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Utilization of LSSVM algorithm for estimating synthetic natural gas density

机译:利用LSSVM算法估算合成天然气密度

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In the gas engineering the accurate calculation for pipeline and gas reservoirs requires great accuracy in estimation of gas properties. The gas density is one of major properties which are dependent to pressure, temperature and composition of gas. In this work, the Least squares support vector machine (LSSVM) algorithm was utilized as novel predictive tool to predict natural gas density as function of temperature, pressure and molecular weight of gas. A total number of 1240 experimental densities were gathered from the literature for training and validation of LSSVM algorithm. The statistical indexes, Root mean square error (RMSE), coefficient of determination (R-2) and average absolute relative deviation (AARD) were determined for total dataset as 0.033466, 1 and 0.0025686 respectively. The graphical comparisons and calculated indexes showed that LSSVM can be considered as a powerful and accurate tool for prediction of gas density.
机译:在天然气工程中,管道和气体储层的准确计算需要估计气体特性的良好准确性。 气体密度是主要性质之一,其取决于气体的压力,温度和组成。 在这项工作中,最小二乘支持向量机(LSSVM)算法用作新的预测工具,以预测天然气密度作为气体的温度,压力和分子量的功能。 从LSSVM算法训练和验证的文献中收集了1240个实验密度的总数。 统计指标,根均方误差(RMSE),测定系数(R-2)和平均绝对相对偏差(AARD)分别测定为0.033466,1和0.0025686。 图形比较和计算的指标显示LSSVM可以被认为是用于预测气体密度的强大和准确的工具。

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