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首页> 外文期刊>Chemical Engineering Science >Applying wavelet-based hidden Markov tree to enhancing performance of process monitoring
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Applying wavelet-based hidden Markov tree to enhancing performance of process monitoring

机译:应用基于小波的隐马尔可夫树提高过程监控性能

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摘要

In this paper, wavelet-based hidden Markov tree (HMT) models is proposed to enhance the conventional time-scale only statistical process model (SPC) for process monitoring. HMT in the wavelet domain cannot only analyze the measurements at multiple scales in time and frequency but also capture the statistical behavior of real world measurements in these different scales. The former can provide better noise reduction and less signal distortion than conventional filtering methods; the latter can extract the statistical characteristics of the unmeasured disturbances, like the clustering and persistence of the practical data which are not considered in SPC. Based on HMT, a univariate and a multivariate SPC are respectively developed. Initially, the SPC model is trained in the wavelet domain using the data obtained from the normal operation regions. The model parameters are trained by the expectation maximization algorithm. After extracting the past operating. information, the proposed method, like the philosophy of the traditional SPC, can generate simple monitoring charts, easily tracking and monitoring the occurrence of observable upsets. The comparisons of the existing SPC methods that explain the advantages of the properties of the newly proposed method are shown. They indicate that the proposed method can lead to more accurate results. Data from the monitoring practice in the industrial problems are presented to help readers delve into the matter. (c) 2005 Elsevier Ltd. All rights reserved.
机译:本文提出了基于小波的隐马尔可夫树(HMT)模型,以增强用于过程监视的常规时标仅统计过程模型(SPC)。小波域中的HMT不仅可以在时间和频率上分析多个尺度上的测量值,而且可以捕获这些不同尺度下的真实世界测量值的统计行为。前者可以提供比常规滤波方法更好的降噪效果和更少的信号失真。后者可以提取未测干扰的统计特征,例如SPC中未考虑的实际数据的聚类和持久性。基于HMT,分别开发了单变量和多变量SPC。最初,使用从正常操作区域获得的数据在小波域中训练SPC模型。模型参数由期望最大化算法训练。提取过去后进行操作。信息方面,与传统SPC的原理一样,所提出的方法可以生成简单的监视图,轻松跟踪和监视可观察到的不安情况。显示了现有SPC方法的比较,这些方法说明了新提出的方法的优点。他们表明所提出的方法可以导致更准确的结果。提供了有关工业问题的监视实践中的数据,以帮助读者深入研究此问题。 (c)2005 Elsevier Ltd.保留所有权利。

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