In Situ Multi-Tier Auto-Ignition Detection Applied to Dual-Fuel Combustion Simulations: Article No. 114273

Jorge Salinas, Hemanth Kolla, Martin Rieth, Ki Jung, Jacqueline Chen, Janine Bennett, Marco Arienti, Lucas Esclapez, Marc Day, Nicole Marsaglia, Cyrus Harrison, Terece Turton, James Ahrens

Research output: Contribution to journalArticlepeer-review

Abstract

Here we use an anomaly detection methodology that is centered on analyzing fourth-order joint moments (co-kurtosis), particularly focusing on its application in auto-ignition of combustion problems with large numbers of species. Unsupervised anomaly detection is challenging to generalize across problem types and domains. A recent technique, centered on analyzing information in the fourth-order joint moment co-kurtosis, has shown promise, especially for high-dimensional scientific data. In this work we present developments to the co-kurtosis based anomaly detection method needed to make it effective and scalable for large-scale distributed scientific data, such as those generated by massively parallel simulations. An in situ co-kurtosis algorithm is employed as the anomaly detection method for identifying ignition kernels in simulations of turbulent combustion. We extend an existing methodology which identifies regions of the domain where anomalies are present, and add another tier of anomaly detection where the individual samples contributing to the anomaly are identified. We apply this algorithm on-the-fly to a variety of turbulent reacting flow problems and compare it to the widely used (but significantly more expensive) chemical explosive mode analysis (CEMA). We demonstrate the ability of the method to detect and identify the onset of low and high temperature ignition which can be used for computational steering, as chemical and combustion anomalies occur intermittently at spatio-temporal locations unknown a priori. Finally, we apply our lightweight in situ algorithm to an exascale high-fidelity simulation with a total of 2.4 Trillion degrees of freedom, performed using an adaptive mesh refinement solver. Furthermore, through a scalability analysis, we show that the relative computational cost of this in-situ anomaly detection algorithm compared to an iteration of the reacting flow solver is negligible.
Original languageAmerican English
Number of pages15
JournalCombustion and Flame
Volume279
DOIs
StatePublished - 2025

NREL Publication Number

  • NREL/JA-2C00-95781

Keywords

  • auto-ignition
  • CEMA
  • high-fidelity simulations
  • in situ

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