GreenRoute: A Generalizable Fuel-Saving Vehicular Navigation Service

Yiran Zhao, Shuochao Yao, Dongxin Liu, Huajie Shao, Shengzhong Liu
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引用次数: 5

Abstract

This paper presents GreenRoute, a fuel-saving vehicular navigation system whose contribution is motivated by one of the key challenges in the design of autonomic services: namely, designing the service in a manner that reduces operating cost. GreenRoute achieves this end, in the specific context of fuel-saving vehicular navigation, by significantly improving the generalizability of fuel consumption models it learns (in order to recommend fuel-saving routes to drivers). By learning fuel consumption models that apply seamlessly across vehicles and routes, GreenRoute eliminates one of the key incremental costs unique to fuel-saving navigation: namely, the cost of upkeep with ever-changing fuel-consumption-specific route and vehicle parameters globally. Unlike shortest or fastest routes (that depend only on map topology and traffic), minimum-fuel routes depend additionally on the vehicle engine. This makes fuel-efficient routes harder to compute in a generic fashion, compared to shortest and fastest routes. The difficulty results in two additional costs. First, more route features need to be collected (and updated) for predicting fuel consumption, such as the nature of traffic regulators. Second, fuel prediction remains specific to the individual vehicle type, which requires continual upkeep with new car types and parameters. The contribution of this paper lies in deriving and implementing a fuel consumption model that avoids both of the above two sources of cost. To measure route recommendation quality, we test the system (using 21 vehicles and over 2400 miles driven in seven US cities) by comparing fuel consumption on our routes against both Google Maps' routes and the shortest routes. Results show that, on average, our routes save 10.8% fuel compared to Google Maps' routes and save 8.4% compared to the shortest routes. This is roughly comparable to services that maintain individualized vehicle models, suggesting that our low-cost models do not come at the expense of quality reduction.
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绿色路线:一个通用的节油车辆导航服务
本文介绍了GreenRoute,这是一种节油的车辆导航系统,其贡献源于自主服务设计中的一个关键挑战:即以降低运营成本的方式设计服务。在节油车辆导航的特定背景下,GreenRoute通过显著提高其学习的油耗模型的通用性(以便向驾驶员推荐节油路线)来实现这一目标。通过学习无缝应用于车辆和路线的油耗模型,GreenRoute消除了节油导航所独有的一个关键增量成本:即不断变化的油耗特定路线和车辆参数的维护成本。与最短或最快路线(仅取决于地图拓扑和交通)不同,最低燃料路线还取决于车辆的发动机。与最短和最快的路线相比,这使得以通用方式计算省油路线变得更加困难。这种困难导致了两个额外的成本。首先,需要收集(并更新)更多的路线特征来预测燃料消耗,比如交通监管机构的性质。其次,燃料预测仍然是特定于单个车型的,这需要不断地维护新的车型和参数。本文的贡献在于推导并实现了一个避免上述两种成本来源的燃料消耗模型。为了衡量路线推荐的质量,我们测试了该系统(使用21辆汽车,在美国7个城市行驶了2400多英里),将我们的路线与谷歌地图的路线和最短路线的油耗进行了比较。结果显示,与谷歌地图的路线相比,我们的路线平均节省10.8%的燃料,与最短的路线相比节省8.4%。这与保持个性化车型的服务大致相当,这表明我们的低成本车型不会以降低质量为代价。
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