The increase in complexity of autonomous systems is accompanied by a need of data-driven development and validation strategies. Advances in computer graphics and cloud clusters have opened the way to massive parallel high fidelity simulations to qualitatively address the large number of operational scenarios. However, exploration of all possible scenarios is still prohibitively expensive and outcomes of scenarios are generally unknown apriori. To this end, the authors propose a method based on bayesian optimization to efficiently learn generative models on scenarios that would deliver desired outcomes (e.g. collisions) with high probability. The methodology is integrated in an end-to-end framework, which uses the OpenSCENARIO standard to describe scenarios, and deploys highly configurable digital twins of the scenario participants on a Virtual Test Bed cluster.
翻译:随着自主系统复杂性的增加,需要以数据驱动的开发和验证战略。计算机图形和云层群的进展为大规模平行高忠诚度模拟开辟了道路,以便从质量上应对大量操作设想方案。然而,对所有可能设想方案的探索仍然费用高得令人望而却步,而且假设方案的结果通常并不为人所知。为此,作者提议了一种基于刺刀优化的方法,以有效学习能够产生高概率预期结果的设想方案(如碰撞)的基因化模型。该方法被纳入一个端到端框架,该框架利用开放的SCENARIO标准来描述设想方案,并在虚拟测试B组中部署情景参与者高度可配置的数字双胞胎。