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BP Neural Network Data Fusion algorithm optimized based on adaptive fuzzy particle swarm optimization*

机译:基于自适应模糊粒子群算法的BP神经网络数据融合算法*

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Wireless sensor networks (WSN) are currently the subject of scientific research in the world. With the wireless sensor network, it can collect the changes of various monitoring targets to meet the objective requirements of data transmission, signal analysis and signal processing. In order to improve the energy efficiency of the wireless sensor network and prolong the network lifetime, this paper uses fuzzy control to update the particle position in the algorithm, and proposes a BP Neural Network Data Fusion algorithm optimized based on adaptive fuzzy particle swarm optimization(AFPSOBP) algorithm. The simulation results show that compared with BP Neural Network Data Fusion algorithm optimized by Genetic algorithm and Particle Swarm (GAPSOBP), it can further reduce network traffic, save node energy and prolong network lifetime.
机译:无线传感器网络(WSN)当前是世界范围内科学研究的主题。借助无线传感器网络,它可以收集各种监控目标的变化,以满足数据传输,信号分析和信号处理的客观要求。为了提高无线传感器网络的能效并延长网络寿命,本文采用模糊控制更新算法中的粒子位置,并提出了一种基于自适应模糊粒子群优化的BP神经网络数据融合算法( AFPSOBP)算法。仿真结果表明,与遗传算法和粒子群算法优化的BP神经网络数据融合算法相比,该算法可以进一步减少网络流量,节省节点能量,延长网络寿命。

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