Study on Characteristic of Fractional Master-Slave Neural Network

Yongming Jing, Huaying Dong, Guishu Liang
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引用次数: 6

Abstract

As a good artificial intelligent method, BP neural network has been applied in many engineering research questions. However, because of some inherent shortages, especially chaotic behaviors in the network learning, it is very difficult or impossible to apply the artificial neural network into complicated engineering tasks. to solve this problem, many methods had been proposed in the past time. One of the typical approaches is Master-Slave Neural Network (MSNN), whose master network is two Hop field networks, and the other slave network is a BP network, respectively. Although this new kind of method has more advantages than the BP network, such as a quick asymptotic convergence rate and the smallest network system errors, we can further enhance its performance. in this paper, based on the non-local property of fractional operator which is more approximate reality than traditional calculus, we extend the two Hop field networks in MSNN to the fractional net in which fractional equations describe its dynamical structure. after introducing the structure of Fractional Master-Slave Neural Network (FMSNN) and the concept of fractional calculus, we take a simulation for the FMSNN, MSNN and BP neural network respectively. the result shows this new kind of neural network has a quicker asymptotic convergence rate and a smaller network system error, which improves the performance of MSNN.
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分数阶主从神经网络特性研究
BP神经网络作为一种良好的人工智能方法,在许多工程研究问题中得到了应用。然而,由于其固有的不足,特别是网络学习中的混沌行为,使得人工神经网络很难或不可能应用于复杂的工程任务中。为了解决这个问题,过去人们提出了许多方法。其中一种典型的方法是主从神经网络(MSNN),它的主网络是两个Hop field网络,另一个从网络是一个BP网络。虽然这种新方法比BP网络具有更快的渐近收敛速度和最小的网络系统误差等优点,但我们可以进一步提高其性能。本文利用分数算子的非局域性,将MSNN中的两个Hop场网络推广到用分数方程描述其动态结构的分数网络。在介绍分数阶主从神经网络(FMSNN)的结构和分数阶微积分的概念后,分别对FMSNN、MSNN和BP神经网络进行了仿真。结果表明,这种新型神经网络具有更快的渐近收敛速度和更小的网络系统误差,提高了MSNN的性能。
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