Predicting rare earth elements concentration in coal ashes with multi-task neural networks.

Mater Horiz

Physics of AmoRphous and Inorganic Solids Laboratory (PARISlab) 5731B Boelter Hall, Department of Civil and Environmental Engineering, University of California, Los Angeles, CA 90095, USA.

Published: March 2024

AI Article Synopsis

  • The growing need for rare earth elements (REEs) highlights the value of extracting them from coal ashes, a byproduct of coal power plants, as a more sustainable alternative to traditional mining.
  • Current methods of measuring REE content in coal ashes are inefficient and expensive, prompting the exploration of machine learning to streamline this process.
  • A multi-task neural network model has been developed to accurately predict REE concentrations based on easily measurable bulk composition, demonstrating enhanced performance compared to traditional methods and providing useful patterns for identifying coal ashes rich in REEs.

Article Abstract

The increasing demand for rare earth elements (REEs) makes them a scarce strategic resource for technical developments. In that regard, harvesting REEs from coal ashes-a waste byproduct from coal power plants-offers an alternative solution to conventional ore-based extraction. However, this approach is bottlenecked by our ability to screen coal ashes bearing large concentrations of REEs from feedstocks-since measuring the REE content in ashes is a time-consuming and costly task requiring advanced analytical tools. Here, we propose a machine learning approach to predict the REE contents based on the bulk composition of coal ashes, easily measurable under the routine testing protocol. We introduce a multi-task neural network that simultaneously predicts the contents of different REEs. Compared to the single-task model, this model exhibits notably improved accuracy and reduced sensitivity to noise. Further model analyses reveal key data patterns for screening coal ashes with high REE concentrations. Additionally, we showcase the utilization of transfer learning to improve the adaptability of our model to coal ashes from a distinct source.

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Source
http://dx.doi.org/10.1039/d3mh01491fDOI Listing

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