EMERGENCY RESPONSE MANAGEMENT AND THE NEED FOR INSTITUTIONAL SUPPORT FOR EVACUATION OF VICTIMS INJURED IN EARTHQUAKE DISASTERS

Authors

  • Muhammad Muhammad Poltekkes Kemenkes Aceh
  • Hajjul Kamil Universitas Syiah Kuala

DOI:

https://doi.org/10.30867/aich.v1i2.741

Keywords:

Evacuation of victims injured, Disaster, Earthquake

Abstract

The existence of emergency response management system support is very urgent because the threat of disaster and the disaster risk index are very high. Geographical conditions and the existence of large faults in most of Indonesia's territorial areas as evidenced by the evidence base of earthquake disasters causing victims. On the other hand, support for the management system in making policies and decisions quickly in disaster management efforts during the emergency response period has not been optimal, including limitations in the utilization of resources in evacuating victims injured due to earthquake disasters. This article is written to provide an overview of the forms of institutional support variables needed in order to optimize the provision of assistance to all earthquake disaster victims, especially for the evacuation and transportation process of injured victims during the earthquake disaster emergency response period until they receive definitive health service assistance. However, efforts to optimize the provision of assistance must start from the pre disaster period through the development of an emergency response plan.

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Published

2024-10-28