@misc{185380a168d74f04a6154b46ddb476c1,
title = "Scenario Creation and Power-Conditioning Strategies for Operating Power Grids with Two-Stage Stochastic Economic Dispatch",
abstract = "A significant difficulty associated with the use of stochastic programming to solve optimal power flow problems on a 5-minute timescale is the quality of renewable energy scenarios input by the user. This is especially true when considering power systems with high penetrations of renewable energy, e.g. wind power. This paper introduces the use of stochastic programming to solve the DC optimal power flow problem with scenarios drawn directly from high-fidelity data sets. Hence, the proposed method avoids the problem of lost physics by finding high-fidelity analogs that can describe future states of the system. Furthermore, this method can be simply extended to output multi-period scenarios to the stochastic program. We demonstrate the effectiveness of this technique by simulating dispatch operations on a synthetic test system over the course of a week.",
keywords = "analog forecast, data driven scenario, stochastic economic dispatch, stochastic programming",
author = "Matthew Reynolds and Ignas Satkauskas and Jonathan Maack and Devon Sigler and Wesley Jones",
year = "2020",
language = "American English",
series = "Presented at the 2020 IEEE Power and Energy Society General Meeting (IEEE PES GM), 3-6 August 2020",
type = "Other",
}