Skip to main content

Intelligent Urban Mobility

Decision Support Systems for Sustainable Transportation

  • 1st Edition - June 24, 2025
  • Latest edition
  • Editor: Muhammet Deveci
  • Language: English

Intelligent Urban Mobility: Decision Support Systems for Sustainable Transportation explores the role of technology in enabling greener, more accessible transportation in cities… Read more

World Book Day celebration

Where learning shapes lives

Up to 25% off trusted resources that support research, study, and discovery.

Description

Intelligent Urban Mobility: Decision Support Systems for Sustainable Transportation explores the role of technology in enabling greener, more accessible transportation in cities worldwide. This book provides insights into leveraging decision support systems to drive positive change by focusing on applied soft computing techniques, artificial intelligence, and algorithms for fuzzy systems. Researchers and professionals will find actionable information on mitigating congestion and emissions through sustainable mobility initiatives, which bridges the gap between theory and real-world practice.

The book also offers technical guidance and expert perspectives on the application of decision support systems to evaluate and optimize planning for sustainable transit options. The book highlights innovative models and frameworks for analyzing mobility options and planning sustainable transport systems. It is an essential resource for researchers, graduate students, and professionals in transportation, urban planning, civil engineering, and decision sciences who aim to redesign city transportation to reduce environmental impact and carbon emissions.

Key features

  • Provides an overview of the most recent advances in the development of decision support systems for the implementation of sustainable urban mobility
  • Presents various urban mobility applications using artificial intelligence, applied soft computing techniques, and other decision support systems
  • Offers solutions for the design, development, and integration of sustainable urban transport options

Readership

Researchers and graduate students in transportation, urban planning, civil engineering, decision sciences, and sustainability

Table of contents

1. Sustainable Urban Mobility Plans (SUMPs) – An Overview

2. Leveraging Meta-Heuristics and Deep Learning for Decision Support Systems in Sustainable Transport Applications

3. Consensus Reaching Process for Intelligent Vehicle Group Decision-Making in Smart Transportation System

4. Shared Electric Vehicle Usage Risk Prioritization Based on Integrated FMEA and CRADIS Methods with T-Spherical Uncertain Linguistic Information

5. Safety Risk Assessment of Autonomous Vehicles for Sustainable Transportation

6. Developing a GIS-Supported SVN-WENSLO-ARLON Hybrid Method for Bicycle Pooling Location Selection: A Case Study in Turkiye

7. Identifying Effective Risk Management Policies for Sustainable Urban Transportation Projects

8. Flexible Linguistic Consensus Decision Making for Sustainable Transport Practices

9. Optimization based decision making for sustainable transport: Insights into the aviation industry

10. A Generalized Hellinger Distance-Based Spherical Fuzzy TOPSIS Method for Sustainable Transport Systems Selection

11. Fuzzy multi-criteria decision making for assessing public transportation systems for sustainable transportation

12. Determining enablers for the application of sustainable and resilient urban transport systems using T-spherical fuzzy DEMATEL-ISM model

13. Selection of the solution for the integration of sustainable and resilient urban transport systems using linguistic T-spherical fuzzy COCOSO’B method

14. Sustainable AI-Assisted Energy-Efficient Edge Cloud System for Industrial Internet of Things Applications

Product details

  • Edition: 1
  • Latest edition
  • Published: July 25, 2025
  • Language: English

About the editor

MD

Muhammet Deveci

Dr. Muhammet Deveci is an Associate Professor at the Department of Industrial Engineering in the Turkish Naval Academy, National Defense University, Istanbul, Turkey, and he is Honorary Senior Research Fellow with the Bartlett School of Sustainable Construction, University College London, UK. Dr. Deveci is also a Visiting Professor at Royal School of Mines in the Imperial College London, London, UK. He worked as a Visiting Researcher and Postdoctoral Researcher, in 2014-2015 and 2018–2019, respectively, with the School of Computer Science, University of Nottingham, Nottingham, U.K. Dr Deveci is an outstanding researcher and has published over 240 papers in journals, as well as more than 25 contributions in International Conferences related to his areas. Dr. Deveci received the 100th-anniversary award for his worldwide scientific achievements from the Scientific and Technological Research Council of Turkey (TUBITAK).

Dr Deveci has also been engaged with the wider community providing academic service through chairing/organising conferences, streams, tutorials, reviewing papers, and acting as Editorial Board Member of journals including IEEE Transactions on Intelligent Vehicles (T-IV), IEEE Transactions on Emerging Topics in Computational Intelligence, Information Sciences, Applied Soft Computing, Engineering Applications of Artificial Intelligence, and Artificial Intelligence Review.

Dr Deveci is an internationally recognized scientist in intelligent decision support systems underpinned by computational intelligence, particularly uncertainty handling, fuzzy systems, combinatorial optimization, and multicriteria decision making. His research and development activities are multidisciplinary and lie at the interface of operational research, computer science and artificial intelligence. He has been tackling challenging real-world problems without stripping off their complexities, including climate change, renewable energy, sustainable transport, and urban mobility.

Affiliations and expertise
Department of Industrial Engineering, National Defense University, Istanbul, Turkey

View book on ScienceDirect

Read Intelligent Urban Mobility on ScienceDirect