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Nonlinear Networked Control Systems with Random Nature using Neural Approach and Dynamic Bayesian Networks

机译:神经网络和动态贝叶斯网络的随机性质非线性网络控制系统

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摘要

We propose an intelligent predictive control approach for a nonlinear networked control system (NCS) with time-varying delay and random observation. The control is given by the sum of a nominal control and a corrective control. The nominal control is determined analytically using a linearized system model with fixed time delay. The corrective control is generated online by a neural network optimizer. A Markov chain (MC) dynamic Bayesian network (DBN) predicts the dynamics of the stochastic system online to allow predictive control design. We apply our proposed method to a satellite attitude control system and evaluate its control performance through computer simulation.
机译:我们提出了一种具有时变时滞和随机观测的非线性网络控制系统(NCS)的智能预测控制方法。该控制由名义控制和修正控制之和给出。使用具有固定时间延迟的线性化系统模型来解析确定名义控制。校正控制由神经网络优化器在线生成。马尔可夫链(MC)动态贝叶斯网络(DBN)在线预测随机系统的动态,以进行预测性控制设计。我们将提出的方法应用于卫星姿态控制系统,并通过计算机仿真评估其控制性能。

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