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首页> 外文期刊>Environmental Science: Nano >Prediction of nanoparticle transport behavior from physicochemical properties: machine learning provides insights to guide the next generation of transport models
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Prediction of nanoparticle transport behavior from physicochemical properties: machine learning provides insights to guide the next generation of transport models

机译:通过理化性质预测纳米颗粒的运输行为:机器学习为指导下一代运输模型提供了见识

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In the last 15 years, the development of advection-dispersion particle transport models (PTMs) for the transport of nanoparticles in porous media has focused on improving the fit of model results to experimental data by inclusion of empirical parameters. However, the use of these PTMs has done little to elucidate the complex behavior of nanoparticles in porous media and has failed to provide the mechanistic insights necessary to predictively model nanoparticle transport. The most prominent weakness of current PTMs stems from their inability to consider the influence of physicochemical conditions of the experiments on the transport of nanoparticles in porous media. Qualitative physicochemical influences on particle transport have been well studied and, in some cases, provide plausible explanations for some aspects of nanoparticle transport behavior. However, quantitative models that consider these influences have not yet been developed. With the current work, we intend to support the development of future mechanistic models by relating the physicochemical conditions of the experiments to the experimental outcome using ensemble machine learning (random forest) regression and classification. Regression results demonstrate that the fraction of nanoparticle mass retained over the column length (retained fraction, RF; a measure of nanoparticle transport) can be predicted with an expected mean squared error between 0.025-0.033. Additionally, we find that RF prediction was insensitive to nanomaterial type and that features such as concentration of natural organic matter, ζ potential of nanoparticles and collectors and the ionic strength and pH of the dispersion are strongly associated with the prediction of RF and should be targets for incorporation into mechanistic models. Classification results demonstrate that the shape of the retention profile (RP), such as hyperexponential or linearly decreasing, can be predicted with an expected F1-score between 60-70%. This relatively low performance in the prediction of the RP shape is most likely caused by the limited data on retention profile shapes that are currently available.
机译:在过去的15年中,用于在多孔介质中传输纳米粒子的对流扩散粒子传输模型(PTM)的开发重点在于通过引入经验参数来提高模型结果与实验数据的拟合度。但是,这些PTM的使用几乎无法阐明纳米粒子在多孔介质中的复杂行为,并且未能提供预测性建模纳米粒子传输所必需的机械原理。当前PTM的最突出的弱点在于无法考虑实验的物理化学条件对纳米颗粒在多孔介质中的运输的影响。定性的物理化学对粒子传输的影响已得到很好的研究,并且在某些情况下,为纳米粒子传输行为的某些方面提供了合理的解释。但是,尚未开发出考虑这些影响的定量模型。通过当前的工作,我们打算通过使用集成机器学习(随机森林)回归和分类将实验的物理化学条件与实验结果相关联,以支持将来的机械模型的开发。回归结果表明,可以预测色谱柱长度上保留的纳米颗粒质量分数(保留分数,RF;纳米颗粒传输的量度),其预期均方差在0.025-0.033之间。此外,我们发现RF预测对纳米材料类型不敏感,并且诸如天然有机物的浓度,纳米颗粒和捕集剂的ζ电位以及分散液的离子强度和pH等特征与RF预测密切相关,应作为目标纳入机械模型。分类结果表明,可以使用60-70%的预期F1分数预测保留曲线(RP)的形状,例如超指数或线性下降。 RP形状预测中的这种相对较低的性能很可能是由于当前可用的保留轮廓形状数据有限所致。

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