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A Deep Learning Engine Power Model for Estimating the Fuel Consumption of Heavy-Duty Trucks

机译:估计重型卡车油耗的深度学习引擎功率模型

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An accurate heavy-duty truck (HDT) fuel consumption model is essential for estimating the truck energy consumption and evaluation of the effectiveness of energy saving strategies. Most of the existing models calculate the fuel consumption based on vehicle kinematics. However, based on recent truck field test data, we found the estimation discrepancies of several models published were considerable since they cannot accurately estimate the vehicle engine operation states and their base energy consumption rates. The engine power estimation is an essential part of the energy consumption model, which is the most likely cause of the model discrepancy. This inspired us to develop a generic modeling approach for vehicle engine-power estimation with a deep learning based on field experimental data. The data collected from a wide range of truck field tests were used for model development and fuel consumption model evaluation. The results show that the deep learning approach enables a much more accurate estimation of HDT engine power, and when applied as the input to the fuel consumption models (e.g., VT-CPFM, MOVES), average fuel estimation error is reduced to 13.71% from 28.9% which is the error resulted from the tractive power method. Besides, once calibrated with a small data set, it could be applied to various traffic scenarios without re-calibration. In addition, the Long Short-Term Memory (LSTM), a neural network structure component of the model, can accurately depict the fuel consumption during engine braking, which is largely missing in conventional HDT fuel models. The proposed model can benefit energy consumption related transportation planning and traffic operation studies that require more accurate vehicle fuel consumption estimation without detailed and complicated engine dynamics information.
机译:准确的重型卡车(HDT)燃料消耗模型对于估算卡车能耗和评估节能策略的有效性至关重要。现有的大多数模型都基于车辆运动学来计算燃油消耗。但是,根据最近的卡车现场测试数据,我们发现已发布的几种模型的估计差异非常大,因为它们无法准确地估计车辆发动机的运行状态及其基本能耗。发动机功率估算是能耗模型的重要组成部分,这很可能是模型差异的原因。这启发了我们开发一种通用的建模方法,用于基于实地实验数据进行深度学习的车辆发动机功率估算。从广泛的卡车现场测试中收集的数据用于模型开发和油耗模型评估。结果表明,深度学习方法能够更准确地估计HDT发动机的功率,并且当作为燃料消耗模型(例如VT-CPFM,MOVES)的输入时,平均燃料估计误差可降低至13.71% 28.9%,这是牵引功率法导致的误差。此外,一旦使用小的数据集进行校准,就可以将其应用于各种交通场景,而无需重新校准。此外,该模型的神经网络结构组件长短期记忆(LSTM)可以准确地描述发动机制动过程中的油耗,而传统的HDT燃油模型则缺少该油耗。所提出的模型可以使与能源消耗相关的运输计划和交通运营研究受益,这些研究需要更准确的车辆燃料消耗估算,而无需详细而复杂的发动机动力学信息。

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