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Improved detection of incipient anomalies via multivariate memory monitoring charts: Application to an air flow heating system

机译:通过多变量内存监视图改进对初期异常的检测:在气流加热系统中的应用

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摘要

Detecting anomalies is important for reliable operation of several engineering systems. Multivariate statistical monitoring charts are an efficient tool for checking the quality of a process by identifying abnormalities. Principal component analysis (PCA) was shown effective in monitoring processes with highly correlated data. Traditional PCA-based methods, nevertheless, often are relatively inefficient at detecting incipient anomalies. Here, we propose a statistical approach that exploits the advantages of PCA and those of multivariate memory monitoring schemes, like the multivariate cumulative sum (MCUSUM) and multivariate exponentially weighted moving average (MEWMA) monitoring schemes to better detect incipient anomalies. Memory monitoring charts are sensitive to incipient anomalies in process mean, which significantly improve the performance of PCA method and enlarge its profitability, and to utilize these improvements in various applications. The performance of PCA-based MEWMA and MCUSUM control techniques are demonstrated and compared with traditional PCA-based monitoring methods. Using practical data gathered from a heating air-flow system, we demonstrate the greater sensitivity and efficiency of the developed method over the traditional PCA-based methods. Results indicate that the proposed techniques have potential for detecting incipient anomalies in multivariate data. (C) 2016 Elsevier Ltd. All rights reserved.
机译:检测异常对于几个工程系统的可靠运行很重要。多元统计监视图是通过识别异常来检查过程质量的有效工具。结果表明,主成分分析(PCA)在监视高度相关数据的过程中是有效的。然而,传统的基于PCA的方法通常在检测初期异常方面效率相对较低。在这里,我们提出一种统计方法,该方法利用PCA和多元内存监视方案的优势,例如多元累积总和(MCUSUM)和多元指数加权移动平均(MEWMA)监视方案,以更好地检测初期异常。内存监视图对过程平均值的初期异常敏感,这将显着提高PCA方法的性能并扩大其获利能力,并在各种应用中利用这些改进。演示了基于PCA的MEWMA和MCUSUM控制技术的性能,并将其与基于PCA的传统监视方法进行了比较。使用从加热气流系统收集的实际数据,我们证明了该开发方法比传统的基于PCA的方法具有更高的灵敏度和效率。结果表明,提出的技术具有检测多变量数据中初期异常的潜力。 (C)2016 Elsevier Ltd.保留所有权利。

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