Browse content
Table of contents
Actions for selected chapters
- Full text access
- Book chapterAbstract only
Chapter 1 - Overview of Data-Driven Solutions
Yinhai Wang and Ziqiang Zeng
Pages 1-10 - Book chapterAbstract only
Chapter 2 - Data-Driven Energy Efficient Driving Control in Connected Vehicle Environment
Xuewei Qi, Guoyuan Wu, ... Matthew J. Barth
Pages 11-49 - Book chapterAbstract only
Chapter 3 - Machine Learning and Computer Vision-Enabled Traffic Sensing Data Analysis and Quality Enhancement
Guohui Zhang and Yinhai Wang
Pages 51-79 - Book chapterAbstract only
Chapter 4 - Data-Driven Approaches for Estimating Travel Time Reliability
Shu Yang and Yao-Jan Wu
Pages 81-110 - Book chapterAbstract only
Chapter 5 - Urban Travel Behavior Study Based on Data Fusion Model
Meng Li, Mingqiao Zou and Huiping Li
Pages 111-135 - Book chapterAbstract only
Chapter 6 - Urban Travel Mobility Exploring With Large-Scale Trajectory Data
Jinjun Tang
Pages 137-174 - Book chapterAbstract only
Chapter 7 - Public Transportation Big Data Mining and Analysis
Xiaolei Ma and Xi Chen
Pages 175-200 - Book chapterAbstract only
Chapter 8 - Simulation-Based Optimization for Network Modeling With Heterogeneous Data
Xiqun (Michael) Chen
Pages 201-225 - Book chapterAbstract only
Chapter 9 - Network Modelling and Resilience Analysis of Air Transportation: A Data-Driven, Open-Source Approach
Xiaoqian Sun and Sebastian Wandelt
Pages 227-245 - Book chapterAbstract only
Chapter 10 - Health Assessment of Electric Multiple Units
Tianyun Shi, Haiyan Shen, ... Ge Guo
Pages 247-263 - Book chapterNo access
Index
Pages 265-273
About the book
Description
Data-Driven Solutions to Transportation Problems explores the fundamental principle of analyzing different types of transportation-related data using methodologies such as the data fusion model, the big data mining approach, computer vision-enabled traffic sensing data analysis, and machine learning. The book examines the state-of-the-art in data-enabled methodologies, technologies and applications in transportation. Readers will learn how to solve problems relating to energy efficiency under connected vehicle environments, urban travel behavior, trajectory data-based travel pattern identification, public transportation analysis, traffic signal control efficiency, optimizing traffic networks network, and much more.
Data-Driven Solutions to Transportation Problems explores the fundamental principle of analyzing different types of transportation-related data using methodologies such as the data fusion model, the big data mining approach, computer vision-enabled traffic sensing data analysis, and machine learning. The book examines the state-of-the-art in data-enabled methodologies, technologies and applications in transportation. Readers will learn how to solve problems relating to energy efficiency under connected vehicle environments, urban travel behavior, trajectory data-based travel pattern identification, public transportation analysis, traffic signal control efficiency, optimizing traffic networks network, and much more.
Key Features
- Synthesizes the newest developments in data-driven transportation science
- Includes case studies and examples in each chapter that illustrate the application of methodologies and technologies employed
- Useful for both theoretical and technically-oriented researchers
- Synthesizes the newest developments in data-driven transportation science
- Includes case studies and examples in each chapter that illustrate the application of methodologies and technologies employed
- Useful for both theoretical and technically-oriented researchers
Details
ISBN
978-0-12-817026-7
Language
English
Published
2019
Copyright
Copyright © 2019 Elsevier Inc. All rights reserved.
Imprint
Elsevier