电加热蒸汽甲烷转化炉的模型预测控制

IF 3 Q2 ENGINEERING, CHEMICAL Digital Chemical Engineering Pub Date : 2023-12-27 DOI:10.1016/j.dche.2023.100138
Berkay Çıtmacı , Xiaodong Cui , Fahim Abdullah , Derek Richard , Dominic Peters , Yifei Wang , Esther Hsu , Parth Chheda , Carlos G. Morales-Guio , Panagiotis D. Christofides
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引用次数: 0

摘要

蒸汽甲烷重整(SMR)是应用最广泛的氢气(H2)生产工艺之一。除了在工业领域的广泛应用,氢气作为一种清洁能源载体的份额也在不断扩大,人们正在不断探索和开发更可持续、更高效的氢气生产方法。其中一种方法是通过电子流穿过重整器,以电加热取代传统的化石燃料加热。加州大学洛杉矶分校建立了一个电加热蒸汽甲烷重整过程的实验装置。本文介绍了系统组件,解释了实验装置的数字化,并介绍了利用从过程实验数据中通过数据驱动方法估算的参数建立基于第一原理的动态过程模型的方法。建模方法采用了整数参数近似法,并利用代数方程求解气相变量。反应参数根据稳态实验数据计算得出,温度变化则根据电流变化采用一阶动态模型建模。然后将整体动态过程模型用于计算模型预测控制 (MPC) 方案,在无扰动和蒸汽流速扰动情况下将过程驱动到新的 H2 生产设定点。将所提出的 MPC 方案的性能和稳健性与传统的比例-积分 (PI) 控制器进行了比较,结果表明该方案在闭环响应、稳健性和约束处理方面更胜一筹。
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Model predictive control of an electrically-heated steam methane reformer

Steam methane reforming (SMR) is one of the most widely used hydrogen (H2) production processes. In addition to its extensive utilization in industrial sectors, hydrogen is expanding it share as a clean energy carrier, and more sustainable and efficient H2 production methods are continuously being explored and developed. One method replaces conventional fossil fuel-based heating with electrical heating through the flow of electrons across the reformer. At UCLA, an experimental setup was built of an electrically heated steam methane reforming process. This paper describes the system components, explains the digitalization of the experimental setup and introduces methods for building a first-principles-based dynamic process model using parameters estimated via data-driven methods from process experimental data. The modeling approach uses a lumped parameter approximation and employs algebraic equations to solve for gas-phase variables. The reaction parameters are calculated from steady-state experimental data, and the temperature change is modeled with respect to change in electric current using a first-order dynamic model. The overall dynamic process model is then used in a computational model predictive control (MPC) scheme to drive the process to a new H2 production set-point under unperturbed and steam flowrate disturbance cases. The performance and robustness of the proposed MPC scheme are compared to the ones of a classical proportional–integral (PI) controller and are demonstrated to be superior in terms of closed-loop response, robustness, and constraint handling.

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