Towards Reflectivity profile inversion through Artificial Neural Networks

The goal of Specular Neutron and X-ray Reflectometry is to infer materials Scattering Length Density (SLD) profiles from experimental reflectivity curves. This paper focuses on investigating an original approach to the ill-posed non-invertible problem which involves the use of Artificial Neural Networks (ANN). In particular, the numerical experiments described here deal with large data sets of simulated reflectivity curves and SLD profiles, and aim to assess the applicability of Data Science and Machine Learning technology to the analysis of data generated at large scale facilities. It is demonstrated that, under certain circumstances, properly trained Deep Neural Networks are capable of correctly recovering plausible SLD profiles when presented with never-seen-before simulated reflectivity curves. When the necessary conditions are met, a proper implementation of the described approach would offer two main advantages over traditional fitting methods when dealing with real experiments, namely, 1. no prior assumptions about the sample physical model are required and 2. the times-to-solution are shrank by orders of magnitude, enabling faster batch analyses for large datasets.

READ FULL TEXT
research
10/19/2022

Comparing Spectroscopy Measurements in the Prediction of in Vitro Dissolution Profile using Artificial Neural Networks

Dissolution testing is part of the target product quality that is essent...
research
10/18/2021

Sector Volatility Prediction Performance Using GARCH Models and Artificial Neural Networks

Recently artificial neural networks (ANNs) have seen success in volatili...
research
10/07/2019

Fast Fitting of Reflectivity Data of Growing Thin Films Using Neural Networks

X-ray reflectivity (XRR) is a powerful and popular scattering technique ...
research
05/04/2023

Explaining dark matter halo density profiles with neural networks

We use explainable neural networks to connect the evolutionary history o...
research
07/27/2018

Detector monitoring with artificial neural networks at the CMS experiment at the CERN Large Hadron Collider

Reliable data quality monitoring is a key asset in delivering collision ...
research
05/10/2013

Multi-q Pattern Classification of Polarization Curves

Several experimental measurements are expressed in the form of one-dimen...

Please sign up or login with your details

Forgot password? Click here to reset