Abnormal Condition Detection Integrated with Kullback Leibler Divergence and Relative Importance Function for Cement Raw Meal Calcination Process

Jinghui Qiao, Feng Tian
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引用次数: 3

Abstract

This paper focus on abnormal condition detection by using Kullback Leibler (KL) divergence with relative importance function. There exist multimodal working conditions, such as normal condition, abnormal condition. KL method was proved to be more sensitive to initial faults than the Hotelling's T-squared statistic. Relative importance function estimation for condition detection has been demonstrated, and relative importance function is always smoother than corresponding ordinary density-ratios. In cement raw meal calcination process, we sampled some important variables, such as calciner temperature, preheater C1 outlet temperature, raw meal flow, and C1 and C5 cone pressure. In actual process, the product quality index is low and it is easy to cause the preheater C5 feeding tube to be blocked. To detect abnormal condition, an abnormal condition detection based on Kullback Leibler divergence with relative importance function was proposed. The actual application results shows that the model proposed can detect abnormal condition by current operating data, and far from fault condition by the practical application results.
基于Kullback Leibler散度和相对重要函数的水泥生料煅烧过程异常状态检测
本文主要研究了基于相对重要函数的Kullback Leibler (KL)散度的异常状态检测方法。存在正常工况、异常工况等多式联运工况。KL方法比Hotelling的t平方统计量对初始故障更敏感。证明了状态检测的相对重要函数估计,相对重要函数总是比相应的普通密度比平滑。在水泥生料煅烧过程中,我们对煅烧炉温度、预热器C1出口温度、生料流量、C1和C5锥压力等重要变量进行了采样。在实际生产过程中,产品质量指标较低,容易造成预热器C5进料管堵塞。为了检测异常状态,提出了一种基于相对重要函数的Kullback Leibler散度的异常状态检测方法。实际应用结果表明,该模型能够根据当前运行数据检测出异常状态,而实际应用结果与故障状态相差甚远。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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