A framework to estimate a long-term power shortage risk following large-scale earthquake and tsunami disasters

While power shortages during and after a natural disaster cause severe impacts on response and recovery activities, related modeling and data collection efforts have been limited. In particular, no methodology exists to analyze long-term power shortages such as those that occurred during the Great E...

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Veröffentlicht in:PloS one 2023-03, Vol.18 (3), p.e0283686-e0283686
Hauptverfasser: Kajitani, Yoshio, Takabatake, Daisuke, Yuyama, Ayumi, Ishikawa, Tomomi, Kröger, Wolfgang
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creator Kajitani, Yoshio
Takabatake, Daisuke
Yuyama, Ayumi
Ishikawa, Tomomi
Kröger, Wolfgang
description While power shortages during and after a natural disaster cause severe impacts on response and recovery activities, related modeling and data collection efforts have been limited. In particular, no methodology exists to analyze long-term power shortages such as those that occurred during the Great East Japan Earthquake. To visualize a risk of supply shortage during a disaster and assist the coherent recovery of supply and demand systems, this study proposes an integrated damage and recovery estimation framework including the power generator, trunk distribution systems (over 154 kV), and power demand system. This framework is unique because it thoroughly investigates the vulnerability and resilience characteristics of power systems as well as businesses as primary power consumers observed in past disasters in Japan. These characteristics are essentially modeled by statistical functions, and a simple power supply-demand matching algorism is implemented using these functions. As a result, the proposed framework reproduces the original power supply and demand status from the 2011 Great East Japan Earthquake in a relatively consistent manner. Using stochastic components of the statistical functions, the average supply margin is estimated to be 4.1%, but the worst-case scenario is a 5.6% shortfall relative to peak demand. Thus, by applying the framework, the study improves knowledge on potential risk by examining a particular past disaster; the findings are expected to enhance risk perception and supply and demand preparedness after a future large-scale earthquake and tsunami disaster.
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subjects Blackouts
Consumption
Data collection
Disaster management
Disasters
Earthquake damage
Earthquakes
Economic aspects
Electric power
Electric power systems
Electricity
Electricity distribution
Engineering and Technology
Households
Influence
Japan
Management
Mathematical models
Natural Disasters
Peak demand
People and Places
Physical Sciences
Power consumption
Power plants
Power supply
Research and analysis methods
Risk perception
Seismic activity
Shortages
Social Sciences
Stochasticity
Supply & demand
Supply and demand
Tsunamis
title A framework to estimate a long-term power shortage risk following large-scale earthquake and tsunami disasters
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