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Modeling of the carbon dioxide capture process system using machine intelligence approaches

机译:使用机器智能方法对二氧化碳捕集过程系统进行建模

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摘要

Improving the efficiency of the carbon dioxide (CO_2) capture process requires a good understanding of the intricate relationships among parameters involved in the process. The objective of this paper is to study the relationships among the significant parameters impacting CO_2 production. An enhanced understanding of the intricate relationships among the process parameters supports prediction and optimization, thereby improving efficiency of the CO_2 capture process. Our modeling study used the 3-year operational data collected from the amine-based post combustion CO_2 capture process system at the International Test Centre (ITC) of CO_2 Capture located in Regina, Saskatchewan of Canada. This paper describes the data modeling process using the approaches of (1) neural network modeling combined with sensitivity analysis and (2) neuro-fuzzy modeling technique. The results from the two modeling processes were compared from the perspectives of predictive accuracy, inclusion of parameters, and support for explication of problem space. We conclude from the study that the neuro-fuzzy modeling technique was able to achieve higher accuracy in predicting the CO_2 production rate than the combined approach of neural network modeling and sensitivity analysis.
机译:提高二氧化碳(CO_2)捕集过程的效率需要对过程中涉及的参数之间的复杂关系有一个很好的了解。本文的目的是研究影响CO_2生产的重要参数之间的关系。对工艺参数之间复杂关系的增强理解有助于预测和优化,从而提高了CO_2捕集工艺的效率。我们的建模研究使用了位于加拿大萨斯喀彻温省里贾纳的CO_2 Capture国际测试中心(ITC)从胺基燃烧后CO_2捕集工艺系统收集的3年操作数据。本文使用(1)结合灵敏度分析的神经网络建模和(2)神经模糊建模技术来描述数据建模过程。从预测准确性,参数包含和支持问题空间扩展的角度比较了两个建模过程的结果。从研究中我们得出结论,与神经网络建模和灵敏度分析的组合方法相比,神经模糊建模技术能够在预测CO_2产生率方面获得更高的准确性。

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  • 作者单位

    Energy Informatics Laboratory, Faculty of Engineering and Applied Science, University of Regina, Regina, Saskatchewan, Canada S4S 0A2;

    Energy Informatics Laboratory, Faculty of Engineering and Applied Science, University of Regina, Regina, Saskatchewan, Canada S4S 0A2;

    Energy Informatics Laboratory, Faculty of Engineering and Applied Science, University of Regina, Regina, Saskatchewan, Canada S4S 0A2;

    Energy Informatics Laboratory, Faculty of Engineering and Applied Science, University of Regina, Regina, Saskatchewan, Canada S4S 0A2;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    CO_2 capture; neural network; sensitivity analysis; neuro-fuzzy technique;

    机译:二氧化碳捕获;神经网络;敏感性分析;神经模糊技术;

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