Sampling-Based Planning for Guaranteed Safe Energy Management of Hybrid UAV Powertrain Under Complex, Uncertain Constraints

IF 4.9 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Control Systems Technology Pub Date : 2024-07-11 DOI:10.1109/TCST.2024.3422372
Cary L. Butler;Reid D. Smith;Andrew G. Alleyne
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Abstract

As electrified aircraft are becoming more prominent, new energy management strategies are needed to fully leverage their capabilities to perform more complex missions and to do so safely. Nonconvex constraints, multitimescale dynamics, and uncertainty introduce challenges in the way of guaranteeing safe powertrain operation using existing methods. This work seeks to address these challenges using a novel application of sampling-based planning methods to plan the operation of a hybrid unmanned aerial vehicle (UAV) powertrain. Known for their computational efficiency, these sampling-based methods can rapidly react to changing mission information. A two-stage method is introduced, which manages multiple time scales using rapidly exploring random tree (RRT)-based algorithms for long-term planning and robust model predictive control (RMPC) for short-term execution of mission plans with guaranteed tracking error bounds. An experimentally validated case study demonstrates the implementation of the two-stage method using RRT-based algorithms. Rapid planning times ( $\gt 100\times $ faster than real time) enable replanning online to react to changing mission specifications. Robust tracking control guarantees that the UAV powertrain is safely operated in the presence of complex, uncertain constraints.
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复杂、不确定约束条件下基于采样的混合动力无人机动力系统安全能源管理规划
随着电气化飞机的日益突出,需要新的能源管理战略来充分利用其能力,以执行更复杂的任务并确保安全。非凸约束、多时间尺度动态和不确定性为使用现有方法保证动力总成的安全运行带来了挑战。这项研究试图利用基于采样的规划方法的新应用来规划混合动力无人机(UAV)动力总成的运行,从而应对这些挑战。这些基于采样的方法以计算效率高而著称,能对不断变化的任务信息做出快速反应。本文介绍了一种两阶段方法,利用基于快速探索随机树(RRT)的算法进行长期规划,并利用鲁棒模型预测控制(RMPC)在保证跟踪误差边界的情况下短期执行任务计划,从而管理多个时间尺度。一项经过实验验证的案例研究展示了使用基于 RRT 算法的两阶段方法的实施情况。快速规划时间(比实时时间快100倍)使得在线重新规划能够对不断变化的任务规格做出反应。稳健的跟踪控制保证了无人机动力系统在复杂、不确定的约束条件下安全运行。
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来源期刊
IEEE Transactions on Control Systems Technology
IEEE Transactions on Control Systems Technology 工程技术-工程:电子与电气
CiteScore
10.70
自引率
2.10%
发文量
218
审稿时长
6.7 months
期刊介绍: The IEEE Transactions on Control Systems Technology publishes high quality technical papers on technological advances in control engineering. The word technology is from the Greek technologia. The modern meaning is a scientific method to achieve a practical purpose. Control Systems Technology includes all aspects of control engineering needed to implement practical control systems, from analysis and design, through simulation and hardware. A primary purpose of the IEEE Transactions on Control Systems Technology is to have an archival publication which will bridge the gap between theory and practice. Papers are published in the IEEE Transactions on Control System Technology which disclose significant new knowledge, exploratory developments, or practical applications in all aspects of technology needed to implement control systems, from analysis and design through simulation, and hardware.
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