Fig. 1 Considered system model for transmit power control.
Fig. 2 Considered DNN structure to derive optimal transmit power.
Fig. 3 Spectral efficiency vs. number of layers.
Fig. 4 Spectral efficiency vs. number of weights.
Fig. 5 Spectral efficiency vs. number of users.
Fig. 6 Computation time vs. number of users.
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