Application of neural networks to the adaptive routing control and traffic estimation of survivable wireless communication networks

W. Hortos
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引用次数: 1

Abstract

Problems of estimating and optimizing the behavior of wireless networks, based on the structure of a general stochastic model of the network's discrete-event dynamics, lead to mathematically correct, yet computationally intractable, backward recursive conditions defining the stochastic filter of network state and the optimal routing controls. The structure of the stochastic model of network dynamics, reflected in these recursive conditions, strongly parallels the recursive structure found in backpropagation (BP) neural networks. This structural resemblance has suggested the use of variations of the BP approach to compute solutions to the recursive mathematical conditions. Since the structure of the network model is not, in general, feedforward, three variations of recurrent BP algorithms are proposed to solve a partitioned version of the defining filter and optimality conditions. Foreknowledge of the random characteristics of a given network model further suggest which BP technique is appropriate to the application.
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神经网络在可生存无线通信网络自适应路由控制和流量估计中的应用
基于网络离散事件动力学的一般随机模型结构的无线网络行为估计和优化问题,导致数学上正确,但计算上难以处理的反向递归条件,定义了网络状态的随机滤波器和最优路由控制。反映在这些递归条件下的网络动力学随机模型的结构与反向传播(BP)神经网络中的递归结构非常相似。这种结构上的相似性建议使用BP方法的变体来计算递归数学条件的解。由于网络模型的结构通常不是前馈的,因此提出了三种递归BP算法的变体来解决定义滤波器和最优性条件的分区版本。对给定网络模型的随机特性的预知进一步表明了哪种BP技术适合于应用。
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