燃料电池汽车中集成自适应模糊动力系统的能量管理策略

Q2 Energy Energy Informatics Pub Date : 2024-09-27 DOI:10.1186/s42162-024-00393-5
Changyi Li, Tingting Liu
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引用次数: 0

摘要

燃料电池汽车是解决能源短缺问题的可靠方案。然而,当路况复杂时,系统在燃料电池和锂电池之间的功率分配不均,无法有效吸收制动产生的能量。针对这一问题,我们采用了一种自适应控制策略,将汽车所需的电量实时分配给两种电池。利用模糊逻辑根据车辆状态不断优化控制器的相关参数,并采用多岛遗传算法对控制策略进行优化,增强了控制策略的全局搜索能力,提高了车辆对制动产生的能量的吸收和再利用能力。实验结果表明,优化后的控制策略使锂电池的剩余容量平均增加了 1.67%,能量回收量平均增加了 135 W,整体能量回收率平均提高了 2.8%,车辆油耗平均降低了 0.24 L/100 Km。由此可以得出结论,优化的自适应模糊控制策略可以降低锂电池过充和过放的概率,提高电池寿命。同时,优化后的策略可以提高能量再利用率,减少车辆油耗,降低使用成本。该优化策略为燃料电池汽车能源管理的后续研究提供了参考。
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Energy management strategy of integrated adaptive fuzzy power system in fuel cell vehicles

Fuel cell vehicles are a reliable solution to address energy shortages. However, when the road conditions are complex, the system distributes power unevenly between fuel cells and lithium batteries, and cannot effectively absorb the energy generated by braking. In response to this issue, an adaptive control strategy is adopted to allocate the required power of the car to two types of batteries in real time. Fuzzy logic is used to continuously optimize the relevant parameters of the controller based on the vehicle state, and a multi-island genetic algorithm is used to optimize the control strategy, enhancing the global search ability of the control strategy and increasing the vehicle’s ability to absorb and reuse the energy generated by braking. The experiment findings denote that the optimized control strategy increases the remaining capacity of lithium batteries by an average of 1.67%, increases energy recovery by an average of 135 W, increases the overall energy recovery rate by an average of 2.8%, and reduces vehicle fuel consumption by an average of 0.24 L/100 Km. It can be concluded that the optimized adaptive fuzzy control strategy can reduce the probability of over-charging and discharging of lithium batteries and improve the battery life. Meanwhile, the optimized strategy can improve the energy reuse rate, reduce vehicle fuel consumption, lower usage costs. The optimized strategy provides a reference for subsequent research on energy management of fuel cell vehicles.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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