有效获取驾驶情景:成本最优情景获取的前瞻性评估框架

Christoph Glasmacher, Michael Schuldes, Hendrik Weber, Nicolas Wagener, Lutz Eckstein
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引用次数: 0

摘要

基于场景的测试在自动驾驶的安全保障中变得越来越重要。然而,如果只使用真实世界的数据,全面和充分地覆盖场景空间需要大量的努力和资源。为了解决这个问题,驱动场景生成方法被开发并更频繁地使用,但是用生成的数据代替真实数据的好处还没有被量化。此外,在给定的逻辑场景空间中,一组具体场景的覆盖范围尚未被预测。本文提出了一种方法来量化场景生成方法的成本最优使用,以在给定的质量约束和参数化下达到一定完整的场景空间覆盖。因此,使用元模型对基于知识和数据驱动的方法进行抽象,对场景生成和使用的各个过程步骤进行调查和评估。此外,提出了一种拟合元模型的方法,包括可达到的完全覆盖、质量标准和成本的预测。最后,通过对比不同的现实场景挖掘方法,本文示例性地考察了混合发电模型在技术、经济和质量约束下的适用性。
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Acquire Driving Scenarios Efficiently: A Framework for Prospective Assessment of Cost-Optimal Scenario Acquisition
Scenario-based testing is becoming increasingly important in safety assurance for automated driving. However, comprehensive and sufficiently complete coverage of the scenario space requires significant effort and resources if using only real-world data. To address this issue, driving scenario generation methods are developed and used more frequently, but the benefit of substituting generated data for real-world data has not yet been quantified. Additionally, the coverage of a set of concrete scenarios within a given logical scenario space has not been predicted yet. This paper proposes a methodology to quantify the cost-optimal usage of scenario generation approaches to reach a certainly complete scenario space coverage under given quality constraints and parametrization. Therefore, individual process steps for scenario generation and usage are investigated and evaluated using a meta model for the abstraction of knowledge-based and data-driven methods. Furthermore, a methodology is proposed to fit the meta model including the prediction of reachable complete coverage, quality criteria, and costs. Finally, the paper exemplary examines the suitability of a hybrid generation model under technical, economical, and quality constraints in comparison to different real-world scenario mining methods.
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