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Soft Sensor Model Maintenance: A Case Study in Industrial Processes ?

机译:软传感器模型维护:工业过程中的案例研究

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One of the challenges of utilizing soft sensors is that their prediction accuracy deteriorates with time due to multiple factors, including changes in operating conditions. Once soft sensors are designed, a mechanism to maintain or update these models is highly desirable in industry. This paper proposes an index that can monitor the prediction performance of soft sensor models and provide guidance about when to update these models. In the proposed approach, a Kalman filter based model mismatch index is developed to monitor the prediction performance of soft sensors with the support of traditional process monitoring indexes, T2and SPE. Then, the soft sensor model can be updated through partial least squares (PLS) regression by using samples from the off-line training set and new process conditions. The proposed online update method is applied to an industrial process case study and the effectiveness of the proposed approach is demonstrated by comparing with traditional recursive partial least squares (RPLS).
机译:利用软传感器的挑战之一是由于多种因素(包括工作条件的变化),其软件的预测精度会随时间而下降。一旦设计了软传感器,工业上就非常需要一种维护或更新这些模型的机制。本文提出了一个指标,该指标可以监控软传感器模型的预测性能,并为何时更新这些模型提供指导。在提出的方法中,开发了基于卡尔曼滤波器的模型失配指数,以在传统过程监测指标T2和SPE的支持下监测软传感器的预测性能。然后,可以使用来自离线训练集的样本和新的过程条件通过偏最小二乘(PLS)回归更新软传感器模型。提出的在线更新方法应用于工业过程案例研究,并通过与传统的递归偏最小二乘法(RPLS)进行比较证明了该方法的有效性。

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