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Energy Management of Fuel Cell Vehicles Based on Model Prediction Control Using Radial Basis Functions

机译:基于模型预测控制使用径向基函数的燃料电池汽车能量管理

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Energy management strategies can improve fuel cell hybrid electric vehicles’ dynamic and fuel economy, and the strategies based on model prediction control show great advantages in optimizing the power split effect and in real time. In this paper, the influence of prediction horizon on prediction error, fuel consumption, and real time was studied in detail. The framework of energy management strategy was proposed in terms of the model prediction control theory. The radial basis function neural network was presented as the predictor to obtain the short-term velocity in the future. A dynamic programming algorithm was applied to obtain optimized control laws in the prediction horizon. Considering the onboard controller’s real-time performance, we established a simple fuel cell vehicle mathematical model for simulation. Different prediction horizons were adopted on UDDS and HWFET to test the influence on prediction and energy management strategy. Simulation results showed the strategy performed well in fuel economy and real-time performance, and the prediction horizon of around 20?s was appropriate for this strategy.
机译:能源管理策略可以提高燃料电池混合动力电动汽车的动态和燃料经济性,基于模型预测控制的策略在优化功率分裂效果和实时方面具有很大的优势。在本文中,详细研究了预测地平线对预测误差,燃料消耗和实时的影响。在模型预测控制理论方面提出了能量管理策略框架。径向基函数神经网络被呈现为预测器,以便在未来获得短期速度。应用动态编程算法以获得预测地平线的优化控制规律。考虑到车载控制器的实时性能,我们建立了一种简单的燃料电池车辆数学模型进行仿真。在UDDS和HWFET上采用了不同的预测视野,以测试对预测和能源管理策略的影响。仿真结果表明,该策略在燃料经济性和实时性能方面表现良好,大约20秒的预测地平线适合这种策略。

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