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Abnormal condition detection in a cement rotary kiln with system identification methods

机译:系统识别方法在水泥回转窑异常状态检测中的应用

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摘要

In this paper, we use system identification methods for abnormal condition detection in a cement rotary kiln. After selecting proper inputs and output, an input-output model is identified for the plant's normal conditions. A novel approach is used in order to estimate the delays of the input channels of the kiln before identification part. This method eases the identification since with determining the input channels delays, the dimension of search space in the identification part reduces. Afterward, to identify the kiln's model, Locally Linear Neuro-Fuzzy (LLNF) model is used. This model is trained by LOcally Linear MOdel Tree (LOLIMOT) algorithm which is an incremental tree-structure algorithm. Finally, with the model for normal condition of the kiln, the incident of abnormalities in output are detected based on the length of duration and magnitude of difference between the real output and model's output. We distinguished three abnormal conditions in the kiln, two of which are known as common abnormal conditions and another one which was not characteristically known for cement experts either.
机译:在本文中,我们将系统识别方法用于水泥回转窑的异常状态检测。选择适当的输入和输出后,将为工厂的正常状况确定输入-输出模型。为了估计在识别部分之前的窑的输入通道的延迟,使用了一种新颖的方法。该方法简化了识别,因为在确定输入通道延迟时,识别部分中搜索空间的尺寸减小了。然后,为了识别窑炉的模型,使用局部线性神经模糊(LLNF)模型。该模型由局部线性模型树(LOLIMOT)算法训练,该算法是一种增量树结构算法。最后,使用窑炉正常状态模型,可以根据持续时间的长度以及实际输出与模型输出之间的差异幅度来检测输出异常事件。我们区分了窑炉中的三种异常情况,其中两种被称为常见异常情况,另一种也不是水泥专家特有的特征。

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