Enhancing Autonomous Vehicle Performance Through Adaptive FPGA Acceleration and Reinforcement Learning for Dynamic Environments
Project ID: AIRG/2023/EEE/05/01
Funding Source: AUST Internal Research Grant
Project Awarded: 1st April, 2024
Principal Investigator:
Dr. Fakir Sharif Hossain
Associate Professor, EEE Department, AUST
Co-principal Investigator/s:
Ashek Seum
Lecturer, CSE Department, AUST
Md. Reasad Zaman Chowdhury
Lecturer, CSE Department, AUST
Project Duration: 2 years
Budget approved: 10,00,000/-
Expected Research Outcomes:
The expected outcomes of this research project include improved safety, adaptability, efficiency and user experience in AV systems.
- The integration of sensor data and reinforcement learning within the FPGA is expected to lead to improved real-time decision-making for AVs.
- The dynamic selection and configuration of FPGA hardware accelerators are anticipated to optimize resource utilization and improve task-specific performance.
- The system’s ability to respond to changing environmental conditions such as traffic congestion and weather is expected to enhance the vehicle’s adaptability and safety.
- Over time, the reinforcement learning agent should continuously improve its decision-making abilities, leading to more efficient and safer autonomous driving.
- By dynamically optimizing hardware resources and decision-making, the method should lead to increased operational efficiency for AVs.