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Pollutant monitoring in tail gas of sulfur recovery unit with statistical and soft computing models

机译:硫磺回收单位尾气污染物监测,统计和软计算模型

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In this article, data-driven models are developed for real time monitoring of sulfur dioxide and hydrogen sulfide in the tail gas stream of sulfur recovery unit (SRU). Statistical [partial least square (PLS), ridge regression (RR) and Gaussian process regression (GPR)] and soft computing models are constructed from plant data. The plant data were divided into training and validation sets using Kennard-Stone algorithm. All models are developed from the training data set. PLS model is designed using SIMPLS algorithm. Three different ridge parameter selection techniques are used to design the RR model. GPR model is designed using four hyper parameter selection methods. The soft computing models include fuzzy and neuro-fuzzy models. Prediction accuracy of all models is assessed by simulation with validation dataset. Simulation results show that the GPR model designed with marginal log likelihood maximization method has good prediction accuracy and outperforms the performance of all other models. The developed GPR model is also found to yield better prediction accuracy than some other models of the SRU proposed in the literature.
机译:在本文中,开发了数据驱动的模型,用于实时监测二氧化硫和硫酸硫回收单元(SRU)的尾气流中的硫化氢。统计[部分最小二乘(PLS),脊回归(RR)和高斯进程回归(GPR)]和软计算模型是从工厂数据构建的。使用Kennard-Stone算法将工厂数据分为培训和验证集。所有型号都是从训练数据集开发的。 PLS模型采用Simpls算法设计。三种不同的脊参数选择技术用于设计RR模型。 GPR模型采用四种超参数选择方法设计。软计算模型包括模糊和神经模糊模型。通过使用验证数据集进行仿真评估所有模型的预测准确性。仿真结果表明,采用边缘日志似然最大化方法设计的GPR模型具有良好的预测精度,优于所有其他型号的性能。还发现开发的GPR模型,以产生比文献中提出的SRU的其他模型更好的预测精度。

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