This paper investigates a class of uncertain fractional-order delayed cellular neural networks (UFODCNNs) with fuzzy operators and nonlinear activations. Both fuzzy AND and fuzzy OR are considered, which help to improve the robustness of the model when dealing with various uncertain problems. To achieve the finite-time (FT) synchronization and Mittag–Leffler synchronization of the concerned neural networks (NNs), a nonlinear adaptive controller consisting of three information feedback modules is devised, and each submodule performs its function based on current or delayed historical information. Based on the fractional-order comparison theorem, the Lyapunov function, and the adaptive control scheme, new FT synchronization and Mittag–Leffler synchronization criteria for the UFODCNNs are derived. Unlike previous feedback controllers, the control strategy proposed in this article can adaptively adjust the strength of the information feedback, and partial parameters only need to satisfy inequality constraints within a local time interval, which shows our control mechanism has a significant advantage in conservatism. The experimental results show that our mean synchronization time and variance are 11.397% and 12.5% lower than the second-ranked controllers, respectively.
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Hongguang Fan
Kaibo Shi
Zizhao Guo
Fractal and Fractional
Shenzhen Institutes of Advanced Technology
Chengdu University
Guizhou University of Finance and Economics
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Fan et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68dc1e438a7d58c25ebb231d — DOI: https://doi.org/10.3390/fractalfract9100634