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ML-Optimized Beam-Based Radio Coverage Processing In IEEE 802.11 WLAN Networks

The work shows that both solutions have very comparable processing times. Nevertheless, the MLR-based solution represents a more significant prediction accuracy enhancement than its alternative. The next figure shows an example of heatmap processing.

The NURBS based processing outputs the results in the next heatmap

The MLR-based dRRM processing outputs the heatmap in the next figure that is very comparable the the first one generated by NURB-based dRRM

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