首页> 外文期刊>Central European Journal of Chemistry >Spatial variations in the distribution of trace ionic impurities in the water–steam cycle in a thermal power plant based on a multivariate statistical approach
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Spatial variations in the distribution of trace ionic impurities in the water–steam cycle in a thermal power plant based on a multivariate statistical approach

机译:基于多元统计方法的火电厂水蒸汽循环中痕量离子杂质分布的空间变化

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In this study, a multivariate statistical approach was used to identify the key variables responsible for process water quality in a power plant. The ion species that could cause corrosion in one of the major thermal power plants (TPP) in Serbia were monitored. A suppressed ion chromatographic (IC) method for the determination of the target anions and cations at trace levels was applied. In addition, some metals important for corrosion, i.e., copper and iron, were also analysed by the graphite furnace atomic absorption spectrophotometric (GFAAS) method. The control parameters, i.e., pH, dissolved oxygen and silica, were measured on?line. The analysis of a series of representative samples from the TPP Nikola Tesla, collected in different plant operation modes, was performed. Every day laboratory and on?line analysis provides a large number of data in relation to the quality of water in the water–steam cycle (WSC) which should be evaluated and processed. The goal of this investigation was to apply multivariate statistical techniques and choose the most applicable technique for this case. Factor analysis (FA), especially principal component analysis (PCA) and cluster analysis (CA) were investigated. These methods were applied for the evaluation of the spatial/temporal variations of process water and for the estimation of 13 quality parameters which were monitored at 11 locations in the WSC in different working conditions during a twelve month period. It was concluded that PCA was the most useful method for identifying functional relations between the elements. After data reduction, four main factors controlling the variability were identified. Hierarchical cluster analysis (HCA) was applied for sample differentiation according to the sample location and working mode of the TPP. On the basis of this research, the new design of an optimal monitoring strategy for future analysis was proposed with a reduced number of measured parameters and with reduced frequency of their measurements.
机译:在这项研究中,采用多元统计方法来确定电厂中过程水质量的关键变量。监测了可能导致塞尔维亚的一家主要火力发电厂(TPP)腐蚀的离子种类。采用了抑制离子色谱法(IC)来测定痕量水平的目标阴离子和阳离子。另外,还通过石墨炉原子吸收分光光度法(GFAAS)分析了一些对腐蚀很重要的金属,即铜和铁。在线测量控制参数,即pH,溶解氧和二氧化硅。对以不同工厂操作模式收集的来自TPP Nikola Tesla的一系列代表性样品进行了分析。每天实验室和在线分析都会提供大量与水-蒸汽循环(WSC)中的水质有关的数据,应该对其进行评估和处理。这项研究的目的是应用多元统计技术,并为这种情况选择最适用的技术。研究了因素分析(FA),尤其是主成分分析(PCA)和聚类分析(CA)。这些方法用于评估过程用水的时空变化,并评估13个质量参数,这些参数在十二个月内在不同工作条件下在WSC中的11个位置进行了监控。结论是PCA是识别元素之间功能关系的最有用的方法。数据精简后,确定了控制变异性的四个主要因素。根据TPP的样品位置和工作模式,采用层次聚类分析(HCA)进行样品区分。在这项研究的基础上,提出了一种用于未来分析的最佳监控策略的新设计,该策略具有减少的测量参数数量和降低的测量频率。

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