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Globally Attractive Periodic Solutions of Continuous-Time Neural Networks and Their Discrete-Time Counterparts

机译:连续性神经网络的全球有吸引力的定期解决方案及其离散时间对应物

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In this paper, discrete-time analogues of continuous-time neural networks with continuously distributed delays and periodic inputs are investigated without assuming Lipschitz conditions on the activation functions. The discrete-time analogues are considered to be numerical discretizations of the continuous-time networks and we study their dynamical characteristics. By employing Halanay-type inequality, we obtain easily verifiable sufficient conditions ensuring that every solutions of the discrete-time analogue converge exponentially to the unique periodic solutions. It is shown that the discrete-time analogues inherit the periodicity of the continuous-time networks. The results obtained can be regarded as a generalization to the discontinuous case of previous results established for delayed neural networks possessing smooth neuron activation.
机译:在本文中,研究了连续时间神经网络的离散时间模数,具有连续分布的延迟和周期性输入,而不假设激活函数上的Lipschitz条件。离散时间类似物被认为是连续时间网络的数值离散化,我们研究了它们的动态特征。通过采用Halanay型不等式,我们可以获得易于可验证的充分条件,确保离散时间模拟的各种解决方案呈指数级为单独的周期性解决方案。结果表明,离散时间类似物继承了连续时间网络的周期性。所获得的结果可以被认为是对具有平滑神经网络的延迟神经网络建立的前述结果的不连续案例的概括。

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