利用不同性质的信息建立催化重整装置反应器模型

B. Orazbayev, A. Zhumadillayeva, K. Orazbayeva, K. Dyussekeyev, S. Omarova, V. Makhatova
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引用次数: 0

摘要

注释。建立了阿特劳炼油厂LG-35-11 / 300-95型催化重整装置重整反应器的数学模型。由于这一技术单位的特点是缺乏定量信息和一些可用信息的模糊性,因此在工作中使用了系统分析方法的思想,这允许系统地使用复杂的各种性质的信息。在系统利用实验统计方法的统计信息和专家评价方法的模糊信息的基础上,建立了重整反应器的数学模型。在此基础上,建立了基于实验统计和模糊信息的混合模型系统。在这种情况下,以多元回归方程形式的统计模型的形式得到了描述生产量(即从投入生产的汽油和工艺氢气)与运行参数的依赖关系的模型。并以具有模糊参数的模糊多元回归方程的形式建立了评价汽油质量指标的模糊模型。在建立模型的过程中,模糊信息的获取、形式化、处理和使用都是基于专家评价方法和模糊集理论。为了确定已开发模型的结构,使用了回归量序列包含方法的思想。对于参数辨识,即确定回归系数的取值,采用了改进的最小二乘法。为了识别模糊参数,首先在水平集α=0.5的基础上;0.75;1、将模糊回归方程转化为各种α的常规回归方程的等效系统。然后用常用的参数辨识方法对得到的回归方程的各层次回归系数进行辨识。然后,在模糊集理论的相应公式的基础上,将α水平的所有系数组合起来,使其可以切换到计算机建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Set of Models for Reactors of a Catalytic Reforming Unit Using Information of a Different Nature
Annotation. Mathematical models of reforming reactors of a catalytic reforming unit of the LG-35-11 / 300–95 type of the Atyrau oil refinery have been built. Since this technological unit is characterized by a deficit of quantitative information and the vagueness of some of the available information, the ideas of the system analysis methodology were used in the work, which allows the systematic use of information of various nature in a complex. Mathematical models of reforming reactors are developed on the basis of the systematic use of statistical information based on experimental statistical methods and fuzzy information based on expert assessment methods. As a result, a system of hybrid-type models was built, i.e. the models are built on the basis of experimental-statistical and fuzzy information. In this case, the models describing the dependence of the volume of production, i.e. produced gasoline and technical hydrogen from the input, operating parameters are obtained in the form of statistical models in the form of regression equations of multiple regression. And fuzzy models that assess the quality indicators of gasoline are built in the form of fuzzy multiple regression equations with fuzzy parameters. The processes of obtaining, formalizing, processing and using fuzzy information in developing a model are based on the methods of expert assessments and theories of fuzzy sets. To determine the structures of the developed models, the idea of the method of sequential inclusion of regressors was used. And for parametric identification, i.e. to determine the values of the regression coefficients, a modified least squares method was applied. In order to identify fuzzy parameters, first on the basis of level sets α=0.5; 0.75; 1, the fuzzy regression equation is transformed into an equivalent system of conventional regression equations for various α. Then the regression coefficients of the obtained regression equations for each level are identified by the usual method of parametric identification. Then, on the basis of the corresponding formulas of the fuzzy set theories, all the coefficients of the level α are combined, which makes it possible to switch to computer modeling.
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