论文标题
用于连接和自动化车辆的测试场景库生成:自适应框架
Testing Scenario Library Generation for Connected and Automated Vehicles: An Adaptive Framework
论文作者
论文摘要
如何为连接和自动化车辆(CAVS)生成测试场景库是该行业面临的主要挑战。在先前的研究中,为了评估场景的操纵挑战,经常使用替代模型(SMS),而没有明确的对正在测试的CAV的了解。但是,通常存在SM和正在测试的CAV之间的性能差异,并且可能导致产生次优场景库。在本文中,提出了一种自适应测试方案库的生成(ATSLG)方法来解决此问题。特定CAV模型的定制测试方案库是通过自适应过程生成的。为了补偿性能差异并利用CAV的每项测试,贝叶斯优化技术将用于基于分类的高斯过程回归和新设计的采集功能。与预定的库相比,可以通过自定义库以更有效的方式对CAV进行测试和评估。为了验证所提出的方法,进行了案例研究,结果表明该方法可以进一步加速评估过程。
How to generate testing scenario libraries for connected and automated vehicles (CAVs) is a major challenge faced by the industry. In previous studies, to evaluate maneuver challenge of a scenario, surrogate models (SMs) are often used without explicit knowledge of the CAV under test. However, performance dissimilarities between the SM and the CAV under test usually exist, and it can lead to the generation of suboptimal scenario libraries. In this paper, an adaptive testing scenario library generation (ATSLG) method is proposed to solve this problem. A customized testing scenario library for a specific CAV model is generated through an adaptive process. To compensate the performance dissimilarities and leverage each test of the CAV, Bayesian optimization techniques are applied with classification-based Gaussian Process Regression and a new-designed acquisition function. Comparing with a pre-determined library, a CAV can be tested and evaluated in a more efficient manner with the customized library. To validate the proposed method, a cut-in case study was performed and the results demonstrate that the proposed method can further accelerate the evaluation process by a few orders of magnitude.