表面张力
离子液体
可解释性
张力(地质)
计算机科学
生物系统
化学
热力学
人工智能
物理
有机化学
压缩(物理)
催化作用
生物
作者
Wenguang Zhu,Runqi Zhang,Hai Liu,Leilei Xin,Jianhui Zhong,Hongru Zhang,Jianguang Qi,Yinglong Wang,Zhaoyou Zhu
摘要
Abstract Ionic liquids' (ILs) surface tension, vital in liquid interface research, faces challenges in measurement methods—time‐consuming and labor‐intensive. The Structure‐Surface Tension Relationship (SSTR) is crucial for understanding the surface tension laws of ionic liquids, helping to predict surface tension and design ionic liquids that meet target requirements. In this study, SMILES string and group contribution methods were used to generate descriptors, and the random forest and multi‐layer perceptron (MLP) models were cross combined with the two descriptor generation methods to establish the SSTR model, providing a comprehensive framework for predicting the surface tension of ionic liquids. String‐MLP excels with high accuracy ( R 2 = 0.995, RMSE = 0.686, AARD% = 0.71%) for diverse ILs' surface tension values. Meanwhile, the Shapley Additive exPlanning (SHAP) method was used to test the impact of different features on model prediction, increasing the transparency and interpretability of the model.
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