College of Mathematics and Quantitative Mathematics, Shandong University of Finance and Economics, Jinan, Shandong, 250002, China.
Comput Intell Neurosci. 2022 Mar 14;2022:9897894. doi: 10.1155/2022/9897894. eCollection 2022.
WNCS (Whole network control system) is a network-based distributed control system. The control loop formed by the serial network usually includes several subcontrol systems. WNCS optimal control is a complex and multiparameter coupled highly nonlinear system. Combining the advantages of GA (genetic algorithm), neural network, and fuzzy control, a WNCS optimal control method based on improved GA is proposed. This scheme has both the strong global searching ability of GA and the robustness and self-learning ability of neural network. The simulation results show that the algorithm can keep the diversity of population genes and effectively restrain the premature convergence of the algorithm. On this basis, the optimal control problem of WNCS with short time delay with information integrity scale is studied. The model transformation is used to transform the long time-delay system into a formal nondelay nonlinear system, and then the transformed nondelay nonlinear system obtains the optimal control law that meets the infinite time-domain quadratic performance index without considering packet loss by successive approximation method. The simulation results verify the effectiveness and correctness of the compensation algorithm for nonlinear WNCS.
WNCS(全网络控制系统)是一种基于网络的分布式控制系统。由串行网络形成的控制回路通常包含几个子控制系统。WNCS 最优控制是一个复杂的、多参数耦合的高度非线性系统。结合遗传算法(GA)、神经网络和模糊控制的优点,提出了一种基于改进 GA 的 WNCS 最优控制方法。该方案兼具 GA 的强大全局搜索能力和神经网络的鲁棒性和自学习能力。仿真结果表明,该算法能够保持种群基因的多样性,有效抑制算法的早熟收敛。在此基础上,研究了信息完整尺度下具有短时间延迟的 WNCS 的最优控制问题。采用模型变换将长时间延迟系统转化为正规无延迟非线性系统,然后通过逐次逼近法,对转化后的无延迟非线性系统在不考虑丢包的情况下获得满足无穷时域二次性能指标的最优控制律。仿真结果验证了非线性 WNCS 补偿算法的有效性和正确性。