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On Stabilization of Quantized Sampled-Data Neural-Network-Based Control Systems

机译:基于量化采样数据神经网络的控制系统的稳定性

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摘要

This paper investigates the problem of stabilization of sampled-data neural-network-based systems with state quantization. Different with previous works, the communication limitation of state quantization is considered for the first time. More specifically, it is assumed that the sampled state measurements from sensor to the controller are quantized via a quantizer. To reduce conservativeness, a novel piecewise Lyapunov-Krasovskii functional (LKF) is constructed by introducing a line-integral type Lyapunov function and some useful terms that take full advantage of the available information about the actual sampling pattern. Based on the new LKF, much less conservative stabilization conditions are derived to obtain the maximal sampling period and the minimal guaranteed cost control performance. The desired quantized sampled-data three-layer fully connected feedforward neural-network-based controllers are designed by a linear matrix inequality approach. A search algorithm is given to find the optimal values of tuning parameters. The effectiveness and advantage of proposed method are demonstrated by the numerical simulation of an inverted pendulum.
机译:本文研究具有状态量化的基于采样数据神经网络的系统的稳定性问题。与以前的工作不同,第一次考虑了状态量化的通信限制。更具体地说,假设从传感器到控制器的采样状态测量值是通过量化器量化的。为了减少保守性,通过引入线积分型Lyapunov函数和一些有用的术语来构造新颖的分段Lyapunov-Krasovskii函数(LKF),这些术语充分利用了有关实际采样模式的可用信息。基于新的LKF,得出的保守性稳定条件要少得多,以获得最大的采样周期和最小的保证成本控制性能。通过线性矩阵不等式方法设计所需的量化采样数据三层全连接前馈神经网络控制器。给出了搜索算法以找到调整参数的最佳值。通过倒立摆的数值模拟证明了该方法的有效性和优势。

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