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首页> 外文期刊>Mobile Computing, IEEE Transactions on >Fuzzy Q-Learning Admission Control for WCDMA/WLAN Heterogeneous Networks with Multimedia Traffic
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Fuzzy Q-Learning Admission Control for WCDMA/WLAN Heterogeneous Networks with Multimedia Traffic

机译:具有多媒体流量的WCDMA / WLAN异构网络的模糊Q学习接纳控制

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摘要

In this paper, admission control by a fuzzy Q-learning technique is proposed for WCDMA/WLAN heterogeneous networks with multimedia traffic. The fuzzy Q-learning admission control (FQAC) system is composed of a neural-fuzzy inference system (NFIS) admissibility estimator, an NFIS dwelling estimator, and a decision maker. The NFIS admissibility estimator takes essential system measures into account to judge how each reachable subnetwork can support the admission request's required QoS and then output admissibility costs. The NFIS dwelling estimator considers the Doppler shift and the power strength of the requested user to assess his/her dwell time duration in each reachable subnetwork and then output dwelling costs. Also, in order to minimize the expected maximal cost of the user's admission request, a minimax theorem is applied in the decision maker to determine the most suitable subnetwork for the user request or to reject. Simulation results show that FQAC can always maintain the system QoS requirement up to a traffic intensity of 1.1 because it can appropriately admit or reject the users' admission requests. Also, the FQAC can achieve lower blocking probabilities than conventional JSAC proposed in [20] and can significantly reduce the handoff rate by 15-20 percent.
机译:本文针对具有多媒体业务量的WCDMA / WLAN异构网络,提出了一种基于模糊Q学习技术的准入控制方法。模糊Q学习准入控制(FQAC)系统由神经模糊推理系统(NFIS)可允许性估计器,NFIS居住估计器和决策者组成。 NFIS可允许性估计器考虑了基本的系统措施,以判断每个可访问子网如何支持准入请求的所需QoS,然后输出可允许性成本。 NFIS居住估计器会考虑多普勒频移和被请求用户的力量,以评估其在每个可到达子网中的居住持续时间,然后输出居住成本。同样,为了最小化用户准入请求的预期最大成本,在决策者中应用最小最大定理来确定最适合用户请求或拒绝的子网。仿真结果表明,由于FQAC可以适当地接纳或拒绝用户的接纳请求,因此它始终可以将系统QoS要求维持在1.1的通信强度。而且,与[20]中提出的传统JSAC相比,FQAC可以实现更低的阻塞概率,并且可以显着降低15-20%的切换率。

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