RDE Calibration—Evaluating Fundamentals of Clustering Approaches to Support the Calibration Process

Sascha Krysmon, Johannes Claßen, S. Pischinger, Georgi Trendafilov, Marc Düzgün, Frank Dorscheidt
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Abstract

The topics of climate change and pollutant emission reduction are dominating societal discussions in many areas. In automotive development, with the introduction of real driving emissions (RDE) testing and the upcoming EU7 legislation, there are endless boundary conditions and potential scenarios that need to be evaluated. In terms of vehicle calibration, this is leading to a strong focus on alternative approaches such as virtual calibration. Due to the flexibility of virtual test environments and the variety of RDE scenarios, the amount of data collected is rapidly increasing. Supporting the calibration engineers in using the available data and identifying relevant information and test scenarios requires efficient approaches to data analysis. This paper therefore discusses the potential of data clustering to support this process. Using a previously developed approach for event detection in emission calibration, a methodology for the automatic categorization of events is presented. Approaches to clustering algorithms (hierarchical, partitioning, and density-based) are discussed and applied to data of interest. Their suitability for different signals is investigated exemplarily, and the relevant inputs are analyzed for their usability in calibration procedures. It is shown which clustering approaches have the potential to be implemented in the vehicle calibration process to provide added value to data evaluation by calibration engineers.
RDE校准-支持校准过程的聚类方法的评估基础
气候变化和污染物减排是当今社会诸多领域讨论的主题。在汽车发展中,随着实际驾驶排放(RDE)测试的引入和即将出台的欧盟7国法规,有无数的边界条件和潜在的场景需要评估。就车辆校准而言,这导致了对虚拟校准等替代方法的强烈关注。由于虚拟测试环境的灵活性和RDE场景的多样性,收集的数据量正在迅速增加。支持校准工程师使用可用数据,识别相关信息和测试场景,需要有效的数据分析方法。因此,本文讨论了数据聚类支持这一过程的潜力。利用先前开发的发射校准事件检测方法,提出了一种事件自动分类的方法。讨论了聚类算法的方法(分层、分区和基于密度),并将其应用于感兴趣的数据。举例研究了它们对不同信号的适用性,并分析了相关输入在校准过程中的可用性。结果表明,聚类方法有潜力在车辆校准过程中实现,为校准工程师的数据评估提供附加价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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