矿业安全与环保2024,Vol.51Issue(5) :8-14.DOI:10.19835/j.issn.1008-4495.20230334

基于BP神经网络的矿工不安全心理预警研究

A study of unsafe psychological warning for miners based on BP neural network

田水承 张倩 冯帅
矿业安全与环保2024,Vol.51Issue(5) :8-14.DOI:10.19835/j.issn.1008-4495.20230334

基于BP神经网络的矿工不安全心理预警研究

A study of unsafe psychological warning for miners based on BP neural network

田水承 1张倩 1冯帅1
扫码查看

作者信息

  • 1. 西安科技大学 安全科学与工程学院,陕西 西安 710054;西安科技大学 安全与应急管理研究所,陕西 西安 710054
  • 折叠

摘要

矿工不安全心理是煤矿人因事故的险兆,为识别该险兆,进行了矿工不安全心理预警研究.基于扎根理论,对选取的47 篇初始文献进行编码处理,构建了包括3 个核心范畴、8 个主范畴的矿工不安全心理预警指标体系,通过问卷调查获取数据,运用CRITIC-熵权法确定其指标权重.在此基础上,构建出矿工不安全心理的"8-20-4"3 层BP神经网络预警模型.试验结果表明:矿工不安全心理受到个体、作业和组织层面影响,其中,工作负荷、身体素质、工作环境、人际关系是关键诱发因素;提出的预警模型准确率达到 93.7%,能有效识别矿工不安全心理等级,并针对矿工心理预警结果提出了"预警—对策"机制.

Abstract

The unsafe psychological state of miners is a significant precursor to accidents in coal mines.To identify this precursor,a study on the early warning of miners'unsafe psychological states was conducted based on grounded theory,47 initial documents were coded to establish a warning indicator system comprising 3 core categories and 8 main categories related to miners'unsafe psychological states.Data were collected through a questionnaire survey,and the CRITIC-Entropy method was employed to determine the weights of the indicators subsequently,a three-layer BP neural network early warning model,structured as"8-20-4"was developed for miners'unsafe psychological states.Experimental results indicate that the unsafe psychological state of miners is influenced by individual,operational,and organizational factors,with workload,physical condition,work environment,and interpersonal relationships identified as key triggering factors.The proposed early warning model achieved an accuracy rate of 93.7%,effectively identifying the levels of miners'unsafe psychological states.Moreover,a"warning-countermeasure"mechanism was proposed based on the psychological warning results for miners.

关键词

矿工/不安全心理/预警/BP神经网络/扎根理论/CRITIC-熵权法/对策分析

Key words

miner/unsafe psychology/early warning/BP neural network/grounded theory/CRITIC-entropy weight method/countermeasure analysis

引用本文复制引用

基金项目

国家自然科学基金项目(51874237)

国家自然科学基金项目(U1904210)

国家社会科学基金项目(20XGL025)

出版年

2024
矿业安全与环保
中煤科工集团重庆研究院,国家煤矿安全技术工程研究中心

矿业安全与环保

CSTPCD北大核心
影响因子:0.987
ISSN:1008-4495
段落导航相关论文