会议专题

Research on RFID Indoor Positioning Algorithm Based on GRNN Neural Network

  The traditional positioning algorithm based on RSSI(Received Signal Strength Indicator)has some problem such as inaccurate ranging,low positioning accuracy and vulnerability to environmental impact.This is because of occlusion,multipath effect and some other factors in indoor positioning using wireless sensor network technology.To solve this problem,a localization algorithm based on the generalized regression neural network(GRNN)is proposed to avoid the negative effect of the parameter n in the prediction propagation model.The algorithm directly establishes the mapping relationship between the RSSI values received by the reference nodes and their position coordinates in the training stage.In the prediction stage,the RSSI values of the nodes to be located are collected and use the learned GRNN neural network localize the location nodes.The simulation results of MATLAB and RFID show that the location algorithm based on GRNN neural network can provide better location results than the path loss model algorithm and the location algorithm based on BP neural network.

RFID Indoor positioning RSSI Path loss model BP neural network GRNN neural network

Qian Qiu Zhitao Dai

Beijing Key Lab of Intelligent Telecommunication Software and Multimedia,Beijing University of Posts and Telecommunications,Beijing,China

国际会议

2019 2nd International Conference on Mechanical, Electronic and Engineering Technology (MEET 2019) 2019年第二届机电与工程技术国际会议

西安

英文

453-459

2019-01-19(万方平台首次上网日期,不代表论文的发表时间)