基于人工神经网络的表面张力定量结构-性能关系模型

IF 2.5 4区 工程技术 Q3 CHEMISTRY, PHYSICAL International Journal of Thermophysics Pub Date : 2024-07-02 DOI:10.1007/s10765-024-03398-0
Nian Li, Xuehui Wang, Neng Gao, Guangming Chen
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引用次数: 0

摘要

本研究基于分子描述符建立了一个人工神经网络(ANN)模型,用于预测液体的表面张力。通过收集 25 种不同液体的实验数据并提取分子结构描述符,构建了包含各种特征的数据集。使用基于随机森林的前向搜索包装方法进行特征选择,确定了 7 个重要特征(温度、MinAbsEStateIndex、LabuteASA、MolMR、Chi1v、qed 和 FpDensityMorgan3)用于表面张力预测。随后,将所选特征作为输入构建了一个 ANN 模型,用于预测液体的表面张力。得出的模型具有很高的准确性,相关系数 (R) 超过 0.999,均方误差 (MSE = 1.843e-5)明显较低。此外,ANN 模型的总平均绝对偏差(AAD)为 0.98%,与 REFPROP 的总绝对偏差(AAD)1.26% 相当。该定量模型是深入了解表面张力分子基础和预测各种流体表面张力值的简便工具。
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A Quantitative Structure–Property Relationship Model for Surface Tension Based on Artificial Neural Network

In this study, an artificial neural network (ANN) model was developed based on molecular descriptors to predict the surface tension of liquids. A dataset containing various features was constructed by collecting experimental data from 25 different fluids and extracting molecular structural descriptors. Feature selection was performed using the forward search wrapper method based on Random Forest, identifying 7 significant features (Temperature, MinAbsEStateIndex, LabuteASA, MolMR, Chi1v, qed and FpDensityMorgan3) for surface tension prediction. Subsequently, an ANN model was constructed with the selected features as inputs to predict the surface tension of liquids. The derived model demonstrates high accuracy with a correlation coefficient (R) exceeding 0.999 and a notably low mean square error (MSE = 1.843e−5). Moreover, the ANN model exhibited a total average absolute deviation (AAD) of 0.98 %, comparable to that of the REFPROP, which had a total AAD of 1.26 %. This quantitative model serves an easy tool for gaining insights into the molecular underpinnings of surface tension and predicting its value across various fluids.

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来源期刊
CiteScore
4.10
自引率
9.10%
发文量
179
审稿时长
5 months
期刊介绍: International Journal of Thermophysics serves as an international medium for the publication of papers in thermophysics, assisting both generators and users of thermophysical properties data. This distinguished journal publishes both experimental and theoretical papers on thermophysical properties of matter in the liquid, gaseous, and solid states (including soft matter, biofluids, and nano- and bio-materials), on instrumentation and techniques leading to their measurement, and on computer studies of model and related systems. Studies in all ranges of temperature, pressure, wavelength, and other relevant variables are included.
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