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Application of cloud computing and big data in three-stage dynamic modeling of disaster relief logistics and wounded transportation: a case study.

Niyazi, M ; Behnamian, J
In: Environmental science and pollution research international, Jg. 30 (2023-03-01), Heft 13, S. 38121
Online academicJournal

Titel:
Application of cloud computing and big data in three-stage dynamic modeling of disaster relief logistics and wounded transportation: a case study.
Autor/in / Beteiligte Person: Niyazi, M ; Behnamian, J
Link:
Zeitschrift: Environmental science and pollution research international, Jg. 30 (2023-03-01), Heft 13, S. 38121
Veröffentlichung: <2013->: Berlin : Springer ; <i>Original Publication</i>: Landsberg, Germany : Ecomed, 2023
Medientyp: academicJournal
ISSN: 1614-7499 (electronic)
DOI: 10.1007/s11356-022-24770-3
Schlagwort:
  • Humans
  • Cloud Computing
  • Big Data
  • Disaster Planning
  • Disasters
  • Earthquakes
Sonstiges:
  • Nachgewiesen in: MEDLINE
  • Sprachen: English
  • Publication Type: Journal Article
  • Language: English
  • [Environ Sci Pollut Res Int] 2023 Mar; Vol. 30 (13), pp. 38121-38140. <i>Date of Electronic Publication: </i>2022 Dec 28.
  • MeSH Terms: Disaster Planning* ; Disasters* ; Earthquakes* ; Humans ; Cloud Computing ; Big Data
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  • Contributed Indexing: Keywords: Cloud computing; Disaster logistics; Evacuation; Multi-stage modeling; Relief distribution
  • Entry Date(s): Date Created: 20221227 Date Completed: 20230329 Latest Revision: 20230329
  • Update Code: 20240513

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