Prediction of Henry’s Law Constant of Organic Compounds in Water from a New Group-Contribution-Based Model
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https://figshare.com/articles/dataset/Prediction_of_Henry_s_Law_Constant_of_Organic_Compounds_in_Water_from_a_New_Group_Contribution_Based_Model/2720113
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资源简介:
In this work, a new model is presented for estimation of Henry’s law constant of pure compounds in water at 25 °C (H). This model is based on a combination between a group contribution method and neural networks. The needed parameters of the model are the occurrences of a new collection of 107 functional groups. On the basis of these 107 functional groups, a feed forward neural network is presented to estimate the H of pure compounds. The squared correlation coefficient, absolute percent error, standard deviation error, and root-mean-square error of the model over a diverse set of 1940 pure compounds used are, respectively, 0.9981, 2.84%, 2.4, and 0.1 (all the values obtained using log H based data). Therefore, the model is a comprehensive and an accurate model and can be used to predict the H of a wide range of chemical families of pure compounds in water better than previously presented models.
创建时间:
2010-10-20



