应用物理信息神经网络预测梯度液相色谱中的浓度分布

IF 4 2区 化学 Q1 BIOCHEMICAL RESEARCH METHODS Journal of Chromatography A Pub Date : 2025-03-03 DOI:10.1016/j.chroma.2025.465831
Filip Rękas , Marcin Chutkowski , Krzysztof Kaczmarski
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引用次数: 0

摘要

色谱法是混合成分分析、化学纯度测试以及高纯度化合物生产的关键方法之一。因此,它在许多行业中都占有重要地位。目前应用最广泛的技术之一是梯度液相色谱法(GLC),它提高了分析物的洗脱能力。用GLC法测定最佳分离参数是一项繁琐的实验工作,因此采用了各种数值方法对这些过程进行优化。最近,物理信息神经网络(pinn)已经成为经典数值方法的替代方案,因为它们也可以作为求解偏微分方程(PDEs)的工具。除了通过机器学习检测变量之间隐藏和复杂关系的能力之外,PINN的主要概念是通过使用考虑了偏微分方程的损失函数来达到与控制物理定律的一致性,从而可以获得更高精度的结果。本文基于平衡色散(ED)色谱柱模型数值解的数据集,提出了两种PINN模型。经过训练和测试阶段,该模型能够较好地预测线性和非线性GLC条件下的浓度分布。第一个模型(A1)在线性GLC条件下进行了测试,在不同的进口浓度或注射时间下进行了测试,而第二个模型(A2)在线性和非线性GLC模式下进行了测试,并在不同的轴向弥散和质量传递阻力下进行了测试。
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Application of Physics-Informed Neural Networks to predict concentration profiles in gradient liquid chromatography
Chromatography is one of the key methods in the analysis of mixture compositions, in the testing of chemical purity, as well as in the production of highly pure compounds. For this reason, it finds an important place in many industries. Currently, one of the most widely used techniques is gradient liquid chromatography (GLC), which offers improved elution ability of the analytes. Experimental determination of optimal separation parameters with GLC is tedious, hence various numerical methods are used to optimize these processes. Recently, Physics-Informed Neural Networks (PINNs) have emerged as an alternative to classical numerical methods since they can also serve as a tool for solving partial differential equations (PDEs). The main concept of the PINN, apart from the ability to detect hidden and complex relationships between variables through machine learning, is to reach consistency with the governing physical laws by using a loss function that takes PDEs into account, which allows to obtain the results with better accuracy. In the paper, two PINN models are proposed, based on datasets obtained from numerical solutions of the equilibrium dispersive (ED) chromatography column model. After training and testing phases, the models are able to predict the concentration profiles under linear and nonlinear GLC conditions with more than satisfactory accuracy. The first model (model A1) was tested under linear GLC conditions, with variable inlet concentration or injection time, while the second model (model A2) was validated both under linear and nonlinear GLC modes and with variable axial dispersion and mass transport resistances.
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来源期刊
Journal of Chromatography A
Journal of Chromatography A 化学-分析化学
CiteScore
7.90
自引率
14.60%
发文量
742
审稿时长
45 days
期刊介绍: The Journal of Chromatography A provides a forum for the publication of original research and critical reviews on all aspects of fundamental and applied separation science. The scope of the journal includes chromatography and related techniques, electromigration techniques (e.g. electrophoresis, electrochromatography), hyphenated and other multi-dimensional techniques, sample preparation, and detection methods such as mass spectrometry. Contributions consist mainly of research papers dealing with the theory of separation methods, instrumental developments and analytical and preparative applications of general interest.
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