Program/Track A/A-1/Deep learning for autonomous vehicle traffic predictions in a multi-cloud vehicular network environment
Deep learning for autonomous vehicle traffic predictions in a multi-cloud vehicular network environment
Ali R. Abdellah, Ahmed Abdelmoaty, Malik Alsweity, Ammar Muthanna, Andrey Koucheryavy
15m
Autonomous vehicles (AVs) show promise for 5G and beyond
cellular networks in a variety of applications. AV utilization is rising
worldwide due to the increased awareness and widespread use of artificial
intelligence (AI) in numerous industries. AVs require predictive data
flows to optimize data transfer and reduce latency through better utilization
of transportation system capabilities, monitoring, management,
and control. This research presents a novel approach utilizing a Bidirectional
Long Short-Term Memory Model (BiLSTM) in deep learning
(DL) to accurately forecast the traffic rate of autonomous vehicles in a
Vehicular network environment that incorporates multi-cloud services.
A comparison is performed between the suggested method and the traditional
unidirectional LSTM for prediction accuracy as a function of
batch size. According to the simulations, the suggested BiLSTM model
outperforms the conventional LSTM model in terms of forecasting accuracy.
Additionally, the 8-batch size model outperforms others and yields
outstanding results.