Model-Free Renewable Scenario Generation Using Generative Adversarial Networks

July 30, 2017 ยท Entered Twilight ยท ๐Ÿ› IEEE Power & Energy Society General Meeting

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Repo contents: Poster.pdf, README.md, datasets, load.py, model.py, train.py, util.py

Authors Yize Chen, Yishen Wang, Daniel Kirschen, Baosen Zhang arXiv ID 1707.09676 Category cs.LG: Machine Learning Cross-listed eess.SY, math.OC Citations 452 Venue IEEE Power & Energy Society General Meeting Repository https://github.com/chennnnnyize/Renewables_Scenario_Gen_GAN โญ 30 Last Checked 1 month ago
Abstract
Scenario generation is an important step in the operation and planning of power systems with high renewable penetrations. In this work, we proposed a data-driven approach for scenario generation using generative adversarial networks, which is based on two interconnected deep neural networks. Compared with existing methods based on probabilistic models that are often hard to scale or sample from, our method is data-driven, and captures renewable energy production patterns in both temporal and spatial dimensions for a large number of correlated resources. For validation, we use wind and solar times-series data from NREL integration data sets. We demonstrate that the proposed method is able to generate realistic wind and photovoltaic power profiles with full diversity of behaviors. We also illustrate how to generate scenarios based on different conditions of interest by using labeled data during training. For example, scenarios can be conditioned on weather events~(e.g. high wind day) or time of the year~(e,g. solar generation for a day in July). Because of the feedforward nature of the neural networks, scenarios can be generated extremely efficiently without sophisticated sampling techniques.
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