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P-V-T properties of polymer melts based on equation of state and neural network

机译:基于状态方程和神经网络的聚合物熔体的P-V-T特性

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摘要

An accurate and efficient analytical equation of state (EOS) and artificial neural network (ANN) methods are developed for the prediction of volumetric properties of polymer melts. To apply EOS, the second virial coefficients B _2(T), effective van der Waals co-volume, b(T) and correction factor, α(T) were determined. The second virial coefficient was calculated from a two-parameter corresponding states correlation, which is constructed with two constants as scaling parameters, i.e., temperature (T _f) and density at melting (ρ _f) point. The new correlations were used to predict the specific volumes of polypropylene glycol (PPG), polyethylene glycol (PEG), polypropylene (PP), polyvinylchloride (PVC), poly(1-butene)(PB1), poly (-caprolactone) (PCL), polyethylene (PE) and polyvinylmethylether (PVME) at compressed state in the temperature range of 298.15-634.6 K. The obtained results show that the two models have good agreement with the experimental data with absolute average deviation of 0.28% and 0.39% for ANN and EOS, respectively. The Comparison of the results with ISM model shows that the proposed models represent an efficient method and are more accurate.
机译:开发了一种准确有效的状态分析方程(EOS)和人工神经网络(ANN)方法,用于预测聚合物熔体的体积特性。为了应用EOS,确定了第二维里系数B _2(T),有效范德华共同体积b(T)和校正因子α(T)。根据两参数对应的状态相关性计算第二维里系数,该相关性由两个常数作为缩放参数构成,即温度(T _f)和熔化点密度(ρ_f)。新的相关性用于预测聚丙二醇(PPG),聚乙二醇(PEG),聚丙烯(PP),聚氯乙烯(PVC),聚(1-丁烯)(PB1),聚(-己内酯)(PCL)的比容),聚乙烯(PE)和聚乙烯基甲醚(PVME)在298.15-634.6 K的温度范围内处于压缩状态。获得的结果表明,两个模型与实验数据具有很好的一致性,其绝对平均偏差为0.28%和0.39%分别是ANN和EOS。与ISM模型的结果比较表明,所提出的模型代表了一种有效的方法,并且更加准确。

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