Ma, Siyu; Zhou, Ping; Ma, Jun; Wang, Chunni Phase synchronization of memristive systems by using saturation gain method. (English) Zbl 1439.94115 Int. J. Mod. Phys. B 34, No. 9, Article ID 2050074, 20 p. (2020). Summary: A variety of electric components can be used to bridge connection to the nonlinear circuits, and continuous pumping and consumption of energy are critical for voltage balance between the output end. The realization and stability of synchronization are mainly dependent on the physical properties of coupling channel, which can be built by using different electric components such as resistor, capacitor, induction coil and even memristor. In this paper, a memristive nonlinear circuit developed from Chua circuit is presented for investigation of synchronization, and capacitor, induction coil are jointed with resistor for building artificial synapse which connects one output of two identical memristive circuits. The capacitance and inductance of the coupling channel are carefully adjusted with slight step increase to estimate the threshold of coupling intensity supporting complete synchronization. As a result, the saturation gain method applied to realize the synchronization between chaotic circuits and physical mechanism is presented. Cited in 1 Document MSC: 94C60 Circuits in qualitative investigation and simulation of models 34D06 Synchronization of solutions to ordinary differential equations Keywords:memristor; synchronization; adaptive control; scale transformation; field coupling PDFBibTeX XMLCite \textit{S. Ma} et al., Int. J. Mod. Phys. B 34, No. 9, Article ID 2050074, 20 p. (2020; Zbl 1439.94115) Full Text: DOI References: [1] Kyriakides, E. and Georgiou, J., Int. J. Circuit Theory Appl.43, 1801 (2015). [2] Pyragas, K. and Tamaševičius, A., Phys. Lett. A180, 99 (1993). [3] Andrievskii, B. R. and Fradkov, A. L., Autom. Remote Control64, 673 (2003). 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