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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Deep Learning Calibration of the High-Frequency Airborne Microwave and Millimeter-Wave Radiometer (HAMMR) Instrument
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Deep Learning Calibration of the High-Frequency Airborne Microwave and Millimeter-Wave Radiometer (HAMMR) Instrument

机译:高频空气传播微波和毫米波辐射计(Hammr)仪器的深度学习校准

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摘要

Calibration plays an important role in improving the accuracy of the microwave and millimeter-wave radiometric measurements. Several calibration techniques have been used in radiometers including external calibration targets, vicarious sources, and internal calibrators such as noise diodes or matched reference load. A new calibration technique based on deep learning has recently been developed to calibrate microwave and millimeter-wave radiometers. The deep-learning calibrator has been previously demonstrated on a computer noise-wave modeled Dicke-switching radiometer. This article applies the new deep-learning calibration technique for the calibration of the high-frequency airborne microwave and millimeter-wave radiometer (HAMMR) instrument. A deep-learning neural network model is built to calibrate the 2014 West Coast Flight Campaign antenna temperature measurements of the HAMMR. The deep-learning calibrator antenna temperature estimates are obtained from the radiometric measurements. The deep-learning calibration results are compared with the existing conventional calibration techniques used in HAMMR 2014 field campaign. The results have shown that the deep-learning calibrator is in agreement with the conventional calibration techniques. In this article, it is demonstrated that the deep-learning calibrator can be employed for calibrating the radiometers with high accuracy.
机译:校准在提高微波和毫米波辐射测量的准确性方面起着重要作用。几种校准技术已用于包括外部校准目标,缩小源和内部校准器,例如噪声二极管或匹配的参考载荷的辐射仪。最近已经开发了一种基于深度学习的新校准技术来校准微波和毫米波辐射磁体。先前在计算机噪声波模型DICKE切换辐射计上证明了深度学习校准器。本文适用新的深度学习校准技术来校准高频空中微波和毫米波辐射计(Hammr)仪器。建立了深度学习的神经网络模型,以校准Hammr的2014年西海岸飞行竞选天线温度测量。深度学习校准器天线温度估计是从辐射测量获得的。将深度学习的校准结果与现有的常规校准技术进行了比较,用于Hammr 2014场运动中的现有校准技术。结果表明,深度学习校准器与传统校准技术一致。在本文中,证明了深度学习校准器可以用于校准高精度的辐射仪。

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