School of Mathematical Sciences, Chongqing Normal University, Chongqing 401331, China.
Key Laboratory of Imaging Processing and Intelligence Control, School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan 430074, China.
ISA Trans. 2022 Jun;125:156-165. doi: 10.1016/j.isatra.2021.06.015. Epub 2021 Jun 17.
This article tackles the finite-time bipartite synchronization (FTBS) of coupled competitive neural networks (CNNs) with switching parameters and time delay. Quantized control is utilized to achieve the FTBS at a small control cost and with limited channel resources. Since the effects of the time delay and switching parameters, traditional finite-time techniques cannot be directly utilized to the FTBS. By constructing a novel multiple Lyapunov functional (MLF), a sufficient criterion formulated by linear programming (LP) is established for the FTBS and the estimation of the settling time. To further improve the accuracy of the settling time, another MLF is designed by dividing the dwell time. With the aid of convex combination, a new LP is provided, which removes the requirement that the increment coefficient of the MLF at switching instants has to be larger than 1. In addition, to obtain the more precise settling time, an optimal algorithm is provided. Two numerical examples are put forward to demonstrate the reasonableness of the theoretical analysis.
本文针对时变参数和时滞的竞争神经网络(CNN)的有限时间双同步(FTBS)问题进行了研究。利用量化控制在小的控制代价和有限的信道资源条件下实现 FTBS。由于时滞和时变参数的影响,传统的有限时间技术不能直接应用于 FTBS。通过构建一个新的多李雅普诺夫函数(MLF),利用线性规划(LP)建立了一个充分条件,用于 FTBS 和 Settling time 的估计。为了进一步提高 Settling time 的精度,通过划分驻留时间设计了另一个 MLF。借助凸组合,提供了一个新的 LP,它消除了 MLF 在切换时刻的增量系数必须大于 1 的要求。此外,为了获得更精确的 Settling time,还提供了一种优化算法。提出了两个数值示例来验证理论分析的合理性。