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Throughput Optimization in Multi-user Cognitive Radio Network using Swarm Intelligence Techniques

机译:基于群体智能技术的多用户认知无线电网络吞吐量优化

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Throughput efficiency holds great importance in the present scenario of the cognitive radio system. In this paper, optimization of throughput in multi-user single relay cognitive radio system has been performed. In a multi-user cognitive radio network, collisions occur between data packets of multiple secondary users, which cause a reduction in the throughput of the network to a great extent. In this paper, a new analytical model for throughput of the multi-user cognitive radio network in terms of the probability of collision has been presented. The model is convenient for the formulation of the optimization problem in such a way that an optimal value of throughput can be achieved by keeping the probability of collision below the allowable limit. This leads to an enhancement in throughput as well as maintains system reliability in the cognitive radio network. Optimal power allocation scheme is used to allocate power among secondary users which makes the system energy efficient. The optimization of the throughput of the system is done using swarm intelligence-based optimization techniques like Particle Swarm Optimization (PSO), Human behavior based Particle Swarm Optimization (HPSO), Particle Swarm Optimization with Aging Leader and Challengers (ALCPSO) and Whale Optimization Algorithm (WOA). Simulation results illustrate that the system optimized with WOA have better throughput than that of the aforementioned optimization algorithms. Moreover, a comparative analysis of the achievable throughput in the multi-user cognitive radio system with the proposed scheme and that with the equal power allocation scheme is presented. The analysis reveals that the proposed scheme makes the system more efficient in terms of throughput than equal power allocation scheme.
机译:在认知无线电系统的当前情况下,吞吐量效率非常重要。本文对多用户单中继认知无线电系统的吞吐量进行了优化。在多用户认知无线电网络中,多个次级用户的数据分组之间发生冲突,这在很大程度上导致网络吞吐量的降低。本文提出了一种新的基于碰撞概率的多用户认知无线电网络吞吐量分析模型。该模型便于以如下方式提出优化问题:通过将碰撞概率保持在允许极限以下来获得吞吐量的最佳值。这导致吞吐量的增加以及在认知无线电网络中维持系统可靠性。最佳功率分配方案用于在二级用户之间分配功率,从而提高了系统的能效。使用基于群体智能的优化技术(例如粒子群优化(PSO),基于人类行为的粒子群优化(HPSO),具有衰老领导者和挑战者的粒子群优化(ALCPSO)和鲸鱼优化算法)来完成系统吞吐量的优化。 (WOA)。仿真结果表明,与上述优化算法相比,用WOA优化的系统具有更好的吞吐量。此外,提出了对多用户认知无线电系统中所能达到的吞吐量的比较分析,并提出了方案和等功率分配方案。分析表明,所提出的方案使系统在吞吐量方面比同等功率分配方案更有效。

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