Published January 1, 2022
| Version v1
Journal article
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Driver Modeling Through Deep Reinforcement Learning and Behavioral Game Theory
Creators
- 1. Bilkent Univ, Dept Mech Engn, TR-06800 Ankara, Turkey
Description
In this work, a synergistic combination of deep reinforcement learning and hierarchical game theory is proposed as a modeling framework for behavioral predictions of drivers in highway driving scenarios. The modeling framework presented in this work can be used in a high-fidelity traffic simulator consisting of multiple human decision-makers. This simulator can reduce the time and effort spent for testing autonomous vehicles by allowing safe and quick assessment of self-driving control algorithms. To demonstrate the fidelity of the proposed modeling framework, game-theoretical driver models are compared with real human driver behavior patterns extracted from two different sets of traffic data.
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bib-c999ac33-c6d6-441c-b5e1-4195979ac209.txt
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