基于解析模型参数辨识的机载传感器故障诊断方法

Juan Tan, Xin Chen, Dong Cao
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引用次数: 2

摘要

机载传感器在飞控系统的飞行状态获取、内外环控制律求解等方面发挥着重要作用。除了增加硬件冗余来提高系统可靠性外,还可以增加模型的分析冗余来提高系统容错性。基于无人机的气动参数,对传感器系统进行了故障建模和分析,并利用卡尔曼-布西滤波原理设计了状态估计器。根据系统残差,采用改进的残差检测算法对系统故障状态进行估计和评估。在基于周期时间和残值的联合投票条件下,设计自适应参考模型,实时对分析模型进行比较和修正,提高系统的容错能力。仿真结果表明了该方法的可行性和有效性。加入迭代残差检测过程对突发性故障的响应速度快,对软故障的缓变特性检测明显,适用于机载传感器系统的典型故障诊断。自适应模型调整过程在减小噪声影响和纠正系统不确定性误差方面起着关键作用,使气动参数模型的辨识过程更加高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Airborne Sensor Fault Diagnosis Method Based on Analytic Model Parameter Identification
Airborne sensors play an important role in flight control system acquisition of flight status, internal and external loop control law solution and so on. In addition to increasing the hardware redundancy to improve the system reliability, it can also increase the analytical redundancy of the model to improve the system fault tolerance. In this paper, based on the aerodynamic parameters of UAV, fault modeling and analysis of sensor system are carried out, and a state estimator is designed using Kalman-Bussy filter principle. According to the system residual, the improved residual detection algorithm is used to estimate and evaluate the system fault state. Under the condition of joint voting based on cycle time and residual value, an adaptive reference model is designed to compare and modify the analytical model in real time, so as to improve the fault tolerance ability of the system. The simulation results show proposed method is feasible and effective. The process of adding iterative residuals detection can respond quickly to sudden fault and detect the slow-changing characteristics of soft fault obviously, so it is suitable for typical fault diagnosis of airborne sensor system. The process of adaptive model adjustment plays a key role in reducing the influence of noise and correcting the uncertainty error of the system, which makes the identification process of aerodynamic parameter model more efficient.
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