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首页> 外文期刊>IEEE Transactions on Vehicular Technology >A Hopfield neural-network-based dynamic channel allocation with handoff channel reservation control
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A Hopfield neural-network-based dynamic channel allocation with handoff channel reservation control

机译:具有切换信道预留控制的基于Hopfield神经网络的动态信道分配

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As channel allocation schemes become more complex and computationally demanding in cellular radio networks, alternative computational models that provide the means for faster processing time are becoming the topic of research interest. These computational models include knowledge-based algorithms, neural networks, and stochastic search techniques. This paper is concerned with the application of a Hopfield (1982) neural network (HNN) to dynamic channel allocation (DCA) and extends previous work that reports the performance of HNN in terms of new call blocking probability. We further model and examine the effect on performance of traffic mobility and the consequent intercell call handoff, which, under increasing load, can force call terminations with an adverse impact on the quality of service (QoS). To maintain the overall QoS, it is important that forced call terminations be kept to a minimum. For an HNN-based DCA, we have therefore modified the underlying model by formulating a new energy function to account for the overall channel allocation optimization, not only for new calls but also for handoff channel allocation resulting from traffic mobility. That is, both new call blocking and handoff call blocking probabilities are applied as a joint performance estimator. We refer to the enhanced model as HNN-DCA++. We have also considered a variation of the original technique based on a simple handoff priority scheme, here referred to as HNN-DCA+. The two neural DCA schemes together with the original model are evaluated under traffic mobility and their performance compared in terms of new-call blocking and handoff-call dropping probabilities. Results show that the HNN-DCA++ model performs favorably due to its embedded control for assisting handoff channel allocation.
机译:随着蜂窝无线网络中信道分配方案变得更加复杂和计算上的要求,提供更快处理时间的手段的替代计算模型正成为研究的主题。这些计算模型包括基于知识的算法,神经网络和随机搜索技术。本文关注Hopfield(1982)神经网络(HNN)在动态信道分配(DCA)中的应用,并扩展了以前的工作,该工作以新的呼叫阻塞概率来报告HNN的性能。我们进一步对流量移动性和随后的小区间呼叫切换的性能进行建模和检验,在增加的负载下,这可能会导致呼叫终止,从而对服务质量(QoS)产生不利影响。为了维持整体QoS,将强制呼叫终止保持在最低水平非常重要。因此,对于基于HNN的DCA,我们通过制定新的能量函数来修改基础模型,以解决总体信道分配优化问题,这不仅适用于新呼叫,还适用于业务量移动性导致的切换信道分配。也就是说,新的呼叫阻塞和切换呼叫阻塞概率都被用作联合性能估计器。我们将增强模型称为HNN-DCA ++。我们还考虑了基于简单切换优先级方案(此处称为HNN-DCA +)的原始技术的变体。在流量移动性下评估了两种神经网络DCA方案以及原始模型,并根据新呼叫阻塞和切换呼叫掉话概率对它们的性能进行了比较。结果表明,由于HNN-DCA ++模型具有用于辅助切换信道分配的嵌入式控制,因此其性能良好。

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