Journal of Advanced Transportation

Machine Learning Applications in Transportation Engineering


Publishing date
01 Feb 2021
Status
Published
Submission deadline
25 Sep 2020

Lead Editor

1University of Pardubice, Pardubice, Czech Republic

2University of Belgrade, Belgrade, Serbia


Machine Learning Applications in Transportation Engineering

Description

Machine learning, as a subset of the tools of artificial intelligence, is a broad area of computer science that provides machines and autonomous systems with the ability to learn and improve on previous experience. In other words, machine learning focuses on the development of computer programs that can autonomously access data and use it for learning and self-improvement. This core objective of machine learning can be achieved through many types of learning, including supervised learning, unsupervised learning, reinforcement learning, self-learning, feature learning, and association rules, among others. Various models that implement these machine learning types have been used and researched for machine learning systems. The best models are known to include architectures such as artificial neural networks, support vector machines, decision trees, evolutionary algorithms, Petri nets, and regression algorithms. It seems that machine learning is related to, and overlaps with, other fields of information theory, e.g., optimisation, statistics, and data mining.

The issues in transportation are becoming a challenge due to the increased globalisation of the economy, population growth, development of industrial production, safety concerns, and environmental degradation. Traditional transportation systems are pushed to the limit, and due to the ever-increasing traffic volume, urban development often reaches a bottleneck. With the current availability of computational power and massive progress in the theory of artificial intelligence, machine learning models seem to be a suitable tool to overcome the previously mentioned challenges. In some cases, such as logistic service planning, event and object detection from surveillance, video, or analysis of traveller’s behaviour, machine learning-based solutions have already proved themselves to have higher performance compared to conventional solutions. Other possible applications are still the object of research and development.

This Special Issue is focused on the reporting of new and innovative applications of machine learning methods to solve transportation problems. Submissions, which provide reliable, robust, and verified approaches, are especially welcome. Among others, researchers and academics, who intensely cooperate with industrial and transportation companies, are encouraged to publish their contributions. We welcome both original research and review articles.

Potential topics include but are not limited to the following:

  • Traffic analysis and control, including monitoring, public transportation management, etc.
  • Decision support for intelligent transportation systems
  • Modelling of aspects of transportation systems including user behaviour, travel demand, and infrastructure usage
  • Applications of modelling to traffic analysis, control, and optimisation
  • Smart city logistics

Articles

  • Special Issue
  • - Volume 2020
  • - Article ID 8847752
  • - Research Article

Machine Learning Approach to Quantity Management for Long-Term Sustainable Development of Dockless Public Bike: Case of Shenzhen in China

Qingfeng Zhou | Chun Janice Wong | Xian Su
  • Special Issue
  • - Volume 2020
  • - Article ID 8861942
  • - Research Article

Generative Adversarial Network-based Missing Data Handling and Remaining Useful Life Estimation for Smart Train Control and Monitoring Systems

Hyunsoo Lee | Seok-Youn Han | Kee-Jun Park
  • Special Issue
  • - Volume 2020
  • - Article ID 8849734
  • - Research Article

Train Type Identification at S&C

Martina Kratochvílová | Jan Podroužek | ... | Otto Plášek
  • Special Issue
  • - Volume 2020
  • - Article ID 8841810
  • - Research Article

Neural Network-Based Train Identification in Railway Switches and Crossings Using Accelerometer Data

Rostislav Krč | Jan Podroužek | ... | Otto Plášek
  • Special Issue
  • - Volume 2020
  • - Article ID 8848149
  • - Research Article

Prediction on Peak Values of Carbon Dioxide Emissions from the Chinese Transportation Industry Based on the SVR Model and Scenario Analysis

Changzheng Zhu | Meng Wang | Wenbo Du
  • Special Issue
  • - Volume 2020
  • - Article ID 8866876
  • - Research Article

Identifying Big Five Personality Traits through Controller Area Network Bus Data

Yameng Wang | Nan Zhao | ... | Tingshao Zhu
  • Special Issue
  • - Volume 2020
  • - Article ID 8859891
  • - Research Article

Development of Driver-Behavior Model Based onWOA-RBM Deep Learning Network

Junhui Liu | Yajuan Jia | Yaya Wang
Journal of Advanced Transportation
Publishing Collaboration
More info
Wiley Hindawi logo
 Journal metrics
See full report
Acceptance rate22%
Submission to final decision126 days
Acceptance to publication18 days
CiteScore3.900
Journal Citation Indicator0.480
Impact Factor2.3
 Submit Evaluate your manuscript with the free Manuscript Language Checker

We have begun to integrate the 200+ Hindawi journals into Wiley’s journal portfolio. You can find out more about how this benefits our journal communities on our FAQ.