Preliminary Results of a Multi-Sensor Data Science System for Monitoring a Solvent
Extraction Process

Year
2023
Author(s)
L.A. Ocampo Giraldo - Idaho National Laboratory
E.S. Cárdenas - Idaho National Laboratory
M.A. Garces - University of Hawaii
M.R. Greenhalgh - Idaho National Laboratory
J.D. Hix - Idaho National Laboratory
J.T. Johnson - Idaho National Laboratory
S. Popenhagen - University of Hawaii
C.M. Walker - Idaho National Laboratory
K.N. Wilsdon - Idaho National Laboratory
File Attachment
Abstract
Idaho National Laboratory is building a test bed to allow researchers the opportunity to study nuclear fuel processing operations. This includes studying the solvent extraction process and the use of centrifugal contactors. The goal of this project is to develop a system that utilizes non-traditional measurement sources such as vibration, acoustics, current, color, flow, and temperature in conjunction with data-based, machine learning techniques that will allow for signal discovery. This multi-sensor data supports the development of safeguards by design, provides operator process awareness, and aids in the discovery of process anomalies. This paper highlights some of the preliminary results from initial data collection campaigns and shares some of the lessons learned.