粒子群优化算法在信号检测和盲提取中的应用

Ying Zhao, Junli Zheng
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引用次数: 42

摘要

粒子群优化算法(PSO)是一种进化计算技术,起源于对一个简化的社会系统的模拟。本文将二值和实值版本的粒子群算法分别应用于两种重要的信号处理范式:多用户检测(MUD)和源盲提取(BES)。该方法具有并行处理结构和相对可行的实现方法。仿真结果表明,PSO-MUD和PSO-BES都比传统方法有显著的性能提升。
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Particle swarm optimization algorithm in signal detection and blind extraction
The particle swarm optimization (PSO) algorithm, which originated as a simulation of a simplified social system, is an evolutionary computation technique. In this paper the binary and real-valued versions of PSO algorithm are exploited in two important signal processing paradigm: multiuser detection (MUD) and blind extraction of sources (BES), respectively. The novel approaches are effective and efficient with parallel processing structure and relatively feasible implementation. Simulation results validate either PSO-MUD or PSO-BES has a significant performance improvement over conventional methods.
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