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Neural network-based identification of SMB chromatographic processes

机译:基于神经网络的SMB色谱过程识别

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In this contribution, the identification problem for the control of nonlinear simulated moving bed (SMB) chromatographic processes is addressed. For process control the flow rates of extract, desorbent, and recycle of the SMB process, and the switching time are the manipulated variables. But these variables influence the process in a strongly coupled manner. Therefore, a new set of input variables is introduced by a nonlinear transformation of the physical inputs, such that the couplings are reduced considerably. The front positions of the axial concentration profile are taken as model outputs. Multilayer feedforward neural networks (NN) are utilized as approximating models of the nonlinear input-output behavior. The gradient distribution of the model outputs with respect, to the inputs is used to determine their structural parameters and the network size is chosen by the SVD method. To illustrate the effectiveness of the identification method, a laboratory scale SMB process is used as an example. The simulation results of the identified model confirm a very good approximation of the first principles models and exhibit a satisfactory long-range prediction performance.
机译:在此贡献中,解决了控制非线性模拟移动床(SMB)色谱过程的识别问题。对于过程控制,SMB过程的萃取液,解吸剂和循环流量以及切换时间是可控变量。但是这些变量以强烈耦合的方式影响过程。因此,通过物理输入的非线性变换引入了一组新的输入变量,从而大大减少了耦合。轴向浓度曲线的前部位置作为模型输出。多层前馈神经网络(NN)被用作非线性输入输出行为的近似模型。模型输出相对于输入的梯度分布用于确定其结构参数,并通过SVD方法选择网络大小。为了说明识别方法的有效性,以实验室规模的SMB过程为例。识别出的模型的仿真结果证实了第一个原理模型的非常好近似,并表现出令人满意的远程预测性能。

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