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Rotorcraft UAV Actuator Failure Estimation with KF-based Adaptive UKF Algorithm

机译:基于KF的自适应UKF算法旋翼机UAV执行器故障估算

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A new adaptive Unscented Kalman Filter (UKF) algorithm for actuator failure estimation is proposed. The novel filter method with adaptability to statistical characteristic of noise is presented to improve the estimation accuracy of traditional UKF. The algorithm with the adaptability to statistical characteristic of noise, named Kalman Filter (KF) -based adaptive UKF, is proposed to improve the UKF performance. Such an adaptive mechanism is intended to compensate the lack of a prior knowledge. The asymptotic property of the adaptive UKF is discussed. The Actuator Healthy Coefficients (AHCs) is introduced to denote the actuator failure model while the adaptive UKF is employed for on-line estimation of both the flight states and the AHCs parameters of rotorcraft UAV (RUAV). Simulations are conducted using the model of SIA-Heli-90 RUAV of Shenyang Institute of Automation, CAS. The results are compared with those obtained by normal UKF to demonstrate the effectiveness and improvements of the adaptive UKF algorithm. Besides, we also compare this algorithm with the MIT-based one which we propose in previous research.
机译:提出了一种用于执行器故障估计的新的自适应无编号卡尔曼滤波器(UKF)算法。提出了具有噪声统计特性的新型滤波器方法,以提高传统UKF的估计精度。提出了具有噪声统计特性的算法,名为Kalman滤波器(KF)的自适应UKF,以提高UKF性能。这种自适应机制旨在补偿缺乏先验知识。讨论了自适应UKF的渐近性。引入致动器健康系数(AHC)以表示致动器故障模型,而自适应UKF用于在线估计飞行状态和旋翼机UAV(RUAV)的AHC参数。使用CAS沉阳自动化研究所的SIA-Heli-90 Ruav模型进行模拟。将结果与正常UKF获得的结果进行比较,以证明Adaptive UKF算法的有效性和改进。此外,我们还将这种算法与我们在以前的研究中提出的基于麻省理工学院进行了比较。

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