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Modeling and Control of Industrial Fischer-Tropsch Synthesis Slurry Reactor Using Artificial Neural Networks

机译:工业费-托合成淤浆反应器的人工神经网络建模与控制

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摘要

This study presents an artificial neural network (ANN) approach for the modeling and control of the Fischer-Tropsch synthesis (FTS) slurry reactor. Operating data collected from an FTS demonstration plant were used to develop a radial basis function neural network (RBFNN) model, which is used for predicting the reactor temperature under industrial operation conditions. Additionally, a modified PID neural network (MPIDNN) control method was proposed for the reactor temperature control based on the trained RBFNN model. The differential evolution (DE) algorithm was used as the learning algorithm to automatically optimize the RBFNN and the PIDNN parameters. In the FTS slurry reactor simulation, the RBFNN model achieved satisfactory predictions of the reactor temperature, whereas the MPIDNN control system demonstrated an impressively stable and rapid control of the reactor temperature.
机译:这项研究提出了一种人工神经网络(ANN)方法,用于Fischer-Tropsch合成(FTS)浆料反应器的建模和控制。从FTS示范工厂收集的运行数据用于建立径向基函数神经网络(RBFNN)模型,该模型用于预测工业运行条件下的反应堆温度。此外,基于训练后的RBFNN模型,提出了一种改进的PID神经网络(MPIDNN)控制方法来控制反应堆温度。差分进化(DE)算法被用作学习算法,以自动优化RBFNN和PIDNN参数。在FTS浆料反应器模拟中,RBFNN模型对反应器温度进行了令人满意的预测,而MPIDNN控制系统则显示了对反应器温度的惊人稳定和快速控制。

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