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Dynamic Subspace Models for High-Sulfur Gas Sweetening Process Monitoring

机译:高硫气体脱硫过程监控的动态子空间模型

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The acid component in high-sulfur gas (HSG) is as high as 5%-15%, which will causes great security risk and has strong corrosive effect to the sweetening equipment. Therefore, productive process monitoring has important significance to ensure the system normal work and safety. However, due to the time lag shift of the operating parameters, static methods seem powerless. Thus, in this paper, we proposed a dynamic subspace model for HSG sweetening process monitoring. Specifically, we first introduce the operating parameters and time series as input candidate features, and get the dynamic expansion matrix by time-lag order analysis. Then we combined the matrix with static PCA model to achieve the process monitoring. The experiments on the actual data of a HSG sweetening plant show that, the false alarm rate (FAR) and missing alarm rate (MAR) of Hotelling T2 and Q statistic (SPE) in DPCA are much lower than those of PCA. In particular, compared to PCA, the SPE MAR in DPCA reduced by 13.42%, and the T2 MAR in DPCA is 4 times lower than that of PCA. Therefore, the proposed monitoring method for HSG sweetening process is efficient and feasible.
机译:高硫气体中的酸成分高达5 \%-15 \%,这会带来很大的安全隐患,并对甜味设备产生强烈的腐蚀作用。因此,生产过程监控对确保系统正常工作和安全性具有重要意义。但是,由于操作参数的时滞偏移,静态方法似乎无能为力。因此,在本文中,我们提出了用于HSG甜化过程监控的动态子空间模型。具体来说,我们首先介绍操作参数和时间序列作为输入候选特征,然后通过时滞顺序分析获得动态扩展矩阵。然后,我们将矩阵与静态PCA模型结合起来以实现过程监控。 HSG加糖厂实际数据的实验表明,DPCA中Hotelling T2和Q统计量(SPE)的误报率(FAR)和漏报率(MAR)远低于PCA。特别是,与PCA相比,DPCA中的SPE MAR降低了13.42%,而DPCA中的T2 MAR比PCA降低了4倍。因此,提出的HSG甜化过程监测方法是有效可行的。

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