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Power Outage Estimation: The Study of Revenue-Led Top Affected States of U.S

The electric power systems are becoming smart as well as complex with every passing year, especially in response to the changing environmental conditions. Resilience of power generation and transmission infrastructure is important to avoid power outages, ensure robust service, and to achieve sustain...

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Published in:IEEE access 2020, Vol.8, p.223271-223286
Main Authors: Taimoor, Naveed, Khosa, Ikramullah, Jawad, Muhammad, Akhtar, Jahanzeb, Ghous, Imran, Qureshi, Muhammad Bilal, Ansari, Ali R., Nawaz, Raheel
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description The electric power systems are becoming smart as well as complex with every passing year, especially in response to the changing environmental conditions. Resilience of power generation and transmission infrastructure is important to avoid power outages, ensure robust service, and to achieve sustained economic benefits. In this study, we employ a two-stage model to estimate the power outage in terms of its intensity as well as the duration. We identify the top three potentially critical states of United States of America, not merely based on duration of the power outage, but by also incorporating outage related revenue loss. In the proposed model, the first stage classifies the intensity of the outage event while the second stage predicts the duration of the outage itself. Moreover, the key predictors are characterized and their association with outage duration is illustrated. We use a comprehensive and publicly available dataset, which provides the information related to historical power outage events, such as electricity usage patterns, climatological annotations, socio-economic indicators, and land-use data. Our rigorous analysis and results suggest that the power outage interval is the function of several parameters, such as climatological condition, economic indicators as well as the time of the year. The proposed study can help the regulatory authorities taking appropriate decisions for long term economic paybacks. It can also help disaster management authorities to take risk-informed resilient decisions for system safety.
doi_str_mv 10.1109/ACCESS.2020.3043630
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source IEEE Open Access Journals
subjects Annotations
Blackouts
classification
Decisions
Disaster management
Economic analysis
Economic indicators
Economic models
Economics
Electric power systems
Electricity distribution
Hurricanes
Indicators
Land use
Meteorology
natural disasters
Power failures
power outages
Power system reliability
Prediction
random forest
Regulatory agencies
Resilience
Revenue
Storms
support vector machine
US Government agencies
Wind forecasting
title Power Outage Estimation: The Study of Revenue-Led Top Affected States of U.S
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