Experimental Design and Development of Novel Mathematical Model Governed State-of-Charge and Health Estimation for Lithium-Ion EV Batteries Using Hybrid AI/ML/DL Techniques
Implementing Organization
SASTRA University (SASTRA), Tamil Nadu
Principal Investigator
Dr. Manivannan Raman
SASTRA University (SASTRA), Tamil Nadu
CO-Principal Investigator
Dr. Swaminathan Venkataraman
SASTRA University (SASTRA), Tamil Nadu
About
The greenhouse effect can be controlled by renewable energy resources and Lithium-Ion batteries (LIBs) are the most prominent devices of scientific achievement to tackle energy supply and storage challenges, specifically for Electric Vehicles (EVs). In particular, the long-run and long-life cycle performance of EV batteries are essential for today's transportation. To achieve these, an efficient battery management system (BMS) is essential; which completely relays on the state-of-charge (SoC) and state-of-health (SoH) estimation. Many SoC and SoH techniques are available; howbeit more efficient, accurate and reliable SoC and SoH models will be developed using the electrical equivalent circuit model (EECM) governed by a new state-space mathematical model (SSMM) for LIBs with the hybrid AI/ML/DL in this project. The state-space mathematical model includes integer and fractional-order dynamical systems, neural networks, and memristor neural networks. The newly developed model is then analyzed and optimized using the Lyapunov stability theory and Linear Matrix Inequality (LMI) technique. The novel battery will be designed based on the proposed EECM governed SSMM, then it will be tested using SEMCO BMS testing equipment with various battery parameter conditions. The acquired data from the data acquisition device will then be used to train the AI/ML/DL for the battery parameter optimization. The optimized battery design will meet the challenges in the day-to-day lives of EVs, and the same can be commercialized and patented.
Patents
0
Source
Source
Science and Engineering Research Board (SERB), DST 2022-23
Science and Engineering Research Board (SERB), New Delhi
Anusandhan National Research Foundation (ANRF)
Quick Information
Area of Research
Mathematical Sciences
Start Year
2023
End Year
2026
Sanction Amount
₹ 36.16 L
Status
Ongoing
Contact
manivannan@maths.sastra.edu
Output
No. of Research Paper
00
Technologies (If Any)
00
No. of PhD Produced
00
No. of Patents
Filed :00
Grant :00
Disclaimer:
Information available on this portal is sourced from various organizations and is provided for informational purposes only. Users are advised to verify details from the respective official sources.
Please enter your details
Please provide your name and email to continue. Your details are saved in this browser for future use.
Latest Updates
Loading…
⚠️
You are leaving this website
You are about to be redirected to an external website that is not operated by
India Science, Technology & Innovation (ISTI) Portal.