利用社交媒体和大数据分析改善海上事故应急响应:以MV Wakashio灾难为例

Improving emergency response operations in maritime accidents using social media with big data analytics: a case study of the MV Wakashio disaster

International Journal of Operations and Production Management · 2021
被引 18
ABS 4

中文导读

研究通过分析MV Wakashio灾难期间的推特数据,提出一个基于大数据和社交媒体的早期预警系统ComACom,以改善海上事故的应急决策和响应。

Abstract

Purpose This paper aims to explore how big data analytics (BDA) emerging technologies crossed with social media (SM). Twitter can be used to improve decision-making before and during maritime accidents. We propose a conceptual early warning system called community alert and communications system (ComACom) to prevent future accidents. Design/methodology/approach Based on secondary data, the authors developed a narrative case study of the MV Wakashio maritime disaster. The authors adopted a post-constructionist approach through the use of media richness and synchronicity theory, highlighting wider community voices drawn from social media (SM), particularly Twitter. The authors applied BDA techniques to a dataset of real-time tweets to evaluate the unfolding operational response to the maritime emergency. Findings The authors reconstituted a narrative of four escalating sub-events and illustrated how critical decisions taken in an organisational and institutional vacuum led to catastrophic consequences. We highlighted the specific roles of three main stakeholders (the ship's organisation, official institutions and the wider community). Our study shows that SM enhanced with BDA, embedded within our ComACom model, can better achieve collective sense-making of emergency accidents. Research limitations/implications This study is limited to Twitter data and one case. Our conceptual model needs to be operationalised. Practical implications ComACom will improve decision-making to minimise human errors in maritime accidents. Social implications Emergency response will be improved by including the voices of the wider community. Originality/value ComACom conceptualises an early warning system using emerging BDA/AI technologies to improve safety in maritime transportation.

大数据分析社交媒体应急管理海上安全预警系统