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Probabilistic monitoring of chemical processes using adaptively weighted factor analysis and its application

机译:基于自适应加权因子分析的化学过程概率监测及其应用

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摘要

As a probabilistic statistical method, factor analysis (FA) has recently been introduced into process monitoring for the probabilistic interpretation and performance enhancement of noisy processes. Generally, FA methods employ the first several factors that are regarded as the dominant motivation of the process for process monitoring;; however, fault information has no definite mapping relationship to a certain factor, and useful information might be suppressed by useless factors or submerged under retained factors, leading to poor monitoring performance. Weighted FA (WFA) for process monitoring is proposed to solve the problem of useful information being submerged and to improve the monitoring performance of the GT~2 statistic. The main idea of WFA is firstly building a conventional FA model and then using the change rate of the GT~2 statistics (RGT~2) to evaluate the importance of each factor. The important factors tend to have larger RGT~2 values, and the larger weighting values are then adaptively assigned to these factors to highlight useful fault information. Case studies on both a numerical process and the Tennessee Eastman process demonstrate the effectiveness of the WFA method. Monitoring results indicate that the performance of the GT~2 statistic is improved significantly compared with the conventional FA method.
机译:作为一种概率统计方法,最近将因子分析(FA)引入到过程监控中,以对噪声过程进行概率解释和性能增强。通常,FA方法采用前几个因素,这些因素被认为是过程监控过程的主要动机。但是,故障信息与某个因素没有明确的映射关系,有用的信息可能会被无用的因素抑制或淹没在保留的因素下,从而导致监测性能较差。提出了一种用于过程监控的加权FA(WFA),以解决有用信息被淹没的问题,提高GT〜2统计的监控性能。 WFA的主要思想是首先建立一个常规的FA模型,然后使用GT〜2统计数据的变化率(RGT〜2)来评估每个因素的重要性。重要因素往往具有较大的RGT〜2值,然后将较大的加权值自适应地分配给这些因素以突出显示有用的故障信息。对数值过程和田纳西伊士曼过程的案例研究证明了WFA方法的有效性。监测结果表明,与传统的FA方法相比,GT〜2统计量的性能得到了显着改善。

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