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Cellular neural network approach to a class of communication problems

机译:细胞神经网络方法解决一类交流问题

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In this paper we discuss the design of a cellular neural network (CNN) to solve a class of optimization problems of importance for communication networks. The CNN optimization capabilities are exploited to implement an efficient cell scheduling algorithm in a fast packet switching fabric. The neural-based switching fabric maximizes the cell throughput and, at the same time, it is able to meet a variety of quality of service (QoS) requirements by optimizing a suitable function of the switching delay and priority of the cells. We also show that the CNN approach has advantages with respect to that based on Hopfield neural networks (HNNs) to solve the considered class of optimization problems. In particular, we exploit existing techniques to design CNNs with a prescribed set of stable binary equilibrium points as a basic tool to suppress spurious responses and, hence to optimize the neural switching fabric performance.
机译:在本文中,我们讨论了细胞神经网络(CNN)的设计,以解决一类对通信网络至关重要的优化问题。利用CNN优化功能,可以在快速分组交换结构中实现高效的小区调度算法。基于神经的交换结构最大程度地提高了信元吞吐量,同时,通过优化交换延迟和信元优先级的适当功能,它能够满足各种服务质量(QoS)要求。我们还表明,与基于Hopfield神经网络(HNN)的CNN方法相比,CNN方法具有优势,可以解决考虑的一类优化问题。特别是,我们利用现有技术设计具有一组预定的稳定二进制平衡点的CNN,以此作为抑制寄生响应并因此优化神经交换结构性能的基本工具。

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