HPC Analytics of Fused Thermal Plants Data to Optimize Operating Envelope

Sangkeun Lee, Travis Johnston, Dongwon Shin, Salvatore DellaVilla Jr., Robert Steele, Christopher Perullo

Research output: Book/ReportCommissioned report

Abstract

In this project, ORNL extensively reviewed the ORAP RAM data, and it guided us to develop machine learning models that can predict time to next failures and forecast failure trends, which will be useful for optimizing power plant operation strategies. More specifically, we trained multiple random forest models and evaluated the model accuracy to validate with 10+ years of historical data. In addition, we implemented a web-based graphical user interface system for the models to show how our models can be used in more intuitive ways. This proof of concept allowed exploration of model use with power plant operators in mind. Developed machine learning models will be helpful for managing risks, planning maintenance and operation, ultimately reducing the down time and increasing the service hours. For future work, there are several interesting research topics including but not limited to model enhancement, creating synergy with traditional failure modeling approaches, and data-driven actionable recommendation and suggestions.
Original languageEnglish
Place of PublicationUnited States
DOIs
StatePublished - 2022

Keywords

  • 20 FOSSIL-FUELED POWER PLANTS

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