Prediction of Vapor Liquid Equilibrium of Binary CO2-Contained Mixtures for Carbon Capture and Sequestration using Artificial Intelligence

Rostami S
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Abstract

This research provides a comprehensive prediction using machine learning to predict vapor-liquid-equilibrium for CO2 - contained binary mixtures for carbon capture and sequestration projects. One of the best practices to lower the CO2 emissions in the atmosphere is Carbon Capture and Sequestration including capturing carbon dioxide from atmosphere and injecting it into the underground geological formations. One of the key elements in a successful project is to accurately model the phase equilibria which provides us on how the fluid or mixtures of the injected fluids will behave in certain pressures and temperatures underground. In this regard, different machine learning models have been implemented for the prediction. The data set consists experimental results of five different binary mixtures with CO2 presents in all of them. Then the results were compared to each other and the one with the highest accuracy was selected for each mixture. Peng Robinson equation of state was also used and compared with machine learning results. Finally, both machine learning and thermodynamic models were compared to experimental results to determine the accuracy. It was found out that thermodynamic model was unable to predict results for many data points while machine learning could predict results for most of the data points. Also, the accuracy of machine learning models was greatly better than thermodynamic model. In this research, a large data set including 748 data points is used on which machine learning models can be trained more accurate. Also, as a single machine learning model cannot predict accurate results for all mixtures, several models have been run on each mixture, and the one with the highest accuracy was selected for each CO2 -contained binary mixture which to our knowledge, has been never implemented.
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利用人工智能预测用于碳捕集与封存的含二氧化碳二元混合物的汽液平衡
这项研究利用机器学习提供了一种全面的预测方法,用于预测碳捕集与封存项目所含二氧化碳二元混合物的汽液平衡。碳捕集与封存是降低大气中二氧化碳排放量的最佳方法之一,包括捕集大气中的二氧化碳并将其注入地下地质构造。一个成功项目的关键因素之一是建立准确的相平衡模型,该模型可帮助我们了解注入的流体或流体混合物在地下一定压力和温度下的表现。为此,我们采用了不同的机器学习模型进行预测。数据集包括五种不同二元混合物的实验结果,所有混合物中都含有二氧化碳。然后将结果相互比较,为每种混合物选出准确度最高的模型。此外,还使用了彭-罗宾逊状态方程,并将其与机器学习结果进行了比较。最后,将机器学习模型和热力学模型与实验结果进行比较,以确定其准确性。结果发现,热力学模型无法预测许多数据点的结果,而机器学习可以预测大多数数据点的结果。此外,机器学习模型的准确性也大大优于热力学模型。本研究使用了一个包括 748 个数据点的大型数据集,在该数据集上训练的机器学习模型可以更加准确。此外,由于单一的机器学习模型无法预测所有混合物的准确结果,因此对每种混合物都运行了多个模型,并为每种含二氧化碳的二元混合物选择了准确度最高的模型。
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