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现代矿业 ›› 2025, Vol. 41 ›› Issue (12): 17-23.

• 智能矿山 • 上一篇    下一篇

矿山智能化改造背景下矿卡司机心理负荷影响因素研究与应用

江 松1,2 张雅岚1,2 饶彬舰2,3 袁代国4 徐中华4 付信凯4   

  1. 1. 西安建筑科技大学资源工程学院;2. 西安智慧工业感知、计算与决策重点实验室; 3. 西安建筑科技大学管理学院;4. 中钢集团山东富全矿业有限公司
  • 出版日期:2025-12-25 发布日期:2026-01-12

Research and Application on the Influencing Factors of Psychological Load of Mine Truck Drivers under the Background of Intelligent Transformation of Mines

  1. 1. School of Resource Engineering,Xi'an University of Architecture and Technology;2. Xi'an Key Labo‐ ratory of Smart Industry Perception,Computing and Decision Making;3. School of Management,Xi'an University of Architecture and Technology;4. Sinosteel Shandong Fuquan Mining Co.,Ltd.
  • Online:2025-12-25 Published:2026-01-12

摘要: 在当前矿山智能化改造的背景下,智能调度系统的应用可能导致矿卡司机心理负荷 过高,进而影响其操作状态并增加事故风险。针对该问题,首先对矿卡司机的作业流程进行了详 细剖析,识别出关键任务环节和潜在压力源;随后探讨了心理负荷的形成机理,综合考虑任务复杂 度、时间紧迫性及作业环境等多重影响因素。为验证分析结果,设计了模拟驾驶试验,在模拟的矿 山环境中采集司机的脑电(EEG)数据以客观测量认知负荷,同时使用 NASA-TLX 任务量表评估其 主观工作负荷,并利用随机森林算法构建心理负荷预测模型。研究结果表明,该模型能够以 85% 的准确率识别出各水平心理负荷状态下的脑电特征,为实时监测提供了可靠依据。最后提出心理 负荷动态感知与智能调度系统,利用穿戴式传感器和机器学习算法持续跟踪司机的心理状态,并 在检测到负荷超标时,通过调整任务分配或安排休息等方式进行干预,有效降低心理负荷,预防操 作失误和事故发生,保障智慧矿山的安全生产与高效运营。

关键词: 智能调度, 矿卡司机, 心理负荷, 实时监控

Abstract: Under the current background of intelligent transformation of mines,the application of in‐ telligent dispatching systems may cause excessive psychological burden on mine truck drivers,thereby af‐ fecting their operating conditions and increasing the risk of accidents. To address this issue,the research first conducted a detailed analysis of the operation process of mine truck drivers,identifying key task links and potential stressors. Subsequently,the formation mechanism of psychological load was discussed,com‐ prehensively considering multiple influencing factors such as task complexity,time urgency and working environment. To verify the analysis results,a simulated driving test is designed. The electroencephalogram (EEG) data of drivers are collected in the simulated mine environment to objectively measure cognitive load. Meanwhile,the NASA-TLX task scale is used to evaluate their subjective workload,and the random forest algorithm was utilized to construct a psychological load prediction model. The research results show that this model can identify the electroencephalogram (EEG) characteristics under various levels of psycho‐ logical load with an accuracy rate of 85%,providing a reliable basis for real-time monitoring. Finally,a dynamic perception and intelligent dispatching system for psychological load is proposed. It uses wearable sensors and machine learning algorithms to continuously track the psychological state of drivers. When it detects that the load exceeds the standard,it intervenes by adjusting task allocation or arranging rest,ef‐ fectively reducing psychological load,preventing operational errors and accidents,and ensuring the safe production and efficient operation of smart mines.

Key words: intelligent scheduling, mine truck driver, psychological load, real-time monitoring