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SYMBA: An end-to-end VLBI synthetic data generation pipeline

机译:SYMBA:端到端的VLBI综合数据生成管道

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Context. Realistic synthetic observations of theoretical source models are essential for our understanding of real observational data. In using synthetic data, one can verify the extent to which source parameters can be recovered and evaluate how various data corruption effects can be calibrated. These studies are the most important when proposing observations of new sources, in the characterization of the capabilities of new or upgraded instruments, and when verifying model-based theoretical predictions in a direct comparison with observational data. Aims. We present the SYnthetic Measurement creator for long Baseline Arrays ( SYMBA ), a novel synthetic data generation pipeline for Very Long Baseline Interferometry (VLBI) observations. SYMBA takes into account several realistic atmospheric, instrumental, and calibration effects. Methods. We used SYMBA to create synthetic observations for the Event Horizon Telescope (EHT), a millimetre VLBI array, which has recently captured the first image of a black hole shadow. After testing SYMBA with simple source and corruption models, we study the importance of including all corruption and calibration effects, compared to the addition of thermal noise only. Using synthetic data based on two example general relativistic magnetohydrodynamics (GRMHD) model images of M 87, we performed case studies to assess the image quality that can be obtained with the current and future EHT array for different weather conditions. Results. Our synthetic observations show that the effects of atmospheric and instrumental corruptions on the measured visibilities are significant. Despite these effects, we demonstrate how the overall structure of our GRMHD source models can be recovered robustly with the EHT2017 array after performing calibration steps, which include fringe fitting, a priori amplitude and network calibration, and self-calibration. With the planned addition of new stations to the EHT array in the coming years, images could be reconstructed with higher angular resolution and dynamic range. In our case study, these improvements allowed for a distinction between a thermal and a non-thermal GRMHD model based on salient features in reconstructed images.
机译:上下文。理论来源模型的真实综合观察对于我们理解真实观察数据至关重要。在使用合成数据时,可以验证可恢复源参数的程度,并可以评估如何校准各种数据损坏影响。这些研究在建议对新来源进行观测,表征新仪器或升级仪器的功能以及在与观测数据直接比较中验证基于模型的理论预测时最重要。目的我们介绍了用于长基线阵列(SYMBA)的合成测量创建器,这是一种用于超长基线干涉测量(VLBI)观测的新型合成数据生成管道。 SYMBA考虑了几种现实的大气,仪器和校准效果。方法。我们使用SYMBA为事件地平线望远镜(EHT)创建合成的观测结果,这是毫米VLBI阵列,该阵列最近捕获了黑洞阴影的第一张图像。在使用简单的源和损坏模型测试了SYMBA之后,与仅添加热噪声相比,我们研究了包括所有损坏和校准效果的重要性。使用基于M 87的两个示例相对论磁流体动力学(GRMHD)模型图像的合成数据,我们进行了案例研究,以评估当前和未来EHT阵列在不同天气条件下可获得的图像质量。结果。我们的综合观察结果表明,大气和仪器腐蚀对可见度的影响是显着的。尽管有这些影响,但我们演示了执行校准步骤(包括边缘拟合,先验振幅和网络校准以及自校准)后,如何使用EHT2017阵列稳健地恢复GRMHD源模型的整体结构。随着未来几年计划在EHT阵列中增加新站点的计划,可以以更高的角分辨率和动态范围重建图像。在我们的案例研究中,这些改进允许根据重建图像中的显着特征区分热GRMHD模型和非热GRMHD模型。

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