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A Power Distribution Strategy for Hybrid Energy Storage System Using Adaptive Model Predictive Control

机译:一种使用自适应模型预测控制的混合能量存储系统配电策略

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Management strategy of the hybrid energy storage system (HESS) is a crucial part of the electric vehicles, which can ensure the safety and efficiency of the electric drive system. The adaptive model predictive control (AMPC) is employed to the management strategy for the HESS in this article. First, an improved continuous power-energy method is applied in configuration of the system. The battery and supercapacitor (SC) models are described by the equivalent-circuit technique. Second, a novel predictive model considering the dc load under a semiactive topology is proposed. The AMPC with the proposed model can handle the strong nonlinearity and time-varying property of the HESS. Third, in order to lengthen battery life span and improve system efficiency, the energy loss of the system, the rate of battery current, and average energy of the SC are considered in the cost function. Moreover, control action of each step can be obtained by minimizing proposed cost function in the AMPC rolling horizon. Fourth, the process of deriving the cost function into standard quadratic programming problem is demonstrated. Finally, in order to prove the superiority of the proposed method, three different driving load cycle tests are performed for verification. The results illustrate that the AMPC has better performance in system efficiency and battery conservancy, where the peak current of the battery cell can be reduced by at least 24.4%, and the total energy loss can be reduced by at least 6.4% with the proportional integral (PI) and model predictive control methods. The ampere-hour throughput of battery and the root mean square of battery current can be reduced by up to 16.2% and 29.8%, respectively.
机译:混合能量存储系统(HESS)的管理策略是电动车辆的重要部分,可以保证电动驱动系统的安全性和效率。自适应模型预测控制(AMPC)用于本文中HESS的管理策略。首先,在系统的配置中应用改进的连续电力 - 能量方法。电池和超级电容器(SC)模型由等效电路技术描述。其次,提出了考虑在半导体拓扑下的DC负载的新型预测模型。拟议模型的AMPC可以处理HESS的强烈非线性和时变特性。第三,为了延长电池寿命,提高系统效率,系统的能量损失,电池电流速率和SC的平均能量被认为是成本函数。此外,通过最小化AMPC滚动地平线中的所提出的成本函数,可以获得每个步骤的控制作用。第四,证明了将成本函数导出成标准二次编程问题的过程。最后,为了证明所提出的方法的优越性,执行三种不同的驱动负载循环测试进行验证。结果说明了AMPC在系统效率和电池系统方面具有更好的性能,其中电池电池的峰值电流可以减少至少24.4%,并且总能量损失可以减少至少6.4%,比例积分至少为6.4% (PI)和模型预测控制方法。电池的安培时间吞吐量和电池电流的根均线分别减少了高达16.2%和29.8%。

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