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Power Management Controller for a Hybrid Electric Vehicle With Predicted Future Acceleration

机译:预测未来加速的混合动力电动汽车电源管理控制器

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摘要

Load profiles or duty cycles on a powertrain system are one of the major factors that affect the fuel economy of hybrid electric vehicles. Most of optimal power management controllers that are designed for minimum fuel consumption take into account the upcoming duty cycles explicitly or implicitly. Due to this non-causal nature, many optimal algorithms are not implementable in real-time, or they reluctantly assume simple future duty cycles for real-time implementation at the cost of performance. This paper presents an optimal power management controller that uses the predicted near-future duty cycle instead of hypothesized duty cycles. Model predictive control is used for the controller, and a deep neural network is designed for the estimation of the future duty cycle. Signals from a radar sensor and signals from the ego vehicle are used as the input signals for the deep neural network. A model predictive controller with a well-estimated near-future duty cycles showed significantly improved fuel economy than a model predictive controller with simply assumed duty cycles. Even a less accurately estimated future duty cycle helps improve the fuel economy more than a simply assumed future duty cycle does. We observed that some knowledge about the future duty cycle in the model predictive controller is better for improving fuel economy than the simple assumption if the information has the right directional tendency, even if it is not accurate.
机译:动力总成系统上的负载曲线或占空比是影响混合动力电动汽车燃油经济性的主要因素之一。大多数设计用于最低油耗的最佳电源管理控制器都明确或隐含地考虑了即将到来的占空比。由于这种非因果性质,许多最佳算法无法实时实现,或者它们不惜以性能为代价,为实时实施不愿采用简单的未来占空比。本文提出了一种最佳的电源管理控制器,该控制器使用预测的近未来占空比而不是假设的占空比。控制器使用模型预测控制,而深层神经网络则用于估计未来占空比。来自雷达传感器的信号和来自自我车辆的信号被用作深度神经网络的输入信号。与具有简单假定占空比的模型预测控制器相比,具有良好估计的近期占空比的模型预测控制器显示出显着改善的燃油经济性。与简单假设的未来占空比相比,即使是不太准确地估计的未来占空比也可以帮助改善燃油经济性。我们观察到,如果信息具有正确的方向趋势(即使信息不准确),则有关模型预测控制器中有关未来占空比的一些知识比简单假设更好地改善燃油经济性。

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