Proving ground has been a critical component in testing and validation for Connected and Automated Vehicles (CAV). Although quite a few world-class testing facilities have been under construction over the years, the evaluation of proving grounds themselves as testing approaches has rarely been studied. In this paper, we present the first attempt to systematically evaluate CAV proving grounds and contribute to a generative sample-based approach to assessing the representation of traffic scenarios in proving grounds. Leveraging typical use cases extracted from naturalistic driving events, we establish a strong link between proving ground testing results of CAVs and their anticipated public street performance. We present benchmark results of our approach on three world-class CAV testing facilities: Mcity, Almono (Uber ATG), and Kcity. We successfully show the overall evaluation of these proving grounds in terms of their capability to accommodate real-world traffic scenarios. We believe that when the effectiveness of a testing ground itself is validated, the testing results would grant more confidence for CAV public deployment.
翻译:验证地是连接和自动化车辆测试和验证的一个关键组成部分。虽然多年来建造了一些世界级的测试设施,但很少研究作为测试方法的验证地本身的评价。在本文件中,我们首次尝试系统地评估CAV验证地,并促成一种基于基因的样本方法,用以评估验证场中交通情况的代表性。我们利用自然驾驶事件产生的典型使用案例,在证明CAV的地面测试结果及其预期的公共街道性能之间建立了强有力的联系。我们介绍了我们在三个世界级的CAV测试设施:Mcity、Almono(Uber ATG)和Kcity上采用的方法的基准结果。我们成功地展示了对这些验证地的总体评价,说明它们是否有能力适应现实世界交通情况。我们认为,当测试场本身的有效性得到验证时,测试结果将给CAV的公共部署带来更大的信心。