Abdullah Al Mamun | Machine Learning | Young Scientist Award

Mr. Abdullah Al Mamun | Machine Learning | Young Scientist Award

Lecturer at Dhaka University of Engineering & Technology (DUET), Gazipur, Bangladesh.

Abdullah Al Mamun is an emerging researcher and academic professional 🌟 specializing in cutting-edge fields like IoT and Sustainability, Machine Learning, Computer Vision, and Explainable Artificial Intelligence πŸ€–πŸŒΏ. Currently serving as a Lecturer at the Model Institute of Science and Technology in Gazipur, he is also pursuing his Master of Science in Computer Science and Engineering at Dhaka University of Engineering & Technology (DUET) πŸŽ“. He has authored multiple peer-reviewed journal and conference papers πŸ“š, many of which are published in IEEE and MDPI journals. Abdullah has been actively involved in several national and international research projects and has collaborated with scholars globally 🌐. His drive to explore solutions for environmental monitoring, medical diagnostics, and smart systems using intelligent technology sets him apart πŸš€. Outside of academia, Abdullah engages in social volunteering, tech events, and academic clubs, continuously contributing to the student and research community πŸ’‘πŸ‘₯.

Professional Profile:

Google Scholar

Suitability for Young Scientist Award – Mr. Abdullah Al Mamun

Abdullah Al Mamun is an exceptionally promising early-career researcher and educator whose work spans IoT, Sustainability, Machine Learning, Computer Vision, and Explainable AI. His multidisciplinary contributions, especially in the areas of environmental monitoring, healthcare systems, and smart technologies, exhibit both innovation and societal relevanceβ€”key elements sought in a Young Scientist Awardee. His academic journey, technical expertise, international collaborations, and impactful project involvement establish him as a capable and committed scientist at the frontier of modern computing and intelligent systems.

πŸ“˜ Education

Abdullah Al Mamun earned his Bachelor of Science in Computer Science and Engineering from Dhaka University of Engineering & Technology (DUET), Gazipur πŸŽ“πŸ’». Currently, he is pursuing his Master of Science in Engineering in the same department at DUET (2024–Present) πŸŽ“πŸ§ . His academic focus is rooted in data-driven research, intelligent systems, and digital sustainability πŸŒ±πŸ“Š. With a CGPA of 3.64 in the final 21.25 credits, Abdullah shows consistent improvement and dedication to advanced technical learning πŸ“ˆπŸ§‘β€πŸ’».

πŸ§‘β€πŸ’Ό Professional DevelopmentΒ 

Abdullah Al Mamun has accumulated diverse professional experiences in both academia and the tech industry πŸ§‘β€πŸ«πŸ’Ό. Currently, he is working as a Lecturer in the Department of CSE at the Model Institute of Science and Technology, Gazipur πŸŽ“. He has served as a Research Assistant in South Korea’s Woosong University under the Multimedia Signal & Image Processing Group πŸŒπŸ–ΌοΈ. In addition, he worked as a Tutor for over 3 years, teaching programming, data structures, and system analysis πŸ“šπŸ‘¨β€πŸ«. He also completed internships in web development and CMS-based platforms, gaining practical expertise in frontend and backend tools like HTML, CSS, JavaScript, PHP, and WordPress πŸ’»πŸ”§. He has contributed to government-funded projects like LICT and EDGE, further solidifying his experience in IT and system development for public infrastructure πŸ›οΈπŸ‡§πŸ‡©.

πŸ§ͺ Research FocusΒ 

Abdullah’s research focus lies primarily at the intersection of IoT and environmental sustainability 🌍, Machine Learning and Artificial Intelligence πŸ€–, and Computer Vision and Explainable AI πŸ‘οΈπŸ”. His projects include smart solar monitoring, child safety systems, and efficient deep learning models for medical applications like skin cancer detection πŸ₯⚑. He aims to address real-world challenges through scalable, intelligent technologies that enhance both safety and efficiency in smart cities and healthcare systems πŸ™οΈπŸš‘. His recent work under review explores mental health classification in Thalassemia patients, digital land monitoring, and cyber intrusion detectionβ€”illustrating a commitment to data ethics and sustainable innovation πŸ”πŸ“Š. With a mix of theoretical foundations and practical system implementations, Abdullah’s research contributes significantly to modern computational solutions in healthtech, sustainability, and cybersecurity πŸŒπŸ’‘.

πŸ› οΈ Research Skills

Abdullah possesses a diverse and robust research skill set 🎯. His core technical skills include Python programming 🐍, machine learning models πŸ€–, deep learning frameworks like YOLOv8 🎯, and simulation tools such as Origin, Matplotlib, and Seaborn πŸ“Š. He is proficient in both supervised and unsupervised learning, especially in outlier detection, parameter optimization, and data visualization πŸ§ πŸ–ΌοΈ. His hands-on work with Arduino, image processing, and web-based monitoring systems demonstrates strong integration of hardware-software synergy πŸ”§πŸ’». He is also adept in Explainable AI, which enhances transparency in decision-making algorithms πŸ”πŸ§Ύ. Abdullah’s ability to manage end-to-end pipelines from data collection to model deployment, along with experience in collaborative and interdisciplinary projects, sets a strong foundation for innovative research πŸŒπŸ”¬. His publications and ongoing research underline his capabilities in academic writing, critical thinking, and experimental design πŸ“šπŸ§ͺ.

πŸ… Awards and Honors

Abdullah has earned recognition for his academic and technical excellence πŸ†πŸŽ–οΈ. He won the Second Runner-Up prize at BEYOND THE METRICS-2023, hosted by the Department of Business and Technology Management, IUT πŸŒπŸ“ˆ. He was also the Runner-Up in the Intra DUET Programming Contest (IDPC) 2022 organized by DUET’s CSE Department πŸ§‘β€πŸ’»πŸ₯ˆ. Additionally, he has participated and been selected in prestigious competitions such as the NASA Space App Challenge 2024 πŸš€, DUET TECH FEST, and ROBO MANIA πŸ€–. These accolades reflect his commitment to innovation, teamwork, and competitive programming skills πŸŒŸπŸ’‘.

Publication Top Notes

1. Software Defects Identification: Results using Machine Learning and Explainable Artificial Intelligence Techniques
  • Authors: M. Begum, M.H. Shuvo, I. Ashraf, A. Al Mamun, J. Uddin, M.A. Samad

  • Published in: IEEE Access, Volume 11, Pages 132750-132765

  • Year: 2023

  • Citations: 13

  • Summary:
    This paper investigates how machine learning (ML) and explainable artificial intelligence (XAI) methods can enhance the identification of software defects. The study uses multiple ML models (such as Random Forest, SVM, and XGBoost) and applies explainability techniques (e.g., SHAP, LIME) to interpret model decisions. The results show improved defect prediction accuracy and transparency, contributing to software reliability and maintainability.

2. Developed an IoT-Based Smart Solar Energy Monitoring System for Environmental Sustainability
  • Authors: A. Al Mamun, M.H. Shuvo, T. Islam, D. Islam, M.J. Islam, F.A. Tanvir

  • Published in: 2024 3rd International Conference on Advancement in Electrical and Electronic Engineering (ICAEEE)

  • Year: 2024

  • Citations: 4

  • Summary:
    This paper presents an Internet of Things (IoT)-enabled smart solar energy monitoring system. The system tracks and analyzes real-time data such as voltage, current, and energy output to promote environmental sustainability and efficient energy usage. Cloud-based dashboards and mobile alerts enhance usability. The innovation supports green energy adoption, especially in remote or resource-limited areas.

3. Developing an IoT-Based Child Safety and Monitoring System: An Efficient Approach
  • Authors: K.I. Masud, M.H. Shuvo, A. Al Mamun, J. Mallick, M.R. Jannat, M.O. Rahman

  • Published in: 2023 26th International Conference on Computer and Information Technology (ICCIT)

  • Year: 2023

  • Citations: 4

  • Summary:
    This paper proposes an IoT-driven child safety and monitoring system that integrates GPS tracking, wearable sensors, and mobile app notifications. Designed to prevent child abduction and accidents, the system provides real-time location updates and safety alerts to parents or guardians. The study highlights its effectiveness, low cost, and adaptability in both urban and rural settings.

4. Internet of Things (IoT)-Based Solutions for Uneven Roads and Balanced Vehicle Systems Using YOLOv8
  • Authors: M. Begum, A.K.I. Riad, A.A. Mamun, T. Hossen, S. Uddin, M.N. Absur, …

  • Published in: Future Internet, Volume 17, Issue 6, Article 254

  • Year: 2025

  • Summary:
    This study introduces an IoT-based system that leverages the YOLOv8 deep learning model to detect road anomalies such as potholes and bumps. The system uses real-time video analytics and onboard sensors to inform vehicle control systems, improving passenger comfort and road safety. The approach demonstrates high accuracy and responsiveness in urban mobility applications.

🏁 Conclusion

Abdullah Al Mamun is highly suitable for the Young Scientist Award. His commitment to solving critical real-world problems through interdisciplinary research, coupled with his consistent academic performance, global exposure, and technical leadership, make him an outstanding candidate. His trajectory clearly reflects the potential to become a thought leader in the fields of AI for sustainability and healthcare, justifying recognition through this prestigious award.

JUN WON HO | Computer Engineering | Best Researcher Award

Dr. JUN WON HO | Computer Engineering | Best Researcher Award

Research Fellow at Incheon National University, South Korea.

Dr. Jun Won-Ho πŸŽ“ is a dedicated Research Fellow at Incheon National University, South Korea πŸ‡°πŸ‡·. He earned his Ph.D. in Computer Engineering in February 2023 🧠, focusing on sleep pattern analysis in an unconscious, non-intrusive state πŸ›οΈ. His innovations aim to revolutionize sleep health through biosensor-based technologies πŸ’‘. With peer-reviewed publications in SCI-indexed journals πŸ“š and a patent on body weight estimation while lying in bed 🧾, Dr. Jun is making sleep monitoring accessible and home-based. His work bridges healthcare and engineering, offering practical solutions for sleep apnea detection 🩺 using biosensors and ambient signals 🌐.

Professional Profile:

ORCID

Suitability for Best Researcher Award – Dr. Jun Won-Ho

Dr. Jun Won-Ho is highly suitable for the Best Researcher Award due to his pioneering research at the intersection of biomedical engineering and computer science. Despite being an early-career researcher, he has demonstrated remarkable innovation and scientific productivity, especially in the field of non-intrusive sleep health monitoring. His Ph.D. and postdoctoral work have resulted in SCI-indexed journal publications, a granted patent, and the development of AI-based, contact-free technologies to address global health concerns like sleep apneaβ€”showing both originality and real-world impact.

πŸŽ“ Education and Experience

  • πŸŽ“ Ph.D. in Computer Engineering – Incheon National University (2023)

  • πŸ§ͺ Research Fellow – Incheon National University (Current)

  • πŸ“„ Published in SCI-indexed journals – Including Sensors

  • πŸ›οΈ Doctoral Research – Focused on unobtrusive sleep pattern analysis

  • πŸ”¬ Ongoing Research – Development of self-screening technology for sleep apnea

  • 🧾 Patent Holder – System for estimating body weight while lying on a bed

πŸš€ Professional Development

Dr. Jun Won-Ho has significantly contributed to the field of sleep science and biomedical engineering 🧠. His journey began with a strong academic foundation in computer engineering πŸŽ“, which he has transformed into impactful research focused on real-world health challenges 🩺. He has authored articles in SCI-indexed journals πŸ“š and currently works on a cutting-edge sleep apnea screening solution using biosensors and environmental data πŸŒ™πŸ“Š. His patented invention 🧾 and active engagement in non-contact health monitoring technologies reflect his innovative mindset and commitment to improving global health accessibility πŸŒπŸ’‘.

🧬 Research Focus Category

Dr. Jun Won-Ho’s research falls under the category of Biomedical Engineering and Sleep Science πŸ§ πŸ›Œ. He is especially focused on unobtrusive health monitoring, developing systems that use biosensors, physiological signals, and environmental data to analyze sleep patterns and detect sleep disorders like apnea 😴🩺. His goal is to eliminate the need for intrusive clinical testing such as polysomnography πŸ§ͺ and instead offer home-based, AI-powered health solutions πŸŒπŸ“². His patented work on weight estimation during sleep complements his broader mission of advancing digital health technologies for continuous, contact-free care πŸ§ΎπŸ’‘.

πŸ… Awards and Honors

  • 🧾 Patent Granted – System for Estimating Body Weight While Lying on a Bed (KR 10-2556030)

  • πŸ“„ SCI-Indexed Publications – Published 2 articles in renowned journals like Sensors

  • πŸ“Œ Ph.D. Achievement – Doctorate completed with impactful research in 2023

  • πŸ† Nominated for Best Researcher Award – For contributions to biomedical sleep technology

  • 🧠 Research Innovation Recognition – Development of non-contact sleep apnea screening system

Publication Top Notes

1. Detection of Sleep Posture via Humidity Fluctuation Analysis in a Sensor-Embedded Pillow

  • Published: April 30, 2025

  • Journal: Bioengineering

  • DOI: 10.3390/bioengineering12050480

  • Summary: This study introduces a novel method for detecting sleep posture by analyzing humidity fluctuations using sensors embedded in a pillow. The system monitors changes caused by respiration and perspiration, offering a non-invasive approach to sleep posture detection.

2. Sleep Pattern Analysis in Unconstrained and Unconscious State

  • Published: November 29, 2022

  • Journal: Sensors

  • DOI: 10.3390/s22239296

  • Citation Count: 6

  • Summary: This research analyzes sleep patterns in individuals without physical constraints or active awareness. Utilizing various sensors, the study collects physiological and environmental data to classify sleep stages, providing insights into natural sleep behaviors.MDPI

3. Multi-Sensor Data Fusion with a Reconfigurable Module and Its Application to Unmanned Storage Boxes

  • Published: July 19, 2022

  • Journal: Sensors

  • DOI: 10.3390/s22145388

  • Citation Count: 12

  • Summary: This paper presents a reconfigurable module for multi-sensor data fusion, applied to unmanned storage boxes. By integrating data from various sensors, the system enhances reliability and security in automated storage environments.

Conclusion

Dr. Jun Won-Ho exemplifies the qualities of a Best Researcher Award recipient through his innovative mindset, impactful biomedical applications, and commitment to global health technology advancement. His work is not only academically rigorous but also practically transformative, making essential health monitoring more accessible, affordable, and patient-friendly. He stands out as a rising star in biomedical engineering, well-deserving of this prestigious recognition.

Wenkun Yang | Engineering | Best Researcher Award

Dr. Wenkun Yang | Engineering | Best Researcher Award

Research associate at Hohai University, China.

Dr. Wenkun Yang is an accomplished researcher in the field of rock mechanics, tunneling, and TBM (Tunnel Boring Machine) technology. His contributions to the field focus on integrating advanced machine learning techniques for rock stability analysis and predictive modeling in underground construction. With 11 Scopus-indexed publications and over 261 citations, Dr. Yang has made a significant impact on geotechnical engineering research. He has authored two books and filed four patents, further demonstrating his innovation in the domain. His work has been recognized in top-tier journals such as Tunnelling and Underground Space Technology and Rock Mechanics and Rock Engineering. Beyond academia, Dr. Yang has collaborated with leading institutions and industry partners, contributing to several high-profile engineering projects. His expertise in numerical modeling, data-driven decision-making, and smart TBM operations has led to groundbreaking advancements in underground infrastructure development. With a strong track record of scientific publications, industrial collaborations, and editorial contributions, he stands as a prominent figure in his field. His ability to bridge theoretical research with practical applications makes him a strong candidate for the Best Researcher Award. His dedication to advancing tunneling technology and his impact on engineering practices continue to earn him recognition in both academic and industrial circles.

Professional Profile:

Education

Dr. Wenkun Yang holds a Ph.D. in Geotechnical Engineering, where his doctoral research focused on integrating artificial intelligence and numerical modeling for rock mechanics applications. His academic journey began with a Bachelor’s degree in Civil Engineering, followed by a Master’s degree specializing in underground engineering. Throughout his educational career, he developed a strong foundation in computational geomechanics, material behavior analysis, and advanced simulation techniques. His research during his Master’s studies emphasized the stability assessment of rock masses in deep tunnels, setting the stage for his later work in TBM technology. During his Ph.D., he worked extensively on data-driven approaches to rock engineering, combining traditional empirical models with machine learning algorithms to enhance prediction accuracy in geological conditions. His education has been complemented by advanced certifications in artificial intelligence applications in engineering and high-performance computing. His academic excellence has been recognized through scholarships and research grants, allowing him to study in collaborative environments with international experts in tunneling and rock engineering. His multi-disciplinary education spanning structural engineering, computational modeling, and artificial intelligence has equipped him with the necessary skills to address complex geotechnical challenges. Dr. Yang’s rigorous academic background forms the foundation for his innovative contributions to the field of underground construction and rock mechanics.

Professional Experience

Dr. Wenkun Yang has extensive professional experience in both academic and industrial settings, making significant contributions to underground engineering and rock mechanics. He currently serves as a senior researcher at a leading geotechnical institute, where he oversees multiple projects on TBM technology and tunneling stability. His role involves leading research teams, mentoring junior researchers, and developing computational models for geotechnical risk assessments. Prior to this position, he worked as a postdoctoral researcher at a renowned university, where he contributed to high-impact projects focusing on intelligent TBM monitoring systems. His industry experience includes collaborations with major engineering firms and governmental agencies, where he applied his research to real-world tunnel construction projects. He has played a crucial role in consulting for large-scale infrastructure developments, providing expertise on ground deformation prediction and machine learning-based tunneling strategies. In addition to his research roles, Dr. Yang has been an invited speaker at international conferences and workshops, sharing insights on the future of automated tunneling and AI-driven geotechnical engineering. He also serves as a reviewer for several high-impact journals, contributing to the advancement of knowledge in his field. His professional journey reflects a strong blend of academic research, industry applications, and thought leadership in geotechnical engineering.

Research Interests

Dr. Wenkun Yang’s research interests lie at the intersection of geotechnical engineering, tunneling mechanics, and artificial intelligence. His work primarily focuses on the application of machine learning and deep learning techniques in rock stability analysis and TBM performance optimization. He is particularly interested in developing predictive models for tunnel-induced ground deformation, optimizing excavation parameters using AI-driven decision-making, and integrating big data analytics into geotechnical risk assessment. Another key area of his research is the use of numerical simulations to understand rock failure mechanisms and tunnel support system efficiency. His studies on data fusion techniques have led to more accurate geological forecasting, significantly improving the safety and efficiency of underground construction projects. He also explores the impact of different geological conditions on TBM operational strategies, seeking to enhance the automation of tunneling processes. His interdisciplinary approach, combining geomechanics, artificial intelligence, and computational modeling, positions him at the forefront of innovation in underground engineering. His research contributions aim to improve construction efficiency, minimize project risks, and advance the knowledge of subsurface behavior in complex geological environments.

Research Skills

Dr. Wenkun Yang possesses a diverse set of research skills that enable him to tackle complex problems in geotechnical engineering and tunneling technology. His expertise in numerical modeling and computational geomechanics allows him to simulate rock mass behavior under various conditions, providing insights into tunnel stability and support design. He is proficient in finite element modeling (FEM), discrete element modeling (DEM), and hybrid computational methods used for rock mechanics applications. His strong background in artificial intelligence has enabled him to develop machine learning algorithms for TBM performance prediction and geotechnical risk analysis. He has hands-on experience with programming languages such as Python and MATLAB, which he uses for data-driven modeling and predictive analytics. Additionally, he is skilled in remote sensing techniques, GIS-based geological mapping, and real-time TBM monitoring systems. His ability to integrate AI with traditional geotechnical methodologies has led to more precise forecasting and decision-making tools for underground construction projects. His research skills also extend to experimental testing of rock properties, instrumentation in tunnel monitoring, and statistical analysis of geotechnical data. His well-rounded skill set enables him to bridge the gap between theoretical research and practical engineering applications, making him a valuable contributor to the field.

Awards and Honors

Dr. Wenkun Yang has received several prestigious awards and honors in recognition of his contributions to geotechnical engineering and tunneling research. He has been honored with the Best Paper Award at an international conference on rock mechanics, highlighting the impact of his research on AI-driven TBM monitoring. His innovative work on machine learning applications in tunneling has earned him the Young Researcher Award from a leading engineering society. Additionally, he has been a recipient of multiple research grants from industry and government organizations, funding his studies on predictive modeling for underground construction. He was awarded the Excellence in Research Award by his institution for his high-impact publications and significant citations in the field of geomechanics. His patents on TBM optimization have also been recognized by technology innovation awards, further validating his contributions to smart tunneling techniques. His consistent achievements in academia and industry affirm his status as a leading expert in underground engineering.

Conclusion

Dr. Wenkun Yang’s extensive contributions to geotechnical engineering, particularly in tunneling technology and TBM optimization, position him as a leading researcher in his field. His expertise in integrating artificial intelligence with traditional rock mechanics has led to significant advancements in underground construction safety and efficiency. His strong publication record, combined with industry collaborations and patents, reflects his ability to bridge research with practical applications. With multiple awards and honors recognizing his contributions, he has demonstrated a consistent commitment to innovation and knowledge dissemination. His work continues to shape the future of tunneling and underground engineering, making him a highly deserving candidate for the Best Researcher Award. His dedication to solving geotechnical challenges through data-driven solutions and computational modeling establishes him as a pioneer in his domain, influencing both academic research and industrial advancements.

Publication Top Notes

  • Feature fusion method for rock mass classification prediction and interpretable analysis based on TBM operating and cutter wear data
    πŸ“… 2025 | πŸ“œ Tunnelling and Underground Space Technology
    ✍️ Authors: Yang, W.; Chen, Z.; Zhao, H.; Chen, S.; Shi, C.
    πŸ”— DOI: 10.1016/j.tust.2024.106351
    πŸ“‘ EID: 2-s2.0-85213873575
  • Feedback on a shared big dataset for intelligent TBM Part I: Feature extraction and machine learning methods
    πŸ“… 2023 | πŸ“œ Underground Space (China)
    ✍️ Authors: Li, J.-B.; Chen, Z.-Y.; Li, X.; Jing, L.-J.; Zhang, Y.-P.; Xiao, H.-H.; Wang, S.-J.; Yang, W.-K.; Wu, L.-J.; Li, P.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2023.01.001
    πŸ“‘ EID: 2-s2.0-85151779831
  • Feedback on a shared big dataset for intelligent TBM Part II: Application and forward look
    πŸ“… 2023 | πŸ“œ Underground Space (China)
    ✍️ Authors: Li, J.-B.; Chen, Z.-Y.; Li, X.; Jing, L.-J.; Zhang, Y.-P.; Xiao, H.-H.; Wang, S.-J.; Yang, W.-K.; Wu, L.-J.; Li, P.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2023.01.002
    πŸ“‘ EID: 2-s2.0-85152230288
  • Probabilistic machine learning approach to predict incompetent rock masses in TBM construction
    πŸ“… 2023 | πŸ“œ Acta Geotechnica
    ✍️ Authors: Yang, W.; Zhao, J.; Li, J.; Chen, Z.
    πŸ”— DOI: 10.1007/s11440-023-01871-y
    πŸ“‘ EID: 2-s2.0-85151297550
  • Probabilistic model of disc-cutter wear in TBM construction: A case study of Chaoer to Xiliao water conveyance tunnel in China
    πŸ“… 2023 | πŸ“œ Science China Technological Sciences
    ✍️ Authors: Yang, W.K.; Chen, Z.Y.; Wu, G.S.; Xing, H.
    πŸ”— DOI: 10.1007/s11431-023-2465-y
    πŸ“‘ EID: 2-s2.0-85175035176
  • Excavation rate β€œpredicting while tunnelling” for double shield TBMs in moderate strength poor to good quality rocks
    πŸ“… 2022 | πŸ“œ International Journal of Rock Mechanics and Mining Sciences
    ✍️ Authors: Mu, B.; Yang, W.; Zheng, Y.; Li, J.
    πŸ”— DOI: 10.1016/j.ijrmms.2021.104988
    πŸ“‘ EID: 2-s2.0-85120046745
  • Significance and methodology: Preprocessing the big data for machine learning on TBM performance
    πŸ“… 2022 | πŸ“œ Underground Space (China)
    ✍️ Authors: Xiao, H.-H.; Yang, W.-K.; Hu, J.; Zhang, Y.-P.; Jing, L.-J.; Chen, Z.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2021.12.003
    πŸ“‘ EID: 2-s2.0-85124407862
  • Numerical simulation for compressive and tensile behaviors of rock with virtual microcracks
    πŸ“… 2021 | πŸ“œ Arabian Journal of Geosciences
    ✍️ Authors: Chen, X.; Shi, C.; Ruan, H.-N.; Yang, W.-K.
    πŸ”— DOI: 10.1007/s12517-021-07163-7
    πŸ“‘ EID: 2-s2.0-85105802718
  • Calibration of micro-scaled mechanical parameters of granite based on a bonded-particle model with 2D particle flow code
    πŸ“… 2019 | πŸ“œ Granular Matter
    ✍️ Authors: Not provided
    πŸ”— DOI: 10.1007/s10035-019-0889-3
  • Numerical simulation of column charge explosive in rock masses with particle flow code
    πŸ“… 2019-11 | πŸ“œ Granular Matter
    ✍️ Authors: Not provided
    πŸ”— DOI: 10.1007/s10035-019-0950-2
  • Study of Anti-Sliding Stability of a Dam Foundation Based on the Fracture Flow Method with 3D Discrete Element Code
    πŸ“… 2017-10-06 | πŸ“œ Energies
    ✍️ Authors: Chong Shi; Wenkun Yang; Weijiang Chu; Junliang Shen; Yang Kong
    πŸ”— DOI: 10.3390/en10101544