Affiliation:
1. School of Transportation Science and Engineering, Harbin Institute of Technology, Harbin 150090, China
2. Department of Software, Harbin Institute of Technology, Harbin 150001, China
Abstract
Decision-making is an important component of autonomous driving perception,
decision-making, planning, and control pipeline, which undertakes the task of
how the ego vehicle makes high-level decision-making behaviors (such as lane
change and car following) after sensing the environmental state, and then these
high-level decision-making behaviors can be transmitted to the downstream
planning and control module for specific low-level action execution. Based on
the method of deep reinforcement learning (specifically, Deep Q network (DQN)
and its variants), an integrated lateral and longitudinal decision-making model
for autonomous driving is proposed in a multilane highway environment with both
autonomous driving vehicle (ADV) and manual driving vehicle (MDV). The classic
MOBIL and IDM models are used for the lateral and longitudinal decisions of MDV
(i.e., lane changing and car following), while the lateral and longitudinal
decisions of ADV are dominated by deep reinforcement learning models. In
addition, this paper also uses the nonlinear kinematic bicycle model and
two-point visual control model to realize the low-level control of both MDV and
ADV. By setting a reasonable state, action, and reward function, this paper has
carried out a large number of simulation experiments on the proposed autonomous
driving decision-making model based on deep reinforcement learning in a
three-lane road environment. The results show that under such scenario setting
conditions, the deep reinforcement learning-based model proposed in this paper
performs well in autonomous driving safety and travel efficiency. At the same
time, when compared with the classical rule-based decision-making model
(MOBIL&IDM), it is found that the model proposed in this paper can
significantly achieve better results in episode rewards after stable training.
In addition, through a large number of hyper-parameter tuning experiments, the
performance of DQN, DDQN, and dueling DQN models, which are also deep
reinforcement learning-based decision-making models, under different
hyper-parametric configurations is compared and analyzed, which can provide a
valuable reference for the specific scenario application of these models.
Funder
Natural
Science Foundation of Heilongjiang Province
Subject
Strategy and Management,Computer Science Applications,Mechanical Engineering,Economics and Econometrics,Automotive Engineering
Cited by
1 articles.
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