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arxiv: 1811.09346 · v1 · pith:6UIW3B6Rnew · submitted 2018-11-23 · 📡 eess.SP · cs.LG

Deep Neural Network Aided Scenario Identification in Wireless Multi-path Fading Channels

classification 📡 eess.SP cs.LG
keywords identificationwirelessbeenchannelsfadingmulti-pathscenarioaccuracy
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This letter illustrates our preliminary works in deep nerual network (DNN) for wireless communication scenario identification in wireless multi-path fading channels. In this letter, six kinds of channel scenarios referring to COST 207 channel model have been performed. 100% identification accuracy has been observed given signal-to-noise (SNR) over 20dB whereas a 88.4% average accuracy has been obtained where SNR ranged from 0dB to 40dB. The proposed method has tested under fast time-varying conditions, which were similar with real world wireless multi-path fading channels, enabling it to work feasibly in practical scenario identification.

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