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首页> 外文期刊>Journal of Process Control >Improvement of identification of blast furnace ironmaking process by outlier detection and missing value imputation
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Improvement of identification of blast furnace ironmaking process by outlier detection and missing value imputation

机译:通过离群检测和缺失值估算来改进高炉炼铁过程的识别

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摘要

The control of blast furnace ironmaking process requires model of process dynamics accurate enough to facilitate the control strategies. However, data sets collected from blast furnace contain considerable number of missing values and outliers. These values can significantly affect subsequent statistical analysis and thus the identification of the whole process, so it becomes much important to deal with these values. This paper considers a data processing procedure including missing value imputation and outlier detection, and examines the impact of processing to the identification of blast furnace ironmaking process. Missing values are imputed based on the decision tree algorithm and outliers are identified and discarded through a set of multivariate outlier detection methods. The data sets before and after processing are then used for identification. Two classic identification methods, N4SID (numerical algorithms for state space subspace system identification) and PEM (prediction error method) are considered and a comparative study is presented.
机译:高炉炼铁过程的控制需要足够精确的过程动力学模型,以利于控制策略。但是,从高炉收集的数据集包含大量遗漏值和异常值。这些值会显着影响后续的统计分析,从而影响整个过程的识别,因此处理这些值变得非常重要。本文考虑了包括缺失值估算和离群值检测在内的数据处理程序,并研究了处理对高炉炼铁过程识别的影响。根据决策树算法估算缺失值,并通过一组多元离群值检测方法识别并丢弃离群值。然后,将处理前后的数据集用于识别。考虑了两种经典的识别方法:N4SID(状态空间子空间系统识别的数字算法)和PEM(预测误差方法),并进行了比较研究。

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