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首页> 外文期刊>Arabian Journal for Science and Engineering >A Hybrid Particle Swarm Optimization Technique for Adaptive Equalization
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A Hybrid Particle Swarm Optimization Technique for Adaptive Equalization

机译:自适应均衡的混合粒子群算法

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摘要

Adaptive equalization mitigates the distortions caused by radio channels. The least mean square (LMS) and the recursive least squares (RLS) algorithms are used for such purpose. Recently, particle swarm optimization (PSO) algorithms such as PSO using a linear time decreasing inertia weight (PSO-W) and the PSO using constant constriction factor (PSO-CCF) were shown to be very effective in handling systems having nonlinear behavior. However, these algorithms can be trapped in local minima. This paper presents a new PSO-based algorithm called the hybrid PSO (HPSO) that is capable to handle such problems. The HPSO includes the randomization of particles to improve the search capacity of the swarm, which in turn reduces the probability of being trapped in some local minima. It also adapts the inertia weight assignment to the particles. Extensive simulation results are conducted to confirm the consistency in the performance of the HPSO algorithm in different scenarios. The proposed HPSO secures the minimum steady-state error as compared to LMS and other PSO-based algorithms in both nonlinear and linear channels. Finally, the proposed HPSO algorithm shows a great improvements in Bit Error Rate and convergence rate.
机译:自适应均衡可减轻由无线电信道引起的失真。最小均方(LMS)和递归最小二乘(RLS)算法用于此目的。最近,已证明粒子群优化(PSO)算法,例如使用线性时间递减惯性权重(PSO-W)的PSO和使用恒定压缩因子(PSO-CCF)的PSO在处理具有非线性行为的系统中非常有效。但是,这些算法可能会陷入局部最小值。本文提出了一种新的基于PSO的算法,称为混合PSO(HPSO),它能够处理此类问题。 HPSO包括对粒子进行随机化以提高群的搜索能力,这反过来又减少了被困在某些局部最小值中的可能性。它还使惯性权重分配适应粒子。进行了广泛的仿真结果,以确认HPSO算法在不同情况下的性能一致性。与LMS和其他基于PSO的算法相比,在非线性和线性通道中,提出的HPSO可确保最小的稳态误差。最后,所提出的HPSO算法在误码率和收敛率上都有很大的提高。

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