Generating Synthetic Time Series Data for Cyber-Physical Systems
Alexander Sommers
Somayeh Bakhtiari Ramezani
Logan Cummins
Sudip Mittal
Shahram Rahimi
Maria Seale
Joseph Jaboure

Abstract
Data augmentation is an important facilitator of deep learning applications in the time series domain. A gap is identified in the literature, demonstrating sparse exploration of the transformer, the dominant sequence model, for data augmentation in time series. A architecture hybridizing several successful priors is put forth and tested using a powerful time domain similarity metric. Results suggest the challenge of this domain, and several valuable directions for future work.
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