容错
控制器(灌溉)
人工神经网络
断层(地质)
控制理论(社会学)
计算机科学
控制工程
陷入故障
深度学习
趋同(经济学)
故障检测与隔离
可靠性(半导体)
人工智能
工程类
功率(物理)
控制(管理)
分布式计算
执行机构
物理
生物
地质学
量子力学
经济
地震学
经济增长
农学
作者
Zhenhua Wang,Xinyao Lun,Yuchen Jiang,Hao Luo
标识
DOI:10.1109/tii.2024.3438256
摘要
To ensure system reliability and maintain power supply in fault conditions, this article proposes a fault-tolerant sun-pointing controller based on physics-guided neural networks for handling sensor faults. The proposed controller gains the fault tolerance ability by learning from the behavior of the nominal controller, which integrates a physics-based model with a deep learning model to exploit implicit physical insights during the learning process. The proposed controller enhances the intrinsic interpolative nature of the pure deep learning model, thereby improving fault tolerance for unknown faults. Furthermore, a novel loss function that incorporates the physics-based model is proposed. The loss function assigns different loss terms to the fault-free and the fault datasets, facilitating accurate utilization of loss terms. Unlike traditional active fault-tolerant control schemes, the proposed method requires no explicit fault detection and diagnosis module. The effectiveness of the proposed controller is validated through hardware-in-the-loop simulations. The results indicate that the proposed controller outperforms the pure deep learning controller, as evidenced by a shorter sun-pointing convergence time and more precise angular velocity.
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