设计了一种基于统计学习方法的急冷油粘度实时预测模型

Yikai Wu, Fang Hou, Xiaopei Cheng
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引用次数: 0

摘要

急冷油的高粘度是石化装置乙烯裂解炉急冷系统的关键问题,影响设备的安全性和稳定性,同时,急冷油粘度的变化对乙烯和其他化工产品的收率也有不利影响。本文提出了一种基于统计算法和机器学习方法的实时预测淬火油粘度变化的统计学习模型。首先采用统计算法对参数进行降维,其次采用机器学习方法对实时预测模型进行拟合。仿真结果表明,该模型能够根据识别出的与淬火油粘度高度相关的可控参数,监测每小时粘度的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design a new real-time predictive model of viscosity of quench oil based on statistical learning method
High viscosity of quench oil is a critical problem of quench system in ethylene cracking furnaces in petrochemical plant, due to its influences on the safety and stability of equipments, meanwhile, the variety of viscosity of quench oil has a negative impact on yield of ethylene and other chemical products. This paper presents a new statistical learning model to forecast the real-time variety of quench oil viscosity based on statistical algorithm and machine learning method. Firstly, statistical algorithm is applied to reduce dimension of parameters, secondly, fitting real-time predictive model through machine learning method. The simulation results shows that this model can monitor the variety of viscosity per hour according to identified controllable parameters which are highly correlated with viscosity of quench oil.
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