首页> 外文期刊>Journal of Natural Gas Chemistry >Radial Basis Function Neural Networks-Based Modeling of the Membrane Separation Process: Hydrogen Recovery from Refinery Gases
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Radial Basis Function Neural Networks-Based Modeling of the Membrane Separation Process: Hydrogen Recovery from Refinery Gases

机译:基于径向基函数神经网络的膜分离过程建模:从炼厂气中回收氢气

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摘要

Membrane technology has found wide applications in the petrochemical industry, mainly in the purification and recovery of the hydrogen resources. Accurate prediction of the membrane separation performance plays an important role in carrying out advanced process control (APC). For the first time, a soft-sensor model for the membrane separation process has been established based on the radial basis function (RBF) neural networks. The main performance parameters, i.e, permeate hydrogen concentration, permeate gas flux, and residue hydrogen concentration, are estimated quantitatively by measuring the operating temperature, feed-side pressure, permeate-side pressure, residue-side pressure, feed-gas flux, and feed-hydrogen concentration excluding flow structure, membrane parameters, and other compositions. The predicted results can gain the desired effects. The effectiveness of this novel approach lays a foundation for integrating control technology and optimizing the operation of the gas membrane separation process.
机译:膜技术已在石油化学工业中找到了广泛的应用,主要是在氢气资源的纯化和回收中。膜分离性能的准确预测在执行高级过程控制(APC)中起着重要作用。首次基于径向基函数(RBF)神经网络建立了用于膜分离过程的软传感器模型。通过测量操作温度,进料侧压力,渗透侧压力,残渣侧压力,进料气体通量和进料氢浓度,不包括流动结构,膜参数和其他组成。预测结果可以获得预期的效果。这种新颖方法的有效性为集成控制技术和优化气膜分离过程的操作奠定了基础。

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