Katayoun Kargar | Urban Drainage Systems | Research Excellence Award

Dr. Katayoun Kargar | Urban Drainage Systems | Research Excellence Award

Toronto Metropolitan University | Canada

Dr. Katayoun Kargar is a civil engineering researcher whose work advances the understanding, modelling, and management of sewer blockages within urban drainage networks, particularly those caused by non-flushable consumer products. Her research integrates hydraulic modelling, data analytics, and infrastructure asset management to address performance deterioration in sewer systems and provide actionable strategies for municipalities. She has contributed original methodologies for analyzing blockage mechanisms using open datasets, quantified the hydraulic impacts of wipe-induced obstructions, and developed simulation frameworks capable of capturing flow alterations and risk conditions in sewer networks. Her work with SWMM includes creating and validating procedures that allow utilities to incorporate blockage dynamics into routine modelling, enabling more accurate capacity evaluations, maintenance prioritization, and system reliability assessments. By translating laboratory insights into practical planning tools, she supports municipalities in enhancing inspection regimes, optimizing rehabilitation strategies, and strengthening long-term infrastructure resilience. Her scholarly contributions include publications indexed in major scientific databases and presentations at leading professional forums, where her work has been recognized through notable awards for research excellence and technical communication. Complementing her academic achievements, she has professional experience in asset management consulting, applying modelling outputs and analytical approaches to assist municipalities in developing asset management plans, capital planning frameworks, and infrastructure lifecycle strategies. Her combined research and practical expertise contribute to advancing municipal wastewater infrastructure management and promoting data-informed decision-making in the engineering of sustainable urban drainage systems.

Profiles: Scopus | Orcid | Google Scholar

Featured Publications

Shamshirband, S., Hashemi, S., Salimi, H., Samadianfard, S., Asadi, E., … (2020). Predicting standardized streamflow index for hydrological drought using machine learning models. Engineering Applications of Computational Fluid Mechanics, 14(1), 339–350.

Samadianfard, S., Hashemi, S., Kargar, K., Izadyar, M., Mostafaeipour, A., … (2020). Wind speed prediction using a hybrid model of the multi-layer perceptron and whale optimization algorithm. Energy Reports, 6, 1147–1159.

Kargar, K., Samadianfard, S., Parsa, J., Nabipour, N., Shamshirband, S., … (2020). Estimating longitudinal dispersion coefficient in natural streams using empirical models and machine learning algorithms. Engineering Applications of Computational Fluid Mechanics, 14(1), 311–322.

Kargar, K., Safari, M. J. S., Mohammadi, M., Samadianfard, S. (2019). Sediment transport modeling in open channels using neuro-fuzzy and gene expression programming techniques. Water Science and Technology, 79(12), 2318–2327.

Safari, M. J. S., Mohammadi, B., Kargar, K. (2020). Invasive weed optimization-based adaptive neuro-fuzzy inference system hybrid model for sediment transport with a bed deposit. Journal of Cleaner Production, 276, 124267.

 

Wei Shang | Environmental Behavior | Best Researcher Award

Dr. Wei Shang | Environmental Behavior | Best Researcher Award

Hubei University of Technology,  China

Dr. Wei Shang is a Lecturer in the Department of Architectural Planning at the School of Civil Architecture and Environment, Hubei University of Technology. He earned his Ph.D. from Nagoya University of Technology, Japan. His research spans environmental psychology, urban renewal, historic district preservation, and inclusive community design. He has led or participated in six national and provincial research projects, authored two monographs, published over 50 academic papers, and holds four invention patents. Dr. Shang actively contributes to cultural heritage protection initiatives in China and Japan, and has provided expert consultancy in urban planning and public space development for governmental bodies.

Profile:

🎓 Academic Background:

Dr. Wei Shang earned his doctorate from Nagoya University of Technology, Japan. He currently serves as a Lecturer in the Department of Architectural Planning, School of Civil Architecture and Environment at Hubei University of Technology.

🔬 Research & Innovation:

Dr. Shang has led and contributed to 6+ national and provincial research projects focusing on:

  • Urban renewal

  • Inclusive community design

  • Digital heritage protection

  • Environmental behavior and public space design

His research is indexed in SCI, EI, CNKI, and CiNii databases.

📚 Publications & Patents:

  • Books: 2 monographs (e.g., Wisdom Turning Point, Building the Future)

  • Academic Papers: Over 50 publications

  • Patents: 4 granted, including innovations in architectural devices and green systems

🏗️ Industry & Government Engagement:

  • Consulted on major urban projects including cultural heritage conservation and infrastructure design

  • Worked with organizations like the Wuhan Culture and Tourism Bureau and China Construction Third Bureau Group

  • Technical advisor for landscape and historic district planning in China and Japan

🌐 Collaborations & Impact:

  • Participates in the Belt and Road Teaching Project and the China Creation Fund 4×4 Experimental Teaching Project

  • Member of Nakatsugawa and Shurang City Landscape Committees in Japan

  • His work has informed policy formulation and planning standards in both nations

🧠 Areas of Expertise:

  • Environmental Psychology

  • Urban Renewal & Healthy Cities

  • Preservation of Historic Districts

  • Human Settlement Design

Publication: 

Walkability Evaluation of Historical and Cultural Districts Based on Multi-Source Data: A Case Study of the Former Russian Concession in Hankou

Journal: Buildings
Publication Date: May 2025
Type: Journal Article
Authors: Haoran She, Jing Sun, Yuchen Zeng, Wenyu Tu, Guang Ao, Wei Shang
DOI: 10.3390/buildings15101603
Publisher: Multidisciplinary Digital Publishing Institute (MDPI)