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Accurate prediction of properties of carbon dioxide for carbon capture and sequestration operations

机译:准确预测用于碳捕获和封存操作的二氧化碳的性质

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Development of robust predictive models to estimate the transport properties of gases (namely viscosity and thermal conductivity) is of immense help in many engineering applications. This study highlights the application of the artificial neural network (ANN) and least squares support vector machine (LSSVM) modeling approaches to estimate the viscosity and thermal conductivity of CO2. To propose the machine learning methods, a total of 800 data gathered from the literature covering a wide temperature range of 200-1000 K and a wide pressure range of 0.1-100 MPa were used. Particle swarm optimization (PSO) and genetic algorithm (GA) as population-based stochastic search algorithms were applied for training of ANNs and to achieve the optimum LSSVM model variables. For the purpose of predicting viscosity, the PSO-ANN and GA-LSSVM methods yielded the mean absolute error (MAE) and coefficient of determination (R-2) values of 1.736 and 0.995 as well as 0.51930 and 0.99934, respectively for the whole data set, while for the purpose of predicting thermal conductivity, the PSO-ANN and GA-LSSVM models yielded the MAE and R-2 values of 1.43044 and 0.99704 as well as 0.72140 and 0.99857, respectively for the whole data set. Both methods provide properly capable method for predicting the thermal conductivity and viscosity of CO2.
机译:在许多工程应用中,开发强大的预测模型以估计气体的传输特性(即粘度和热导率)非常有用。这项研究重点介绍了人工神经网络(ANN)和最小二乘支持向量机(LSSVM)建模方法在估算CO2粘度和导热率方面的应用。为了提出机器学习方法,使用了从文献中收集的总共800个数据,涵盖200-1000 K的宽温度范围和0.1-100 MPa的宽压力范围。粒子群优化(PSO)和遗传算法(GA)作为基于人口的随机搜索算法被应用于神经网络的训练,并获得最佳的LSSVM模型变量。为了预测粘度,PSO-ANN和GA-LSSVM方法得出的整个数据的平均绝对误差(MAE)和测定系数(R-2)值分别为1.736和0.995以及0.51930和0.99934为了预测热导率,PSO-ANN和GA-LSSVM模型得出的整个数据集的MAE和R-2值分别为1.43044和0.99704以及0.72140和0.99857。两种方法都提供了预测CO2的导热率和粘度的适当方法。

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