A classification infrastructure built upon Discriminant Analysis (DA) has been developed at NorthWest Research Associates for examining the statistical differences between samples of two known populations. Originating to examine the physical differences between flare-quiet and flare-imminent solar active regions, we describe herein some details of the infrastructure including: parametrization of large datasets, schemes for handling "null" and "bad" data in multi-parameter analysis, application of non-parametric multi-dimensional DA, an extension through Bayes' theorem to probabilistic classification, and methods invoked for evaluating classifier success. The classifier infrastructure is applicable to a wide range of scientific questions in solar physics. We demonstrate its application to the question of distinguishing flare-imminent from flare-quiet solar active regions, updating results from the original publications that were based on different data and much smaller sample sizes. Finally, as a demonstration of "Research to Operations" efforts in the space-weather forecasting context, we present the Discriminant Analysis Flare Forecasting System (DAFFS), a near-real-Time operationally-running solar flare forecasting tool that was developed from the research-directed infrastructure.
CITATION STYLE
Leka, K. D., Barnes, G., & Wagner, E. (2018). The NWRA classification infrastructure: Description and extension to the discriminant analysis flare forecasting system (DAFFS). Journal of Space Weather and Space Climate, 8. https://doi.org/10.1051/swsc/2018004
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