Learning of Aggregate Features for Comparing Drivers Based on Naturalistic Data

Iulian Carpatorea, Sławomir Nowaczyk, Thorsteinn S. Rögnvaldsson, M. Elmer, J. Lodin
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引用次数: 4

Abstract

Fuel used by heavy duty trucks is a major cost for logistics companies, and therefore improvements in this area are highly desired. Many of the factors that influence fuel consumption, such as the road type, vehicle configuration or external environment, are difficult to influence. One of the most under-explored ways to lower the costs is training and incentivizing drivers. However, today it is difficult to measure driver performance in a comprehensive way outside of controlled, experimental setting. This paper proposes a machine learning methodology for quantifying and qualifying driver performance, with respect to fuel consumption, that is suitable for naturalistic driving situations. The approach is a knowledge-based feature extraction technique, constructing a normalizing fuel consumption value denoted Fuel under Predefined Conditions (FPC), which captures the effect of factors that are relevant but are not measured directly. The FPC, together with information available from truck sensors, is then compared against the actual fuel used on a given road segment, quantifying the effects associated with driver behavior or other variables of interest. We show that raw fuel consumption is a biased measure of driver performance, being heavily influenced by other factors such as high load or adversary weather conditions, and that using FPC leads to more accurate results. In this paper we also show evaluation the proposed method using large-scale, real-world, naturalistic database of heavy-duty vehicle operation.
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基于自然数据的驾驶员比较聚合特征学习
重型卡车使用的燃料是物流公司的主要成本,因此在这方面的改进是非常需要的。许多影响油耗的因素,如道路类型、车辆配置或外部环境,都很难影响。降低成本的途径之一是培训和激励司机。然而,今天很难在受控的实验环境之外以全面的方式衡量驾驶员的表现。本文提出了一种机器学习方法,用于量化和确定驾驶员在油耗方面的表现,该方法适用于自然驾驶情况。该方法是一种基于知识的特征提取技术,构建了一个归一化的燃料消耗值,即预定义条件下的燃料(fuel under预定义Conditions, FPC),该值捕获了相关但不能直接测量的因素的影响。然后,将FPC与卡车传感器提供的信息与给定路段的实际燃料消耗量进行比较,量化与驾驶员行为或其他感兴趣的变量相关的影响。我们表明,原始燃料消耗是驾驶员性能的一个有偏差的衡量标准,受到其他因素(如高负载或恶劣天气条件)的严重影响,使用FPC可以获得更准确的结果。本文还利用大型、真实、自然的重型车辆运行数据库对所提出的方法进行了评价。
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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