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Adaptive soft sensor model using online support vector regression with time variable and discussion of appropriate parameter settings

机译:自适应软传感器模型使用在线支持向量回归与时间变量和适当的参数设置讨论

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Soft sensors are used in chemical plants to estimate process variables that are difficult to measure online. However, the predictive accuracy of adaptive soft sensor models decreases when sudden process changcs occur. An online support vcctor regression (OSVR) model with a time variable can adapt to rapid changes among process variables. One problem faced by the proposed model is finding appropriate hyperparameters for the OSVR model; we discussed three methods to select parameters based on predictive accuracy and computation time. The proposed method was applied to simulation data and industrial data, and achieved high predictive accuracy when time-varying changes occurred.
机译:软传感器用于化工厂,以估计难以在线测量的过程变量。然而,当发生突然的过程时,自适应软传感器模型的预测精度会降低。具有时间变量的在线支持VCCTOR回归(OSVR)模型可以适应过程变量之间的快速变化。所提出的模型面临的一个问题正在寻找适当的osvr模型的超参数;我们讨论了三种方法来根据预测精度和计算时间选择参数。该提出的方法应用于模拟数据和工业数据,并在发生时变化时实现了高的预测精度。

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