Abstract

This work explores the generation of synthetic time-series of dynamic thermal line rating data and Alberta Electric System Operator's hourly pool price data using Wasserstein Generative Adversarial Networks, as part of a larger study on transmission line reliability. The generation of synthetic data is required due to a limited size of the available dataset. Synthetic data can aid in training deep learning and reinforcement learning models. The data is generated for 100 time-steps and is evaluated using quantitative metrics and qualitative assessment methods. Results show that the maximum mean discrepancy loss stabilizes and the trained Wasserstein generative adversarial network is able to reproduce the desired frequency distributions as well as produce a good overlap in the principal component analysis decomposition between the real and synthetic data. The final inspection of the produced synthetic data on both datasets is satisfactory.

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