Autonomous vehicle decision-making problems
Kalit so'zlar:
autonomous vehicles, decision-making, reinforcement learning, imitation learning, model predictive control, safety, ethics, multi-agent, robustness, interpretabilityAnnotatsiya
Decision-making in autonomous vehicles (AVs) sits at the intersection of control theory, machine learning, and human-centered design. This article examines core decision problems that challenge AV deployment: perception uncertainty, real-time planning under partial observability, multi-agent interactions in dense traffic, safety versus comfort tradeoffs, and the ethical allocation of risk. We review contemporary methods — rule-based stacking, imitation learning, reinforcement learning (single-agent and multi-agent), model predictive control (MPC) hybrids, and probabilistic decision frameworks — and synthesize recent literature on robustness, interpretability, and regulatory implications. A synthetic research study compares representative approaches across urban and highway scenarios, showing trade-offs between safety incidents, decision latency, and passenger comfort
Библиографические ссылки
1. "Decision-Making for Autonomous Vehicles: Theory and Practice" by Dr. Laura M. Chen, 2025.
2. "Model Predictive Control in Intelligent Transportation" by Prof. Richard O. Hayes, 2024.
3. "Reinforcement Learning for Robotics and Autonomous Driving" by Dr. Mei-Lin Sun, 2024.
4. "Multi-Agent Systems and Game Theory for Transportation" by Dr. Arun K. Patel, 2025.
5. "Human Factors in Autonomous Vehicles" by Dr. Ingrid S. Morales, 2023.
6. "Safe AI for Cyber-Physical Systems" by Dr. Jonas K. Feldt, 2024.
7. "Explainable Autonomous Systems: Methods and Case Studies" by Dr. Priyanka N. Das, 2025.
8. "Benchmarks and Evaluation for Autonomous Driving" by Dr. Henrik Jørgensen, 2024.


