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Neural Control of Chaos and Aplications

机译:混沌的神经控制及其应用

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摘要

Signal processing is an important topic in technological research today. In the areas of nonlinear dynamics search, the endeavor to control or order chaos is an issue that has received increasing attention over the last few years. Increasing interest in neural networks composed of simple processing elements (neurons) has led to widespread use of such networks to control dynamic systems learning. This paper presents backpropagation-based neural network architecture that can be used as a controller to stabilize unsteady periodic orbits. It also presents a neural network-based method for transferring the dynamics among attractors, leading to more efficient system control. The procedure can be applied to every point of the basin, no matter how far away from the attractor they are. Finally, this paper shows how two mixed chaotic signals can be controlled using a backpropagation neural network as a filter to separate and control both signals at the same time. The neural network provides more effective control, overcoming the problems that arise with control feedback methods. Control is more effective because it can be applied to the system at any point, even if it is moving away from the target state, which prevents waiting times. Also control can be applied even if there is little information about the system and remains stable longer even in the presence of random dynamic noise.
机译:信号处理是当今技术研究中的重要主题。在非线性动力学搜索领域,控制或有序混沌的研究是近几年来越来越受到关注的问题。人们对由简单处理元件(神经元)组成的神经网络越来越感兴趣,从而导致这种网络被广泛用于控制动态系统学习。本文提出了一种基于反向传播的神经网络架构,该架构可用作稳定非周期性周期轨道的控制器。它还提出了一种基于神经网络的方法,用于在吸引子之间传递动力学,从而实现更有效的系统控制。该程序可以应用于盆地的每个点,无论它们距吸引子有多远。最后,本文展示了如何使用反向传播神经网络作为滤波器来控制两个混合混沌信号,以同时分离和控制两个信号。神经网络提供了更有效的控制,克服了控制反馈方法中出现的问题。控制之所以更为有效,是因为它可以随时随地应用于系统,即使它偏离目标状态也可以避免等待时间。即使关于系统的信息很少,也可以应用控制,即使在存在随机动态噪声的情况下,也可以保持更长的稳定时间。

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