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Estimation of fuel flow for telematics-enabled adaptive fuel and time efficient vehicle routing

机译:启用远程信息处理的自适应燃油和省时的车辆路线估计燃油流量

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This paper reports the development of vehicle fuel flow estimation algorithms based entirely on signals available through the standard OBD-II interface. The paper also illustrates the use of the resulting fuel flow estimates for adaptation and optimization. The fuel flow estimation algorithm functionality differs depending on the powertrain type (gasoline versus diesel, naturally aspirated versus boosted, conventional versus hybrid electric, etc.). To facilitate fuel and time efficient vehicle routing, an adaptation algorithm based on the recursive least squares (Kalman filtering) is defined. This adaptation algorithm learns the expected values and the variances of fuel consumption and travel time from multiple drives of a given vehicle over a given route segment. The use of adaptation from data reduces the need for accurate predictive modeling of vehicle fuel consumption and travel time which depend on difficult to predict and incorporate into the model traffic conditions, topographical road information, weather conditions, and inherently present vehicle-to-vehicle, driver-to-driver and fuel variability. The use of the adaptive models for optimization of vehicle travel is showcased with a simple example of optimizing time of day of departure decisions for a service vehicle. Finally, the use of a large interconnected network of adaptive models for vehicle fleet operation optimization is discussed.
机译:本文报告了完全基于可通过标准OBD-II接口获得的信号的车辆燃油流量估算算法的发展。本文还说明了将所得燃料流量估算值用于自适应和优化的情况。燃料流量估算算法的功能因动力总成类型而异(汽油与柴油,自然吸气与增压,常规与混合动力等)。为了促进燃料和时间效率高的车辆路线选择,定义了基于递归最小二乘的自适应算法(卡尔曼滤波)。该自适应算法从给定车辆在给定路线段上的多个驱动器学习期望值以及燃料消耗和行驶时间的方差。使用数据自适应可以减少对车辆燃油消耗和行驶时间的准确预测模型的需求,这取决于难以预测并将交通状况,地形道路信息,天气状况以及车辆本身固有的现状纳入模型中,驾驶员与驾驶员之间的差异性和燃油可变性。通过优化服务车辆的出发时间决策的简单示例,展示了使用自适应模型来优化车辆行驶。最后,讨论了使用大型互连的自适应模型网络进行车队运营优化。

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