The transportation sector accounts for about 25% of global greenhouse gas emissions. Therefore, an improvement of energy efficiency in the traffic sector is crucial to reducing the carbon footprint. Efficiency is typically measured in terms of energy use per traveled distance, e.g. liters of fuel per kilometer. Leading factors that impact the energy efficiency are the type of vehicle, environment, driver behavior, and weather conditions. These varying factors introduce uncertainty in estimating the vehicles' energy efficiency. We propose in this paper an ensemble learning approach based on deep neural networks (ENN) that is designed to reduce the predictive uncertainty and to output measures of such uncertainty. We evaluated it using the publicly available Vehicle Energy Dataset (VED) and compared it with several baselines per vehicle and energy type. The results showed a high predictive performance and they allowed to output a measure of predictive uncertainty.
翻译:基于神经网络集成的智能汽车能源效率不确定性预测
交通领域约占全球温室气体排放的25%。因此,提高交通工具的能源效率对于减少碳足迹至关重要。能源效率通常以能源消耗与行驶距离的比率来衡量,例如每公里燃料消耗的升数。影响能源效率的主要因素是车辆类型、环境、驾驶行为和天气条件。这些不同的因素会为车辆的能源效率评估引入不确定性。我们在本文中提出了一种基于深度神经网络集成学习方法(ENN)的预测方法,旨在减少预测的不确定性并输出此类不确定性的度量。我们使用公开可用的车辆能源数据集(VED)进行评估,并针对每种车辆和能源类型进行了多个基线的比较。结果表明了高效的预测表现,并允许输出有关预测不确定性的度量。