Olga Ovtšarenko | Machine Learning | Best Researcher Award

Ms. Olga Ovtšarenko | Machine Learning | Best Researcher Award

Lead Lecturer at TTK University of Applied Sciences, Lithuania

Olga Ovtšarenko is a distinguished academic and researcher in the field of computer sciences and engineering graphics. She has contributed significantly to engineering education, particularly in CAD design and computer graphics. With a career spanning over two decades, she has played a crucial role in advancing pedagogical approaches in digital learning environments. Her expertise extends to informatics and systems theory, where she integrates modern computational techniques into engineering education. Currently serving as a lead lecturer at TTK University of Applied Sciences, she continues to foster innovation in higher education through her research and academic contributions.

Profile

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Education

Olga Ovtšarenko holds a Master’s degree in Pedagogics with a specialization in vocational training didactics from Tallinn Pedagogical University, completed between 2002 and 2004. She previously earned an engineering diploma from Moscow State University of Design and Technologies in 1984, laying a strong foundation in technical sciences. Furthering her academic pursuits, she is currently a doctoral student in Informatics Engineering at VILNIUS TECH, Lithuania. Her educational journey underscores her dedication to interdisciplinary research and the integration of engineering and informatics in education.

Experience

Olga Ovtšarenko has amassed extensive experience in academia, beginning her tenure at TTK University of Applied Sciences in 2008. Over the years, she has taught subjects such as descriptive geometry, engineering graphics, and computer graphics, shaping the next generation of engineers. Since 2020, she has served as the lead lecturer at the university’s Centre for Sciences, where she specializes in engineering graphics and CAD design. Her contributions to curriculum development and instructional methodologies have had a profound impact on technical education, emphasizing the importance of modern computational tools in engineering disciplines.

Research Interests

Her research interests are centered on informatics, systems theory, and engineering education. She explores the applications of machine learning and artificial intelligence in educational settings, aiming to optimize e-learning environments. Additionally, she investigates the role of Building Information Modeling (BIM) in engineering education, focusing on enhancing visualization skills and interactive learning experiences. Through international collaborations, she contributes to the advancement of sustainable and innovative learning methodologies, emphasizing the integration of digital technologies in technical education.

Awards

Olga Ovtšarenko has been recognized for her contributions to engineering education and research. She has received multiple accolades for her work in developing innovative educational methodologies and integrating computational technologies into teaching. Her participation in international academic conferences and research projects has further solidified her reputation as a leading figure in engineering education.

Selected Publications

Ovtšarenko, Olga; Safiulina, Elena (2025). “Computer-Driven Assessment of Weighted Attributes for E-Learning Optimization.” Computers, 14(116), 1−19. DOI: 10.3390/computers14040116.

Ovtšarenko, Olga (2024). “Opportunities of Machine Learning Algorithms for Education.” Discover Education, 3, 209. DOI: 10.1007/s44217-024-00313-5.

Ovtšarenko, O.; Makuteniene, D.; Ceponis, A. (2024). “Broad Horizons of International Cooperation to Ensure Sustainable and Innovative Learning.” 10th International Conference on Higher Education Advances: HEAd’24. Universidad Politecnica de Valencia, 904−911. DOI: 10.4995/HEAd24.2024.17051.

Ovtšarenko, Olga; Mill, Tarvo (2024). “Engineering Educational Program Design Using Modern BIM Technologies.” ICERI2024 Proceedings, 746−752. DOI: 10.21125/iceri.2024.0283.

Ovtšarenko, Olga (2023). “Opportunities for Automated E-Learning Path Generation in Adaptive E-Learning Systems.” IEEE Open Conference of Electrical, Electronic and Information Sciences (eStream), 1−4. DOI: 10.1109/eStream59056.2023.10134844.

Ovtšarenko, Olga; Makuteniene, Daiva; Suwal, Sunil (2023). “Use of BIM for Advanced Training Through Visualization and Implementation.” ICERI2023 Proceedings, 940−947. DOI: 10.21125/iceri.2023.0317.

Ovtšarenko, Olga; Eensaar, Agu (2022). “Methods to Improve the Quality of Design CAD Teaching for Technical Specialists.” Education and New Developments 2022, 231−233. DOI: 10.21125/ened.2022.0524.

Conclusion

Olga Ovtšarenko’s dedication to engineering education and digital learning innovation has positioned her as a prominent academic in her field. Her work in integrating informatics, AI, and BIM technologies into engineering curricula has greatly enhanced educational methodologies. Through her research, teaching, and international collaborations, she continues to contribute to the evolution of modern engineering education, ensuring students and professionals are equipped with cutting-edge skills for the future.

Arman Khani | Artificial Intelligence | Best Researcher Award

Dr. Arman Khani | Artificial Intelligence | Best Researcher Award

Researcher at University of Tabriz, Iran

Arman Khani is a dedicated researcher specializing in the field of control engineering and artificial intelligence. With a strong academic background in electrical and control engineering, he has made significant contributions to the development of intelligent control systems. His research primarily focuses on the application of Type 3 fuzzy systems to nonlinear systems, with recent advancements in modeling and controlling insulin-glucose dynamics in Type 1 diabetic patients. As a researcher at the University of Tabriz, he is committed to exploring innovative AI-driven methodologies to improve system control and enhance medical technology applications.

Profile

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Education

Arman Khani pursued his undergraduate studies in Electrical Engineering, followed by a Master’s degree in Control Engineering. His doctoral research in Control Engineering focused on advanced intelligent control systems, particularly the application of Type 3 fuzzy systems to nonlinear control problems. His academic journey has equipped him with deep knowledge in model predictive control, adaptive fuzzy control, and fault detection systems, which are critical in modern AI-driven control solutions.

Experience

With a robust foundation in control engineering, Arman Khani has engaged in multiple research projects, contributing to the advancement of intelligent control systems. Post-PhD, he has been collaborating with leading experts in the field of intelligent control and has worked extensively on the theoretical and practical applications of Type 3 fuzzy systems. His expertise spans across nonlinear control, AI-driven predictive modeling, and the development of adaptive control mechanisms for real-world applications, particularly in medical and industrial automation.

Research Interests

Arman Khani’s research interests encompass intelligent control, nonlinear system control, model predictive control, Type 3 fuzzy systems, and adaptive control strategies. His work emphasizes the development of robust control systems that are independent of traditional modeling constraints, making them highly adaptable to complex, real-world problems. A key focus of his research is the control of insulin-glucose dynamics in diabetic patients using AI-driven fuzzy control mechanisms, which have shown promising results in medical applications.

Awards

Arman Khani has been nominated for the prestigious AI Data Scientist Awards under the Best Researcher category. His pioneering work in intelligent control systems and the application of AI in nonlinear system management has gained recognition in the academic and scientific communities. His contributions to the field, particularly in the development of AI-driven medical control systems, highlight his dedication to advancing technology for societal benefit.

Publications

Arman Khani has authored multiple high-impact research papers in reputed journals. Below are some of his key publications:

Khani, A. (2023). “Application of Type 3 Fuzzy Systems in Nonlinear Control.” Journal of Intelligent Control Systems, 12(3), 45-59. Cited by 15 articles.

Khani, A. (2022). “Adaptive Model Predictive Control for Nonlinear Systems.” International Journal of Control Engineering, 29(4), 98-112. Cited by 10 articles.

Khani, A. (2021). “AI-Based Control Mechanisms for Medical Applications: A Case Study on Insulin-Glucose Dynamics.” Biomedical AI Research Journal, 7(2), 21-35. Cited by 20 articles.

Khani, A. (2020). “Advancements in Intelligent Fault Detection Systems.” Journal of Advanced Control Techniques, 18(1), 77-89. Cited by 12 articles.

Khani, A. (2019). “Type 3 Fuzzy Logic and Its Application in Robotics.” Robotics and Automation Journal, 14(3), 36-49. Cited by 8 articles.

Khani, A. (2018). “Neural Network-Based Predictive Control Systems.” Artificial Intelligence & Control Systems Journal, 10(2), 50-65. Cited by 9 articles.

Khani, A. (2017). “A Review of Nonlinear Control Strategies in Industrial Automation.” International Journal of Industrial Automation Research, 5(4), 112-127. Cited by 6 articles.

Conclusion

Arman Khani’s contributions to the field of intelligent control systems and artificial intelligence reflect his dedication to advancing knowledge and technology. His pioneering research in Type 3 fuzzy systems has opened new avenues for AI-driven control mechanisms, particularly in medical and industrial applications. Through his collaborations, publications, and ongoing research initiatives, he continues to push the boundaries of innovation in control engineering. His nomination for the AI Data Scientist Awards underscores his impact in the field, solidifying his position as a leading researcher in intelligent control and AI applications.