论文标题
正则最大似然图像综合和验证了原月球磁盘的Alma连续观测
Regularized Maximum Likelihood Image Synthesis and Validation for ALMA Continuum Observations of Protoplanetary Disks
论文作者
论文摘要
正常化的最大似然(RML)技术是一类图像合成方法,其具有更好的角度分辨率和图像保真度,而不是传统方法(例如Clean for Clean for Clean for Sub-MM干涉测量值)。 To identify best practices for RML imaging, we used the GPU-accelerated open source Python package MPoL, a machine learning-based RML approach, to explore the influence of common RML regularizers (maximum entropy, sparsity, total variation, and total squared variation) on images reconstructed from real and synthetic ALMA continuum observations of protoplanetary disks.我们测试了两种不同的交叉验证(CV)程序,以表征其性能并确定最佳先验强度,并发现正规化强度粗大的粗网格上的CV轻松识别具有相当强的预测能力的一系列模型。为了评估RML技术针对地面真实图像的性能,我们在合成原理磁盘数据集上使用了MPOL,并发现RML方法成功地以原始模拟中存在的精细空间尺度解决了结构。我们使用了HD 143006附近的原星磁盘的Alma DSHARP观察,以比较MPOL和CLEAN的性能,发现RML成像改善了图像的空间分辨率,而无需牺牲敏感性而高达3倍。我们提供了为建立RML工作流程的一般建议,以构建Alma Protoplanetary磁盘观测值的图像合成,包括有效使用CV。使用这些技术来改善原动性磁盘观测的成像分辨率将使新科学能够发现新科学,包括检测嵌入在磁盘中的原子。
Regularized Maximum Likelihood (RML) techniques are a class of image synthesis methods that achieve better angular resolution and image fidelity than traditional methods like CLEAN for sub-mm interferometric observations. To identify best practices for RML imaging, we used the GPU-accelerated open source Python package MPoL, a machine learning-based RML approach, to explore the influence of common RML regularizers (maximum entropy, sparsity, total variation, and total squared variation) on images reconstructed from real and synthetic ALMA continuum observations of protoplanetary disks. We tested two different cross-validation (CV) procedures to characterize their performance and determine optimal prior strengths, and found that CV over a coarse grid of regularization strengths easily identifies a range of models with comparably strong predictive power. To evaluate the performance of RML techniques against a ground truth image, we used MPoL on a synthetic protoplanetary disk dataset and found that RML methods successfully resolve structures at fine spatial scales present in the original simulation. We used ALMA DSHARP observations of the protoplanetary disk around HD 143006 to compare the performance of MPoL and CLEAN, finding that RML imaging improved the spatial resolution of the image by up to a factor of 3 without sacrificing sensitivity. We provide general recommendations for building an RML workflow for image synthesis of ALMA protoplanetary disk observations, including effective use of CV. Using these techniques to improve the imaging resolution of protoplanetary disk observations will enable new science, including the detection of protoplanets embedded in disks.