基于神经网络的多模式动力分流混合动力汽车在线能量管理

Mina Naguib, Lucas Bruck, A. Emadi
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引用次数: 0

摘要

混合动力电动汽车(hev)配备了传统的内燃机(ICE)和一个或多个电动机(EMs)。HEV多模式功率分割动力系统架构改善了燃油消耗,电池寿命和车辆排放。然而,由于涉及多种操作模式,这种体系结构以其控制复杂性而闻名。全局最优控制策略通常被用作混合动力汽车的基准,但由于其庞大的计算负荷,无法在电子控制单元(ECU)上实现。本文提出了一种基于神经网络(NN)的混合动力汽车能量管理系统(EMS)来控制混合动力汽车的模式和功率分配。首先,采用全局最优控制策略——动态规划(DP),在大范围工况下实现驱动循环的最优油耗。然后,使用从DP离线收集的数据对所提出的基于神经网络的EMS进行训练和测试。结果表明,所提出的基于神经网络的EMS能够预测混合动力汽车的模式和功率分配,仅比DP获得的最优油耗高2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network-Based Online Energy Management for Multi-Mode Power Split Hybrid Vehicles
Hybrid electric vehicles (HEVs) are equipped with a traditional internal combustion engine (ICE) and one or more electrical motors (EMs). HEV multi-mode power-split powertrain architecture improves fuel consumption, battery life, and vehicle emissions. However, this architecture is known for its control complexity due to the involvement of several modes of operation. Global optimal control strategies are commonly utilized as a benchmark in HEVs however they cannot be implemented on the electronic control unit (ECU) due to their extensive computational load. In this paper, a neural network (NN) -based energy management system (EMS) is proposed to control the mode and the power split of an HEV. Firstly, dynamic programming (DP), a global optimal control strategy, is utilized to achieve optimal fuel consumption using drive cycles at a wide range of conditions. Then, the proposed NN-based EMS is trained and tested using the data collected offline from the DP. The results show that the proposed NN-based EMS is able to predict the mode and power split of an HEV with only 2% higher than the optimal fuel consumption obtained by the DP.
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