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首页> 外文期刊>IEEE Transactions on Circuits and Systems. 1 >Modeling of continuous time dynamical systems with input by recurrent neural networks
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Modeling of continuous time dynamical systems with input by recurrent neural networks

机译:递归神经网络输入的连续时间动力系统建模

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摘要

This paper proves that any finite time trajectory of a given n-dimensional dynamical continuous system with input can be approximated by the internal state of the output units of a continuous time recurrent neural network (RNN). The proof is based on the idea of embedding the n-dimensional dynamical system into a higher dimensional one. As a result, we are able to confirm that any continuous dynamical system can be modeled by an RNN.
机译:本文证明了给定的具有输入的n维动态连续系统的任何有限时间轨迹都可以通过连续时间递归神经网络(RNN)的输出单元的内部状态来近似。该证明基于将n维动力系统嵌入到高维系统中的想法。结果,我们能够确认RNN可以建模任何连续的动力学系统。

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