Mr. Samsuzzaman samsu | Agricultural Machinery Engineering | Best Researcher Award
Student | Chungnam National University | Bangladesh
Mr. Samsuzzaman samsu is a dedicated researcher in the Department of Agricultural Machinery Engineering at Chungnam National University, South Korea. His work focuses on developing smart farming solutions by combining artificial intelligence, precision agriculture, and sensor-based technologies. With academic and professional experiences in Bangladesh and South Korea, he has cultivated expertise in digital farming innovations that address real-world agricultural challenges. He has contributed to cutting-edge projects on seedling stress detection, controlled environment agriculture, and livestock farming technologies. His research bridges engineering, data science, and agriculture, aiming to enhance sustainability and productivity in global food systems.
Professional Profile
Education
Mr. Samsuzzaman samsu began his academic journey in Bangladesh, completing a Bachelor of Science in Agricultural Engineering at Hajee Mohammad Danesh Science and Technology University, where he explored innovative designs for farm machinery through his thesis on a corn picker prototype. He is currently pursuing a Master of Science in Agricultural Machinery Engineering at Chungnam National University, South Korea, specializing in bio-production machinery engineering. His master’s research centers on machine learning and sensor fusion for real-time classification and quantification of seedling stress in controlled environments. This educational foundation reflects his commitment to integrating technology with sustainable agricultural practices.
Experience
Mr. Samsuzzaman samsu has accumulated diverse research and teaching experience across multiple institutions. He currently serves as a Research Assistant at Chungnam National University, contributing to projects on big data-driven smart seedling standardization and robotics for livestock farming. Previously, he worked at Hajee Mohammad Danesh Science and Technology University in Bangladesh, where he assisted in designing and fabricating farm machinery for small-scale farming. Alongside research, he has served as a Teaching Assistant in graduate courses on artificial intelligence in precision agriculture. His collaborative work with professors, post-doctoral researchers, and graduate students has strengthened his expertise in interdisciplinary agricultural engineering.
Research Interests
Mr. Samsuzzaman samsu research interests lie at the intersection of artificial intelligence and agricultural engineering. He focuses on AI-driven smart farming, precision agriculture technology, controlled environment agriculture, and vertical farming systems. His work also explores digital livestock farming, where sensor-based monitoring and computer vision can transform animal husbandry practices. With a strong interest in remote sensing, he integrates machine learning and image processing for early detection and quantification of plant stress symptoms. His contributions to sensor fusion, environmental control, and robotics aim to address food security challenges while enhancing efficiency, sustainability, and resilience in modern agricultural production systems.
Awards
Mr. Samsuzzaman samsu has been recognized with several prestigious awards for his research and innovation. At academic conferences in South Korea, he earned both Best Oral Presentation and Best Poster Presentation Awards from the Korean Society of Precision Agriculture. He also won Best Oral Presentation at the Korean Society for Biological Environment Control, reflecting his ability to communicate scientific findings effectively. Earlier in his career, he received the Best Agri-Engineering Innovation Competition Award in Bangladesh for designing a grain dryer system. These honors underscore his innovative thinking, problem-solving capacity, and dedication to advancing agricultural engineering through impactful research.
Top Noted Publications
Operating Speed Analysis of a 1.54 kW Walking-Type One-Row Cam-Follower-Type Cabbage Transplanter for Biodegradable Seedling Pots
Year: 2025
Geometric Alignment Improves Wheat NDVI Calculation from Ground-Based Multispectral Images
Year: 2025
RGB-based machine vision for enhanced pig disease symptoms monitoring and health management: a review
Year: 2025
Evaluation of Machine Learning Models for Stress Symptom Classification of Cucumber Seedlings Grown in a Controlled Environment
Year: 2024
Vegetation Effects on LoRa-Based Wireless Sensor Communication for Remote Monitoring of Automatic Orchard Irrigation Status
Year: 2024