数据驱动的燃料电池分布式电力推进无人机MPC能量优化管理策略

Zhihao Min, Tao Lei, Xingyu Zhang, Q. Gao, Xiaobin Zhang
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引用次数: 0

摘要

随着绿色航空技术的发展,分布式电力推进飞机以其飞行效率高、污染物排放少、能源效率高、气动布局设计多样等优点成为航空技术领域的研究热点。与汽油燃料相比,氢基燃料电池具有零排放、低噪音和高能量密度等优点。为了提高燃料电池分布式电力推进无人机的整体性能,研究了燃料电池分布式电力推进无人机的自适应能量管理策略,以改善动力系统随推进功率负荷变化的动态响应。为了处理无人机不同飞行工况下电力负荷变化的不确定性,基于实际电力推进无人机飞行试验获得的飞行数据,提出了不同飞行工况下推进功率需求预测方法。基于数据驱动神经网络,建立了分布式电力推进电力负荷预测模型。本文在对分布式混合动力推进动力系统建模的基础上,提出了三种能量管理策略进行对比验证。针对无人机不同飞行条件下推进功率需求的不确定性影响分布式电力推进系统性能的问题,提出了一种基于深度神经网络推进功率需求预测与模型预测控制相结合的能量优化管理策略。利用实际无人机飞行实验数据,通过数字仿真研究对所提出的EMS进行了性能评估,并与两种基准方案进行了性能比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven MPC Energy Optimization Management Strategy for Fuel Cell Distributed Electric Propulsion UAV
With the development of green aviation technology, distributed electric propulsion aircraft has been the focus of research topic in the field of aviation technology due to its high flight efficiency, low pollutant emissions, high energy efficiency, and diverse aerodynamic layouts design. Compared with gas oil fuel, hydrogen-based fuel cell has the advantages such as zero emissions, low noise and high energy density. In order to improve the overall performance of the fuel-cell distributed electric propulsion UAV, Research on adaptive energy management strategies was conducted in this paper to improve the dynamic response of power system according to variation of propulsion power load. In order to deal with the uncertainty of the electric power load changes during different flight conditions of the UAV, the propulsion power demanding prediction method is presented under different flight conditions based on the flight data obtained from the real electric propulsion UAV flight testing. Based on the data-driven neural network, a distributed electric propulsion power load forecasting model was established. Based on the modeling of the distributed hybrid electric propulsion power system, three energy management strategies are proposed for comparison and verification in this paper. In view of the problem that the uncertainty of propulsion power demand under different flight conditions of UAV affects the performance of distributed electric propulsion system, an energy optimization management strategy based on deep neural network propulsion power demand forecasting combined with model predictive control is proposed. The performance evaluation of the proposed EMS is conducted via digital simulation studies using the data obtained from real-world UAV flighting experiments and its performance is compared with two benchmark schemes
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