利用典型变量残差统计分析检测动态过程的初期故障

IF 3.7 2区 化学 Q2 AUTOMATION & CONTROL SYSTEMS Chemometrics and Intelligent Laboratory Systems Pub Date : 2024-07-25 DOI:10.1016/j.chemolab.2024.105189
Hongquan Ji, Qingsen Hou, Yingxuan Shao, Yuhao Zhang
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引用次数: 0

摘要

在现代复杂的工业运行中,及时发现故障势在必行。虽然统计过程监控在实践中得到了广泛应用,但传统方法通常对量级不明显的初期故障(IF)不敏感。为此,本文提出了一种用于动态过程中 IF 检测的创新方法。首先,使用典型变量差异分析 (CVDA) 算法生成典型变量残差 (CVR)。下一步是计算 CVRs 的统计量,并建立相应的统计矩阵。然后,构建 Mahalanobis 距离指数,用于故障检测。这种方法对动态过程中的中频具有高灵敏度的主要原因在于利用了 CVDA 和监测提取的统计数据而不是原始残差的想法。最后,通过一个数值示例和一个基准流程证明了该方法的有效性和优点。
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Incipient fault detection for dynamic processes with canonical variate residual statistics analysis

In modern complex industrial operations, timely fault detection is imperative. While statistical process monitoring is widely used in practice, conventional approaches are usually insensitive to incipient faults (IFs) whose magnitudes are not obvious. To this end, an innovative approach is presented for IF detection in dynamic processes. To begin with, canonical variate residuals (CVRs) are generated by using the canonical variate dissimilarity analysis (CVDA) algorithm. The next step involves calculating statistics for the CVRs and arranging a corresponding statistic matrix. Afterward, the Mahalanobis distance index is constructed for fault detection purpose. The main reasons that this developed approach possesses high sensitivity to IFs in dynamic processes lie in the utilization of CVDA and the idea of monitoring extracted statistics rather than original residuals. Finally, its effectiveness and merits are demonstrated via a numerical example and a benchmark process.

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来源期刊
CiteScore
7.50
自引率
7.70%
发文量
169
审稿时长
3.4 months
期刊介绍: Chemometrics and Intelligent Laboratory Systems publishes original research papers, short communications, reviews, tutorials and Original Software Publications reporting on development of novel statistical, mathematical, or computer techniques in Chemistry and related disciplines. Chemometrics is the chemical discipline that uses mathematical and statistical methods to design or select optimal procedures and experiments, and to provide maximum chemical information by analysing chemical data. The journal deals with the following topics: 1) Development of new statistical, mathematical and chemometrical methods for Chemistry and related fields (Environmental Chemistry, Biochemistry, Toxicology, System Biology, -Omics, etc.) 2) Novel applications of chemometrics to all branches of Chemistry and related fields (typical domains of interest are: process data analysis, experimental design, data mining, signal processing, supervised modelling, decision making, robust statistics, mixture analysis, multivariate calibration etc.) Routine applications of established chemometrical techniques will not be considered. 3) Development of new software that provides novel tools or truly advances the use of chemometrical methods. 4) Well characterized data sets to test performance for the new methods and software. The journal complies with International Committee of Medical Journal Editors'' Uniform requirements for manuscripts.
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