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Subsonic Tests of a Flush Air Data Sensing System Applied to a Fixed-Wing Micro Air Vehicle

机译:应用于固定翼微型飞行器的冲洗空气数据传感系统的亚音速测试

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Flush air data sensing (FADS) systems have been successfully tested on the nose tip of large manned/unmanned air vehicles. In this paper we investigate the application of a FADS system on the wing leading edge of a micro (unmanned) air vehicle (MAV) flown at speed as low as Mach 0.07. The motivation behind this project is driven by the need to find alternative solutions to air data booms which are physically impractical for MAVs. Overall an 80% and 97% decrease in instrumentation weight and cost respectively were achieved. Air data modelling is implemented via a radial basis function (RBF) neural network (NN) trained with the extended minimum resource allocating network (EMRAN) algorithm. Wind tunnel data were used to train and test the NN, where estimation accuracies of 0.51°, 0.44 lb/ft2 and 0.62 m/s were achieved for angle of attack, static pressure and wind speed respectively. Sensor faults were investigated and it was found that the use of an autoassociative NN to reproduce input data improved the NN robustness to single and multiple sensor faults. Additionally a simple NN domain of validity test demonstrated how the careful selection of the NN training data set is crucial for accurate estimations.
机译:冲洗空气数据传感(FADS)系统已经在大型有人/无人飞行器的机头上成功进行了测试。在本文中,我们研究了FADS系统在以低至0.07马赫的速度飞行的微型(无人)飞行器(MAV)的机翼前缘上的应用。该项目背后的动机是由于需要找到替代空气数据热潮的解决方案,而这对于MAV而言实际上是不切实际的。总体而言,仪器的重量和成本分别降低了80%和97%。空中数据建模是通过使用扩展的最小资源分配网络(EMRAN)算法训练的径向基函数(RBF)神经网络(NN)来实现的。利用风洞数据对神经网络进行训练和测试,其攻角,静压和风速分别达到0.51°,0.44 lb / ft 2 和0.62 m / s的估计精度。对传感器故障进行了调查,发现使用自动关联的NN来重现输入数据可提高NN对单个和多个传感器故障的鲁棒性。此外,简单的NN有效性测试域证明了对NN训练数据集进行仔细选择对于准确估计至关重要。

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