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A Novel Energy Management Strategy Design Methodology of a PHEV Based on Data-Driven Approach and Online Signal Analysis

机译:基于数据驱动方法和在线信号分析的PHEV新型能量管理策略设计方法

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This paper introduces an energy management strategy design method for a plug-in hybrid electric vehicle based on the data-driven approach and online signal analysis. It includes two parts, mode division strategy design, and power distribution strategy design. Using the random forest in data mining technology to analyze optimization results of dynamic programming can quickly extract key information and establish optimal and understandable mode division strategy with high precision and stability directly. Besides, integrating the classic “Engine optimal operating curve control” strategy with wavelet transform and Markov prediction, which not only enhances the adaptability of the strategy to different driving conditions but also improves the fuel economy by reducing the impact of transient power on the engine operation. At the same time, to improve the prediction accuracy of the algorithm without increasing the computational complexity, this paper adds a prediction result correction function to the first-order Markov prediction model to reduce the impact of slow update of the probability matrix on prediction accuracy. The simulation results show the average prediction error of the improved Markov prediction model is reduced by 5.3% and the new energy management strategy designed reduces fuel consumption by 8.28% at the cost of a small increase in electricity consumption.
机译:本文介绍了一种基于数据驱动方法和在线信号分析的插入式混合动力电动车的能量管理策略设计方法。它包括两部分,模式分割策略设计和配电策略设计。使用数据挖掘技术中的随机森林来分析动态编程的优化结果,可以快速提取关键信息,直接建立高精度和稳定性的最佳和可理解的模式划分策略。此外,与小波变换和马尔可夫预测集成了经典的“发动机最优运行曲线控制”策略,这不仅通过降低了瞬态电力对发动机操作的影响而增强了对不同驾驶条件的适应性,而且还提高了燃料经济性。同时,为了提高算法的预测准确性而不增加计算复杂性,本文将预测结果校正功能增加到一阶马尔可夫预测模型,以减少概率矩阵慢更新对预测精度的影响。仿真结果表明,改进的马尔可夫预测模型的平均预测误差减少了5.3%,设计的新能源管理策略在电力消耗量的小幅增加时将燃料消耗降低了8.28%。

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