Monitoring and Control Methodologies for Real-time Traffic Management

Monitoring and Control Methodologies for Real-time Traffic Management

Author: Dung Le Doan

Publisher:

Published: 2000

Total Pages: 322

ISBN-13:

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The methodologies for the control process were tested computationally on a corridor network in a simulated environment. The results indicated that the control methodologies introduced in this dissertation can effectively improve the network performance under various scenarios of system disturbances and uncertainties.


Traffic Control Systems Handbook

Traffic Control Systems Handbook

Author:

Publisher:

Published: 1976

Total Pages: 670

ISBN-13:

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This handbook, which was developed in recognition of the need for the compilation and dissemination of information on advanced traffic control systems, presents the basic principles for the planning, design, and implementation of such systems for urban streets and freeways. The presentation concept and organization of this handbook is developed from the viewpoint of systems engineering. Traffic control studies are described, and traffic control and surveillance concepts are reviewed. Hardware components are outlined, and computer concepts, and communication concepts are stated. Local and central controllers are described, as well as display, television and driver information systems. Available systems technology and candidate system definition, evaluation and implementation are also covered. The management of traffic control systems is discussed.


Real-time Incident Traffic Management Methodologies

Real-time Incident Traffic Management Methodologies

Author: Omar Bou Rizk Sawaya

Publisher:

Published: 2000

Total Pages: 354

ISBN-13:

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Specifically, this dissertation (i) develops dynamic routing methodologies and real-time traffic signal optimization approaches; (ii) dentifies fundamental properties of dynamic and stochastic transportation networks under severe capacity reduction caused by unexpected incidents; and (iii) proposes and computationally tests solution algorithms.


Highway Traffic Monitoring and Data Quality

Highway Traffic Monitoring and Data Quality

Author: Michael Dalgleish

Publisher: Artech House

Published: 2008

Total Pages: 263

ISBN-13: 1580537162

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This unique resource gives you a hands-on understanding of the latest sensors, processors, and communication links for everything from vehicle counts to urban congestion measurement. Moreover, you learn statistical techniques for quantifying data accuracy and reducing uncertainty in both current system state assessments and future system state forecasts.


Artificial Intelligence for Traffic Monitoring and Management

Artificial Intelligence for Traffic Monitoring and Management

Author: Nikita Aggarwal

Publisher:

Published: 2021

Total Pages: 0

ISBN-13:

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In our research, we further develop our end to end system that processes video streams in real-time using deep learning, pattern recognition and many other methodologies to monitor and count pedestrians in road traffic environments. The developed AI system uses regular traffic cameras coming from the city of Los Angeles to control and analyze real-time traffic videos with greater focus on pedestrian traffic.There are a number of challenges presented when using these traffic cameras such as trajectory misgeneration and pedestrian misclassification. The objective is to fine-tune our pedestrian tracking and trajectory prediction to monitor pedestrian traffic and observe their travelling patterns. We also propose a transfer learning-based model to improve pedestrian recognition and expand its capability to identify more traffic-related objects. The system introduces a new lane detection feature to better manage traffic flow and gain more information of a vehicle's position and direction of movement.California State University, Los Angeles has partnered with leading industry clients the City of Los Angeles, the Los Angeles Department of Transportation (LADOT), California Department of Transportation (CalTrans), and Toyota Mobility Foundation to develop this highly advanced, modern system for real-time monitoring, tracking and counting of pedestrians.


Artificial Intelligence Applications to Traffic Engineering

Artificial Intelligence Applications to Traffic Engineering

Author: Maurizio Bielli

Publisher: VSP

Published: 1994-05

Total Pages: 340

ISBN-13: 9789067641715

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In recent years the applications of advanced information technologies in the field of transportation have affected both road infrastructures and vehicle technologies. The development of advanced transport telematics systems and the implementation of a new generation of technological options in the transport environment have had a significant impact on improved traffic management, efficiency and safety. This volume contains contributions from scientific and academic centres which have been active in this field of research and provides an overview of applications of AI technology in the field of traffic control and management. The topics covered are: -- current status of AI in transport -- AI applications in traffic engineering -- in-vehicle AI


Operations Research and Decision Aid Methodologies in Traffic and Transportation Management

Operations Research and Decision Aid Methodologies in Traffic and Transportation Management

Author: Martine Labbe

Publisher: Springer Science & Business Media

Published: 2013-06-29

Total Pages: 356

ISBN-13: 3662035146

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Every one relies on some kind of transportation system nearly every day. Go ing to work, shopping, dropping children at school and many other cultural or social activities imply leaving home, and using some form of transportation, which we expect tobe eflicient and reliable. Of course, efliciency and reliabil ity do not occur by chance, but require careful and often relatively complex planning by transportation system managers, both in the public and private sectors. It has long been recognized that mathematics, and, more specifically, op erations research is an important tool of this planning process. However, the range of skills required to cover both fields, even partially, is very large, and the opportunities to gather people with this very diverse expertise are too few. The organization of the NATO Advanced Studies Institute on "Opera tions Research and Decision Aid Methodologies in Traflic and Transportation Management" in March 1997 in Balatonfüred, Hungary, was therefore more than welcome and the group of people that gathered for a very studious two weeks on the shores of the beautiful lake Balaton did really enjoy the truly multidisciplinary and high scientific level of the meeting. The purpose of the present volume is to report, in a chronological order, the various questions that were considered by the lecturers and the' students at the institute. After a general introduction to the topic, the first week focused on issues related to traflic modeling, mostly in an urban context.


Dynamic Assignment, Surveillance and Control for Traffic Network with Uncertainties

Dynamic Assignment, Surveillance and Control for Traffic Network with Uncertainties

Author: Renxin Zhong

Publisher:

Published: 2011

Total Pages: 544

ISBN-13:

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For the surveillance part, this thesis concentrates on the development of a macroscopic traffic flow model to capture traffic dynamics on networks influenced by demand and supply uncertainties that are suitable for real-time traffic monitoring and control applications. To fulfill these objectives, a stochastic macroscopic dynamic traffic model, the stochastic cell transmission model (SCTM), which is based on the modified cell transmission model (MCTM) and the switching mode model (SMM), is proposed. The SCTM inherits the advantages of the MCTM and the SMM. However, there are several key differences between them, e.g. the MCTM and the SMM admit deterministic demand and stationary flow-density fundamental diagram while the SCTM accepts the random inflows (uncertain demand) as well as random parameters of the fundamental flow-density diagram (uncertain supply functions) with known means and variances of the freeway segment as exogenous inputs. Under the SCTM framework, the uncertain wavefronts are captured by probabilities of occurrence of operational modes which describe different congestion levels. The SCTM is calibrated and validated by several empirical studies. We also compare the performance of the SCTM with Monte Carlo Simulation of the MCTM (MCS-MCTM). The results confirm that the SCTM outperforms the MCS-MCTM. We apply the SCTM to estimate the queues and delays at signalized intersections and compare the results with some well-known delay and queue estimation formulas, e.g., Webster, Beckmann, McNeil, and Akcelik. The comparison results show a good consistency between the SCTM and these formulas. In addition, the SCTM describes the temporal behavior of the queue and delay distributions at signalized junctions with stochastic supply functions and (non-stationary) arrivals. In the traffic management part, optimal and robust decision making problems for managing uncertain network traffic are investigated. The proposed SCTM is applied to describe traffic dynamics on networks influenced by demand and supply uncertainties. The traffic management problems are formulated as stochastic dynamic programming problems. A closed form of optimal control law is derived in terms of a set of coupled generalized recursive Riccati equations. The robust decision making problem, which aims to act robustly with respect to the supply uncertainty and to attenuate the effect of demand uncertainty, can be recognized as an equivalent optimal decision making problem. Another implication of the proposed methodology is to make benefit from the inherent uncertainties, which is achieved by extending the conventional LQ optimal control theory to consider the indefinite terms of the state and input weighting matrices. The multiagent system (MAS) approach to access the traffic management for a general traffic network is discussed. The applications of the proposed methods to incident management are also highlighted. In conclusion, this thesis contributes to the literature on dynamic traffic assignment, stochastic dynamic traffic modeling and management, and to support further analysis and development in this area.


Road Traffic Modeling and Management

Road Traffic Modeling and Management

Author: Fouzi Harrou

Publisher: Elsevier

Published: 2021-10-05

Total Pages: 270

ISBN-13: 0128234334

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Road Traffic Modeling and Management: Using Statistical Monitoring and Deep Learning provides a framework for understanding and enhancing road traffic monitoring and management. The book examines commonly used traffic analysis methodologies as well the emerging methods that use deep learning methods. Other sections discuss how to understand statistical models and machine learning algorithms and how to apply them to traffic modeling, estimation, forecasting and traffic congestion monitoring. Providing both a theoretical framework along with practical technical solutions, this book is ideal for researchers and practitioners who want to improve the performance of intelligent transportation systems. Provides integrated, up-to-date and complete coverage of the key components for intelligent transportation systems: traffic modeling, forecasting, estimation and monitoring Uses methods based on video and time series data for traffic modeling and forecasting Includes case studies, key processes guidance and comparisons of different methodologies