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Eco-driving control of connected and automated hybrid vehicles in mixed driving scenarios

机译:混合驾驶场景中连接和自动混合动力车辆的生态驾驶控制

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摘要

This paper proposes a bi-level eco-driving control strategy for connected and automated hybrid electric vehicles (CAHEVs) under mixed driving scenarios. First, the hybrid electric vehicle powertrain is modelled, and the communications via Vehicle-to-Vehicle (V2V) and Vehicle-to-Infrastructure (V2I) are introduced as the main data sources for the decision-making of the control system. Next, the problem is divided into three objectives, namely, (1) safe driving, (2) energy management, and (3) exhaust emission reduction. Based on the real-time road information, the driving scenario classifier (DSC) works towards determining the corresponding vehicle mode on which the cost function can be adjusted accordingly. The simulation is carried out in a realistic urban traffic simulation environment in SUMO. The results show that with the proposed model predictive control (MPC)-based strategy applied, safe driving in a trip involving a mixture of driving scenarios can be guaranteed throughout the entire driving. In addition, in comparison to the rule-based benchmark strategy, the proposed strategy can reduce the fuel consumption by 34.10% with battery kept in a healthy state of charge range, and the exhaust emissions (HC, CO, and NOx) are reduced by 25.36%, 72.30%, and 30.39%, respectively, which demonstrates the effectiveness and robustness of the proposed MPC-based strategy for CAHEVs.
机译:本文提出了一种在混合驾驶场景下连接和自动混合动力电动车(CAHEV)的双级生态驾驶控制策略。首先,将混合动力电动车辆动力系进行建模,并且通过车辆到车辆(V2V)和基础设施(V2I)的通信被引入作为控制系统的决策的主要数据源。接下来,该问题分为三个目标,即(1)安全驾驶,(2)能量管理,和(3)排气减少。基于实时道路信息,驱动场景分类器(DSC)朝向确定可以相应地调整成本函数的相应车辆模式。该模拟在Sumo的现实城市交通仿真环境中进行。结果表明,随着所施加的拟议模型预测控制(MPC)的策略,在整个驾驶中可以保证涉及驾驶场景的混合的行程中的安全驾驶。另外,与基于规则的基准策略相比,所提出的策略可以通过保持在健康充电范围的电池的电池减少34.10%,排气排放(HC,CO和NOx)减少分别为25.36%,72.30%和30.39%,展示了拟议的基于MPC的CAHEV策略的有效性和稳健性。

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