重型车辆的路线敏感油耗模型

IF 0.6 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY
Alexander Schoen, A. Byerly, E. C. Santos, Z. Ben-Miled
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引用次数: 1

摘要

本文研究了数据驱动模型的能力,以估计来自同一车队的不同重型车辆在不同路线上超过1公里路段的瞬时燃料消耗。模型使用三种不同的技术创建:参数化、线性回归和人工神经网络。所提出的模型使用了从车辆速度、质量和道路坡度中获得的特征,这些特征可以很容易地从远程信息处理设备中获得,此外还使用了功率起飞(PTO)活动时间,这需要在一些重型车辆中捕获配件所需的功率。通过k-fold交叉验证,提高了这些模型在训练数据选择方面的鲁棒性。此外,计算了模型固有的低估或高估偏差,并用于抵消新路线的油耗估计。研究表明,目标应用程序决定了模型特征的选择。事实上,结果表明,根据不同的职业,使用相同输入特征的线性回归和神经网络模型能够充分区分两种燃料消耗
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Route-Sensitive Fuel Consumption Models for Heavy-Duty Vehicles
This article investigates the ability of data-driven models to estimate instantaneous fuel consumption over 1 km road segments from different routes for different heavy-duty vehicles from the same fleet. Models are created using three different techniques: parametric, linear regression, and artificial neural networks. The proposed models use features derived from vehicle speed, mass, and road grade, which can be easily obtained from telematics devices, in addition to power take-off (PTO) active time, which is needed to capture the power requested by accessories in several heavy-duty vehicles. The robustness of these models with respect to the training data selection is improved by using k-fold cross-validation. Moreover, the inherent underestimation or overestimation bias of the model is calculated and used to offset the fuel consumption estimates for new routes. The study shows that the target application dictates the choice of model features. In fact, the results indicate that depending on the vocation the linear regression and neural network models, which use the same input features, are able to adequately differentiate between the fuel consumption of two
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来源期刊
SAE International Journal of Commercial Vehicles
SAE International Journal of Commercial Vehicles TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
1.80
自引率
0.00%
发文量
25
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