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Chimenea and other tools: Automated imaging of multi-epoch radio-synthesis data with CASA

机译:Chimenea和其他工具:使用CASA自动成像多时相放射性合成数据

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In preparing the way for the Square Kilometre Array and its pathfinders, there is a pressing need to begin probing the transient sky in a fully robotic fashion using the current generation of radio telescopes. Effective exploitation of such surveys requires a largely automated data-reduction process. This paper introduces an end-to-end automated reduction pipeline, AMIsurvey, used for calibrating and imaging data from the Arcminute Microkelvin Imager Large Array. AMIsurvey makes use of several component libraries which have been packaged separately for open-source release. The most scientifically significant of these is chimenea, which implements a telescope-agnostic algorithm for automated imaging of pre calibrated multi-epoch radio-synthesis data, of the sort typically acquired for transient surveys or followup. The algorithm aims to improve upon standard imaging pipelines by utilizing iterative RMS-estimation and automated source-detection to avoid so called 'Clean-bias', and makes use of CASA subroutines for the underlying image-synthesis operations. At a lower level, AMIsurvey relies upon two libraries, drive-ami and drive-casa, built to allow use of mature radio-astronomy software packages from within Python scripts. While targeted at automated imaging, the drive-casa interface can also be used to automate interaction with any of the CASA subroutines from a generic Python process. Additionally, these packages may be of wider technical interest beyond radio-astronomy, since they demonstrate use of the Python library pexpect to emulate terminal interaction with an external process. This approach allows for rapid development of a Python interface to any legacy or externally-maintained pipeline which accepts command-line input, without requiring alterations to the original code. (C) 2015 Elsevier B.V. All rights reserved.
机译:在准备平方公里阵列及其探路者的道路时,迫切需要使用当前一代的射电望远镜以完全自动的方式探测瞬态天空。要有效利用此类调查,需要一个高度自动化的数据精简过程。本文介绍了一种端到端的自动还原管线AMIsurvey,用于对Arcminute Microkelvin Imager Large Array的数据进行校准和成像。 AMIsurvey利用了几个组件库,这些组件库分别打包以用于开源发行。其中最科学的意义是嵌合体,它实现了望远镜不可知算法,用于对预先校准的多时相放射性合成数据进行自动成像,而这类数据通常是为瞬态调查或随访而获得的。该算法旨在通过利用迭代RMS估计和自动源检测来避免所谓的“ Clean-bias”,从而改进标准的成像管道,并将CASA子例程用于基础的图像合成操作。在较低级别,AMIsurvey依赖于两个库,即drive-ami和drive-casa,它们被构建为允许从Python脚本中使用成熟的射电天文软件包。在针对自动成像的同时,drive-casa接口也可以用于自动与通用Python流程中的任何CASA子例程进行交互。此外,这些程序包可能展示出射电天文学以外的更广泛的技术兴趣,因为它们展示了使用Python库pexpect来模拟与外部进程的终端交互。这种方法允许快速开发Python接口到任何接受命令行输入的旧式或外部维护的管道,而无需更改原始代码。 (C)2015 Elsevier B.V.保留所有权利。

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