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首页> 外文期刊>Journal of Energy Resources Technology >Predicting Viscosities of Heavy Oils and Solvent-Heavy Oil Mixtures Using Artificial Neural Networks
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Predicting Viscosities of Heavy Oils and Solvent-Heavy Oil Mixtures Using Artificial Neural Networks

机译:使用人工神经网络预测重油和溶剂重油混合物的粘度

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摘要

This study investigates the potential of artificial neural networks (ANNs) to accurately predict viscosities of heavy oils (HOs) as well as mixtures of solvents and heavy oils (S-HOs). The study uses experimental data collected from the public domain for HO viscosities (involving 20 HOs and 568 data points) and S-HO mixture viscosities (involving 12 solvents and 4057 data points) for a wide range of temperatures, pressures, and mass fractions. The natural logarithm of viscosity (instead of viscosity itself) is used as predictor and response variables for the ANNs to significantly improve model performance. Gaps in HO viscosity data (with respect to pressure or temperature) are filled using either the existing correlations or ANN models that innovatively use viscosity ratios from the available data. HO viscosities and mixture viscosities (weight-based, molar-based, and volume-based) from the trained ANN models are found to be more accurate than those from commonly used empirical correlations and mixing rules. The trained ANN model also fares well for another dataset of condensate-diluted HOs.
机译:本研究调查了人工神经网络(ANNS)的潜力,以准确地预测重油(HOS)的粘度以及溶剂和重油(S-HOS)的混合物。该研究使用从公共领域收集的实验数据(涉及20个HOS和568个数据点)和S-HO混合粘度(涉及12个溶剂和4057个数据点),用于各种温度,压力和质量级分。粘度(代替粘度自身)的天然对数用作ANN的预测因子和响应变量,以显着提高模型性能。使用现有的相关性或ANN模型来填充HO粘度数据(相对于压力或温度)的间隙,以创新从可用数据中使用粘度比率。发现来自培训的ANN模型的HO粘度和混合粘度(基于体重,摩尔基和体积的)比来自常用经验相关性和混合规则更准确。训练有素的ANN模型对于另一个稀释的HOS的另一个数据集也很好。

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