基于物理的神经网络模拟和合成循环吸附过程

Sai Gokul Subraveti, Zukui Li, V. Prasad, A. Rajendran
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引用次数: 13

摘要

开发了一种计算速度更快且可靠的建模方法,称为基于物理的吸附和色谱模拟人工神经网络框架(PANACHE)。PANACHE使用深度神经网络进行循环合成和模拟循环吸附过程。提出的方法侧重于以物理约束损失函数的形式学习潜在的控制偏微分方程,以准确地模拟吸附过程。本文开发的方法不需要任何系统特定的输入,如等温线参数。因此,基于吸附过程中通常遇到的独特边界条件,建立了独特的神经网络模型,以充分预测不同组成步骤的柱动力学。每个组成步骤训练的神经网络模型旨在通过遵循基本物理定律来预测不同状态变量的整个时空解。在不重新训练神经网络模型的情况下,通过构建和模拟四种不同的真空摆动吸附循环来测试所提出的方法。对于每个循环,进行50次模拟,每个模拟对应一组独特的操作条件,直到循环稳定状态。结果表明,基于神经网络的模拟计算的纯度和回收率在详细模型预测的2.5%以内。PANACHE将计算时间减少了100倍,同时保持了详细模型模拟的相似精度。
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Physics-based neural networks for simulation and synthesis of cyclic adsorption processes
A computationally faster and reliable modelling approach called a physics-based artificial neural network framework for adsorption and chromatography emulation (PANACHE) is developed. PANACHE uses deep neural networks for cycle synthesis and simulation of cyclic adsorption processes. The proposed approach focuses on learning the underlying governing partial differential equations in the form of a physics-constrained loss function to simulate adsorption processes accurately. The methodology developed herein does not require any system-specific inputs such as isotherm parameters. Accordingly, unique neural network models were built to fully predict the column dynamics of different constituent steps based on unique boundary conditions that are typically encountered in adsorption processes. The trained neural network model for each constituent step aims to predict the entire spatiotemporal solutions of different state variables by obeying the underlying physical laws. The proposed approach is tested by constructing and simulating four different vacuum swing adsorption cycles for post-combustion CO2 capture without retraining the neural network models. For each cycle, 50 simulations, each corresponding to a unique set of operating conditions, are carried out until the cyclic-steady state. The results demonstrated that the purity and recovery calculated from the neural network-based simulations are within 2.5% of the detailed model's predictions. PANACHE reduced computational times by 100 times while maintaining similar accuracy of the detailed model simulations.
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