Machine learning based modelling and optimization of post-combustion carbon capture process using MEA supporting carbon neutrality

IF 3 Q2 ENGINEERING, CHEMICAL
Waqar Muhammad Ashraf, Vivek Dua
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引用次数: 1

Abstract

The role of carbon capture technology using monoethanolamine (MEA) is critical for achieving the carbon-neutrality goal. However, maintaining the efficient operation of the post-combustion carbon capture is challenging considering the hyperdimensional design space and nonlinear characteristics of the process. In this work, CO2 capture level from the flue gas in the absorption column is investigated for the post-combustion carbon capture process using MEA. Artificial neural network (ANN) and support vector machine (SVM) models are constructed to model CO2 capture level under extensive hyperparameters tuning. The comparative performance analysis based on external validation test confirmed the superior modelling and generalization ability of ANN for the carbon capture process. Later, partial derivative-based sensitivity analysis is carried out and it is the found that absorbent-based input variables like lean solvent temperature and lean solvent flow rate are the two most significant input variables on CO2 capture level in the absorption column. The optimization problem with the ANN model embedded in the nonlinear programming-based optimization environment is solved under different operating scenarios to determine the optimum operating ranges for the input variables corresponding to the maximum CO2 capture level. This research presents the optimum operating conditions for CO2 removal from the flue gas for the post-combustion carbon capture process using MEA that contributes to achieving the carbon neutrality goal.

使用支持碳中和的MEA对燃烧后碳捕获过程进行基于机器学习的建模和优化
使用单乙醇胺(MEA)的碳捕集技术的作用对于实现碳中和目标至关重要。然而,考虑到该过程的超维设计空间和非线性特征,保持燃烧后碳捕获的有效运行是具有挑战性的。在这项工作中,利用MEA研究了燃烧后碳捕集过程中吸收塔烟气中的CO2捕集水平。建立了人工神经网络(ANN)和支持向量机(SVM)模型,对CO2捕获水平进行了广泛超参数整定。基于外部验证试验的性能对比分析证实了人工神经网络在碳捕集过程中具有优越的建模和泛化能力。随后,进行了基于偏导数的敏感性分析,发现基于吸收剂的输入变量如贫溶剂温度和贫溶剂流速是影响吸收塔CO2捕集水平的两个最显著的输入变量。将人工神经网络模型嵌入到基于非线性规划的优化环境中,求解不同运行场景下的优化问题,确定最大CO2捕集水平对应的输入变量的最佳运行范围。本研究提出了利用MEA从燃烧后碳捕集过程中烟气中去除二氧化碳的最佳操作条件,有助于实现碳中和目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.10
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