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Estimation of Predictive Accuracy of Soft Sensor Models Based on One-Class Support Vector Machine

机译:基于单级支持向量机的软传感器模型预测准确度估算

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Soft sensors are widely used to estimate process variables that are difficult to measure online. By using soft sensors, analyzer faults can be detected by estimation errors. However, it is difficult to detect abnormal data and determine the reasons because estimation errors increase not only due to analyzer faults but also due to variations caused by changes in the state of chemical plants. To separate those factors, we previously proposed to construct the relationships between distances to soft sensor models (DMs) and the accuracy of prediction of the models quantitatively and estimate the prediction accuracy of new data online. In this paper, we employed a one-class support vector machine (OCSVM) to estimate data density and the output of an OCSVM as a DM. The proposed method was applied to real industrial data and the superiority of the proposed DM to the traditional ones was demonstrated by comparing their results.
机译:软传感器广泛用于估计难以在线测量的过程变量。通过使用软传感器,可以通过估计误差检测分析仪故障。然而,难以检测异常数据并确定原因,因为估计误差不仅由于分析仪故障而增加,而且由于化学设备状态的变化导致的变化。为了分离这些因素,我们之前建议在距离软传感器型号(DMS)之间的关系和定量模型预测的准确性,并估计在线新数据的预测准确性。在本文中,我们采用了一类支持向量机(OCSVM)来估计数据密度和OCSVM作为DM的输出。该方法应用于真实的工业数据,并通过比较其结果来证明所提出的DM对传统方式的优越性。

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