Litcius/Paper detail

Traffic Congestion Prediction Based on Multivariate Modelling and Neural Networks Regressions

Walid Fahs, Fadlallah Chbib, Abbas Rammal, Rida Khatoun, Ali El Attar, Issam Zaytoun, Joel Hachem

2023Procedia Computer Science19 citationsDOIOpen Access PDF

Abstract

Smart traffic congestion reduction is actually a real challenge for big cities. Machine learning algorithms can play a significant role in traffic analysis, congestion prediction, and rerouting. In this paper, we propose a new prediction approach to reduce the traffic congestion problem by studying a scheme for predicting traffic flow information using four machine learning techniques: Feed Forward Neural Networks (FFNN), Radial Basis Function Neural Networks (RBFNN), simple linear regression model, and polynomial linear regression model. This prediction scheme is based on the following parameters: the average waiting time at entry and exit street pairs, the days of the week, hours of movement, holidays, and the rain rate. The results indicate that the FFNN technique overcomes the other techniques producing 97.6% prediction accuracy.

Topics & Concepts

Computer scienceArtificial neural networkMultivariate statisticsTraffic flow (computer networking)Traffic congestionRadial basis functionLinear regressionArtificial intelligenceNetwork congestionFeedforward neural networkReduction (mathematics)Scheme (mathematics)Support vector machineMachine learningRegression analysisRegressionData miningComputer networkStatisticsEngineeringMathematical analysisGeometryMathematicsNetwork packetTransport engineeringTraffic Prediction and Management TechniquesTraffic control and managementTransportation Planning and Optimization
Traffic Congestion Prediction Based on Multivariate Modelling and Neural Networks Regressions | Litcius