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Solubility prediction of 21 azo dyes in supercritical carbon dioxide using wavelet neural network

机译:小波神经网络预测21种偶氮染料在超临界二氧化碳中的溶解度

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摘要

The solubility of 21 azo dyes in supercritical carbon dioxide was related to the six descriptors over a wide range of pressures (100-355 bar)and temperatures (308-413 K).The wavelet neural network (WNN)model was constructed with six descriptors as an input layer,eight neurons as a hidden layer and a neuron as an output layer.The descriptors consisted of temperature,pressure,LUMO energy,polarizability,volume of the molecule and number of unsaturated bonds and they were selected based on stepwise feature selection from different descriptors using multiple linear regression (MLR)method.The WNN architecture and its parameters were optimized simultaneously.The data were randomly divided into the training,prediction and validation sets.The RMSE and mean absolute errors in WNN model were 0.220 and 0.158 for prediction set and 0.156 and 0.114 for validation set.In addition,the prediction ability of the model was also evaluated for five azo dyes,the molecules and data of which were not in any previous data sets.The performance of the WNN model was also compared with artificial neural network (ANN)and MLR models.
机译:21种偶氮染料在超临界二氧化碳中的溶解度与六个描述符在较大的压力(100-355 bar)和温度(308-413 K)范围内相关。使用六个描述符构建小波神经网络(WNN)模型作为输入层,八个神经元作为隐藏层,神经元作为输出层。描述符由温度,压力,LUMO能量,极化率,分子体积和不饱和键数组成,并基于逐步特征选择进行选择使用多元线性回归(MLR)方法从不同的描述符中提取数据,同时优化WNN体系结构及其参数,将数据随机分为训练,预测和验证集.WNN模型的RMSE和平均绝对误差为0.220和0.158预测集,验证集为0.156和0.114。此外,还评估了该模型对五种偶氮染料的预测能力,其分子和数据均不存在任何p还将WNN模型的性能与人工神经网络(ANN)和MLR模型进行了比较。

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