A Novel Temporal Convolutional Network for NLOS Identification of UWB Signal

Peiqin Li, Yuhao Yan, Yifan Tan,Haowen Wang

2022 9th International Forum on Electrical Engineering and Automation (IFEEA)(2022)

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摘要
The accurate identification of Non-line of Sight (NLOS) propagation is an important premise to ensure the positioning accuracy in UWB indoor positioning system. In this paper, a network which takes the channel impulse response (CIR) as the input and combines the temporal convolutional network (TCN) and attention mechanism is proposed to identify the NLOS propagation. Experiments on the open source dataset show that the identification accuracy of the network reaches 89.80%, which is better than the existing mainstream long short-term memory neural network. Also, the accuracy and computational amount of the network can be balanced by adjustment of CIR length according to the needs in practical application, indicating that the network has a good application prospect.
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关键词
UWB, Channel Impulse Response, Temporal Convolutional Network, Attention Mechanism
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