Vehicle Probe Based Real-time Traffic Monitoring on Urban Roadway Networks

Vehicle Probe Based Real-time Traffic Monitoring on Urban Roadway Networks

Author: Yiheng Feng

Publisher:

Published: 2012

Total Pages:

ISBN-13:

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Travel time is a crucial variable both in traffic demand modeling and for measuring network performance. The objectives of this study focused on developing a methodology to characterize arterial travel time patterns by travel time distributions, proposing methods for estimating such distributions from static information and refining them with the use of historical GPS probe information, and given such time and location-based distribution, using realtime GPS probe information to produce accurate path travel times as well as monitor arterial traffic conditions. This project set the foundations for a realistic use of GPS probe travel time information and presented the proposed methodologies through two comprehensive case studies. The first study used the Next Generation SIMulation (NGSIM) Peachtree Street dataset, and the second utilized both real GPS and simulation data of Washington Avenue, in Minneapolis, MN.


Mobility Data-Driven Urban Traffic Monitoring

Mobility Data-Driven Urban Traffic Monitoring

Author: Zhidan Liu

Publisher: Springer Nature

Published: 2021-05-18

Total Pages: 75

ISBN-13: 9811622418

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This book introduces the concepts of mobility data and data-driven urban traffic monitoring. A typical framework of mobility data-based urban traffic monitoring is also presented, and it describes the processes of mobility data collection, data processing, traffic modelling, and some practical issues of applying the models for urban traffic monitoring. This book presents three novel mobility data-driven urban traffic monitoring approaches. First, to attack the challenge of mobility data sparsity, the authors propose a compressive sensing-based urban traffic monitoring approach. This solution mines the traffic correlation at the road network scale and exploits the compressive sensing theory to recover traffic conditions of the whole road network from sparse traffic samplings. Second, the authors have compared the traffic estimation performances between linear and nonlinear traffic correlation models and proposed a dynamical non-linear traffic correlation modelling-based urban traffic monitoring approach. To address the challenge of involved huge computation overheads, the approach adapts the traffic modelling and estimations tasks to Apache Spark, a popular parallel computing framework. Third, in addition to mobility data collected by the public transit systems, the authors present a crowdsensing-based urban traffic monitoring approach. The proposal exploits the lightweight mobility data collected from participatory bus riders to recover traffic statuses through careful data processing and analysis. Last but not the least, the book points out some future research directions, which can further improve the accuracy and efficiency of mobility data-driven urban traffic monitoring at large scale. This book targets researchers, computer scientists, and engineers, who are interested in the research areas of intelligent transportation systems (ITS), urban computing, big data analytic, and Internet of Things (IoT). Advanced level students studying these topics benefit from this book as well.


ITS Sensors and Architectures for Traffic Management and Connected Vehicles

ITS Sensors and Architectures for Traffic Management and Connected Vehicles

Author: Lawrence A. Klein

Publisher: CRC Press

Published: 2017-08-07

Total Pages: 574

ISBN-13: 1351800973

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An intelligent transportation system (ITS) offers considerable opportunities for increasing the safety, efficiency, and predictability of traffic flow and reducing vehicle emissions. Sensors (or detectors) enable the effective gathering of arterial and controlled-access highway information in support of automatic incident detection, active transportation and demand management, traffic-adaptive signal control, and ramp and freeway metering and dispatching of emergency response providers. As traffic flow sensors are integrated with big data sources such as connected and cooperative vehicles, and cell phones and other Bluetooth-enabled devices, more accurate and timely traffic flow information can be obtained. The book examines the roles of traffic management centers that serve cities, counties, and other regions, and the collocation issues that ensue when multiple agencies share the same space. It describes sensor applications and data requirements for several ITS strategies; sensor technologies; sensor installation, initialization, and field-testing procedures; and alternate sources of traffic flow data. The book addresses concerns related to the introduction of automated and connected vehicles, and the benefits that systems engineering and national ITS architectures in the US, Europe, Japan, and elsewhere bring to ITS. Sensor and data fusion benefits to traffic management are described, while the Bayesian and Dempster–Shafer approaches to data fusion are discussed in more detail. ITS Sensors and Architectures for Traffic Management and Connected Vehicles suits the needs of personnel in transportation institutes and highway agencies, and students in undergraduate or graduate transportation engineering courses.


Civil Engineering And Urban Planning - Proceedings Of The 5th International Conference On Civil Engineering And Urban Planning (Ceup2016)

Civil Engineering And Urban Planning - Proceedings Of The 5th International Conference On Civil Engineering And Urban Planning (Ceup2016)

Author: Ahmed Mebarki

Publisher: World Scientific

Published: 2017-06-02

Total Pages: 1378

ISBN-13: 9813225246

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The 5th International Conference on Civil Engineering and Urban Planning (CEUP2016) was held in Xi'an, China on August 23 - 26, 2016. CEUP2016 gathered outstanding scientists and researchers worldwide to exchange and discuss new findings in civil engineering and urban planning associated with transportation and environmental topics. The conference program committee is also greatly honored to have four renowned experts for taking time off to present their keynotes to the conference.The conference had received a total of 410 submissions, which after peer review by the Technical Program Committee, only 108 were selected to be included in this conference proceedings, which covers Architecture and Urban Planning; Civil Engineering and Transportation Engineering.


Information Propagation in Traffic Monitoring Sensor Networks

Information Propagation in Traffic Monitoring Sensor Networks

Author: Antonios Skordylis

Publisher:

Published: 2011

Total Pages:

ISBN-13:

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This work investigates the problem of efficiently monitoring and disseminating road traffic information in urban settings using fixed and mobile sensor networks. A key challenge in outdoor urban environments is that bandwidth is a scarce resource. It is thus vital to reduce the communication cost of forwarding traffic data from source sensor nodes through the wireless network to the traffic monitoring center. This thesis proposes two distinct approaches to reducing the communication cost of traffic monitoring: 1) in-network data reduction in the context of fixed sensor networks, and 2) efficient data acquisition and routing in the context of mobile sensor networks. In fixed sensor networks, nodes are deployed in fixed locations and are capable of monitoring local traffic at regular intervals. When users can tolerate long delays in traffic updates, we propose Fourier-based compression techniques that exploit spatio-temporal correlations in traffic data and reduce the cost of data delivery. When users require real-time traffic updates, we investigate the use of model-based approaches, in which sensor nodes use a model to predict traffic data, and only report data that deviates from the predicted values. Our evaluation of in-network reduction techniques for fixed sensor networks is based on a real traffic dataset derived from traffic monitoring sensors in the city of Cambridge, UK. In mobile sensor networks, we utilize traveling vehicles as nodes that can sense local traffic and forward it to the monitoring center. The key challenge in vehicular networks is to minimize the communication cost of traffic monitoring by jointly optimizing the processes of data acquisition and routing. Given user requirements for data freshness, we devise a traffic data acquisition scheme, and propose two routing algorithms, D-Greedy and D-MinCost, that carefully alternate between the multi- hop forwarding and data muling strategies. The proposed algorithms are compared with existing approaches in a simulation environment using realistic vehicular traces from the city of Zurich.


Computational Intelligence in Wireless Sensor Networks

Computational Intelligence in Wireless Sensor Networks

Author: Ajith Abraham

Publisher: Springer

Published: 2017-01-11

Total Pages: 220

ISBN-13: 3319477153

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This book emphasizes the increasingly important role that Computational Intelligence (CI) methods are playing in solving a myriad of entangled Wireless Sensor Networks (WSN) related problems. The book serves as a guide for surveying several state-of-the-art WSN scenarios in which CI approaches have been employed. The reader finds in this book how CI has contributed to solve a wide range of challenging problems, ranging from balancing the cost and accuracy of heterogeneous sensor deployments to recovering from real-time sensor failures to detecting attacks launched by malicious sensor nodes and enacting CI-based security schemes. Network managers, industry experts, academicians and practitioners alike (mostly in computer engineering, computer science or applied mathematics) benefit from th e spectrum of successful applications reported in this book. Senior undergraduate or graduate students may discover in this book some problems well suited for their own research endeavors.


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.


Spatial and Temporal Regularized Compressive Sensing for Urban Traffic Monitoring

Spatial and Temporal Regularized Compressive Sensing for Urban Traffic Monitoring

Author: Tian Lan

Publisher:

Published: 2017-01-26

Total Pages:

ISBN-13: 9781361040157

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This dissertation, "Spatial and Temporal Regularized Compressive Sensing for Urban Traffic Monitoring" by Tian, Lan, 蘭天, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Urban transport system plays an important role in the economic, social, and environmental dimensions of cities. However, transport system is still facing many challenges, such as the traffic congestion issue. With recent advancements in sensor technologies, urban traffic monitoring system is capable of collecting traffic information from new data sources to mitigate these challenges. Traffic information can be used for both real-time traffic management and long term transport planning. Nonetheless, data sparseness is a common issue among these traffic sensor data, which leads to inaccurate or even mistaken results for higher-level traffic data analysis. To solve the data sparseness issue of traffic sensors, real-world floating car data from Wuhan city is collected and examined in this research. By extracting link-based average traffic speed for road links at different time intervals, an incomplete traffic condition matrix is formulated with missing entries due to the data sparseness issue. The research question can be posed as how to interpolate the missing entries from known sample in the traffic condition matrix. The literature shows that the typical traffic interpolation models are vulnerable to high data loss. On the contrary, compressive sensing based interpolation models in the literature can still perform well under high data loss. However, current compressive sensing based traffic interpolation models are too general owing to their data-driven strategies. A spatial and temporal regularized compressive sensing model is proposed to fill in the research gap identified from the literature. The model framework is established primarily based on current compressive sensing interpolation models. Using non-negative matrix factorization, the traffic condition matrix can be decomposed into the spatial factor matrix and temporal factor matrix. The model framework further employs the spatial and temporal constraints on the two factor matrices respectively, such as the spatial correlation, network topology, and short-term stability. The proposed model is equivalent to an optimization problem that minimizes errors with the constraints from low rank and spatio-temporal properties. Stochastic gradient descent algorithm is provided to solve the minimization problem of the proposed model. The proposed model is evaluated using root mean square error with a 5-fold cross validation. The proposed model is competed with temporal KNN model, space-time KNN model, Kriging model, and baseline compressive sensing model under different data loss patterns and data loss ratios (e.g. from 50% to 90%). Results show that the proposed model performs generally better than these models under these scenarios. This research establishes a paradigm for regularized compressive sensing interpolation models. The regularization terms on the spatial factor matrix and temporal factor matrix can be substituted with alternative constraints from domain knowledge. With further extensions, the proposed model has potential to be applied in several future studies such as the traffic data compression and traffic prediction. DOI: 10.5353/th_b5689252 Subjects: Urban transportation Traffic monitoring


Advances in Mechanical Engineering and Technology

Advances in Mechanical Engineering and Technology

Author: Ranganath M. Singari

Publisher: Springer Nature

Published: 2022-03-22

Total Pages: 614

ISBN-13: 9811696136

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This book presents the select proceedings of the International Conference on Advanced Production and Industrial Engineering (ICAPIE) - 2021 held at Delhi Technological University, Delhi, during June 18–19, 2021. The book covers the recent advances and challenges in the area of production and industrial engineering. Various topics covered include artificial intelligence and expert systems, CAD/CAM Integration Technology, CAD/CAM, automation and robotics, computer-aided geometric design and simulation, construction machinery and equipment, design tools, cutting tool material and coatings, dynamic mechanical analysis, optimization and control, energy machinery and equipment, flexible manufacturing technology and system, fluid dynamics, bio-fuels, fuel cells, high-speed/precision machining, laser processing technology, logistics and supply chain management, machinability of materials, composite materials, material engineering, mechanical dynamics and its applications, mechanical power engineering, mechanical transmission theory and applications, non-traditional machining processes, operations management, precision manufacturing and measurement, precision manufacturing and measurement, reverse engineering and structural strength and robustness. This book is useful for various researcher mainly mechanical and allied engineering discipline.


Intelligent Sensors for Positioning, Tracking, Monitoring, Navigation and Smart Sensing in Smart Cities

Intelligent Sensors for Positioning, Tracking, Monitoring, Navigation and Smart Sensing in Smart Cities

Author: Tiancheng Li

Publisher: MDPI

Published: 2021-03-04

Total Pages: 266

ISBN-13: 3036501223

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The rapid development of advanced, arguably, intelligent sensors and their massive deployment provide a foundation for new paradigms to combat the challenges that arise in significant tasks such as positioning, tracking, navigation, and smart sensing in various environments. Relevant advances in artificial intelligence (AI) and machine learning (ML) are also finding rapid adoption by industry and fan the fire. Consequently, research on intelligent sensing systems and technologies has attracted considerable attention during the past decade, leading to a variety of effective applications related to intelligent transportation, autonomous vehicles, wearable computing, wireless sensor networks (WSN), and the internet of things (IoT). In particular, the sensors community has a great interest in novel, intelligent information fusion, and data mining methods coupling AI and ML for substantial performance enhancement, especially for the challenging scenarios that make traditional approaches inappropriate. This reprint book has collected 14 excellent papers that represent state-of-the-art achievements in the relevant topics and provides cutting-edge coverage of recent advances in sensor signal and data mining techniques, algorithms, and approaches, particularly applied for positioning, tracking, navigation, and smart sensing.