论文标题

通过增强学习的自动驾驶汽车进行自动安全覆盖和测试

Towards Automated Safety Coverage and Testing for Autonomous Vehicles with Reinforcement Learning

论文作者

Cho, Hyun Jae, Behl, Madhur

论文摘要

自动驾驶汽车(AV)安全性测试可能需要进行的闭环验证超出了传统的测试方法和离散验证的范围。验证使自动驾驶汽车系统在该系统释放后可能在日常驾驶时可能会遇到的情况或情况进行测试。这些方案可以直接在物理(闭合过程的验证地面)或虚拟(模拟预定义场景)环境中控制,也可以在现实世界中操作(开放性测试或随机生成的场景)中自发地出现。 在AV测试中,模拟主要有两个目的:协助开发强大的自动驾驶汽车并在释放前测试和验证AV。挑战是由于涉及大量变量(大多数是连续的),因此可以从上述每个来源构建的场景变化数量众多。即使连续变量离散化,可能的组合数实际上也不可见。为了克服这一挑战,我们建议使用强化学习(RL)为AV软件实现生成故障示例和意外的流量情况。尽管强化学习算法在游戏和一些机器人操作中取得了显着的结果,但这种技术并未被广泛扩展到更具挑战性的现实世界应用,例如自动驾驶。

The kind of closed-loop verification likely to be required for autonomous vehicle (AV) safety testing is beyond the reach of traditional test methodologies and discrete verification. Validation puts the autonomous vehicle system to the test in scenarios or situations that the system would likely encounter in everyday driving after its release. These scenarios can either be controlled directly in a physical (closed-course proving ground) or virtual (simulation of predefined scenarios) environment, or they can arise spontaneously during operation in the real world (open-road testing or simulation of randomly generated scenarios). In AV testing, simulation serves primarily two purposes: to assist the development of a robust autonomous vehicle and to test and validate the AV before release. A challenge arises from the sheer number of scenario variations that can be constructed from each of the above sources due to the high number of variables involved (most of which are continuous). Even with continuous variables discretized, the possible number of combinations becomes practically infeasible to test. To overcome this challenge we propose using reinforcement learning (RL) to generate failure examples and unexpected traffic situations for the AV software implementation. Although reinforcement learning algorithms have achieved notable results in games and some robotic manipulations, this technique has not been widely scaled up to the more challenging real world applications like autonomous driving.

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