Optimising situation-based behaviour of autonomous vehicles

M. Krodel, K. Kuhnert
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引用次数: 1

Abstract

Reinforcement learning (RL) is a method which provides true learning capabilities regarding situation-based actions. RL-systems explore and self-optimise actions for situations in a defined environment. This paper describes the research of a driver (assistance) system based on pure reinforcement learning in the framework of an autonomous vehicle. The target of this research is to determine to what extent RL-based systems serve as an enhancement or even an alternative to classical concepts of autonomous intelligent vehicles such as modelling or neural nets.
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自动驾驶车辆基于情境的行为优化
强化学习(RL)是一种为基于情境的行为提供真正学习能力的方法。强化学习系统在一个确定的环境中探索和自我优化行动。本文介绍了在自动驾驶汽车框架下基于纯强化学习的驾驶员(辅助)系统的研究。本研究的目标是确定基于强化学习的系统在多大程度上可以作为自动智能车辆的经典概念(如建模或神经网络)的增强甚至替代方案。
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