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Correcting atmospheric-induced phase errors of a synthetic aperture antenna array by time series modeling and Kalman filtering

机译:通过时间序列建模和卡尔曼滤波校正合成孔径天线阵列的大气引起的相位误差

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摘要

A new technique is discussed and developed for correcting atmospherically induced errors in phase data collected by radio astronomy interferometers and synthetic aperture antenna arrays. The main features of this technique are modeling and filtering the information content of the complex visibility data in time sequences. Because the atmospheric phase variations are highly correlated in time, they can be described by stochastic time series models. In conjunction with other radio astronomy data processing algorithms, a time series modeling and parameter estimation technique is developed to obtain noise models and source models from observed phase data. These models can be in the form of stochastic difference equations, autocorrelation, power spectral density, and a state space format ready for further data processing. Once the models are in a state space format, the Kalman filter is used for optimally extracting source information from the noisy data. The synthetic image is then Improved by reducing the phase error. The quality of the corrected phase data is quantitatively described by the error covariance matrix of the Kalman filter. One useful application of this technique is for reducing atmospherically induced phase errors of small synthesis arrays that have too few antennas to apply self-calibration. Another application of this technique is for improving the performance of large synthesis arrays when the standard calibration methods are insufficient for correcting very noisy phase data. This technique has been tested using the very large array (VLA) (operated by the National Radio Astronomy Observatory) and the Hat Creek millimeter interferometer.
机译:讨论并开发了一种新技术,用于校正由射电天文干涉仪和合成孔径天线阵列收集的相位数据中的大气引起的误差。该技术的主要特征是按时间顺序对复杂可见性数据的信息内容进行建模和过滤。由于大气相位变化在时间上高度相关,因此可以用随机时间序列模型来描述它们。结合其他射电天文学数据处理算法,开发了时间序列建模和参数估计技术,以从观测到的相位数据中获得噪声模型和源模型。这些模型可以采用随机差分方程,自相关,功率谱密度和准备进一步进行数据处理的状态空间格式的形式。一旦模型处于状态空间格式,就会使用卡尔曼滤波器从噪声数据中最佳地提取源信息。然后通过减少相位误差来改善合成图像。校正后的相位数据的质量由卡尔曼滤波器的误差协方差矩阵定量描述。该技术的一种有用应用是减少天线太少而无法进行自校准的小型合成阵列的大气感应相位误差。当标准校准方法不足以校正非常嘈杂的相位数据时,该技术的另一项应用是改善大型合成阵列的性能。已经使用超大型阵列(VLA)(由国家射电天文台操作)和Hat Creek毫米波干涉仪对该技术进行了测试。

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  • 来源
    《Radio Science》 |1990年第6期|1145-1158|共14页
  • 作者单位

    Department of Electrical Engineering and Computer Engineering, Iowa State University, Ames, Iowa, Now at the Department of Electrical Engineering, St. Cloud State University, St. Cloud, Minnesota.;

    Department of Electrical Engineering and Computer Engineering, Iowa State University, Ames, Iowa;

    Department of Electrical Engineering and Computer Engineering, Iowa State University, Ames, Iowa;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Kalman filters; Atmospheric modeling; Mathematical model; Apertures; Wiener filters; Data models;

    机译:卡尔曼滤波器;大气建模;数学模型;孔径;维纳滤波器;数据模型;

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