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Customizing driving cycles to support vehicle purchase and use decisions: Fuel economy estimation for alternative fuel vehicle users

机译:自定义驾驶周期以支持车辆购买和使用决策:替代燃料车辆用户的燃料经济性估算

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Wider deployment of alternative fuel vehicles (AFVs) can help with increasing energy security and transitioning to clean vehicles. Ideally, adopters of AFVs are able to maintain the same level of mobility as users of conventional vehicles while reducing energy use and emissions. Greater knowledge of AFV benefits can support consumers' vehicle purchase and use choices. The Environmental Protection Agency's fuel economy ratings are a key source of potential benefits of using AFVs. However, the ratings are based on pre-designed and fixed driving cycles applied in laboratory conditions, neglecting the attributes of drivers and vehicle types. While the EPA ratings using pre-designed and fixed driving cycles may be unbiased they are not necessarily precise, owning to large variations in real-life driving. Thus, to better predict fuel economy for individual consumers targeting specific types of vehicles, it is important to find driving cycles that can better represent consumers' real-world driving practices instead of using pre-designed standard driving cycles. This paper presents a methodology for customizing driving cycles to provide convincing fuel economy predictions that are based on drivers' characteristics and contemporary real-world driving, along with validation efforts. The methodology takes into account current micro-driving practices in terms of maintaining speed, acceleration, braking, idling, etc., on trips. Specifically, using a large-scale driving data collected by in-vehicle Global Positioning System as part of a travel survey, a micro-trips (building block) library for California drivers is created using 54 million seconds of vehicle trajectories on more than 60,000 trips, made by 3000 drivers. To generate customized driving cycles, a new tool, known as Case Based System for Driving Cycle Design, is developed. These customized cycles can predict fuel economy more precisely for conventional vehicles vis-a-vis AFVs. This is based on a consumer's similarity in terms of their own and geographical characteristics, with a sample of micro-trips from the case library. The AFV driving cycles, created from real-world driving data, show significant differences from conventional driving cycles currently in use. This further highlights the need to enhance current fuel economy estimations by using customized driving cycles, helping consumers make more informed vehicle purchase and use decisions. (C) 2016 Elsevier Ltd. All rights reserved.
机译:替代燃料汽车(AFV)的更广泛部署可以帮助提高能源安全性并过渡到清洁汽车。理想情况下,AFV的采用者能够保持与传统车辆使用者相同的机动性,同时减少能源使用和排放。对AFV好处的更多了解可以支持消费者的车辆购买和使用选择。环境保护署的燃油经济性等级是使用AFV潜在好处的关键来源。但是,这些等级基于实验室条件下应用的预先设计和固定的驾驶循环,忽略了驾驶员和车辆类型的属性。尽管使用预先设计的固定行驶周期的EPA等级可能是无偏见的,但由于现实驾驶中存在很大差异,它们不一定是精确的。因此,为了更好地预测针对特定类型车辆的个人消费者的燃油经济性,重要的是找到能够更好地代表消费者实际驾驶习惯的驾驶循环,而不是使用预先设计的标准驾驶循环。本文提出了一种自定义驾驶周期的方法,以提供令人信服的燃油经济性预测,该预测基于驾驶员的特征和当代实际驾驶情况以及验证工作。该方法在旅行中在保持速度,加速,制动,空转等方面考虑了当前的微型驾驶实践。具体来说,使用车载全球定位系统收集的大规模驾驶数据作为旅行调查的一部分,利用超过60,000次旅行中的5400万秒的车辆轨迹,为加利福尼亚驾驶员创建了微旅行(构建基)库,由3000位驾驶员制作。为了生成定制的驾驶周期,开发了一种新工具,称为“基于案例的驾驶周期设计系统”。这些定制的周期可以相对于AFV更加精确地预测传统车辆的燃油经济性。这是基于消费者在自身和地理特征方面的相似性,以及案例库中的微行程样本。根据实际驾驶数据创建的AFV驾驶周期显示出与当前使用的常规驾驶周期的显着差异。这进一步强调了需要通过使用自定义的驾驶循环来增强当前的燃油经济性估算,以帮助消费者做出更明智的车辆购买和使用决策。 (C)2016 Elsevier Ltd.保留所有权利。

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