Regularized Maximum Likelihood Image Synthesis and Validation for ALMA Continuum Observations of Protoplanetary Disks
Brianna Zawadzki, Ian Czekala, Ryan A. Loomis, Tyler Quinn, Hannah, Grzybowski, Robert C. Frazier, Jeff Jennings, Kadri M. Nizam, Yina Jian

TL;DR
This paper demonstrates that Regularized Maximum Likelihood (RML) techniques, implemented via MPoL, significantly enhance the resolution and fidelity of ALMA protoplanetary disk images compared to traditional methods, enabling detailed structure analysis.
Contribution
The study introduces a practical RML imaging workflow with effective regularizer selection and validation strategies, improving ALMA image resolution without loss of sensitivity.
Findings
RML methods resolve fine structures in synthetic data.
RML improves spatial resolution by up to a factor of 3 in real observations.
Cross-validation effectively guides regularizer selection.
Abstract
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…
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Taxonomy
TopicsCalibration and Measurement Techniques · Advanced Thermodynamic Systems and Engines
