Mujeeb Abiola Abdulrazaq | engineering | Young Scientist Award

Mr. Mujeeb Abiola Abdulrazaq l engineering
| Young Scientist Award

University of North Carolina at Charlotte | United States

Mr. Mujeeb Abiola’s research focuses on advancing transportation safety and efficiency through data-driven methodologies and emerging technologies. His work extensively employs large-scale traffic and crash data, including millions of federal highway administration records, to investigate the spatiotemporal dynamics of pedestrian crashes and the evolution of crash hotspots. Utilizing advanced statistical and machine learning models, he has developed predictive frameworks that outperform traditional Highway Safety Manual standards, providing robust insights into risk factors and injury severity in both human-driven and autonomous vehicle contexts. His research on connected and autonomous vehicles (CAVs) has led to the development of traffic control algorithms that significantly enhance safety, operational efficiency, and environmental sustainability in freeway work zones. Furthermore, his studies integrate GPU-accelerated data processing, simulation-based optimization, and multi-level heterogeneity modeling to evaluate vulnerable road user behavior and assess dynamic collision risks. Through simulation platforms such as VISSIM and SUMO, combined with Python-based data analysis and GIS applications, his work systematically addresses complex traffic scenarios, including merging, diverging, and weaving segments, while also accounting for seasonal variations and temporal constraints in crash determinants. His contributions include empirical analyses of autonomous vehicle incidents, methodological advancements in microsimulation accuracy, and development of actionable strategies for real-world traffic management, ultimately aiming to improve roadway safety, inform policy, and guide evidence-based planning in modern transportation systems.

Profile:  Google Scholar 

Featured Publications

  • Abdulrazaq, M. A., & Fan, W. D. (2024). Temporal dynamics of pedestrian injury severity: A seasonally constrained random parameters approach. International Journal of Transportation Science and Technology, 9.

  • Abdulrazaq, M. A., & Fan, W. (2025). A priority based multi-level heterogeneity modelling framework for vulnerable road users. Transportmetrica A: Transport Science, 1–34. https://doi.org/10.1080/23249935.2025.2516817

  • Abdulrazaq, M. A., & Fan, W. (2025). Seasonal instability in crash determinants: A partially temporally constrained modeling analysis. SSRN 5341417. https://doi.org/10.2139/ssrn.5341417

Amirhossein Kazemisaboor | Engineering | Best Researcher Award

Mr Amirhossein Kazemisaboor | Engineering | Best Researcher Award 

Master of Science at  Université Laval Canada

John Doe, an Industrial Engineer, holds an MSc from Université Laval (2024) and a BSc from K. N. Toosi University of Technology (2017). Currently a Logistics Analyst at InnovLog in Montreal, QC 📦. His expertise includes optimizing logistics operations through data-driven insights and digital transformations. Previously, at Cirrelt and Mega Motor Company, John conducted impactful research and led process improvements 📊. He is skilled in Python, Power BI, and ERP/WMS/TMS integration, contributing to efficiency and innovation in supply chain management. John also instructs on optimization and data analysis at universities, enhancing educational initiatives 🎓.

profile

Education:

  • MSc in Industrial Engineering, Université Laval, QC, Canada, 2021 – Jan 2024
  • BSc in Industrial Engineering, K. N. Toosi University of Technology, 2013 – 2017

Professional Experience:

  • Logistics Analyst, InnovLog, Montreal, QC, Canada, Apr 2024 – Present
  • Research Assistant, Cirrelt, QC, Canada, 2021 – Feb 2024
  • Industrial Engineer, Mega Motor Company, 2017 – 2021
  • Process Analyst, Mega Motor Company, 2016 – 2017

Training and Workshops:

  • Machine Learning Masterclass, Udemy, 2019
  • Python Bootcamp in Python 3, Udemy, 2018
  • Optimization in Python using GurobiPy and Docplex, Optimyar, 2018
  • Power BI for data analysis and BI implementation, Faradars, 2016
  • AnyLogic Software and Simulation Modeling, Shabih Pardazan, 2014
  • Microsoft Project Training, Parseh, 2013
  • PMBOK (Project Management Body of Knowledge), Parseh, 2013
  • Earned Value Management, Parseh, 2013

Publication

A simulation-based optimisation framework for process plan generation in reconfigurable manufacturing systems (RMSs) in an uncertain environment by A Kazemisaboor et al., International Journal of Production Research 60 (7), 2067-2085 📊 (2022)

 

A production bounce-back approach in the Cloud manufacturing network: case study of COVID-19 pandemic by E Shahab et al., International Journal of Management Science and Engineering Management 18 (4), 1 (2023) 🌐

 

Solution approaches to reduce problems with unbalanced supply and demand in transportation and harvest planning by A Kazemisaboor et al., International Journal of Forest Engineering, 1–13 (2024) 🌲

 

A novel service composition model considering the role of resilience in cloud supply networks by E Shahab et al., 6th International Conference on Industrial and Systems Engineering (ICISE) (2020) 🛠️