TY - JOUR
T1 - Secure Artificial Intelligence for Precise Vehicle Behavior Prediction in 6G Consumer Electronics
AU - Haider, Sami Ahmed
AU - Ramesh, Janjhyam Venkata Naga
AU - Raina, Vikas
AU - Maaliw, Renato R.
AU - Soni, Mukesh
AU - Nasurova, Kamolakhon
AU - Patni, Jagdish Chandra
AU - Singh, Pavitar Parkash
PY - 2024/2
Y1 - 2024/2
N2 - In the context of Secure Artificial Intelligence for 6G Consumer Electronics, accurately predicting vehicle behavior in dynamic traffic scenarios is a significant challenge in intelligent transportation. To avoid sending all raw data to a centralized cloud server, this study presents an artificial intelligence (AI) based distributed machine learning framework (AICEML) that can run on local edge devices. This method protects user privacy while minimizing transmission and processing delays. Accurate predictions are maintained despite the presence of many cars because to AICEML's use of the model on edge devices, which incorporates edge-enhanced attention and graph convolutional neural network features to swiftly collect and transmit vehicle interaction information. Each edge device can adapt its neural network type and scale based on its computing capabilities, accommodating various application scenarios. Experimental results using the NGGSIM dataset demonstrate AICEML's superiority, achieving precision, recall, and F1 scores of 0.9391, 0.9557, and 0.9473, respectively. With a 1-second prediction horizon, it maintains 91.21% accuracy and low time complexity even as the number of vehicles increases. This framework holds promise for enhancing intelligent transportation systems in the 6G era while prioritizing security and efficiency.
AB - In the context of Secure Artificial Intelligence for 6G Consumer Electronics, accurately predicting vehicle behavior in dynamic traffic scenarios is a significant challenge in intelligent transportation. To avoid sending all raw data to a centralized cloud server, this study presents an artificial intelligence (AI) based distributed machine learning framework (AICEML) that can run on local edge devices. This method protects user privacy while minimizing transmission and processing delays. Accurate predictions are maintained despite the presence of many cars because to AICEML's use of the model on edge devices, which incorporates edge-enhanced attention and graph convolutional neural network features to swiftly collect and transmit vehicle interaction information. Each edge device can adapt its neural network type and scale based on its computing capabilities, accommodating various application scenarios. Experimental results using the NGGSIM dataset demonstrate AICEML's superiority, achieving precision, recall, and F1 scores of 0.9391, 0.9557, and 0.9473, respectively. With a 1-second prediction horizon, it maintains 91.21% accuracy and low time complexity even as the number of vehicles increases. This framework holds promise for enhancing intelligent transportation systems in the 6G era while prioritizing security and efficiency.
KW - Behavioral sciences
KW - Servers
KW - Data models
KW - Training
KW - Computational modeling
KW - Hidden Markov models
KW - Neural networks
KW - Secure artificial intelligence
KW - 6G consumer electronics
KW - vehicle behavior prediction
KW - edge computing
KW - communication efficiency
UR - http://www.scopus.com/inward/record.url?scp=85187368172&partnerID=8YFLogxK
U2 - 10.1109/TCE.2024.3369399
DO - 10.1109/TCE.2024.3369399
M3 - Article
SN - 0098-3063
VL - 70
SP - 3898
EP - 3905
JO - IEEE Transactions on Consumer Electronics
JF - IEEE Transactions on Consumer Electronics
IS - 1
ER -