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Metoder för statistisk analys av högdimensionella data för prediktion och diagnostisering av kvalitet av motorolja

机译:用于预测和诊断机油质量的高维数据的统计分析方法

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摘要

Engine oils fill important functions in the operation of modern internal combustion engines. Many essential functions are provided by compounds that are either sacrificial or susceptible to degradation. The engine oil will eventually fail to provide these functions with possibly unrepairable damages as a result. To decide how often the oil should be changed, there are several laboratory tests to monitor the oil condition, e.g. FTIR (oxidation, nitration, soot, water), viscosity, TAN (acidity), TBN (alkalinity), ICP (elemental analysis) and GC (fuel dilution). These oil tests are however often labor intensive and costly and it would be desirable to supplement and/or replace some of them with simpler and faster methods. One way, is to utilise the whole spectrum of the FTIR-measurements already performed. FTIR is traditionally used to monitor chemical properties at specific wave lengths, but also provides information, in a more multivariate way though, relevant for viscosity, TAN, and TBN. In order to make use of the whole FTIR-spectrum, methods capable of handling high dimensional data have to be used. Partial Least Squares Regression (PLSR) will be used in order to predict the relevant chemical properties. This survey also considers feature selection methods based on the second order statistic Higher Criticism as well as Hierarchical Clustering. The Feature Selection methods are used in order to ease further research on how infrared data may be put into usage as a tool for more automated oil analyses. Results show that PLSR may be utilised to provide reliable estimates of mentioned chemical quantities. In addition may mentioned feature selection methods be applied without losing prediction power. The feature selection methods considered may also aid analysis of the engine oil itself and feature work on how to utilise infrared properties in the analysis of engine oil in other situations.
机译:发动机油在现代内燃机的运行中起着重要的作用。牺牲性或易于降解的化合物提供了许多基本功能。最终,机油将无法提供这些功能,并可能造成无法修复的损害。为了确定应多久更换一次机油,有几种实验室测试可监控机油状况,例如: FTIR(氧化,硝化,烟灰,水),粘度,TAN(酸度),TBN(碱度),ICP(元素分析)和GC(燃料稀释)。然而,这些油测试通常是劳动密集型的并且昂贵的,并且期望用更简单和更快的方法来补充和/或替换其中一些。一种方法是利用已经执行的FTIR测量的整个频谱。 FTIR通常用于监视特定波长的化学性质,但也以更多元的方式提供与粘度,TAN和TBN相关的信息。为了利用整个FTIR频谱,必须使用能够处理高维数据的方法。为了预测相关的化学性质,将使用偏最小二乘回归(PLSR)。该调查还考虑了基于二阶统计量的“高级批评”以及“层次聚类”的特征选择方法。使用“特征选择”方法是为了简化对如何将红外数据用作更自动化的油分析工具的进一步研究。结果表明,PLSR可用于提供所提及化学物质的可靠估计。另外,可以提到的特征选择方法被应用而不会损失预测能力。所考虑的特征选择方法还可以帮助分析机油本身,并在其他情况下进行有关如何在分析机油中利用红外特性的特征研究。

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    Berntsson, Fredrik;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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