NLOS Identification in WLANs Using Deep LSTM with CNN Features

NLOS Identification in WLANs Using Deep LSTM with CNN Features

Viet-Hung Nguyen;Minh-Tuan Nguyen;Jeongsik Choi;Yong-Hwa Kim;Nguyen, Viet-Hung;Nguyen, Minh-Tuan;Choi, Jeongsik;Kim, Yong-Hwa;
sensors 2018 Vol. 18 pp. 4057-
193
nguyen2018sensorsnlos

Abstract

Identifying channel states as line-of-sight or non-line-of-sight helps to optimize location-based services in wireless communications. The received signal strength identification and channel state information are used to estimate channel conditions for orthogonal frequency division multiplexing systems in indoor wireless local area networks. This paper proposes a joint convolutional neural network and recurrent neural network architecture to classify channel conditions. Convolutional neural networks extract the feature from frequency-domain characteristics of channel state information data and recurrent neural networks extract the feature from time-varying characteristics of received signal strength identification and channel state information between packet transmissions. The performance of the proposed methods is verified under indoor propagation environments. Experimental results show that the proposed method has a 2% improvement in classification performance over the conventional recurrent neural network model.

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112393
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