Multi-task Learning-based Joint CSI Prediction and Predictive Transmitter Selection for Security
In mobile communication scenarios, the acquired channel state information (CSI) rapidly becomes outdated due to fast-changing channels. Opportunistic transmitter selection based on current CSI for secrecy improvement may be outdated during actual transmission, negating the diversity benefit of trans...
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Zusammenfassung: | In mobile communication scenarios, the acquired channel state information
(CSI) rapidly becomes outdated due to fast-changing channels. Opportunistic
transmitter selection based on current CSI for secrecy improvement may be
outdated during actual transmission, negating the diversity benefit of
transmitter selection. Motivated by this problem, we propose a joint CSI
prediction and predictive selection of the optimal transmitter strategy based
on historical CSI by exploiting the temporal correlation among CSIs. The
proposed solution utilizes the multi-task learning (MTL) framework by employing
a single Long Short-Term Memory (LSTM) network architecture that simultaneously
learns two tasks of predicting the CSI and selecting the optimal transmitter in
parallel instead of learning these tasks sequentially. The proposed LSTM
architecture outperforms convolutional neural network (CNN) based architecture
due to its superior ability to capture temporal features in the data. Compared
to the sequential task learning models, the MTL architecture provides superior
predicted secrecy performance for a large variation in the number of
transmitters and the speed of mobile nodes. It also offers significant
computational and memory efficiency, leading to a substantial saving in
computational time by around 40 percent. |
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DOI: | 10.48550/arxiv.2405.00345 |