An Integrated Turning Movements Estimation to Petri Net Based Road Traffic Modeling
暂无分享,去创建一个
[1] Tutak,et al. Predicting Methane Concentration in Longwall Regions Using Artificial Neural Networks , 2019, International journal of environmental research and public health.
[2] Laila Benhlima,et al. Petri net extension for traffic road modelling , 2016, 2016 IEEE/ACS 13th International Conference of Computer Systems and Applications (AICCSA).
[3] Pengpeng Jiao,et al. Bi-Bayesian Combined Model for Two-Step Prediction of Dynamic Turning Movement Proportions at Intersections , 2014 .
[4] M C Schaefer. ESTIMATION OF INTERSECTION TURNING MOVEMENTS FROM APPROACH COUNTS , 1988 .
[5] Ludger Santen,et al. LETTER TO THE EDITOR: Towards a realistic microscopic description of highway traffic , 2000 .
[6] Aman Randhawa,et al. Exploring sustainability of smart development initiatives in India , 2017 .
[7] Bart De Schutter,et al. A mesoscopic integrated urban traffic flow-emission model , 2017 .
[8] Michel Ghosn,et al. Protocols for Collecting and Using Traffic Data in Bridge Design , 2008 .
[9] Kun Li,et al. Modeling of traffic flow of automated vehicles , 2004, IEEE Transactions on Intelligent Transportation Systems.
[10] Leo Breiman,et al. Bagging Predictors , 1996, Machine Learning.
[11] Liping Fu,et al. Real-time estimation of turning movement counts at signalized intersections using signal phase information , 2014 .
[12] Will Recker,et al. An Intersection Turning Movement Estimation Procedure Based on Path Flow Estimator , 2012 .
[13] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[14] Andy Liaw,et al. Classification and Regression by randomForest , 2007 .
[15] Umberto Spagnolini,et al. Wireless sensor networks for traffic management and road safety , 2012 .
[16] Gary A. Davis,et al. Real-time estimation of turning movement proportions from partial counts on urban networks , 1999 .
[17] Xiao Ma,et al. Data analytics in a privacy-concerned world , 2021, Journal of Business Research.
[18] J Fazio. GEOMETRIC APPROACH TO MODELING VEHICULAR SPEEDS THROUGH SIMPLE FREEWAY WEAVING SECTIONS , 1988 .
[19] Dong Ngoduy,et al. Instability of cooperative adaptive cruise control traffic flow: A macroscopic approach , 2013, Commun. Nonlinear Sci. Numer. Simul..
[20] Stéphane Galland,et al. Towards an Multilevel Agent-based Model for Traffic Simulation , 2017, ANT/SEIT.
[21] Ozan K. Tonguz,et al. Modeling urban traffic: A cellular automata approach , 2009, IEEE Communications Magazine.
[22] C. Daganzo. THE CELL TRANSMISSION MODEL.. , 1994 .
[23] Dihua Sun,et al. Microscopic car-following model for the traffic flow: the state of the art , 2012 .
[24] Marcie Goodman. Future Crimes: Inside the Digital Underground and the Battle for Our Connected World , 2001 .
[25] M. R. Matau. Nonlinear Multi-Input-Multi-Output Neural Network Control of DC Motor Drive with Field Weakening , 1998 .
[26] P. I. Richards. Shock Waves on the Highway , 1956 .
[27] Stefan Fritsch,et al. neuralnet: Training of Neural Networks , 2010, R J..
[28] M. Senthilkumar,et al. Use of artificial neural networks (ANNs) in colour measurement , 2010 .
[29] Ping Wang,et al. A novel conditional cell transmission model for oversaturated arterials , 2012 .
[30] M J Lighthill,et al. ON KINEMATIC WAVES.. , 1955 .
[31] Brendan Tran Morris,et al. Vision-Based Turning Movement Monitoring:Count, Speed & Waiting Time Estimation , 2016, IEEE Intelligent Transportation Systems Magazine.
[32] Keechoo Choi,et al. Real-Time Estimation of Lane-to-Lane Turning Flows at Isolated Signalized Junctions , 2015, IEEE Transactions on Intelligent Transportation Systems.
[33] Michael Schreckenberg,et al. A cellular automaton model for freeway traffic , 1992 .
[34] N. Güler,et al. A Study on Multiple Linear Regression Analysis , 2013 .
[35] Carlos F. Daganzo,et al. THE CELL TRANSMISSION MODEL, PART II: NETWORK TRAFFIC , 1995 .
[36] M J Lighthill,et al. On kinematic waves II. A theory of traffic flow on long crowded roads , 1955, Proceedings of the Royal Society of London. Series A. Mathematical and Physical Sciences.
[37] Amin Bemani,et al. Prediction of solubility of N-alkanes in supercritical CO2 using RBF-ANN and MLP-ANN , 2018 .
[38] A. Abbasi,et al. A methodological framework for assessment of ubiquitous cities using ANP and DEMATEL methods , 2017 .
[39] Isabel Demongodin,et al. Extension of Batches Petri Nets by Bi-parts Batch Places , 2014, ADECS @ Petri Nets.
[40] M. W Gardner,et al. Artificial neural networks (the multilayer perceptron)—a review of applications in the atmospheric sciences , 1998 .
[41] Joel J. P. C. Rodrigues,et al. IoT-Based Solid Waste Management Solutions: A Survey , 2019, J. Sens. Actuator Networks.
[42] Reza Ebrahimpour,et al. Mixture of MLP-experts for trend forecasting of time series: A case study of the Tehran stock exchange , 2011 .