Risk-Aware Motion Planning For Automated Vehicle Among Human-Driven Cars

2019 AMERICAN CONTROL CONFERENCE (ACC)(2019)

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摘要
We consider the maneuver planning problem for automated vehicles when they share the road with human-driven cars and interact with each other using a finite set of maneuvers. Each maneuver is calculated considering input constraints, actuator disturbances and sensor noise, so that we can use a maneuver automaton to perform higher-level planning that is robust against lower-level effects. In order to model the behavior of human-driven cars in response to the intent of the automated vehicle, we use control improvisation to build a probabilistic model. To accommodate for potential mismatches between the learned human model and human driving behaviors, we use a conditional value-at-risk objective function to obtain the optimal policy for the automated vehicle. We demonstrate through simulations that our motion planning framework consisting of an interactive human driving model and risk-aware motion planning strategy makes it possible to adapt to different traffic conditions and confidence levels.
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关键词
automated vehicle,human-driven cars,interactive human driving model,risk-aware motion planning,sensor noise,robust control,probabilistic model,optimal policy,finite set
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