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Ensemble Non-Gaussian Local Regression for Industrial Silicon Content Prediction

机译:集合非高斯局部回归进行工业硅含量预测

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Due to the complicated characteristics of modeling data in industrial blast furnaces (e.g. , nonlinearity, non-Gaussian, and uneven distribution), the development of accurate data-driven models for the silicon content prediction is not easy. Instead of using a fixed model, an ensemble non-Gaussian local regression (ENLR) method is developed using a simple just-in-time-learning way. The independent component analysis is utilized to handle the non-Gaussian information in the selected similar data. Then, a local probabilistic prediction model is built using the Gaussian process regression. Moreover, without cumbersome efforts for model selection, the probabilistic information is adopted as an efficient criterion for the final prediction. Consequently, more accurate prediction performance of ENLR can be obtained. The advantages of the proposed method is validated on the online silicon content prediction, compared with other just-in-time-learning models.
机译:由于工业高炉中建模数据的复杂特性(例如,非线性,非高斯分布和不均匀分布),开发精确的数据驱动的硅含量预测模型并不容易。代替使用固定模型,而是使用一种简单的即时学习方法开发了集成的非高斯局部回归(ENLR)方法。独立分量分析用于处理所选相似数据中的非高斯信息。然后,使用高斯过程回归建立局部概率预测模型。此外,无需繁琐的模型选择工作,概率信息被用作最终预测的有效标准。因此,可以获得ENLR的更准确的预测性能。与其他即时学习模型相比,该方法的优势在在线硅含量预测中得到了验证。

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