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Beampatten optimization in distributed beamforming using multiobjective and metaheuristic method

机译:多目标元启发式方法在分布式波束成形中优化波束成形

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Distributed beamforming is a communication method in wireless sensor networks (WSNs) where the sensor nodes collaboratively create a virtual antenna to direct their radiating power towards the direction of an intended destination. This method could increase the transmission range of the network and save the sensors' energy. However, due to the random locations of the sensor nodes, the beampattern for a finite number of nodes usually has asymmetrical sidelobes with high sidelobe levels. Higher sidelobe levels cause undesirable interferences at directions other than the intended destination. Conventional sidelobe reduction methods proposed for centralized antenna array cannot be used for distributed beamforming networks. This paper proposes a distributed network compliant, multi-objective weight optimization technique to produce a beampattern with lower sidelobe levels, higher directivity and minimal energy. Exhaustive search for the most favorable weight solutions is time-consuming when the number of sensor nodes is large. Therefore, this paper analyses the use of nature-inspired metaheuristic algorithms to solve for the best weight values at each sensor node. Three algorithms were analysed, namely, genetic algorithm (GA), particle swarm optimization (PSO) and gravitational search algorithm (GSA). Simulation results show that the proposed multi-objective weight optimization using nature inspired algorithm can provide improved beampattern with lower sidelobes, higher directivity and better energy savings.
机译:分布式波束成形是无线传感器网络(WSN)中的一种通信方法,在该方法中,传感器节点共同创建虚拟天线,以将其辐射功率引向目标目的地。这种方法可以扩大网络的传输范围,并节省传感器的能量。但是,由于传感器节点的随机位置,有限数量节点的波束图通常具有不对称的旁瓣,且旁瓣水平较高。较高的旁瓣电平会在预期目标以外的方向上引起不良干扰。针对集中式天线阵列提出的常规旁瓣减小方法不能用于分布式波束成形网络。本文提出了一种符合分布式网络的多目标权重优化技术,以产生具有较低旁瓣电平,较高方向性和最小能量的波束​​方向图。当传感器节点的数量很大时,穷举搜索最有利的权重解决方案将很耗时。因此,本文分析了自然启发式元启发式算法的使用,以求出每个传感器节点的最佳权重值。分析了三种算法,即遗传算法(GA),粒子群优化算法(PSO)和引力搜索算法(GSA)。仿真结果表明,所提出的利用自然启发算法的多目标权重优化算法可以提供改进的波束图,具有较低的旁瓣,较高的方向性和更好的节能效果。

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