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Intelligent Hybrid Vehicle Power Control—Part II: Online Intelligent Energy Management

机译:智能混合动力汽车功率控制-第二部分:在线智能能源管理

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This is the second paper in a series of two that describe our research in intelligent energy management in a hybrid electric vehicle (HEV). In the first paper, we presented the machine-learning framework ML_EMO_HEV, which was developed for learning the knowledge about energy optimization in an HEV. The framework consists of machine-learning algorithms for predicting driving environments and generating the optimal power split of the HEV system for a given driving environment. In this paper, we present the following three online intelligent energy controllers: 1) IEC_HEV_SISE; 2) IEC_HEV_MISE ; and 3) IEC_HEV_MIME. All three online intelligent energy controllers were trained within the machine-learning framework ML_EMO_HEV to generate the best combination of engine power and battery power in real time such that the total fuel consumption over the whole driving cycle is minimized while still meeting the driver's demand and the system constraints, including engine, motor, battery, and generator operation limits. The three online controllers were integrated into the Ford Escape hybrid vehicle model for online performance evaluation. Based on their performances on ten test drive cycles provided by the Powertrain Systems Analysis Toolkit library, we can conclude that the roadway type and traffic congestion level specific machine learning of optimal energy management is effective for in-vehicle energy control. The best controller, IEC_HEV_MISE, trained with the optimal power split generated by the DP optimization algorithm with multiple initial SOC points and single ending point, can provide fuel savings ranging from 5% to 19%. Together, these two papers cover the innovative technologies for modeling power flow, mathematical background of optimization in energy management, and machine-learning algorithms for generating intelligent energy controllers for quasioptimal energy flow in a power-split HEV.
机译:这是两篇系列文章中的第二篇,描述了我们在混合电动汽车(HEV)中进行智能能源管理的研究。在第一篇论文中,我们介绍了机器学习框架ML_EMO_HEV,该框架是为学习HEV中的能源优化知识而开发的。该框架由机器学习算法组成,用于预测驾驶环境并为给定的驾驶环境生成HEV系统的最佳功率分配。在本文中,我们介绍了以下三种在线智能能源控制器:1)IEC_HEV_SISE; 2)IEC_HEV_MISE;和3)IEC_HEV_MIME。在机器学习框架ML_EMO_HEV中对所有三个在线智能能源控制器进行了培训,以实时生成发动机功率和电池功率的最佳组合,从而在使整个驾驶周期的总油耗降至最低的同时,仍能满足驾驶员的需求和系统限制,包括引擎,电动机,电池和发电机的运行限制。这三个在线控制器已集成到Ford Escape混合动力汽车模型中,用于在线性能评估。基于它们在Powertrain Systems Analysis Toolkit库中提供的十个试运行周期的性能,我们可以得出结论,最佳能源管理的特定于道路类型和交通拥堵级别的机器学习对于车载能量控制是有效的。最佳控制器IEC_HEV_MISE经过DP优化算法所产生的最佳功率分配的训练,具有多个初始SOC点和单个端点,可节省5%至19%的燃料。这两篇论文共同涵盖了用于建模功率流的创新技术,能源管理中优化的数学背景以及用于生成智能能源控制器以实现功率分割式混合动力汽车中准最优能量流的机器学习算法。

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