论文标题
通过多范围的车辆速度计划和预测,引擎和治疗之后的连接HEV合作
Engine and Aftertreatment Co-Optimization of Connected HEVs via Multi-Range Vehicle Speed Planning and Prediction
论文作者
论文摘要
连接的车辆(CVS)具有可以利用的情境意识,以控制和优化动力总成系统。尽管已经通过生态驾驶和计划进行了广泛的研究,以提高CVS的能源效率,但此类技术对CVS热反应的影响尚未得到充分研究。利用连通性以优化基于CVS的热管理的关键挑战之一是相对较慢的热动力学,这需要使用长期预测范围来实现最佳性能。与基于V2V/V2I的短期预测不同,CV速度的长期预测很困难且容易出错。电源和热系统固有的多个时间尺度要求使用短期和长期车辆速度预览的可变时间尺度优化框架。为此,本文介绍了带有多范围的速度预览的模型预测控制器(MPC),用于连接的混合电动汽车(HEVS)的集成功率和热管理(IPTM)。 MPC的配制是为了管理发动机和电池之间的功率分解,同时执行电源和热(发动机冷却剂和催化转化器温度)的约束。 MPC利用了较短的退缩地平线和更长的缩小地平线来利用预测和优化。在更长的缩小视野中,车速估计是基于从与自我车辆相同路线上的连接车辆收集的数据。在密歇根州安阿伯(Ann Arbor)的现实世界城市驾驶周期中应用MPC的模拟结果,以证明拟议IPTM策略的有效性和避免燃料的潜力,这与与简历速度的长期预测相关的不确定性。
Connected vehicles (CVs) have situational awareness that can be exploited for control and optimization of the powertrain system. While extensive studies have been carried out for energy efficiency improvement of CVs via eco-driving and planning, the implication of such technologies on the thermal responses of CVs has not been fully investigated. One of the key challenges in leveraging connectivity for optimization-based thermal management of CVs is the relatively slow thermal dynamics, which necessitate the use of a long prediction horizon to achieve the best performance. Long-term prediction of the CV speed, unlike the V2V/V2I-based short-range prediction, is difficult and error-prone. The multiple timescales inherent to power and thermal systems call for a variable timescale optimization framework with access to short- and long-term vehicle speed preview. To this end, a model predictive controller (MPC) with a multi-range speed preview for integrated power and thermal management (iPTM) of connected hybrid electric vehicles (HEVs) is presented in this paper. The MPC is formulated to manage the power-split between the engine and the battery while enforcing the power and thermal (engine coolant and catalytic converter temperatures) constraints. The MPC exploits prediction and optimization over a shorter receding horizon and longer shrinking horizon. Over the longer shrinking horizon, the vehicle speed estimation is based on the data collected from the connected vehicles traveling on the same route as the ego-vehicle. Simulation results of applying the MPC over real-world urban driving cycles in Ann Arbor, MI are presented to demonstrate the effectiveness and fuel-saving potentials of the proposed iPTM strategy under the uncertainty associated with long-term predictions of the CV's speed.