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A Fuzzy-Logic Power Management Strategy Based on Markov Random Prediction for Hybrid Energy Storage Systems

机译:基于马尔可夫随机预测的混合动力储能系统模糊逻辑功率管理策略

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Over the last few years; issues regarding the use of hybrid energy storage systems (HESSs) in hybrid electric vehicles have been highlighted by the industry and in academic fields. This paper proposes a fuzzy-logic power management strategy based on Markov random prediction for an active parallel battery-UC HESS. The proposed power management strategy; the inputs for which are the vehicle speed; the current electric power demand and the predicted electric power demand; is used to distribute the electrical power between the battery bank and the UC bank. In this way; the battery bank power is limited to a certain range; and the peak and average charge/discharge power of the battery bank and overall loss incurred by the whole HESS are also reduced. Simulations and scaled-down experimental platforms are constructed to verify the proposed power management strategy. The simulations and experimental results demonstrate the advantages; feasibility and effectiveness of the fuzzy-logic power management strategy based on Markov random prediction.
机译:过去几年来;工业界和学术领域已经强调了关于在混合电动车辆中使用混合能量存储系统(HESS)的问题。针对主动并联电池UC HESS,提出了一种基于马尔可夫随机预测的模糊逻辑电源管理策略。拟议的电源管理策略;车辆速度的输入;当前电力需求和预测电力需求;用于在电池组和UC组之间分配电能。通过这种方式;电池组功率限制在一定范围内;电池组的峰值和平均充电/放电功率以及整个HESS引起的总体损耗也得以降低。构建了仿真和按比例缩小的实验平台,以验证所提出的电源管理策略。仿真和实验结果证明了其优势。马尔可夫随机预测的模糊逻辑电源管理策略的可行性和有效性。

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