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Adaptive Soft Sensor Modeling Based on Weighted Supervised Latent Factor Analysis with Selectively Integrated Moving Windows

机译:基于加权监督潜在因子分析的自适应软传感器建模与选择性集成移动窗口

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An adaptive soft sensor modeling method based on weighted supervised latent factor analysis is proposed. In conventional moving window based adaptive soft sensor, predictive model is constructed only with the latest process information. To fully take advantage of the past windows, a set of recent local models are integrated by the Bayes' rule for quality estimation. However, the former built models may contain similar information about the process, and the redundancy would increase the calculation with a low-efficient accuracy improvement. Then a selecting method is proposed through a statistical hypothesis testing to determine whether a window dataset should be retained or not. In this way, the mostly informative models are left to integrate an efficient predictive model. A real industrial case demonstrates the feasibility and efficiency of the proposed adaptive soft sensor.
机译:提出了一种基于加权监督潜在因子分析的自适应软传感器建模方法。在传统的移动窗口的基于自适应软传感器中,预测模型仅使用最新的过程信息构建。为了充分利用过去的窗口,一系列最近的本地模型是由贝叶斯的质量估算规则集成的。然而,前者建造模型可能包含有关该过程的类似信息,并且冗余将通过低效的准确性改进增加计算。然后通过统计假设测试提出一种选择方法以确定是否应保留窗口数据集。通过这种方式,最重要的信息模型仍然是一体化的预测模型。真正的工业案例展示了所提出的自适应软传感器的可行性和效率。

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