基于PSO-GRNN神经网络的Zigbee节点定位算法研究

Ziming Zou, Fu‐mian Li, Xinxin Qiao
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引用次数: 1

摘要

传统无线信号传播模型的参数一般是通过拟合或直接根据经验获得,且受复杂环境、多径效应等因素影响,定位精度不高。鉴于此,提出了一种新的粒子群优化-广义回归神经网络(PSO-GRNN)节点定位算法。将每个参考点接收到的RSSI作为网络的输入,将其位置坐标作为网络的输出,构建GRNN,通过线性减小惯性权值的PSO算法对神经网络进行训练,并循环最佳Spread,在调整该参数时避免人为因素的干扰,最后将训练好的模型利用预测点定位。通过MATLAB仿真和Zigbee实验验证,与未优化的GRNN模型和BP神经网络模型相比,该算法在节点定位方面具有更高的定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Node Location Algorithm of Zigbee Based on PSO-GRNN Neural Network
The parameters of the traditional wireless signal propagation model are generally obtained by fitting or directly based on experience, and are affected by factors such as complex environment and multipath effect, which makes the positioning accuracy is not high. In view of this, a new node location algorithm of Particle Swarm Optimization-Generalized Regression Neural Network (PSO-GRNN) was presented. The RSSI received at each reference point is taken as the input of the network, the position coordinates of which are used as the output of the network to construct the GRNN, training the neural network by PSO algorithm with linear decreasing inertia weight, and the best Spread is cycled, avoid interference from human factors when adjusting this parameter, finally the trained model using the forecast point positioning. Simulation verified by MATLAB and Zigbee experiments, compared with the non-optimized GRNN model and BP neural network model, this algorithm has higher positioning accuracy in node localization.
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