旅游
独创性
应急管理
自然灾害
灾难恢复
主题分析
旅游地理学
可持续旅游
业务
定性研究
社会学
政治学
地理
社会科学
气象学
法学
作者
Yachen Zhang,Brent Moyle,Karine Dupré,Gui Lohmann,Cheryl Desha,Iain MacKenzie
出处
期刊:Tourism Review
[Emerald (MCB UP)]
日期:2023-04-11
卷期号:78 (6): 1466-1483
被引量:13
标识
DOI:10.1108/tr-08-2022-0377
摘要
Purpose This study aims to track and integrate past research concerning how tourism might improve natural disaster management, detect thematic research areas and develop an agenda for future research. Design/methodology/approach Using a systematic literature review methodology, this research synthesises academic papers indexed in the Scopus, Web of Science and EBSCOhost (Hospitality & Tourism Complete) databases. A total of 34 articles published in peer-reviewed English journals were systematically selected for review and analysed using a thematic approach. Findings This review highlights a growing interest in the potential and value of tourism for disaster management. Eight key themes emerged in the review, including education and information communication about disasters; tourism facilities for disaster preparation; tourism resources in emergency conditions; livelihoods and economic recovery; disaster-related tourism attractions for recovery; destination re-branding and re-framing; community reinvigoration in tourism-driven disaster recovery; and special-interest tourism for recovery. A natural disaster management schematic empowered by tourism highlights tourism industry opportunities to positively impact the entire disaster management process. Originality/value To the best of the authors’ knowledge, this work offers the first systematic review of the research on how tourism might support multiple stages of natural disaster management. This study thus complements and enriches extant literature reviews on the nexus between tourism and disaster management. The framework presents timely guidelines for planners, developers and other key stakeholders to leverage tourism initiatives to improve disaster management outcomes.
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