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Evolving new group contribution-LSSVM model to estimate standard molar chemical exergy of pure organic substances

机译:不断发展的新集团贡献-LSSVM模型来估算纯有机物质的标准摩尔化学品

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Chemical exergy values of pure organic compounds are required in order to perform an exergy analysis to achieve the optimum conditions. Development of reliable predictive tools for standard molar chemical exergy estimation, is of great importance. A least squares support vector machine (LSSVM) based group contribution (GC) method is proposed for standard molar chemical exergy prediction of pure organic compounds. The proposed model is trained and evaluated based on a comprehensive data base comprising standard molar chemical exergy for 133 organic compounds. 47 chemical substructures are employed in the process of model development. The proposed model is evaluated using different graphical and statistical error analysis. Determination coefficient (R-2) and average absolute relative deviation (AARD%) values of 1.00 and 0.56% indicate the applicability potential and reliability of the predictions from the proposed model.
机译:需要进行纯有机化合物的化学漏洞值,以便进行达到最佳条件。 开发可靠的预测工具,用于标准磨牙化学估计,具有重要意义。 提出了基于最小二乘支持向量机(LSSVM)的基础贡献(GC)方法,用于纯有机化合物的标准摩尔化学漏洞预测。 拟议的模型是基于包含标准摩尔化学物质的综合数据库进行培训和评估,可用于133个有机化合物。 47化学子结构用于模型开发过程中。 使用不同的图形和统计误差分析评估所提出的模型。 测定系数(R-2)和平均绝对相对偏差(AARD%)值为1.00和0.56%,表明了来自所提出的模型的预测的适用性潜力和可靠性。

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