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Application of Data Fusion Based on Genetic Algorithm and BP Neural Network in WSN

机译:基于遗传算法和BP神经网络的数据融合在WSN中的应用

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Energy-saving is one of the inevitable problems of the routing design in WSN, while Data Fusion technology is widely utilized in energy constraint WSN to reduce the amount of messages exchanged between sensor nodes. This paper proposes a new algorithm based on Integrated Genetic and BP Neural Network(IGBP), IGBP uses the global search capability of GA to remedy the deficiency of BP artificial neural network. First, IGBP generates the best individuals in different networks by GA algorithm. Then it chooses the most optimize individual measure by Mean Squared Error to construct the BP network which was supplied to train of the WSN. Using the optimize individual nodes as initialization value training the BP network, it will enhance the learning rates of convergence and avoid falling into the local minimums.The simulation results show that the IGBP algorithm has made great progress in balancing the consumption of energy so as to prolong the network lifetime.
机译:节能是WSN中路由设计的必然问题之一,而数据融合技术广泛用于能量约束WSN以减少传感器节点之间交换的消息量。本文提出了一种基于集成遗传和BP神经网络(IGBP)的新算法,IGBP使用GA的全球搜索能力来解决BP人工神经网络的缺陷。首先,IGBP通过GA算法生成不同网络中的最佳个人。然后,它选择通过平均平方误差来构造提供给WSN训练的BP网络的最优化的单个度量。使用优化单个节点作为初始化值培训BP网络,它将提高收敛的学习率,避免落入局部最低限度。仿真结果表明,IGBP算法在平衡能量消耗方面取得了很大进展延长网络寿命。

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