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Inferring Structure Factors of Charge Stabilized Colloids from Scattering Using Machine Learning

Publication Type
Journal
Journal Name
Journal of Applied Crystallography
Publication Date
Page Numbers
1047 to 1058
Volume
57

An innovative strategy is presented that incorporates deep auto-encoder networks into a least-squares fitting framework to address the potential inversion problem in small-angle scattering. To evaluate the performance of the proposed approach, a detailed case study focusing on charged colloidal suspensions was carried out. The results clearly indicate that a deep learning solution offers a reliable and quantitative method for studying molecular interactions. The approach surpasses existing deterministic approaches with respect to both numerical accuracy and computational efficiency. Overall, this work demonstrates the potential of deep learning techniques in tackling complex problems in soft-matter structures and beyond.