Machine learning-based predictive control of an electrically-heated steam methane reforming process

IF 3 Q2 ENGINEERING, CHEMICAL
Yifei Wang , Xiaodong Cui , Dominic Peters , Berkay Çıtmacı , Aisha Alnajdi , Carlos G. Morales-Guio , Panagiotis D. Christofides
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Abstract

Hydrogen plays a crucial role in improving sustainability and offering a clean and efficient energy carrier that significantly reduces greenhouse gas emissions. However, the primary method of industrial hydrogen production, steam methane reforming (SMR), relies on the combustion of hydrocarbons as the heating source for the reforming reactions, resulting in significant carbon emissions. To address this issue, an experimental setup of an electrically-heated steam methane reformer (e-SMR) has been constructed at UCLA, and a lumped first-principle dynamic process model was built based on parameters estimated from the experimental data in a previous study. Subsequently, the first-principle dynamic process model was implemented into the computational model predictive control (MPC) scheme, successfully driving the hydrogen production rate to the desired setpoint. While these works are important and pave the way for developing MPC for large-scale e-SMR processes, the first-principle process model may not accurately reflect the actual process behavior, particularly as the process behavior changes with time. Therefore, the development and establishment of an adaptive data-driven approach for implementing model predictive control in the e-SMR process is necessary. To address this need, the present work investigates the construction of recurrent neural network (RNN) models for an e-SMR process in-depth, utilizing data from an experimentally-validated first-principle model. Specifically, a long short-term memory (LSTM) layer was utilized in the RNN model to effectively capture the complex correlations present in long-term sequential data. Subsequently, this LSTM-based RNN process model was employed to design an MPC, and its performance was evaluated through comparison with proportional–integral (PI) control. To address potential disturbances and variability in a typical e-SMR process, three distinct approaches were developed: MPC with an integrator, MPC with real-time online retraining (transfer learning), and offset-free MPC. These approaches effectively eliminated the offset caused by disturbances. Overall, this study underscores the effectiveness of utilizing RNN models to capture process dynamics in an experimental e-SMR process. It also outlines strategies for employing RNN-based control and multiple approaches to address disturbances in general processes with partially infrequent and delayed measurement feedback. This approach is particularly valuable in scenarios where developing first-principle models for a new process may be challenging.

基于机器学习的电加热蒸汽甲烷转化过程预测控制
氢气在改善可持续发展和提供清洁高效的能源载体方面发挥着至关重要的作用,可显著减少温室气体排放。然而,工业制氢的主要方法--蒸汽甲烷重整(SMR)--依赖于燃烧碳氢化合物作为重整反应的加热源,从而导致大量碳排放。为了解决这个问题,加州大学洛杉矶分校建立了一个电加热蒸汽甲烷转化炉(e-SMR)的实验装置,并根据之前研究中实验数据估算的参数建立了一个整体第一原理动态过程模型。随后,第一原理动态过程模型被应用到计算模型预测控制(MPC)方案中,成功地将氢气生产率提升到了所需的设定点。尽管这些工作非常重要,并为开发大规模 e-SMR 过程的 MPC 铺平了道路,但第一原理过程模型可能无法准确反映实际过程行为,特别是过程行为会随时间发生变化。因此,有必要开发和建立一种自适应数据驱动方法,用于在 e-SMR 过程中实施模型预测控制。为了满足这一需求,本研究利用经过实验验证的第一原理模型的数据,为 e-SMR 过程深入研究了递归神经网络(RNN)模型的构建。具体来说,RNN 模型中使用了长短期记忆(LSTM)层,以有效捕捉长期序列数据中存在的复杂相关性。随后,该基于 LSTM 的 RNN 过程模型被用于设计 MPC,并通过与比例积分 (PI) 控制的比较对其性能进行了评估。为解决典型 e-SMR 过程中的潜在干扰和可变性,开发了三种不同的方法:带积分器的 MPC、带实时在线再训练(迁移学习)的 MPC 和无偏移 MPC。这些方法有效消除了干扰造成的偏移。总之,本研究强调了利用 RNN 模型捕捉实验性 e-SMR 过程动态的有效性。它还概述了采用基于 RNN 的控制策略和多种方法来解决具有部分不频繁和延迟测量反馈的一般流程中的干扰问题。在为新流程开发第一原理模型可能具有挑战性的情况下,这种方法尤其有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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