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Big data driven dynamic driving cycle development for busses in urban public transportation

机译:大数据驱动的城市公交客车动态驾驶周期开发

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Field-relevant reference driving cycles, equivalent to real-life operation, are a prerequisite for the consistent development and testing of vehicles, their components, and control algorithms. Furthermore they are the basis for certification and type testing. However, a static cycle can easily be detected during vehicle testing, so that optimized control parameters could be used to obtain improved emission results under test conditions. In this paper, a novel method is described and applied to generate a dynamic driving cycle that statistically matches the real-life operation of a vehicle. The analysis is performed based on an extensive field data set obtained during an automated measurement campaign of public busses for more than a full year with 27,365 h of operation and 315,583 km driven in the city of Hamburg (Germany). The data collected is statistically compared to the static reference cycles New European Driving Cycle (NEDC) and Worldwide harmonized Light Vehicles Test Procedure (WLTP). Two micro trip models with increasing complexity are described and fit to the data set. All models are quantitatively compared to the measured data set applying a Quality of Fit (QoF) indicator. Based on the highest consistency to field data, a non-deterministic driving cycle generator is developed and its output is statistically compared to the original measurement. In contrast to the existing reference cycles, the dynamic output of the non-deterministic driving cycle generator presented in this paper is statistically proven to be consistent with real-life operation of public busses in the urban environment of Hamburg. (C) 2017 Elsevier Ltd. All rights reserved.
机译:与现场相关的参考驾驶周期(等同于实际操作)是车辆,其零部件和控制算法进行一致开发和测试的前提。此外,它们是认证和类型测试的基础。但是,在车辆测试期间很容易检测到静态循环,因此可以在测试条件下使用优化的控制参数来获得改进的排放结果。在本文中,描述了一种新颖的方法并将其应用于生成统计上与车辆的实际运行匹配的动态驾驶周期。该分析是基于在汉堡市(德国)运行27,365小时,行驶315,583 km超过一年的公共巴士自动测量活动中获得的大量现场数据集进行的。将收集到的数据与静态参考周期(新欧洲行驶周期(NEDC)和全球统一轻型车辆测试程序(WLTP))进行统计比较。描述了两个复杂度不断增加的微行程模型,它们适用于数据集。使用拟合质量(QoF)指标,将所有模型与测量数据集进行定量比较。基于与现场数据的最高一致性,开发了一个不确定的驾驶周期发生器,并将其输出与原始测量值进行统计比较。与现有的参考周期相比,本文介绍的不确定性驾驶周期生成器的动态输出经统计证明与汉堡城市环境中公共巴士的实际运行情况一致。 (C)2017 Elsevier Ltd.保留所有权利。

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