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Analysing chromatographic data using data mining to monitor petroleum content in water

机译:使用数据挖掘分析色谱数据以监测水中的石油含量

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摘要

Chromatography is an important analytical technique that has widespread use in environmental applications. A typical application is the monitoring of water samples to determine if they contain petroleum. These tests are mandated in many countries to enable environmental agencies to determine if tanks used to store petrol are leaking into local water systems.rnChromatographic techniques, typically using gas or liquid chromatography coupled with mass spectrometry, allow an analyst to detect a vast array of compounds-potentially in the order of thousands. Accurate analysis relies heavily on the skills of a limited pool of experienced analysts utilising semi-automatic techniques to analyse these datasets-making the outcomes subjective.rnThe focus of current laboratory data analysis systems has been on refinements of existing approaches. The work described here represents a paradigm shift achieved through applying data mining techniques to tackle the problem. These techniques are compelling because the efficacy of preprocessing methods, which are essential in this application area, can be objectively evaluated. This paper presents preliminary results using a data mining framework to predict the concentrations of petroleum compounds in water samples. Experiments demonstrate that the framework can be used to produce models of sufficient accuracy-measured in terms of root mean squared error and correlation coefficients-to offer the potential for significantly reducing the time spent by analysts on this task.
机译:色谱法是一种重要的分析技术,已广泛用于环境应用中。典型的应用是监视水样以确定它们是否包含石油。在许多国家/地区都要求执行这些测试,以使环保机构能够确定用于存储汽油的储罐是否泄漏到本地水系统中。色谱技术(通常使用气相色谱法或液相色谱法与质谱联用)可使分析人员检测大量化合物-潜在的成千上万。准确的分析在很大程度上依赖于有限的经验丰富的分析人员的技能,他们使用半自动技术来分析这些数据集,从而使结果具有主观性。当前实验室数据分析系统的重点一直放在改进现有方法上。这里描述的工作代表了通过应用数据挖掘技术来解决此问题而实现的范式转变。这些技术之所以令人信服,是因为可以客观地评估在该应用领域必不可少的预处理方法的功效。本文介绍了使用数据挖掘框架预测水样品中石油化合物浓度的初步结果。实验表明,该框架可用于生成足够准确的模型(根据均方根误差和相关系数来衡量),从而有可能显着减少分析人员在此任务上花费的时间。

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