Academic Experts
Academic Experts
Dr. Ritu Raj
ASSISTANT PROFESSOR (SR GRADE)
rituraj@jiit.ac.in
Biography

Ritu Raj was born in Jamshedpur, India, in 1988. He is serving as an Assistant Professor (Senior Grade) in the department of Electronics and Communication Engineering in Jaypee Institute of Information Technology Noida, India since July 2023. He received the Bachelor’s degree in Electronics and Communication Engineering from West Bengal University of Technology in 2010, the Master’s degree in Electrical Engineering (with Control Systems specialization) from National Institute of Technology Patna in 2013, and the Doctoral degree in Engineering from Indian Institute of Technology, Kharagpur in 2018. He was a postdoctoral researcher during 2019-2020 at Kyungpook National University, Republic of Korea. Prior to joining JIIT, he was on the faculty of the Electronics and Communication Engineering Department, Indian Institute of Information Technology Kota, India, during 2020-2023. His research domain includes control of complex systems, fuzzy systems, soft computing and control of renewable energy systems. He has taught courses such as Signals and Systems, Control Systems, Digital Control Systems, Basic Electronics and Fuzzy Systems Design. He is an Associate Editor of International Journal of Automation and Control and a Member of Asian Control Association, and Automatic Control & Dynamic Optimization Society. He is actively involved in the review process and technical committees of journal and conferences hosted by IEEE, Elsevier, Springer, Wiley etc.

Research Highlights

Dr. Ritu Raj’s research contributions lie at the intersection of fuzzy logic theory, controller simplification, and robust optimization for complex, nonlinear, and uncertain systems. Focusing extensively on Mamdani/Takagi–Sugeno and interval Type-2 fuzzy control frameworks, his work advances both theoretical and applied aspects of control engineering. A core theme is the development of simplified analytical models for fuzzy PID, PI, and PD controllers—reducing input dimensions while maintaining precision, thereby enhancing implementability and analytical tractability. This includes innovative designs such as one-dimensional input models, modified rule bases, and closed-form solutions that preserve robustness. His studies also address uncertainty handling through interval Type-2 fuzzy controllers and hybrid optimization methods, including Genetic Algorithms, Grey Wolf Optimization, and Artificial Bee Colony techniques, ensuring adaptive performance in dynamic environments. Applications of these advancements span benchmark systems and robotics, such as the planar snake robot, Twin Rotor MIMO systems, magnetic levitation setups, and the ball-and-beam system—earning recognition with a best-paper award in 2024. Dr. Raj’s publications also extend to structural and stability analysis of fuzzy control systems, offering fundamental insights into their operational properties. Beyond journal papers, his book chapters expand on modeling strategies, optimization-based tuning, and precompensated fuzzy control schemes. Overall, his research bridges rigorous control theory with practical engineering solutions, enabling more efficient, stable, and resilient fuzzy logic–based controllers across diverse applications, and contributing significantly to the advancement of intelligent control under uncertainty.

Google scholar - https://scholar.google.com/citations?user=vseeVWQAAAAJ&hl=en

Research Gate - https://www.researchgate.net/profile/Ritu-Raj-2

Areas Of Interest
  • Intelligent Control
  • Fuzzy Systems
  • Soft Computing
  • Control of Complex Systems
  • Machine Learning
Publications
  1. R. Raj, One-dimensional input space modelling of a simplified general type-2 Mamdani and Takagi–Sugeno Fuzzy Proportional Integral Derivative controller, Engineering Application of Artificial Intelligence, vol. 147, May 2025. (Elsevier). IF – 7.5. Q1, SCIE.
  2. A. Kumar, R. Raj, and A. Mohammadzadeh, Recent Advancements in Type-3 Fuzzy Logic Systems: A Comprehensive Review, IEEE Transactions on Emerging Topics in Computational Intelligence, vol. 9, no. 4, pp. 2676-2689, Aug. 2025. (IEEE). IF – 5.3. Q1, SCI.
  3. A. Kumar, R. Raj, A. Kumar, and B. Verma, Design of a Novel Mixed Interval Type-2 Fuzzy Logic Controller for 2-DOF Robot Manipulator with Payload, Engineering Application of Artificial Intelligence, vol. 123, April 2023. (Elsevier). IF – 7.802. Q1, SCIE.
  4. G. Bhandari, R. Raj, P.M. Pathak, and J-M Yang, Robust control of a planar snake robot based on interval type-2 Takagi–Sugeno fuzzy control using genetic algorithm, Engineering Applications of Artificial Intelligence, vol. 116, 2022. (Elsevier). IF - 7.80. Q1, SCIE.
  5. A. Kumar and R. Raj, Design of a fractional order two layer fuzzy logic controller for drug delivery to regulate blood pressure, Biomedical Signal Processing and Control, vol. 78, 2022. (Elsevier). IF - 5.076. Q1. SCIE.