MADHIARASAN M | Renewable Energy Technologies | Best Researcher Award

MADHIARASAN M | Renewable Energy Technologies | Best Researcher Award

Dr MADHIARASAN M, French Institute of Pondicherry, India

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EDUCATIONAL PROFILE

Dr. Madhiarasan M holds an impressive educational background in electrical engineering. He earned his Ph.D. in Electrical Engineering from Anna University, Chennai (2018). He completed his M.E. in Electrical Drives and Embedded Control with a CGPA of 8.403 (2013) and a B.E. in Electrical and Electronics Engineering from Anna University (2010). His recent postdoctoral fellowships include roles at the Transilvania University of Braศ™ov (2022-2023) and IIT Roorkee (2020-2022). These credentials position him as a scholar with robust expertise in both engineering theory and practical applications.

FIELD OF INTEREST & ACADEMIC PROJECTS

Dr. Madhiarasanโ€™s research interests span SCADA-based supervisory control, robotics for power transmission line inspection, and hybrid neural network models for renewable energy forecasting. His UG and PG projects focused on control systems and robotics, while his Ph.D. tackled neural network applications in energy forecasting. His research aligns with global energy sustainability initiatives, showcasing his commitment to solving pressing electrical engineering challenges.

EXPERIENCE

He has accumulated extensive academic and research experience, starting as a lecturer in 2010. He has taught at various institutions, including the Madras Institute of Technology and Anna University. As an assistant professor at the Bharat Institute of Engineering and Technology (2018-2020), and later as a research fellow, his contributions to academia are significant. His current role at the French Institute of Pondicherry further extends his research prowess.

AWARDS

Among his accolades, Dr. Madhiarasan received the UGC Fellowship and Transilvania Fellowship for young researchers. In 2023, he was honored with the Best Researcher Award at the 10th Global Research Awards on Artificial Intelligence and Robotics. His accolades highlight his excellence in research, particularly in AI and renewable energy applications.

PROJECT GUIDANCE

His project supervision includes the development of IoT-based systems, including energy monitoring and robotics for military use. His work has practical applications, particularly in power transmission monitoring and control, emphasizing his capability to guide impactful projects in the field of electrical and computer engineering.

WORKSHOPS/SEMINARS/CONFERENCE ORGANIZATION

Dr. Madhiarasan has organized key academic events, such as the World Entrepreneursโ€™ Day TECHFEST 2023 and national workshops on research writing. He also co-coordinated AICTE-sponsored faculty development programs on artificial intelligence at IIT Roorkee. His leadership in academic forums demonstrates his active engagement in sharing knowledge with the broader research community.

EDITOR & REVIEWER

He has contributed as an editor for various international journals and special issues, including those on renewable energy and embedded technologies. His editorial work in prestigious journals like Sensors (MDPI) reflects his strong academic standing in the field of electrical engineering and renewable energy research.

CO-CURRICULAR CERTIFICATIONS

Dr. Madhiarasan has completed numerous certifications related to wind and solar energy, electronics, and design thinking, which reflect his commitment to continuous learning. These certifications from top global universities via Coursera strengthen his expertise in energy systems and innovation.

ACHIEVEMENTS

Throughout his career, Dr. Madhiarasan has excelled in academics, including ranking second in his M.E. program. His extracurricular achievements include awards in oratory competitions and television appearances. His participation in national seminars and debates further demonstrates his well-rounded profile as a scholar and communicator.

RESEARCH FOCUS

M. Madhiarasan’s research primarily focuses on applying artificial neural networks (ANNs) and machine learning techniques to wind speed forecasting. His work includes developing methods to optimize neural network architectures, such as selecting the appropriate number of hidden neurons for improved prediction accuracy. He has explored various ANN models, including backpropagation, radial basis function, and spiking neural networks, enhancing their performance with optimization algorithms like Grey Wolf Optimization. Additionally, his studies cover different forecast horizons, long-term predictions, and comparative analyses of network architectures for wind energy applications. ๐ŸŒฌ๏ธ๐ŸŒ๐Ÿค–๐Ÿ“Š

CONCLUSION

Dr. Madhiarasan M is highly suitable for the Best Researcher Award. With his comprehensive educational background, extensive research experience, and significant contributions to the field of electrical engineering and renewable energy, he stands out as a leader in academic and industrial collaborations. His awards, editorial roles, and leadership in organizing academic events further support his candidacy for this prestigious honor.

PUBLICATION TOP NOTES

Comparative analysis on hidden neurons estimation in multi layer perceptron neural networks for wind speed forecasting

A novel criterion to select hidden neuron numbers in improved back propagation networks for wind speed forecasting

Accurate prediction of different forecast horizons wind speed using a recursive radial basis function neural network

Analysis of artificial neural network: architecture, types, and forecasting applications

Long-Term Wind Speed Forecasting using Spiking Neural Network Optimized by Improved Modified Grey Wolf Optimization Algorithm

A comprehensive review of sign language recognition: Different types, modalities, and datasets

ELMAN Neural Network with Modified Grey Wolf Optimizer for Enhanced Wind Speed Forecasting

New criteria for estimating the hidden layer neuron numbers for recursive radial basis function networks and its application in wind speed forecasting

Performance investigation of six artificial neural networks for different time scale wind speed forecasting in three wind farms of coimbatore region

Analysis of artificial neural network performance based on influencing factors for temperature forecasting applications

A Novel Method to Select Hidden Neurons in ELMAN Neural Network for Wind Speed Prediction Application

Agnese Rapposelli | Energy and Sustainability | Best Researcher Award

Agnese Rapposelli | Energy and Sustainability | Best Researcher Award

Prof Agnese Rapposelli, University “G. D’Annunzio” of Chieti-Pescara, Italy

Dr. Agnese Rapposelli is a Senior Assistant Professor of Economic Statistics at “G. d’Annunzio” University of Chieti-Pescara, Italy, since November 2021. She holds a Ph.D. in Statistics from the same university and achieved National Scientific Qualification as Associate Professor in 2017. Her research focuses on dynamic methodologies for evaluating complex systems, statistical models for spatial analysis, and the impact of environmental pollution on health ๐ŸŒ๐Ÿ“Š. Dr. Rapposelli has also been a visiting scholar at Warwick Business School and holds professional qualifications as a chartered accountant and accounting auditor.

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Education

๐ŸŽ“ Achieving academic excellence, I earned a Ph.D. in Statistics from “G. dโ€™Annunzio” University of Chieti-Pescara, Italy, with a thesis on efficiency evaluation and Data Envelopment Analysis under Prof. Mauro Coliโ€™s guidance in April 2006. I previously completed a Laurea in Economics, summa cum laude, at the same university in July 2002, finishing in 3.5 years instead of 4. My high school journey culminated in a Scientific Lyceum diploma with a focus on lab courses and languages (French/English), scoring 54/60 in July 1998. Professionally, I am a certified Chartered Accountant since November 2012 and an Accounting Auditor since January 2014. ๐Ÿ“Š๐Ÿ“šโœˆ๏ธ

Experience

Dr. Agnese Rapposelli has been a dedicated lecturer at “G. D’Annunzio” University of Chieti-Pescara, Italy. Since 2013, they have taught courses in Statistics, Econometrics, and Quantitative Methods, all held in English. ๐Ÿ“Š From 2019-2024, Dr. [Name] taught Statistics and Basic Econometrics for the PhD in Accounting, Management, and Business Economics program. ๐Ÿ“ˆ In 2014-2015, they lectured on Quantitative and Qualitative Methods in Management and Business Administration. ๐Ÿ“š Additionally, in 2013-2014, they focused on Econometric Methods in Finance and Business Administration. ๐Ÿ“‰ Their commitment to education and expertise in these fields have made them a valuable asset to the university. ๐ŸŽ“

Research project

From 2024-2025, I serve as Principal Investigator for the University of Chieti-Pescara’s PRIN 2022 PNRR project on the circular economy through the lens of mathematics for signal processing ๐Ÿ”๐Ÿ”„. In 2022, I investigated statistical models for spatial analysis ๐Ÿ“Š๐ŸŒ, and in 2021, I focused on spatial-temporal models to examine environmental pollution’s impact on human health ๐ŸŒฟ๐Ÿงฌ. From 2020 to 2019, my research analyzed corporate governance and financial performance ๐Ÿ“ˆ๐Ÿข. Earlier, from 2007-2013, I participated in evaluating complex systems ๐Ÿงฉ. In 2007-2008, I evaluated airline efficiency โœˆ๏ธ, and in 2002-2003, I worked on strategic planning and performance measurement for Air One SpA ๐Ÿ“‰๐Ÿ“Š.

Awards

From 2024-2025, I served as the Principal Investigator for the PRIN 2022 PNRR research project โ€œCircular Economy from the Mathematics for Signal Processing Perspectiveโ€ at the University of Chieti-Pescara. I received the Best ItAIS Conference Paper award for my study on carbon emissions and economic growth, presented in 2022. My work on waste sector efficiency earned special mentions at international workshops in 2021 and 2022. I also won the Best Track Award in 2021. In 2020 and 2019, I was ranked first in my department for MIUR research funds based on scientific production. ๐Ÿ“Š๐ŸŒ๐Ÿ†

Research focus

A Rapposelli’s research focuses primarily on environmental efficiency and waste management, as well as the inclusion of disabled individuals in the labor market. His work involves evaluating the joint environmental and cost performance of municipal waste systems, the impact of green technology and environmental policies on ecological footprints, and the efficiency of urban waste services. Additionally, Rapposelli has conducted significant research on the employment of disabled people in Italy, analyzing the effectiveness of laws and policies aimed at their inclusion. His studies employ methods such as data envelopment analysis to assess efficiency and policy implications. ๐ŸŒโ™ป๏ธ๐Ÿ‘จโ€๐Ÿฆฝ๐Ÿ“Š

Publication top notes

Evaluating joint environmental and cost performance in municipal waste management systems through data envelopment analysis: Scale effects and policy implications

Improving waste production and recycling through zero-waste strategy and privatization: An empirical investigation

The impact of green technology innovation, environmental taxes, and renewable energy consumption on ecological footprint in Italy: Fresh evidence from novel dynamic ARDLย โ€ฆ

Monitoring environmental efficiency: an application to Italian provinces

Inclusion of disabled people in the Italian labour market: an efficiency analysis of law 68/1999 at regional level

Efficiency evaluation in an airline company: some empirical results

Employment of disabled people in the private sector. An analysis at the level of Italian Provinces according to article 13 of law 68/1999

The factors affecting Italian provincesโ€™ separate waste-collection rates: An empirical investigation

Assessing efficiency of urban waste services and the role of tariff in a circular economy perspective: An empirical application for Italian municipalities

Regional performance trends in providing employment for persons with disabilities: Evidence from Italy

Minseok Ryu | Energy and Sustainability | Best Researcher Award

Minseok Ryu | Energy and Sustainability | Best Researcher Award

Assist Prof Dr Minseok Ryu, Arizona State University, United States

Dr. Minseok Ryu is an Assistant Professor at Arizona State Universityโ€™s School of Computing and Augmented Intelligence since August 2023 ๐Ÿ‘จโ€๐Ÿซ. He earned his Ph.D. in Industrial and Operations Engineering from the University of Michigan in 2020 ๐ŸŽ“. His research focuses on optimization and machine learning applications in power systems and privacy-preserving federated learning ๐Ÿ”โšก. Dr. Ryu has held positions at Argonne National Laboratory and Los Alamos National Laboratory ๐Ÿข. He has received numerous awards, including the 2024 Alliance Fellowship at Mayo Clinic and ASU and multiple research highlights from the DOE-ASCR ๐ŸŒŸ.

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Education

Minseok Ryu holds a Ph.D. in Industrial and Operations Engineering from the University of Michigan, Ann Arbor, which he completed in May 2020 ๐ŸŽ“. Before that, he earned an M.S. in Aerospace Engineering from KAIST, Daejeon, Korea, in February 2014 ๐Ÿš€. His academic journey began with a B.S. in Aerospace Engineering from KAIST, which he obtained in February 2012 โœˆ๏ธ.

Employment

Minseok Ryu is currently an Assistant Professor at the School of Computing and Augmented Intelligence at Arizona State University in Tempe, AZ (Aug 2023โ€“present) ๐Ÿ“š. Previously, he was a Postdoctoral Appointee at the Mathematics and Computer Science Division, Argonne National Laboratory, Lemont, IL (Aug 2020โ€“Jul 2023) ๐Ÿ”ฌ. He also worked as a Research Assistant with the Applied Mathematics and Plasma Physics Group, Los Alamos National Laboratory, Los Alamos, NM (May 2019โ€“Aug 2019) ๐Ÿงช. Additionally, he served as a Post Baccalaureate Research Fellow at the Kellogg School of Management, Northwestern University, Evanston, IL (Nov 2014โ€“Apr 2015) ๐ŸŽ“.

Honors & Awards

Minseok Ryu has achieved numerous accolades throughout his career. In 2024, he was honored as an Alliance Fellow by the Mayo Clinic and ASU Alliance for Health Care and participated in the Faculty Summer Residency program. His research was highlighted by the Department of Energyโ€™s Advanced Scientific Computing Research (DOE-ASCR) in both 2023 and 2022. Ryu received the Rackham Graduate Student Research Grant in 2016 and multiple fellowships from the University of Michigan in 2015. Additionally, he earned the National Science Foundation Student Award from INFORMS Computing Society. Earlier, he received the National Scholarship from the Korean government (2010-2013) and accolades from KAIST, including the Department Honor and Best Technical Poster Award in 2010. ๐ŸŽ“๐Ÿ”ฌ๐Ÿ“Š

Presentations

Minseok Ryu has made significant contributions to various fields, presenting his research at numerous esteemed conferences. His work includes heuristic algorithms for geomagnetically induced current blocking devices (Paris, June 2024) ๐ŸŒโšก, generating columns (Phoenix, Oct 2023) ๐Ÿ“, and differentially private algorithms for constrained federated learning (Seattle and Amsterdam, 2023) ๐Ÿ”’๐Ÿค–. He has also focused on privacy-preserving federated learning frameworks (Arlington, Aug 2022; Virtual, June 2022) ๐Ÿ›ก๏ธ๐Ÿ“ก. Additionally, he has explored optimal power flow control, transmission expansion planning, and robust optimization in healthcare staffing across various platforms including INFORMS, SIAM, and international symposiums ๐ŸŒ๐Ÿง‘โ€โš•๏ธ

Research focus

Minseok Ryu’s research primarily focuses on data-driven optimization and privacy-preserving techniques, particularly in federated learning and power systems. His work spans several areas, including robust optimization under uncertainty, privacy-preserving distributed control, and federated learning frameworks. Key applications include improving nurse staffing models, optimizing electric grids against geomagnetic disturbances, and developing secure frameworks for federated learning in biomedical research. Ryu’s contributions are significant in ensuring privacy and robustness in distributed systems and optimization problems. ๐Ÿง ๐Ÿ”’๐Ÿ’ก๐Ÿ”‹๐Ÿ‘ฉโ€โš•๏ธ

Publication top notes

Data-Driven Distributionally Robust Appointment Scheduling over Wasserstein Balls

APPFL: Open-Source Software Framework for Privacy-Preserving Federated Learning

A Privacy-Preserving Distributed Control of Optimal Power Flow

An extended formulation of the convex recoloring problem on a tree

Nurse Staffing under Absenteeism: A Distributionally Robust Optimization Approach

Differentially private federated learning via inexact ADMM with multiple local updates

Mitigating the Impacts of Uncertain Geomagnetic Disturbances on Electric Grids: A Distributionally Robust Optimization Approach

Algorithms for Mitigating the Effect of Uncertain Geomagnetic Disturbances in Electric Grids

Development of an Engineering Education Framework for Aerodynamic Shape Optimization

Enabling End-to-End Secure Federated Learning in Biomedical Research on Heterogeneous Computing Environments with APPFLx