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首页> 外文期刊>The Aeronautical Journal >Multi sensor data fusion based approach for the calibration of airdata systems
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Multi sensor data fusion based approach for the calibration of airdata systems

机译:基于多传感器数据融合的空中数据系统校准方法

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Accurate and reliable airdata systems are critical for aircraft flight control system. In this paper, both extended Kalman filter (EKF) and unscented Kalman filter (UKF) based various multi sensor data fusion methods are applied to dynamic manoeuvres with rapid variations in the aircraft motion to calibrate the angle-of-attack (AOA) and angle-of-sideslip (AOSS) and are compared. The main goal of the investigations reported is to obtain online accurate flow angles from the measured vane deflection and differential pressures from probes sensitive to flow angles even in the adverse effect of wind or turbulence. The proposed algorithms are applied to both simulated as well as flight test data. Investigations are initially made using simulated flight data that include external winds and turbulence effects. When performance of the sensor fusion methods based on both EKF and UKF are compared, UKF is found to be better. The same procedures are then applied to flight test data of a high performance fighter aircraft. The results are verified with results obtained using proven an offline method, namely, output error method (OEM) for flight-path reconstruction (FPR) using ESTIMA software package. The consistently good results obtained using sensor data fusion approaches proposed in this paper establish that these approaches are of great value for online implementations.
机译:准确可靠的航空数据系统对于飞机飞行控制系统至关重要。本文将基于扩展卡尔曼滤波器(EKF)和无味卡尔曼滤波器(UKF)的多种多传感器数据融合方法应用于飞机动作快速变化的动态机动,以校准攻角(AOA)和角度侧滑(AOSS)并进行比较。报告的研究的主要目的是从测量的叶片偏转量获得在线准确的流动角度,并且即使在风或湍流的不利影响下,也可以从对流动角度敏感的探头获得压差。所提出的算法可应用于模拟和飞行测试数据。首先使用模拟的飞行数据进行调查,其中包括外部风和湍流效应。比较基于EKF和UKF的传感器融合方法的性能时,发现UKF更好。然后将相同的过程应用于高性能战斗机的飞行测试数据。使用经过验证的脱机方法(即使用ESTIMA软件包进行飞行路径重建(FPR)的输出误差方法(OEM))获得的结果对结果进行验证。使用本文提出的传感器数据融合方法获得的始终如一的良好结果表明,这些方法对于在线实施具有重要价值。

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