Model-based fault-tolerant control (FTC) often consists of two distinct steps: fault detection & isolation (FDI), and fault accommodation. In this work we investigate posing fault-tolerant control as a single Bayesian inference problem. Previous work showed that precision learning allows for stochastic FTC without an explicit fault detection step. While this leads to implicit fault recovery, information on sensor faults is not provided, which may be essential for triggering other impact-mitigation actions. In this paper, we introduce a precision-learning based Bayesian FTC approach and a novel beta residual for fault detection. Simulation results are presented, supporting the use of beta residual against competing approaches.
翻译:基于模型的容错控制(FTC)通常由两个截然不同的步骤组成:发现和隔离(FDI)和放错便利。在这项工作中,我们调查将容错控制作为贝叶斯单一推论问题。以前的工作表明,精确学习可以使FTC具有随机性,而没有明显的错觉检测步骤。虽然这会导致隐含的过错恢复,但没有提供有关传感器缺陷的信息,这可能对触发其他减轻影响行动至关重要。在本文件中,我们采用了基于精确学习的Bayesian FTC方法和新的过失检测乙型残留物。模拟结果,支持使用乙型残留物对抗相互竞争的方法。