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基于交叉流倾斜角度变化的流聚焦微流控芯片中液滴破碎的机器学习辅助预测。

Machine Learning-Aided Microdroplets Breakup Characteristic Prediction in Flow-Focusing Microdevices by Incorporating Variations of Cross-Flow Tilt Angles.

机构信息

School of Engineering, University of British Columbia, Kelowna, British Columbia V1V 1V7, Canada.

Faculty of New Sciences and Technologies, University of Tehran, Tehran 1439957131, Iran.

出版信息

Langmuir. 2022 Aug 30;38(34):10465-10477. doi: 10.1021/acs.langmuir.2c01255. Epub 2022 Aug 16.

Abstract

Controlling droplet breakup characteristics such as size, frequency, regime, and droplet quality within flow-focusing microfluidic devices is critical for different biomedical applications of droplet microfluidics such as drug delivery, biosensing, and nanomaterial preparation. The development of a prediction platform capable of forecasting droplet breakup characteristics can significantly improve the iterative design and fabrication processes required for achieving desired performance. The present study aims to develop a multipurpose platform capable of predicting the working conditions of user-specific droplet size and frequency and reporting the quality of the generated droplets, regime, and hydrodynamical breakup characteristics in flow-focusing microdevices with different cross-junction tilt angles. Four different neural network-based prediction platforms were compared to accurately estimate capsule size, generation rate, uniformity, and circle metric. The trained capsule size and frequency networks were optimized using the heuristic optimization approach for establishing the Pareto optimal solution plot. To investigate the transition of the droplet generation regime (i.e., squeezing, dripping, and jetting), two different classification models (LDA and MLP) were developed and compared in terms of their prediction accuracy. The MLP model outperformed the LDA model with a cross-validation measure evaluated as 97.85%, demonstrating that the droplet quality and regime prediction models can provide an engineering judgment for the decision maker to choose between the suggested solutions on the Pareto front. The study followed a comprehensive hydrodynamical analysis of the junction angle effect on the dispersed thread formation, pressure, and velocity domains in the orifice.

摘要

控制流聚焦微流控装置中液滴的断裂特征,如大小、频率、状态和液滴质量,对于液滴微流控的不同生物医学应用(如药物输送、生物传感和纳米材料制备)至关重要。开发能够预测液滴断裂特征的预测平台,可以显著提高实现所需性能所需的迭代设计和制造过程。本研究旨在开发一种多功能平台,能够预测用户特定液滴大小和频率的工作条件,并报告在具有不同十字形接头倾斜角的流聚焦微器件中生成的液滴的质量、状态和流体动力学断裂特征。比较了四种基于神经网络的预测平台,以准确估计胶囊的大小、生成率、均匀性和圆度指标。使用启发式优化方法对训练有素的胶囊大小和频率网络进行了优化,以建立帕累托最优解图。为了研究液滴生成状态(即挤压、滴落和射流)的转变,开发了两种不同的分类模型(LDA 和 MLP),并比较了它们的预测精度。MLP 模型的交叉验证指标评估为 97.85%,优于 LDA 模型,表明液滴质量和状态预测模型可以为决策者提供工程判断,以便在帕累托前沿上选择建议的解决方案。该研究对接头角度对分散丝形成、孔口压力和速度域的影响进行了全面的流体动力学分析。

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