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Group vertical handoff management in heterogeneous networks

机译:异构网络中的组垂直切换管理

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Traditional vertical handover schemes postulate that vertical handovers (VHOs) of users come on an individual basis. This enables users to know previously the decision already made by other users, and then the choice will be accordingly made. However, in case of group mobility, almost all VHO decisions of all users, in a given group (e.g., passengers on board a bus or a train equipped with smart phones or laptops), will be made at the same time. This concept is called group vertical handover (GVHO). When all VHO decisions of a large number of users are made at the same time, the system performance may degrade and network congestion may occur. In this paper, we propose two fully decentralized algorithms for network access selection, and that is based on the concept of congestion game to resolve the problem of network congestion in group mobility scenarios. Two learning algorithms, dubbed Sastry Algorithm and Q-Learning Algorithm, are envisioned. Each one of these algorithms helps mobile users in a group to reach the nash equilibrium in a stochastic environment. The nash equilibrium represents a fair and efficient solution according to which each mobile user is connected to a single network and has no intention to change his decision to improve his throughput. This shall help resolve the problem of network congestion caused by GVHO. Simulation results validate the proposed algorithms and show their efficiency in achieving convergence, even at a slower pace. To achieve fast convergence, we also propose a heuristic method inspired from simulated annealing and incorporated in a hybrid learning algorithm to speed up convergence time and maintain efficient solutions. The simulation results also show the adaptability of our hybrid algorithm with decreasing step size-simulated annealing (DSS-SA) for high mobility group scenario. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:传统的垂直切换方案假定用户的垂直切换(VHO)是基于个人的。这使用户能够事先知道其他用户已经做出的决定,然后做出相应的选择。但是,在团体移动的情况下,将同时做出给定组中所有用户的几乎所有VHO决定(例如,公共汽车或配备了智能手机或笔记本电脑的火车上的乘客)。此概念称为组垂直切换(GVHO)。当同时做出大量用户的所有VHO决定时,系统性能可能会下降,并且可能会发生网络拥塞。在本文中,我们提出了两种完全分散的网络访问选择算法,该算法基于拥塞博弈的概念来解决群体移动场景下的网络拥塞问题。设想了两种学习算法,分别称为Sastry算法和Q学习算法。这些算法中的每一个都可以帮助一群移动用户在随机环境中达到纳什均衡。纳什均衡表示一种公平有效的解决方案,根据该解决方案,每个移动用户都连接到单个网络,并且无意更改其决定以提高其吞吐量。这将有助于解决由GVHO引起的网络拥塞问题。仿真结果验证了所提出的算法,并显示了即使在较慢的速度下,它们在实现收敛方面的效率。为了实现快速收敛,我们还提出了一种启发式方法,该方法受模拟退火的启发,并结合到混合学习算法中,以加快收敛时间并保持有效的解决方案。仿真结果还表明,对于高迁移率群体场景,我们的混合算法具有减小步长的模拟退火(DSS-SA)的适应性。版权所有(c)2015 John Wiley&Sons,Ltd.

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