@misc{e8dbfe046a004d1e89eaa62544876a9c,
title = "Preventive Power Outage Estimation Based on a Novel Scenario Clustering Strategy",
abstract = "The increasing occurrence of extreme weather events is challenging power grid operation. For extreme weather events, the system operator is responsible for estimating the power outages and scheduling the restoration resources. This paper proposes an outage evaluation framework to identify the possible unserved load profiles, vulnerable areas, and mobile energy adequacy. The outputs of an outage prediction model tool are used to generate numerous faulted line scenarios. Next, each scenario's nodal unserved load profile is obtained by solving a three-phase restoration model that considers repair crews and mobile energy resources (MERs). Then, a novel scenario clustering strategy is developed to cluster the unserved load profiles into multiple representative profiles which the system operator can focus on. Finally, case studies on a distribution system evaluate the damage caused by an extreme weather event and verify the effectiveness of the proposed scenario clustering strategy.",
keywords = "mobile energy resources, power system resilience, preventive outage evaluation, scenario clustering",
author = "Xiaofei Wang and Weijia Liu and Fei Ding and Yiyun Yao and Junbo Zhao",
year = "2024",
language = "American English",
series = "Presented at the 2024 IEEE Power & Energy Society General Meeting, 21-25 July 2024, Seattle, Washington",
publisher = "National Renewable Energy Laboratory (NREL)",
address = "United States",
type = "Other",
}