Hadi Sanikhani | Data Science and Deep Learning | Best Researcher Award

Assoc. Prof. Dr. Hadi Sanikhani | Data Science and Deep Learning | Best Researcher Award 

Research Associate, at INRS – Institut national de la recherche scientifique, Canada.

Dr. Hadi Sanikhani is a dedicated environmental engineer and water resources specialist currently serving as a Visiting Researcher at INRS, Québec. He focuses his research on the hydrological impacts of climate change in cold regions, particularly runoff dynamics and flood risk. By integrating AI-enhanced models—such as SWAT, MODFLOW, HEC‑HMS, and HEC‑RAS—with high-resolution geospatial and CMIP climate projection data, Dr. Sanikhani aims to advance our understanding of flood hazards and improve predictive tools for extreme water events. He collaborates effectively within interdisciplinary teams and is passionate about bridging physical modeling with data-driven techniques to manage and protect vulnerable water systems in Canada and beyond.

Professional Profile

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ORCID

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🎓 Education

Dr. Sanikhani earned his Ph.D. in Water Resources Engineering (2010–2015) from the University of Tabriz, where his thesis focused on river flow prediction using nearest-neighbor and probabilistic ensemble approaches. Prior, he obtained an M.Sc. in Irrigation and Drainage (2005–2008) at the same university, investigating scour mitigation using rectangular collars around bridge piers. He completed his B.Sc. in Water Science and Engineering (2001–2005) from Mazandaran University, specializing in optimizing discharge–sediment relationships in the Gorganrood River. Throughout, he developed strong expertise in hydrological systems, AI modeling, and practical solutions for water infrastructure design.

💼 Experience

From September 2024 to present, Dr. Sanikhani conducts advanced climate-driven hydrological research at INRS Québec. Previously (2015–2024), he was a Water Resources Researcher at University of Kurdistan, Iran, where he modeled runoff, sediment transport, and climate impacts. In 2013, he served as a Visiting Researcher at both Delft University of Technology and Politecnico di Milano, applying high-end hydrological analysis in European environments. His roles have consistently centered on developing predictive models using remote sensing, AI, and ensemble techniques to support flood risk assessment and water system management across diverse climates.

🔬 Research Interests

Dr. Sanikhani’s research spans hydrological and hydraulic modeling (SWAT, HEC‑HMS/RAS, MODFLOW), flood hazard assessment, and urban stormwater systems. He investigates climate change impacts using CMIP datasets and high-resolution geospatial tools. His work leverages AI and machine learning—such as random forests, MLP, and genetic programming—for forecasting extreme hydrological events. He also explores groundwater–surface water interactions, remote sensing via Google Earth Engine, AI-assisted hydrology, and community-engaged research, aiming to integrate technological and social insights into sustainable water resource management.

🏆 Awards

Dr. Sanikhani has earned multiple honors in recognition of his scientific excellence. He received the “Distinguished Researcher” award from the University of Kurdistan (2018–2019) for outstanding scholarship in environmental modeling. Earlier, as a Ph.D. student at the University of Tabriz, he was a “Distinguished Student” (2010–2012) and held a prestigious Ph.D. scholarship funded by the Iranian Ministry of Science, Research and Technology (2010–2014). These accolades reflect his sustained contributions to hydrological science and academic leadership.

📄 Top Noted Publications

📘 Modeling wetted areas of moisture bulb for drip irrigation systems: An enhanced empirical model and artificial neural network

Authors: Karimi, B.; Mohammadi, P.; Sanikhani, H.; Salih, S. Q.; Yaseen, Z. M.
Journal: Computers and Electronics in Agriculture (Volume 178), November 2020, Article 105767.
DOI: 10.1016/j.compag.2020.105767
Abstract Summary: Developed ANN and nonlinear regression models to estimate vertical up/down wetted areas around drippers based on soil texture, discharge rate, depth, irrigation time, etc.—outperformed dimensional analysis models.
Scopus Citations: 48

📘 Integrative stochastic model standardization with genetic algorithm for rainfall pattern forecasting in tropical and semi-arid environments

Authors: Salih, S. Q.; Sharafati, A.; Ebtehaj, I.; Sanikhani, H.; Siddique, R.; Deo, R. C.; Bonakdari, H.; Shahid, S.; Yaseen, Z. M.
Journal: Hydrological Sciences Journal, Volume 65 Issue 7, pp. 1145–1157, May 18, 2020.
DOI: 10.1080/02626667.2020.1734813
Abstract Summary: Introduced a novel stochastic forecasting method combining seasonal differencing, standardization, spectral analysis, and genetic algorithms; achieved R² ≈ 0.80–0.94 (Malaysia) and 0.89–0.91 (Iraq) across multiple stations.
Scopus Citations: 45

📘 Novel approaches for air temperature prediction: A comparison of four hybrid evolutionary fuzzy models

Authors: [Likely] Azad, [et al.]
Journal: Meteorological Applications, 2020.
DOI: 10.1002/met.1817
Abstract Summary: Tested four hybrid evolutionary fuzzy models (ANFIS combined with GA, PSO, ACOR, and DE) to predict monthly minimum, mean, and maximum air temperatures across 34 stations in Iran. Found ANFIS–GA to consistently outperform others—e.g., reducing RMSE from 1.22 °C to 1.12 °C in Mashhad.
Citation Count: Not available (recommend checking Scopus/Google Scholar)

📘 Monthly long-term rainfall estimation in Central India using M5Tree, MARS, LSSVR, ANN and GEP models

Authors: Mirabbasi, R.; Kisi, O.; Sanikhani, H.; Gajbhiye Meshram, S.
Journal: Neural Computing and Applications, 2019; exact volume/issue TBD.
Abstract Summary: Compared five different data-driven models (M5Tree, MARS, LSSVR, ANN, GEP) for monthly rainfall estimation based on data from 61 stations in Madhya Pradesh and Chhattisgarh. LSSVR achieved the highest accuracy (RMSE ≈ 13.93 mm, MAE ≈ 9.52 mm, R² ≈ 0.995), whereas GEP performed worst (RMSE ≈ 36.74 mm)
Citation Count: Not listed (suggest using Google Scholar/Scopus)

Conclusion

Dr. Hadi Sanikhani is a strong and suitable candidate for the Best Researcher Award, especially in the domain of water resources, flood modeling, and climate change resilience. His interdisciplinary, AI-enhanced approach to environmental modeling and international research collaborations distinguish him as an impactful and forward-thinking researcher.

Xiang Zhang | Data Science and Deep Learning | Best Researcher Award

Xiang Zhang | Data Science and Deep Learning | Best Researcher Award

Mr. Xiang Zhang, Hainan university, China

Xiang Zhang is a dedicated researcher specializing in resource utilization, plant protection, and ecological remote sensing. He holds a Master’s degree in Resource Utilization and Plant Protection and a Bachelor’s degree in Ecology from Hainan University. His expertise includes terrestrial ecosystem simulation, vegetation monitoring, and global change ecology. Xiang has contributed to mangrove carbon storage estimation, ecological restoration, and satellite image processing. He has worked with Hainan Silan Low Carbon Investment Co., Ltd. and Changguang Satellite Technology Co., Ltd.. A recipient of multiple scholarships, he actively researches carbon sequestration strategies for sustainable ecosystems.

Profile

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Education 🎓

Xiang Zhang pursued his Master’s degree at the Ecological College, specializing in Resource Utilization and Plant Protection 🌱. With an impressive GPA and ranking within the top 5% 📊, he excelled in courses such as Agricultural Product Safety Production, Advanced Experimental Design & Biostatistics, and Ecological Restoration Technologies. His Bachelor’s degree in Ecology 🌿 further strengthened his expertise, where he ranked in the top 20% and gained knowledge in Forestry, Microbiology, GIS, and Ecological Economics. His academic journey reflects a strong foundation in environmental protection, sustainable agriculture, and ecological governance 🌍.

Experience 🧪

Xiang Zhang has actively contributed to mangrove conservation 🌿 through extensive field investigations in key areas of Hainan, including Dongfang, Sanya, Danzhou, Haikou, and Wanning. He conducted soil and plant sampling 🧪, measuring element content, dry weight, and length. Utilizing satellite remote sensing 🛰️, he analyzed data and estimated the carbon ecological value of mangroves in Xinying Port. His expertise includes real-time image collection, manual vegetation recognition, and data mapping using ArcGIS and ENVI. He also worked on cloud removal techniques ☁️ and point interpolation to enhance coastal habitat studies 🌍.

Research Focus 🔍

Xiang Zhang’s research primarily focuses on forest ecology 🌳, soil organic carbon dynamics 🌱, and the impacts of environmental disturbances on ecosystems 🌪️. His studies analyze spatial distribution changes of topsoil organic carbon across different forest types in Hainan Island, exploring key factors influencing carbon storage. Additionally, he investigates gross primary production (GPP) losses and recovery in subtropical mangrove forests affected by tropical cyclones, highlighting the resilience of these ecosystems. His work contributes to climate change adaptation 🌍, carbon sequestration strategies 📉, and forest conservation efforts 🌾, offering valuable insights for sustainable environmental management.

Publications📚

Spatial Distribution Changes and Factor Analysis of Topsoil Organic Carbon Across Different Forest Types on Hainan Island

Evaluating the Losses and Recovery of GPP in the Subtropical Mangrove Forest Directly Attacked by Tropical Cyclone: Case Study in Hainan Island