认为是石油工业中最关键的组件之一,因此,将停机时间减到最少和可用性最大化是一个主要目标。维护被认为是实现此目标的关键方面,导致多年来提出了各种维护方案。基于状态的维护,预测和健康管理(CBM / PHM)依赖于诊断和预测的概念,由于其能够提前计划维护计划的能力,在过去的几年中一直在不断发展。此策略的成功应用在很大程度上取决于所使用数据的质量,而影响该策略的主要问题是数据丢失。缺少数据可能会破坏一组数据中包含的信息,从而可能对数据得出的结论产生重大影响,因为可能会有偏差或误导性的结果。因此,解决此问题很重要。已经提出了许多种用于恢复数据的方法,称为插补技术。本文回顾了使用最广泛的技术,并结合实际的工业离心压缩机数据进行了案例研究,以确定最合适的技术。

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