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A multiple-beam CLEAN for imaging intra-day variable radio sources

机译:用于对日间可变无线电源进行成像的多束CLEAN

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The CLEAN algorithm, widely used in radio interferometry for the deconvolution of radio images, performs well only if the raw radio image (dirty image) is, to good approximation, a simple convolution between the instrumental point-spread function (dirty beam) and the true distribution of emission across the sky. An important case in which this approximation breaks down is during frequency synthesis if the observing bandwidth is wide enough for variations in the spectrum of the sky to become significant. The convolution assumption also breaks down, in any situation but snapshot observations, if sources in the field vary significantly in flux density over the duration of the observation. Such time-variation can even be instrumental in nature, for example due to jitter or rotation of the primary beam pattern on the sky during an observation. An algorithm already exists for dealing with the spectral variation encountered in wide-band frequency synthesis interferometry. This algorithm is an extension of CLEAN in which, at each iteration, a set of N “dirty beams” are fitted and subtracted in parallel, instead of just a single dirty beam as in standard CLEAN. In the wide-band algorithm the beams are obtained by expanding a nominal source spectrum in a Taylor series, each term of the series generating one of the beams. In the present paper this algorithm is extended to images which contain sources which vary over both frequency and time. Different expansion schemes (or bases) on the time and frequency axes are compared, and issues such as Gibbs ringing and non-orthogonality are discussed. It is shown that practical considerations make it often desirable to orthogonalize the set of beams before commencing the cleaning. This is easily accomplished via a Gram-Schmidt technique.
机译:仅在原始无线电图像(脏图像)(在很好的近似下)仪器点扩展函数(脏光束)和目标点扩散函数之间的简单卷积时,CLEAN算法广泛用于无线电干涉仪中,以对无线电图像进行反卷积。排放物在天空中的真实分布。如果观测带宽足够宽以至于天空频谱的变化变得明显,则这种近似分解的一个重要情况就是在频率合成期间。如果在现场观测中,震源的通量密度发生显着变化,那么在除快照观测之外的任何情况下,卷积假设都将失效。这种时变甚至在本质上也可以是有用的,例如由于观察期间主光束图案在天空上的抖动或旋转。已经存在一种用于处理宽带频率合成干涉术中遇到的频谱变化的算法。此算法是CLEAN的扩展,其中在每次迭代中,拟合并并行减去N个“脏光束”的集合,而不是像标准CLEAN那样仅单个脏光束。在宽带算法中,通过在泰勒级数中扩展标称源光谱来获得光束,该系列的每个项都会生成一个光束。在本论文中,该算法被扩展到图像,其中包含随频率和时间变化的源。比较了时间轴和频率轴上的不同扩展方案(或基准),并讨论了吉布斯振铃和非正交性等问题。结果表明,出于实际考虑,通常希望在开始清洁之前将一组光束正交化。这可以通过Gram-Schmidt技术轻松完成。

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