从APPES中提取的特征,用于对重型车辆驾驶员进行分类

Iulian Carpatorea, Sławomir Nowaczyk, Thorsteinn S. Rögnvaldsson, J. Lodin
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引用次数: 1

摘要

提高系统性能是所有领域追求的目标,车辆也不例外。在像欧洲这样的地方,大部分货物都是通过陆路运输的,车队运营商必须要有最好的效率,这导致了努力改善卡车运营的各个方面。我们关注的是驾驶员和他们在燃油消耗方面的表现。有些相关因素在现有的自然主义数据中没有考虑到,因为测量它们是不可行的。另一种选择是设置实验来调查驾驶员的性能,但这些实验很昂贵,而且结果并不总是决定性的。例如,司机通常知道实验的参数,并调整他们的行为。本文提出了一种方法,解决了在自然环境中根据油耗对驾驶员性能进行分类的一些挑战。我们使用专家知识来转换数据,并在一个新的空间中探索得到的结构。我们还表明,在APPES中发现的区域提供了与燃料消耗相关的有用信息。可以使用APPES模式和燃料消耗之间的联系,例如,将集群驱动程序划分为与高性能或低性能相对应的组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Features extracted from APPES to enable the categorization of heavy-duty vehicle drivers
Improving the performance of systems is a goal pursued in all areas and vehicles are no exception. In places like Europe, where the majority of goods are transported over land, it is imperative for fleet operators to have the best efficiency, which results in efforts to improve all aspects of truck operations. We focus on drivers and their performance with respect to fuel consumption. Some of the relevant factors are not accounted for in available naturalistic data, since it is not feasible to measure them. An alternative is to set up experiments to investigate driver performance but these are expensive and the results are not always conclusive. For example, drivers are usually aware of the experiment's parameters and adapt their behavior. This paper proposes a method that addresses some of the challenges related to categorizing driver performance with respect to fuel consumption in a naturalistic environment. We use expert knowledge to transform the data and explore the resulting structure in a new space. We also show that the regions found in APPES provide useful information related to fuel consumption. The connection between APPES patterns and fuel consumption can be used, for example, cluster drivers in groups that correspond to high or low performance.
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