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Data-driven fuel consumption estimation: A multivariate adaptive regression spline approach

机译:数据驱动的油耗估算:多元自适应回归样条方法

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Providing guidance and information to drivers to help them make fuel-efficient route choices remains an important and effective strategy in the near term to reduce fuel consumption from the transportation sector. One key component in implementing this strategy is a fuel-consumption estimation model. In this paper, we developed a mesoscopic fuel consumption estimation model that can be implemented into an eco-routing system. Our proposed model presents a framework that utilizes large-scale, real-world driving data, clusters road links by free-flow speed and fits one statistical model for each of cluster. This model includes predicting variables that were rarely or never considered before, such as free-flow speed and number of lanes. We applied the model to a real-world driving data set based on a global positioning system travel survey in the Philadelphia-Camden-Trenton metropolitan area. Results from the statistical analyses indicate that the independent variables we chose influence the fuel consumption rates of vehicles. But the magnitude and direction of the influences are dependent on the type of road links, specifically free-flow speeds of links. A statistical diagnostic is conducted to ensure the validity of the models and results. Although the real-world driving data we used to develop statistical relationships are specific to one region, the framework we developed can be easily adjusted and used to explore the fuel consumption relationship in other regions. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在短期内,向驾驶员提供指导和信息以帮助他们选择省油的路线仍然是一项重要而有效的策略,以减少运输部门的油耗。实施此策略的一个关键组成部分是燃油消耗估算模型。在本文中,我们开发了一种介观的油耗估算模型,该模型可以在生态路由系统中实施。我们提出的模型提出了一个框架,该框架利用大规模,真实世界的驾驶数据,通过自由流动速度对道路链接进行聚类,并为每个聚类拟合一个统计模型。该模型包括预测很少或从未考虑过的变量,例如自由流动速度和车道数量。我们基于费城-卡姆登-特伦顿市区的全球定位系统旅行调查,将模型应用于现实世界的驾驶数据集。统计分析的结果表明,我们选择的自变量会影响车辆的燃油消耗率。但是影响的大小和方向取决于道路连接的类型,特别是连接的自由流动速度。进行统计诊断以确保模型和结果的有效性。尽管我们用来建立统计关系的现实驾驶数据特定于一个地区,但我们开发的框架可以轻松调整并用于探索其他地区的油耗关系。 (C)2017 Elsevier Ltd.保留所有权利。

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