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D-FNN Based Modeling and BP Neural Network Decoupling Control of PVC Stripping Process

机译:基于FNN的PVC汽提工艺建模与BP神经网络解耦控制

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PVC stripping process is a kind of complicated industrial process with characteristics of highly nonlinear and time varying. Aiming at the problem of establishing the accurate mathematics model due to the multivariable coupling and big time delay, the dynamic fuzzy neural network (D-FNN) is adopted to establish the PVC stripping process model based on the actual process operation datum. Then, the PVC stripping process is decoupled by the distributed neural network decoupling module to obtain two single-input-single-output (SISO) subsystems (slurry flow to top tower temperature and steam flow to bottom tower temperature). Finally, the PID controller based on BP neural networks is used to control the decoupled PVC stripper system. Simulation results show the effectiveness of the proposed integrated intelligent control method.
机译:PVC汽提工艺是一种复杂的工业过程,具有高度非线性和时变的特性。 旨在由于多变量耦合和大型时间延迟建立准确数学模型的问题,采用动态模糊神经网络(D-FNN)基于实际工艺操作基准建立PVC汽提工艺模型。 然后,PVC剥离过程由分布式神经网络去耦模块分离,以获得两个单输入单输出(SISO)子系统(浆料流到顶塔温度和蒸汽流到底塔温度)。 最后,使用基于BP神经网络的PID控制器来控制解耦PVC汽提示系统。 仿真结果表明了拟议的集成智能控制方法的有效性。

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