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Intelligent Vehicle Power Control Based on Machine Learning of Optimal Control Parameters and Prediction of Road Type and Traffic Congestion

机译:基于机器学习的最优控制参数的智能汽车功率控制以及道路类型和交通拥堵的预测

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摘要

Previous research has shown that current driving conditions and driving style have a strong influence over a vehicle''s fuel consumption and emissions. This paper presents a methodology for inferring road type and traffic congestion (RTu00026;TC) levels from available onboard vehicle data and then using this information for improved vehicle power management. A machine-learning algorithm has been developed to learn the critical knowledge about fuel efficiency on 11 facility-specific drive cycles representing different road types and traffic congestion levels, as well as a neural learning algorithm for the training of a neural network to predict the RTu00026;TC level. An online University of Michigan-Dearborn intelligent power controller (UMD_IPC) applies this knowledge to real-time vehicle power control to achieve improved fuel efficiency. UMD_IPC has been fully implemented in a conventional (nonhybrid) vehicle model in the powertrain systems analysis toolkit (PSAT) environment. Simulations conducted on the standard drive cycles provided by the PSAT show that the performance of the UMD_IPC algorithm is very close to the offline controller that is generated using a dynamic programming optimization approach. Furthermore, UMD_IPC gives improved fuel consumption in a conventional vehicle, alternating neither the vehicle structure nor its components.
机译:先前的研究表明,当前的驾驶条件和驾驶方式对车辆的油耗和排放有很大影响。本文提出了一种方法,可从可用的车载数据推断出道路类型和交通拥堵(RTu00026; TC),然后将这些信息用于改善的车辆功率管理。已经开发了一种机器学习算法,以学习有关11种特定于设施的驾驶循环中代表不同道路类型和交通拥堵水平的燃油效率的关键知识,以及一种用于训练神经网络以预测RTu00026的神经学习算法。 ; TC级别。密歇根大学迪尔伯恩分校在线智能功率控制器(UMD_IPC)将这一知识应用于实时车辆功率控制,以提高燃油效率。 UMD_IPC已在动力总成系统分析工具包(PSAT)环境中的常规(非混合动力)车辆模型中完全实现。通过PSAT提供的标准行驶周期进行的仿真表明,UMD_IPC算法的性能非常接近使用动态编程优化方法生成的离线控制器。此外,UMD_IPC改善了传统车辆的燃油消耗,既不改变车辆结构也不改变其组件。

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