MODELLING SMART ROAD TRAFFIC CONGESTION CONTROL SYSTEM USING MACHINE LEARNING TECHNIQUES

By the dramatic growth of the population in cities requires the traffic systems to be designed efficiently and sustainably by taking full advantage of modern-day technology. Dynamic traffic flow is a significant issue which brings about a block of traffic movement. Thus, for tackling this issue, this paper aims to provide a mechanism to predict the traffic congestion with the help of Artificial Neural Networks (ANN) which shall control or minimize the blockage and result in the smoothening of road traffic. Proposed Modeling Smart Road Traffic Congestion Control using Artificial Back Propagation Neural Networks (MSR2C-ABPNN) for road traffic increase transparency, availability and efficiency in services offered to the citizens. In this paper, the prediction of congestion is operationalized by using the algorithm of backpropagation to train the neural network. The proposed system aims to provide a solution that will increase the comfort level of travellers to make intelligent and better transportation decision, and the neural network is a plausible approach to find traffic situations. Proposed MSR2C-ABPNN with Time series gives attractive results concerning MSE as compared to the fitting approach.

[1]  Yarin Gal,et al.  Uncertainty in Deep Learning , 2016 .

[2]  Steve B. Jiang,et al.  Nonlinear Systems Identification Using Deep Dynamic Neural Networks , 2016, ArXiv.

[3]  Wang Yi,et al.  Development of Intelligent Traffic Control System based on Internet of Things and FPGA Technology in PROTEUS , 2016 .

[4]  Amir F. Atiya,et al.  Prediction of MPEG-coded video source traffic using recurrent neural networks , 2003, IEEE Trans. Signal Process..

[5]  Patan Rizwan,et al.  Real-time smart traffic management system for smart cities by using Internet of Things and big data , 2016, 2016 International Conference on Emerging Technological Trends (ICETT).

[6]  Sujit H. Ramachandra,et al.  A novel dynamic traffic management system using on board diagnostics and Zigbee protocol , 2016, 2016 International Conference on Communication and Electronics Systems (ICCES).

[7]  Michael J Demetsky,et al.  SHORT-TERM TRAFFIC FLOW PREDICTION: NEURAL NETWORK APPROACH , 1994 .

[8]  Stefanos D. Kollias,et al.  An adaptable neural-network model for recursive nonlinear traffic prediction and modeling of MPEG video sources , 2003, IEEE Trans. Neural Networks.

[9]  Michael J Demetsky,et al.  TRAFFIC FLOW FORECASTING: COMPARISON OF MODELING APPROACHES , 1997 .

[10]  Danny Wee Kiat Ng,et al.  Development of IoT device for traffic management system , 2016, 2016 IEEE Student Conference on Research and Development (SCOReD).

[11]  Vallidevi Krishnamurthy,et al.  Internet of Vehicles (IoV) for traffic management , 2017, 2017 International Conference on Computer, Communication and Signal Processing (ICCCSP).

[12]  Sabah Tamimi,et al.  Link delay estimation using fuzzy logic , 2010, 2010 The 2nd International Conference on Computer and Automation Engineering (ICCAE).

[13]  Arafat J. Al-Dweik,et al.  IoT-based multifunctional Scalable real-time Enhanced Road Side Unit for Intelligent Transportation Systems , 2017, 2017 IEEE 30th Canadian Conference on Electrical and Computer Engineering (CCECE).

[14]  Umer Farooq,et al.  An adaptive approach: Smart traffic congestion control system , 2020, J. King Saud Univ. Comput. Inf. Sci..

[15]  Abdullahi Chowdhury,et al.  Priority based and secured traffic management system for emergency vehicle using IoT , 2016, 2016 International Conference on Engineering & MIS (ICEMIS).

[16]  Sheetal Vatari,et al.  Real time traffic management using Internet of Things , 2016, 2016 International Conference on Communication and Signal Processing (ICCSP).

[17]  Gerard Goggin Driving the Internet: Mobile Internets, Cars, and the Social , 2012, Future Internet.