Performance Study of a Developed Rule-Based Control Strategy with Use of an ECMS Optimization Control Algorithm on a Plug-In Hybrid Electric Vehicle

Michal Ušiak, Michael Böhm, Kamil Šebela
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引用次数: 1

Abstract

Abstract Greenhouse gases jeopardize world’s climate. A significant amount of these pollutants is produced by road vehicles, so their producers are forced to reduce their emissions significantly. This means that every car manufacturer is expanding their electrified vehicle range. Fully electric vehicles are the best way for long-term elimination of greenhouse gases production in road transport. However, in the short term it is not possible to switch all vehicles to EVs. Temporary solutions are hybrid electric vehicles, which offer a compromise between conventional and electric vehicles. In addition to the right choice of hybrid powertrain and correct scaling of its components, it is also important to develop a suitable control strategy for its energy management. The main goal of this work is to compare the performance of the rule-based control strategy with the built-in local optimization algorithm ECMS in GT-SUITETM software. ECMS means Equivalent Consumption Minimization Strategy and is based on an optimization of selected control parameters in each time step of the driving cycle simulation. A fuel efficiency improvement is assessed on a selected plug-in hybrid vehicle. Results of WLTC driving cycle simulations in charge sustaining mode (state of charge of the battery at the beginning and at the end of the simulation is the same) shows fuel consumption of 5 l/100km for rule based control strategy and 4.2 l/100km for ECMS algorithm. This means that ECMS can achieve more than 16% improvement for this particular vehicle.
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基于ECMS优化控制算法的规则控制策略在插电式混合动力汽车上的性能研究
温室气体危害世界气候。这些污染物中有很大一部分是由道路车辆产生的,因此它们的生产商被迫大幅减少排放。这意味着每家汽车制造商都在扩大电动汽车的生产范围。纯电动汽车是长期消除道路运输中温室气体排放的最佳途径。然而,短期内不可能把所有车辆都换成电动汽车。暂时的解决方案是混合动力汽车,它提供了传统汽车和电动汽车之间的折衷方案。除了正确选择混合动力系统和正确的部件比例外,制定合适的能量管理控制策略也很重要。本工作的主要目的是比较基于规则的控制策略与GT-SUITETM软件中内置的局部优化算法ECMS的性能。ECMS的意思是等效消耗最小化策略,是基于在驾驶循环仿真的每个时间步选择的控制参数的优化。燃油效率的改进是评估在一个选定的插电式混合动力汽车。充电维持模式(模拟开始和结束时电池的充电状态相同)下的WLTC行驶循环仿真结果显示,基于规则控制策略的油耗为5 l/100km, ECMS算法的油耗为4.2 l/100km。这意味着ECMS可以为这款特定车辆实现超过16%的改进。
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