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Robustly Fitting and Forecasting Dynamical Data With Electromagnetically Coupled Artificial Neural Network: A Data Compression Method

机译:电磁耦合人工神经网络稳健地拟合和预测动态数据:一种数据压缩方法

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In this paper, a dynamical recurrent artificial neural network (ANN) is proposed and studied. Inspired from a recent research in neuroscience, we introduced nonsynaptic coupling to form a dynamical component of the network. We mathematically proved that, with adequate neurons provided, this dynamical ANN model is capable of approximating any continuous dynamic system with an arbitrarily small error in a limited time interval. Its extreme concise Jacobian matrix makes the local stability easy to control. We designed this ANN for fitting and forecasting dynamic data and obtained satisfied results in simulation. The fitting performance is also compared with those of both the classic dynamic ANN and the state-of-the-art models. Sufficient trials and the statistical results indicated that our model is superior to those have been compared. Moreover, we proposed a robust approximation problem, which asking the ANN to approximate a cluster of input–output data pairs in large ranges and to forecast the output of the system under previously unseen input. Our model and learning scheme proposed in this paper have successfully solved this problem, and through this, the approximation becomes much more robust and adaptive to noise, perturbation, and low-order harmonic wave. This approach is actually an efficient method for compressing massive external data of a dynamic system into the weight of the ANN.
机译:本文提出并研究了一种动态递归人工神经网络。受神经科学领域最新研究的启发,我们引入了非突触耦合来形成网络的动态组件。我们从数学上证明,在提供足够的神经元的情况下,该动态ANN模型能够在有限的时间间隔内以任意小的误差逼近任何连续的动态系统。其极端简洁的雅可比矩阵使局部稳定性易于控制。我们设计了这种神经网络以拟合和预测动态数据,并在仿真中获得了满意的结果。拟合性能也与经典动态ANN和最新模型进行了比较。充分的试验和统计结果表明,我们的模型优于已比较的模型。此外,我们提出了一个鲁棒的近似问题,要求ANN在大范围内近似一组输入-输出数据对,并在以前看不见的输入下预测系统的输出。本文提出的模型和学习方案已成功解决了该问题,并且通过这种方法,逼近变得更鲁棒,并且对噪声,扰动和低阶谐波具有自适应性。实际上,这种方法是将动态系统的大量外部数据压缩为ANN权重的有效方法。

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