数据驱动的高校实验室安全隐患演变与精准干预策略研究

Research on Data-Driven Evolution of Safety Hazards and Targeted Intervention Strategies in University Laboratories

  • 摘要: 为提升高校实验室安全管理的精准性与主动性,本研究基于河北省2020—2024年实验室安全隐患数据,运用复杂网络分析方法构建安全隐患共现图谱,揭示隐患关联结构与演变规律。研究发现:化学安全、实验场所与责任体系隐患关联紧密,易形成连锁风险;隐患结构呈现从“管理为主”向“设施与操作为主”的演变趋势;不同类型高校隐患分布存在显著差异。基于此,从预防、控制、协同、治理四个维度提出数据驱动的精准干预策略,为高校实验室安全治理向主动防控、系统治理转型提供理论支持与实践路径。

     

    Abstract: To enhance the precision and proactivity of safety management in university laboratories, this study utilizes complex network analysis on laboratory safety hazard data from Hebei Province (2020–2024) to construct a safety hazard co-occurrence network, revealing the interconnected structure and evolutionary patterns of hazards. The findings indicate that hazards related to chemical safety, experimental sites, and responsibility systems are closely linked and prone to triggering chain risks. The hazard structure shows a shift from being management-focused to facility- and operation-focused over time, with significant differences in hazard distribution across different types of universities. Based on these insights, a data-driven targeted intervention strategy is proposed across four dimensions—prevention, control, collaboration, and governance—providing theoretical support and a practical pathway for transforming laboratory safety management toward proactive prevention and systematic governance.

     

/

返回文章
返回