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Measurement Correction of a Set of Analog Sun Sensors via Neural Network

机译:通过神经网络测量校正一组模拟太阳传感器

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A Neural Network (NN) based method to improve the accuracy of a set of analog Sun sensors is presented. Analog Sun Sensors are commonly used on satellites due to their reduced cost, small size and low power consumption. However, especially in Earth imaging satellites, they are prone to the Earth albedo effects. Magnitude and direction of albedo change depending on the reflection characteristics of the Earth's surface, position and attitude of the satellite and position of the Sun. The albedo may deteriorate Sun direction measurements by the analog Sun sensor as much as 20°. In this study, a multilayer NN, which is trained using the Sun direction vector and available attitude information, is applied to the Sun sensor readings to correct the voltage output for the corresponding measurements. Then the corrected Sun angles in sensor $x$ and $y$ axes are obtained by combining NN outputs with the sensor measurements. The proposed algorithm is tested in various simulation scenarios of differing training and interrogation periods for the NN. Results show that the Sun sensor measurements can be corrected up to an accuracy of 1° using the NN approach. Generalization of the NN by tuning the parameters enables using the same trained NN for extended durations of time.
机译:提出了一种基于神经网络(NN)以提高一组模拟太阳传感器精度的方法。由于其成本降低,小尺寸和低功耗,模拟太阳传感器通常用于卫星。然而,特别是在地球成像卫星中,它们易于地球反照效应。 Albedo改变的级别和方向取决于地球表面,位置和卫星态度的反射特性和太阳的位置。 Albedo可能会使模拟太阳传感器的太阳方向测量变差,多达20°。在该研究中,利用太阳方向向量和可用姿态信息训练的多层NN被应用于太阳传感器读数以校正相应测量的电压输出。然后校正的太阳角度在传感器中 $ x $ $ y $ 通过将NN输出与传感器测量组合来获得轴。该算法在不同训练和询问期的各种仿真场景中进行了测试。结果表明,使用NN方法,可以校正太阳传感器测量的准确性为1°。通过调谐参数的NN的概括能够使用相同的训练NN进行扩展持续时间。

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