Reference data from sensors measuring characteristics of a gas turbine are analyzed to identify underperformance of the gas turbine, which may be a predictor of an unscheduled shutdown. Time series data from the sensors are compared to annotated query data using an open-begin-end dynamic time warping algorithm. Identified subsequences are examined as possible underperformance indicators. In a related technique, multiple time series from the sensors are pairwise compared using a dynamic time warping algorithm, and computed distances between the time series are used to group the time series using a hierarchical clustering algorithm. The clusters are examined to identify underperformance indicators.
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