从统计技术和机器学习中获得的工业精馏塔的代理模型

Q4 Social Sciences
Marcos Sousa Leite, Sarah Lilian de Lima Silva, Thalita Cristine Ribeiro Lucas Fernandes, Sidinei Kleber Da Silva, Antonio Carlos Brandão De Araújo
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引用次数: 0

摘要

目的:研究一个工业蒸馏系统建模的案例,使用Aspen Plus模拟器作为数学模型,随后在Matlab中使用机器学习技术生成代理模型。 & # x0D;理论框架:元模型是从严格模型生成的数据中得到的简化模型,当由其产生的计算代码需要过大的计算量才能可行时,将其全部或部分取代。 & # x0D;方法/设计/途径:在Aspen Plus中进行该过程的模拟。随后,选取最重要的变量,在Matlab中使用Latin Hypercube Sampling进行实验设计,生成用于Aspen Plus灵敏度分析的点。下一步是使用Matlab中的统计和机器学习工具箱构建元模型,采用线性回归和高斯过程回归模型。最后进行统计分析。 & # x0D;结果与结论:蒸馏系统仿真收敛,得到的元模型回归指标较好,尤其是高斯过程回归模型,最适合表示严格的Aspen Plus模型。 & # x0D;研究意义:理解与计算工具和数据回归模型相结合的多组分蒸馏过程,从而减少计算工作量。 & # x0D;原创性/价值:开发一种工具,可以模拟和评估蒸馏过程,而无需获得具有严格方程数据库的软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate Modelling of an Industrial Distillation Column Obtained from Statistical Techniques and Machine Learning
Purpose: To study a case of modeling an industrial distillation system, using the Aspen Plus simulator as the mathematical model and subsequently generating surrogate models using Machine Learning techniques in Matlab. Theoretical Framework: Metamodels are reduced models obtained from data generated by rigorous models, replacing them entirely or partially when the computational codes originating from them require excessively large computational effort to be used feasibly. Method/Design/Approach: The simulation of the process was performed in Aspen Plus. Subsequently, the most important variables were selected, and an experimental design was created using Latin Hypercube Sampling in Matlab, generating points to be used in sensitivity analysis in Aspen Plus. The next step was the construction of metamodels using the Statistics and Machine Learning toolbox in Matlab, employing linear regression and Gaussian process regression models. Finally, a statistical analysis was conducted. Results and Conclusion: The distillation system simulation converged, and the obtained metamodels had good regression indicators, especially the Gaussian process regression models, making them the most suitable for representing the rigorous Aspen Plus model. Research Implications: Understanding the multicomponent distillation process integrated with computational tools and data regression models, leading to a reduction in computational effort. Originality/Value: Development of a tool that enables the simulation and evaluation of a distillation process without the need to acquire software with rigorous equation databases.
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来源期刊
Revista de Gestao Social e Ambiental
Revista de Gestao Social e Ambiental Social Sciences-Geography, Planning and Development
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