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Biological Swarm Intelligence Based Opportunistic Resource Allocation for Wireless Ad Hoc Networks

机译:无线自组织网络中基于生物群智能的机会资源分配

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Particle swarm optimization (PSO) is one of the most important biological swarm intelligence paradigms. However, the standard PSO algorithm can easily get trapped in the local optima when solving complex multimodal problems. In this paper, an improved adaptive particle swarm optimization (IAPSO) is presented. Based on IAPSO, a joint opportunistic power and rate allocation (JOPRA) algorithm is proposed to maximize the sum of source utilities while minimize power allocation for all links in wireless ad hoc networks. It is shown that the proposed JOPRA algorithm can converge fast to the optimum and reach larger total data rate and utility while less total power is consumed by comparison with the original APSO. This thanks to the dynamic change of the maximum movement velocity of the particles, the use of the modified replacement procedure in constraint handling, and the consideration of the state of the optimization run and the population diversity in stopping criteria. Numerical simulations further verify that our algorithm with the IAPSO outperforms that with the original APSO.
机译:粒子群优化(PSO)是最重要的生物群智能范例之一。但是,在解决复杂的多峰问题时,标准PSO算法很容易陷入局部最优状态。本文提出了一种改进的自适应粒子群算法(IAPSO)。基于IAPSO,提出了一种联合机会功率和速率分配(JOPRA)算法,以最大化源效用的总和,同时最小化无线自组织网络中所有链路的功率分配。结果表明,与原始的APSO相比,所提出的JOPRA算法可以快速收敛到最优,并达到更高的总数据速率和效用,而消耗的总功率却更少。这要归功于粒子最大运动速度的动态变化,在约束处理中使用修改后的替换程序以及在停止标准中考虑了优化运行的状态和总体多样性。数值模拟进一步验证了我们的IAPSO算法优于原始APSO算法。

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