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An application of DPCA to oil data for CBM modeling

机译:DPCA在煤层气建模数据中的应用

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In multivariate time series analysis, dynamic principal component analysis (DPCA) is an effective method for dimensionality reduction. DPCA is an extension of the original PCA method which can be applied to an autocorrelated dynamic process. In this paper, we apply DPCA to a set of real oil data and use the principal components as covariates in condition-based maintenance (CBM) modeling. The CBM model (Model 1) is then compared with the CBM model which uses raw oil data as the covariates (Model 2). It is shown that the average maintenance cost corresponding to the optimal policy for Model 1 is considerably lower than that for Model 2, and when the optimal policies are applied to the oil data histories, the policy for Model 1 correctly indicates almost twice as many impending system failures as the policy for Model 2. (c) 2005 Elsevier B.V. All rights reserved.
机译:在多元时间序列分析中,动态主成分分析(DPCA)是降维的有效方法。 DPCA是原始PCA方法的扩展,可以应用于自相关动态过程。在本文中,我们将DPCA应用于一组实际石油数据,并在基于状态的维护(CBM)建模中将主成分用作协变量。然后将CBM模型(模型1)与使用原始油数据作为协变量的CBM模型(模型2)进行比较。结果表明,与模型1的最优策略相对应的平均维护成本大大低于模型2的平均维护成本,并且当将最优策略应用于石油数据历史记录时,模型1的策略正确地指出了几乎两倍的即将发生的事故。系统故障是Model 2的策略。(c)2005 Elsevier BV保留所有权利。

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