IEEE Trans Neural Netw Learn Syst. 2016 Feb;27(2):416-25. doi: 10.1109/TNNLS.2015.2411671. Epub 2015 Apr 16.
This paper investigates the multirate networked industrial process control problem in double-layer architecture. First, the output tracking problem for sampled-data nonlinear plant at device layer with sampling period T(d) is investigated using adaptive neural network (NN) control, and it is shown that the outputs of subsystems at device layer can track the decomposed setpoints. Then, the outputs and inputs of the device layer subsystems are sampled with sampling period T(u) at operation layer to form the index prediction, which is used to predict the overall performance index at lower frequency. Radial basis function NN is utilized as the prediction function due to its approximation ability. Then, considering the dynamics of the overall closed-loop system, nonlinear model predictive control method is proposed to guarantee the system stability and compensate the network-induced delays and packet dropouts. Finally, a continuous stirred tank reactor system is given in the simulation part to demonstrate the effectiveness of the proposed method.
本文研究了双层架构中的多速率网络工业过程控制问题。首先,采用自适应神经网络(NN)控制研究了设备层中具有采样周期 T(d)的采样非线性 plant 的输出跟踪问题,结果表明设备层子系统的输出可以跟踪分解的设定点。然后,在操作层中以采样周期 T(u)对设备层子系统的输出和输入进行采样,形成索引预测,用于在较低频率下预测整体性能指标。由于其逼近能力,径向基函数 NN 被用作预测函数。然后,考虑到整个闭环系统的动态特性,提出了非线性模型预测控制方法,以保证系统的稳定性,并补偿网络诱导的延迟和数据包丢失。最后,在仿真部分给出了一个连续搅拌釜式反应器系统,以验证所提出方法的有效性。