Multi-stage Comparative Analysis of Emergency Coordination Efficiency in Major Emergencies from the Perspective of Social Networks——Zhengzhou"7.20"Super Heavy Rainstorm Disaster as an Example
The current global climate anomaly is anticipated to lead to a heightened frequency of extreme natural disaster events in the future.With the rapid pace of urbanization,there is an increasing development of large urban complexes.This convergence of high-risk and fragile social systems will further underscore the intercon-nection,complexity,and importance of extreme disaster events.As a result,a single emergency entity can no longer adequately address the emergency needs arising from such complex disasters,necessitating collaboration among multiple entities within emergency organizations.However,cross-organizational emergency coordination does not always operate with optimal efficiency.The feasibility of emergency plans,fragmentation of inter-organi-zational collaboration,and inadequate crisis learning all impede the maximization of efficiency in inter-organiza-tional collaborative governance.It is crucial to optimize and strengthen cooperation among emergency organiza-tions and establish a coordinated and efficient risk management model.This article focuses on a significant major emergency—the"7.20"super heavy rainstorm disaster in Zheng-zhou,Henan province,as the subject of research.The primary source of research data consists of case-related news reports and emergency plans at all levels published on government websites.Initially,text analysis is employed to identify the emergency organizations involved in this major event and establish them as nodes within the emergency collaboration network.The interactive and collaborative relationships between organizations are considered as edges within the emergency collaboration network.From a systemic and practical perspective,inter-organizational planning and collaboration networks based on the emergency plan are constructed alongside actual response collaboration networks during two distinct time stages.Subsequently,social network analysis is utilized to compare structural differences and evolutionary characteristics across different types and stages of emergency collaborative networks by examining both overall network characteristics and individual organizational positions.Furthermore,this study delves into assessing the alignment between inter-organizational collaboration outlined in the emergency plan with actual responses during current disaster relief efforts,as well as evaluating local government learning effects during crises.The main findings of this paper are as follows:(1)The alignment between the plan and the actual collabora-tive situation is suboptimal.Emergency planning poses challenges to facilitating efficient emergency response collaboration,exhibiting characteristics of"limited operability".This is evidenced by a lack of forward exten-sion,inadequate information communication mechanisms,insufficiently prominent unified command subject,and oversight of certain critical emergency response nodes.(2)Additionally,there are deficiencies in the initial actu-al response collaborative network with regards to collaborative efficiency and the role of the core organization.(3)Timely crisis learning can significantly enhance the efficacy of emergency response collaboration in major emergencies.The actual response collaboration network demonstrates characteristics of automatic evolutionary optimization under government crisis learning influence.It tends to form an emergency organizational network structure with core organizational leadership and coordinated division of labor.Based on the findings of this study,future research will endeavor to investigate the influencing factors that promote the establishment of coordination relationships among diverse emergency responders in large-scale disas-ter scenarios,and enhance our comprehension of the dynamic evolution mechanism of emergency collaboration networks.Additionally,it would be advantageous to validate the scientific principles identified in this investiga-tion through examination of additional similar cases of extreme disasters.
social networksplanning collaborative networksresponse collaborative networksZhengzhou rainstormlearning in crisis