Enhancing quality control of polyethylene in industrial polymerization plants through predictive multivariate data‐driven soft sensors

Farzad Jani, Shahin Hosseini, Abdolhannan Sepahi, Seyyed Kamal Afzali, Farzad Torabi, Rooholla Ghorbani, Saeed Houshmandmoayed
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Abstract

Measuring polyethylene properties in the laboratory is time‐consuming and usually unavailable in real‐time, posing significant challenges for controlling product quality in polymerization plants. This research focuses on developing multivariate data‐driven soft sensors for online monitoring and prediction of key characteristics. The targeted properties for prediction include the melt flow index (MFI), density, and average particle diameter in the gas‐phase fluidized bed reactor, as well as the MFI and flow rate ratio (FRR) in the slurry‐phase process. We conducted an exhaustive examination using an ensemble learning approach to quantify the impact of process variables on the model's responses. Various machine learning (ML) algorithms were trained and validated using datasets from industrial ethylene polymerization plants. The precision of the ML models was improved by splitting the datasets into categories comprising high and low MFI and FRR, as well as linear low‐density and high‐density clusters. Then, segmented ML models were developed for each cluster. The results demonstrated that the segmented ML models utilizing optimized Gaussian process regression models with suitable kernel functions and ensemble bagged tree models offered the highest accuracy in predicting the MFI, FRR, and density. Additionally, the comprehensive ML model without clustering, utilizing Gaussian process regression with an isotropic exponential kernel function, proved to be the most effective at predicting the average particle diameter.
通过预测性多元数据驱动软传感器加强工业聚合厂的聚乙烯质量控制
在实验室测量聚乙烯特性非常耗时,而且通常无法实时测量,这给聚合工厂的产品质量控制带来了巨大挑战。这项研究的重点是开发多元数据驱动的软传感器,用于在线监测和预测关键特性。预测的目标特性包括气相流化床反应器中的熔体流动指数(MFI)、密度和平均颗粒直径,以及浆相工艺中的熔体流动指数和流速比(FRR)。我们使用集合学习方法进行了详尽的检查,以量化工艺变量对模型响应的影响。我们使用来自工业乙烯聚合工厂的数据集对各种机器学习(ML)算法进行了训练和验证。通过将数据集划分为高和低 MFI 和 FRR 类别,以及线性低密度和高密度聚类,提高了 ML 模型的精度。然后,为每个聚类开发了分段 ML 模型。结果表明,利用具有适当核函数的优化高斯过程回归模型和集合袋装树模型的分段 ML 模型在预测 MFI、FRR 和密度方面具有最高的准确性。此外,利用具有各向同性指数核函数的高斯过程回归的无聚类综合 ML 模型在预测颗粒平均直径方面被证明是最有效的。
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