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Prediction of vehicle driving conditions with incorporation of stochastic forecasting and machine learning and a case study in energy management of plug-in hybrid electric vehicles

机译:加上随机预测和机器学习的车辆驾驶条件的预测和插入式混合动力电动汽车能源管理案例研究

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摘要

Prediction of short-term future driving conditions can contribute to energy management of plug-in hybrid electric vehicles and subsequent improvement of their fuel economy. In this study, a fused short-term forecasting model for driving conditions is established by incorporating the stochastic forecasting and machine learning. The Markov chain is applied to calculate the transition probability of historical driving data, by which the stochastic prediction is conducted based on the Monte Carlo algorithm. Then, a neural network is employed to learn the current driving information and main knowledge after the simplified correlation of characteristic parameters, and meanwhile the genetic algorithm is adopted to optimize the initial weight and thresholds of networks. Finally, the short-term velocity prediction is achieved by combining them, and the overall performance is evaluated by four typical criteria. Simulation results indicate that the proposed fusion algorithm outperforms the single Markov model, the radial basis function neural network and the back propagation neural network with respect to the prediction precision and the difference distribution between expectation and prediction values. In addition, a case study is conducted by applying the built prediction algorithm in energy management of a plug-in hybrid electric vehicle, and simulation results highlight that the proposed algorithm can supply preferable velocity prediction, thereby facilitating improvement of the operating economy of the vehicle.
机译:短期未来驾驶条件的预测可以有助于插入式混合动力电动汽车的能源管理,随后改善其燃料经济性。在本研究中,通过纳入随机预测和机器学习来建立一种用于驾驶条件的融合短期预测模型。 Markov链应用于计算历史驾驶数据的转换概率,基于蒙特卡罗算法进行随机预测。然后,采用神经网络来学习特性参数简化相关性之后的电流驾驶信息和主要知识,并且同时采用遗传算法来优化网络的初始重量和阈值。最后,通过组合它们来实现短期速度预测,并且通过四个典型标准评估整体性能。仿真结果表明,所提出的融合算法优于单个马尔可夫模型,径向基函数神经网络和后传播神经网络相对于预测精度和期望预测值之间的差异分布。此外,通过在插入式混合动力电动车的能量管理中应用建立的预测算法进行案例研究,并且模拟结果突出显示所提出的算法可以提供优选的速度预测,从而促进了车辆运营经济的改善。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2021年第9期|107765.1-107765.17|共17页
  • 作者单位

    State Key Laboratory of Mechanical Transmissions & School of Automotive Engineering Chongqing University Chongqing 400044 China;

    State Key Laboratory of Mechanical Transmissions & School of Automotive Engineering Chongqing University Chongqing 400044 China;

    State Key Laboratory of Mechanical Transmissions & School of Automotive Engineering Chongqing University Chongqing 400044 China;

    School of Mechanical and Power Engineering Chongqing University of Science & Technology Chongqing 401331 China;

    Sir William Wright Technology Center Queen's University Belfast Belfast BT9 5BS United Kingdom;

    Faculty of Transportation Engineering Kunming University of Science and Technology Kunming 650500 China School of Engineering and Materials Science Queen Mary University of London London E1 4NS United Kingdom;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Driving condition prediction; Markov chain; Neural network; Principal component analysis; Energy management;

    机译:驾驶条件预测;马尔可夫链;神经网络;主成分分析;能源管理;

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