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首页> 外文期刊>SAR and QSAR in Environmental Research >On the rational formulation of alternative fuels: melting point and net heat of combustion predictions for fuel compounds using machine learning methods
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On the rational formulation of alternative fuels: melting point and net heat of combustion predictions for fuel compounds using machine learning methods

机译:关于替代燃料的合理制定:使用机器学习方法预测燃料化合物的熔点和净燃烧热

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We report the development of predictive models for two fuel specifications: melting points (Tm) and net heat of combustion (ACH), Compounds inside the scope of these models are those likely to be found in alternative fuels, i.e. hydrocarbons, alcoholsand esters. Experimental Tm and ACH values for these types of molecules have been gathered to generate a unique database. Various quantitative structure-property relationship (QSPR) approaches have been used to build models, ranging from methods leadingto multi-linear models such as genetic function approximation (GFA), or partial least squares (PLS) to those leading to non-linear models such as feed-forward artificial neural networks (FFANN), general regression neural networks (GRNN), support vectormachines (SVM), or graph machines. Except for the case of the graph machines method for which the only inputs are SMILES formulae, previously listed approaches working on molecular descriptors and functional group count descriptors were used to develop specific models for Tm and /^H. For each property, the predictive models return slightly different responses for each molecular structure. Therefore, models labelled as 'consensus models' were built by averaging values computed with selected individual models. Predicted results were then compared with experimental data and with predictions of models in the literature.
机译:我们报告了两种燃料规格的预测模型的发展情况:熔点(Tm)和净燃烧热(ACH)。这些模型范围内的化合物很可能在替代燃料中发现,即碳氢化合物,醇和酯。已经收集了这些分子类型的实验Tm和ACH值,以生成唯一的数据库。各种量化的结构-属性关系(QSPR)方法已用于构建模型,从导致多线性模型(例如遗传函数逼近(GFA)或偏最小二乘(PLS))的方法到导致非线性模型(例如,作为前馈人工神经网络(FFANN),通用回归神经网络(GRNN),支持向量机(SVM)或图机。除了只有输入是SMILES公式的图机方法的情况外,以前列出的作用于分子描述符和官能团计数描述符的方法被用于开发Tm和/ ^ H的特定模型。对于每种属性,预测模型针对每种分子结构返回略有不同的响应。因此,标记为“共识模型”的模型是通过对选择的单个模型计算出的值求平均值而构建的。然后将预测结果与实验数据以及文献中的模型预测进行比较。

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