2024
DOI: 10.3934/math.2024847
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Associative memories based on delayed fractional-order neural networks and application to explaining-lesson skills assessment of normal students: from the perspective of multiple $ \mathit O(t^{-\alpha}) $ stability

Jiang-Wei Ke,
Jin-E Zhang

Abstract: <abstract><p>This paper discusses associative memories based on time-varying delayed fractional-order neural networks (DFNNs) with a type of piecewise nonlinear activation function from the perspective of multiple $ \mathit O(t^{-\alpha}) $ stability. Some sufficient conditions are gained to assure the existence of $ 5^n $ equilibria for $ n $-neuron DFNNs with the proposed piecewise nonlinear activation functions. Additionally, the criteria ensure the existence of at least $ 3^n $ equilibria that … Show more

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