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Title Machine Learning Approaches For Efficient Traffic Flow In Smart Cities
ID_Doc 35912
Authors Kulkarni A.; Anitha P.; Valluri J.Y.; Sunena Rose M.V.; Hemavathi U.; Hussein O.M.
Year 2024
Published 3rd Odisha International Conference on Electrical Power Engineering, Communication and Computing Technology, ODICON 2024
DOI http://dx.doi.org/10.1109/ODICON62106.2024.10797496
Abstract These days, a lot of towns struggle with traffic jams during peak hours, which increment contamination, commotion, and feelings of anxiety for the general population. Because neural networks (NN) and machine learning (ML) techniques can handle large numbers of parameters in massive amounts of data and dynamic behaviour over time, they are replacing analytical and statistical methods in the solving of real-world problems. This research presents a convergence of machine-learning (ML) and deep-learning (DL) calculations for traffic stream prediction; this paves the way for flexible traffic signals, which can be implemented through the use of a calculation that adjusts the timing in accordance with the anticipated traffic flow or by controlling traffic signals to some degree. The proposed ML and DL models are constructed, validated, and tested using two publicly accessible datasets. The first depicts the total number of cars subjected to checks using various sensors at six junctions over the course of 56 days. In this research, ML and DL models are created using data from four of the six junctions. The excellent performance metrics obtained by all ML and DL computations suggest that their application to intelligent traffic light management is feasible. © 2024 IEEE.
Author Keywords artificial intelligence; deep-learning; intelligent transportation system; ITS; machine learning; recurrent neural network; regression algorithms; smart city; traffic flow prediction; traffic light


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