2022
DOI: 10.1155/2022/3682472
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Resilience of Urban Road Network to Malignant Traffic Accidents

Abstract: Malignant traffic accidents are typical devastating events suffered by the urban road network. They cause severe functional loss when loading on the urban road network is high, exerting a significant impact on the operation of the city. The resilience of a road network refers to its ability to maintain a certain level of capacity and service when disturbed by external factors and to recover after a disturbance event, which is a crucial factor in the construction of transportation infrastructure systems. A comp… Show more

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Cited by 3 publications
(1 citation statement)
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“…Road rescue plays an important role in reducing casualties and property losses in trafc accidents [1][2][3][4], which can provide rescue services for faulty vehicles, such as fuel delivery, tire replacement, battery connection, on-site repair, clearing, and towing. Te reasonable and adequate distribution of rescue resources can improve the efciency of rescue and enhance the road resilience [5][6][7][8]. Te lack of road rescue demand prediction may lead to insufcient rescue forces and untimely rescue in emergency.…”
Section: Introductionmentioning
confidence: 99%
“…Road rescue plays an important role in reducing casualties and property losses in trafc accidents [1][2][3][4], which can provide rescue services for faulty vehicles, such as fuel delivery, tire replacement, battery connection, on-site repair, clearing, and towing. Te reasonable and adequate distribution of rescue resources can improve the efciency of rescue and enhance the road resilience [5][6][7][8]. Te lack of road rescue demand prediction may lead to insufcient rescue forces and untimely rescue in emergency.…”
Section: Introductionmentioning
confidence: 99%