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Embedded Parallel Distributed Artificial Intelligent Processors for Adaptive Beam Forming in WCDMA System

机译:用于WCDMA系统的自适应梁形成的嵌入式并联分布式人工智能处理器

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Genetic algorithms (GAs) are powerful search techniques that are used successfully to solve problems in many different disciplines. One application would be in WCDMA adaptive beam forming technique. Adaptive antenna has dynamic beam to cater for users' needs and provides better capacity for mobile communication but requires more intelligent and advance beam forming algorithm such as genetic algorithm. Compared to Standard GAs, Parallel Distributed GAs promise substantial gain in terms of convergence performance. In this paper, an embedded parallel and distributed genetic algorithm (EPDGA) with dynamic parameter setting on a multiprocessor system is proposed. The proposed scheme applies a master-slave architecture where the total active unit equipments (UE) are distributed to subpopulations (slaves) that evolve separately and exchange individuals occasionally. The power usage at Node B is used as fitness function to compare the performance of EPDGA and standard GA. Simulation results show that EPDGA converges faster and is better in adaptive antenna beam forming in the aspect of power usage at Node B as compared to standard GA.
机译:遗传算法(气体)是强大的搜索技术,用于成功用于解决许多不同学科的问题。一个应用程序将是WCDMA自适应波束形成技术。自适应天线具有动态光束,以满足用户需求并提供更好的移动通信容量,但需要更智能化和预先形成诸如遗传算法的横梁形成算法。与标准气体相比,并联分布式气体承诺在收敛性能方面具有大量增益。本文提出了一种嵌入的并行和分布式遗传算法(EPDGA),具有多处理器系统上的动态参数设置。所提出的方案应用主从架构,其中总有源单元设备(UE)分布到偶数和交换个体的亚步骤(从奴隶)。节点B处的电源用途用作健身功能,以比较EPDGA和标准GA的性能。仿真结果表明,与标准GA相比,EPDGA在节点B的功率使用的方面中形成更快,并且在适应性天线波束中形成更好。

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