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Predictive model of fouling radiant surface in boiler

机译:锅炉结垢辐射面的预测模型

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摘要

The fouling state of radiant heat absorption surface in power station is dynamic, changing with the load and fuel and so on. Traditional modeling method for fouling state such as linear regression and ANN is used to establish the off-line static model. But this offline static model must constantly correct with online data to guarantee long-term application. If the model only uses new data to modeling then it will lose the useful information of the dynamic process. It is difficult to calculate and store large data sets with new data and old data combined. This paper present a method based on nonlinear regression PLS, taking into consideration not only the present state of process, but also the information extracted from the old data. Then the model can be update with the changes of operating conditions, automatically. A simulation for fouling state of radiant heat absorption surface, in 300MW boiler, using the presented method is carried out. The results show that predictive model can adapt to the dynamic process.
机译:发电厂辐射热吸收面的结垢状态是动态的,随负荷和燃料等的变化而变化。传统的污损状态建模方法如线性回归和人工神经网络被用来建立离线静态模型。但是,此离线静态模型必须不断地对在线数据进行校正,以确保长期应用。如果模型仅使用新数据进行建模,那么它将丢失动态过程的有用信息。很难将新数据和旧数据相结合来计算和存储大型数据集。本文提出了一种基于非线性回归PLS的方法,不仅考虑了过程的当前状态,而且还考虑了从旧数据中提取的信息。然后可以根据操作条件的变化自动更新模型。利用所提出的方法对300MW锅炉辐射热吸收面的结垢状态进行了模拟。结果表明,预测模型可以适应动态过程。

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