Jianchun Xu | Petroleum Engineering | Best Unconventional Resource Development Award

Prof. Jianchun Xu | Petroleum Engineering | Best Unconventional Resource Development Award

Professor at China University of Petroleum | East China | China

Prof. Jianchun Xu is a distinguished scholar in petroleum engineering, recognized for his pioneering research in reservoir simulation, unconventional oil and gas development, and smart oilfield technologies. Serving as a professor and deputy director at the China University of Petroleum (East China), he has made significant contributions to advancing multiphase flow modeling and production optimization. His leadership in academic societies and editorial boards reflects his commitment to the global research community. With an extensive publication record, funded projects, and international collaborations, Prof. Jianchun Xu work continues to shape petroleum engineering innovations and support sustainable energy development worldwide.

Profile

Scopus

Education

Prof. Jianchun Xu holds a Ph.D. in Oil and Gas Field Development Engineering from the China University of Petroleum (East China), where he also completed his M.S. and B.S. degrees in Petroleum Engineering. He enriched his academic background as a Visiting Scholar at the University of Tulsa under the supervision of Prof. Albert C. Reynolds, focusing on advanced petroleum engineering methods. His strong academic foundation has enabled him to integrate theory with practice, develop computational models, and lead international research collaborations that push the boundaries of reservoir management, unconventional resource exploitation, and innovative subsurface technologies.

Experience

Prof. Jianchun Xu currently serves as Deputy Director of the Intelligent Oil and Gas Field Institute and Professor of Petroleum Engineering at the China University of Petroleum (East China). His leadership roles extend to supervising major national and provincial research projects, collaborating with leading oilfield companies, and contributing to international scientific forums. He has organized specialized sessions in AGU, SPE, and Inter Pore conferences, advancing computational methods and machine learning applications in porous media. His professional service includes editorial roles in leading journals, guiding students, and developing simulation software that has been applied in academic research and field development.

Research Interest

Prof. Jianchun Xu research focuses on reservoir numerical simulation, unconventional oil and gas development, smart oilfield engineering, multiphase flow in porous media, and well testing. He is deeply engaged in developing advanced computational tools and algorithms, including machine learning techniques for optimization and simulation. His studies on CO₂ storage, gas hydrate development, and enhanced oil recovery contribute to sustainable and efficient resource exploitation. By bridging theoretical modeling with practical engineering applications, Prof. Jianchun Xu advances methods to optimize production, improve predictive accuracy, and address energy transition challenges, aligning petroleum engineering research with future demands of cleaner and smarter energy systems.

Awards

Prof. Jianchun Xu has received numerous prestigious awards, reflecting his academic excellence and professional dedication. These include the INSO Award, Excellent Headteacher Awards, Contribution Awards from the School of Petroleum Engineering, and the Xinjiang Petroleum Award. He was also recognized as an Outstanding Young Talent, a member of the Shandong Taishan Scholar Program, and an urgently needed high-level talent in Qingdao. Earlier in his career, he earned national scholarships, the Wang Tao Merit Scholarship—the highest petroleum industry award for graduate students—and several first prizes in national petroleum design competitions.

Publications

Prof. Jianchun Xu has published extensively in high-impact journals.

  1. Title: A generalized adsorption model of CO2-CH4 in shale based on the improved Langmuir model
    Year: 2025
    Citation: 7

  2. Title: Carbon Storage Potential of Shale Reservoirs Based on CO2 Fracturing Technology
    Year: 2025
    Citation: 4

  3. Title: Uncertainty analysis of geomechanical responses: China’s first offshore carbon capture and storage project Year: 2025
    Citation: 3

  4. Title: Reduced-Order Modeling for Subsurface Flow Simulation in Fractured Reservoirs
    Year: 2025
    Citation: 2

  5. Title: A machine learning assisted upscaling method for the Arrhenius kinetic model, with application to the in-situ conversion process
    Year: 2025
    Citation: 1

Conclusion

Prof. Jianchun Xu stands as a leading figure in petroleum engineering, with impactful contributions across reservoir simulation, unconventional resource development, and energy transition technologies. His strong academic foundation, leadership in research projects, and active role in professional societies highlight his commitment to advancing both science and education. Recognized through awards, publications, and industry collaborations, his work bridges innovative computational methods with practical oil and gas applications. With a vision toward sustainable and intelligent energy systems, Prof. Jianchun Xu continues to drive global research excellence, making him a highly deserving candidate for distinguished award recognition.

Christopher Mkono | Artificial Intelligence in Petroleum Engineering | Best Researcher Award

Mr. Christopher Mkono | Artificial Intelligence in Petroleum Engineering | Best Researcher Award

Student at China university of Geosciences (Wuhan), China

Christopher Nyangi Mkono is a PhD candidate in Oil and Natural Gas Engineering at the China University of Geosciences, with a specialized focus on machine learning applications in source rocks potentiality, reservoir characterization, and hydrocarbon resource evaluation. He is deeply involved in the integration of artificial intelligence and machine learning models to enhance the understanding and management of subsurface resources. With a solid academic foundation, Mkono has contributed significantly to the fields of geosciences and petroleum engineering, blending his expertise in programming and numerical modeling with an understanding of geotechnical systems. His work has spanned multiple global platforms, presenting at key international conferences and contributing to cutting-edge research in the energy sector.

Profile

Scopus

Education

Mkono’s educational journey is marked by a commitment to advancing his knowledge in oil and gas engineering. He is currently pursuing a PhD at the China University of Geosciences, where he began his master’s program in 2019. Before that, he completed his Bachelor of Science in Applied Geology from the University of Dodoma, Tanzania, in 2016. This academic trajectory highlights a strong foundation in geosciences, complemented by advanced studies in petroleum engineering. His research combines theoretical and practical applications, particularly in the development of innovative computational models and machine learning techniques for resource estimation.

Experience

Christopher Mkono has gained significant experience in the fields of geosciences and petroleum engineering, focusing on innovative approaches to reservoir characterization and hydrocarbon potential analysis. His work involves the application of neural network algorithms, machine learning techniques, and artificial intelligence to improve the accuracy and efficiency of geophysical and geochemical analyses. Additionally, he is proficient in various programming languages, including MATLAB and Python, and has worked extensively with scientific software and numerical modeling tools such as Origin and Eclipse. This expertise enables him to manage databases and develop models that support the energy industry’s evolving needs.

Research Interests

Mkono’s research interests lie primarily in the intersection of machine learning and geosciences, with a particular focus on the application of these technologies in source rock evaluation and hydrocarbon resource prediction. His work aims to improve the understanding of subsurface geology by integrating advanced artificial intelligence techniques with traditional geological modeling. Mkono is particularly interested in improving the estimation of reservoir properties such as porosity and permeability, utilizing models that incorporate explainable artificial intelligence for greater transparency and interpretability in results. His research also extends to reservoir thermal maturity estimation and the application of hybrid machine learning approaches in basin modeling.

Awards

Throughout his academic career, Christopher Mkono has demonstrated exceptional academic and research potential. While still early in his career, his contributions to geosciences and petroleum engineering have been recognized at several levels, particularly his work in integrating AI into traditional geological processes. His innovative contributions have earned him opportunities to present at prominent international conferences and competitions, such as the China Petroleum Engineering Design Competition International Circuit. His ongoing contributions to his field position him as a promising researcher whose work is poised for significant impact in both academic and industrial contexts.

Publications

Christopher Mkono has authored several notable publications in high-impact journals, focusing on the application of machine learning and artificial intelligence in geosciences. His research has been well received by the academic community, with articles published in journals such as SPE Journal and Engineering Applications of Artificial Intelligence. A few of his key publications include:

Mkono, C. N., Chuanbo, S., Mulashani, A. K., Abelly, E. N., Kasala, E. E., Shanghvi, E. R., Emmanuely, B. L., & Mokobodi, T. (2025). “Improved Reservoir Porosity Estimation Using an Enhanced Group Method of Data Handling with Differential Evolution Model and Explainable Artificial Intelligence.” SPE Journal, 1-19.

Mkono, C. N., Shen, C., Mulashani, A. K., Carranza, E. J. M., Kalibwami, D. C., & Nyangi, M. J. (2025). “A Novel Hybrid Group Method of Data Handling and Levenberg Marquardt Model for Estimating Total Organic Carbon in Source Rocks with Explainable Artificial Intelligence.” Engineering Applications of Artificial Intelligence, 144, 110137.

Mkono, C. N., Shen, C., Mulashani, A. K., Mwakipunda, G. C., Nyakilla, E. E., Kasala, E. E., & Mwizarubi, F. (2025). “A Novel Hybrid Machine Learning and Explainable Artificial Intelligence Approaches for Improved Source Rock Prediction and Hydrocarbon Potential in the Mandawa Basin, SE Tanzania.” International Journal of Coal Geology, 104699.

Mkono, C. N., Shen, C., Mulashani, A. K., Ngata, M. R., & Hussain, W. (2024). “A Novel Hybrid Machine Learning Approach and Basin Modeling for Thermal Maturity Estimation of Source Rocks in Mandawa Basin, East Africa.” Natural Resources Research, 33(5), 2089-2112.

Mkono, C. N., Shen, C., Mulashani, A. K., & Nyangi, P. (2024). “An Improved Permeability Estimation Model Using Integrated Approach of Hybrid.”

These works reflect his expertise in enhancing the accuracy of geological assessments using artificial intelligence, with many of his papers garnering significant citations from both academic and industry professionals.

Conclusion

Christopher Mkono is an emerging scholar in the field of petroleum engineering, with a solid background in geosciences and a passion for integrating machine learning and artificial intelligence into his research. His work is positioned to make significant contributions to the fields of source rock analysis, reservoir characterization, and hydrocarbon resource evaluation. Through his publications, presentations, and participation in international conferences, Mkono is building a reputation as a forward-thinking researcher whose work will help shape the future of geosciences and petroleum engineering. His ongoing efforts in advancing AI applications in geosciences reflect both his academic potential and his commitment to addressing the challenges of energy resource management.