While automated driving technology has achieved a tremendous progress, the scalable and rigorous testing and verification of safe automated and autonomous driving vehicles remain challenging. This paper proposes a learning-based falsification framework for testing the implementation of an automated or self-driving function in simulation. We assume that the function specification is associated with a violation metric on possible scenarios. Prior knowledge is incorporated to limit the scenario parameter variance and in a model-based falsifier to guide and improve the learning process. For an exemplary adaptive cruise controller, the presented framework yields non-trivial falsifying scenarios with higher reward, compared to scenarios obtained by purely learning-based or purely model-based falsification approaches.
翻译:虽然自动化驾驶技术取得了巨大进展,但安全自动和自主驾驶车辆的可扩缩和严格测试与核查仍具有挑战性,本文件提出一个基于学习的伪造框架,用于在模拟中测试自动或自行驾驶功能的落实情况,我们假定,功能规格与可能的违规情况衡量标准有关,先前已纳入知识以限制假想参数差异,并纳入一个基于模型的假想工具,以指导和改进学习过程。对于一个模范的适应性游轮控制器来说,所提出的框架产生非三边假想,与纯粹基于学习或纯粹基于模型的伪造做法相比,奖励更高。