Research on work-stress recognition for deep ground miners based on depth-separable convolutional neural network

IF 3.6 3区 工程技术 Q2 ENGINEERING, CHEMICAL
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Abstract

In deep mine production operations, the challenging operating environment intensifies the workload and pressure on coal miners. Long-term exposure to high-intensity operating pressure can seriously impact the physical and mental health of miners, leading to unsafe behaviors and accidents. To identify the pressure of miners' operations, this paper examines various driving scenarios, such as the deep-well tunneling machine cutting the wall and opening the alley, the shoveling machine shoveling ore, and the pickup truck driver transporting. The paper randomly collects facial images of miners during each operation using an explosion-proof CCD camera to obtain the facial expression characteristic data of miners. The Ferface2013 facial expression dataset was used to establish the dataset. The depth separable convolutional neural network MiniXception was used for training and to output the classification results of the pressure degree of deep shaft miners. A MiniXception-based miners' operating pressure recognition model was established. The training time, precision, recall, F1 score, and classification accuracy confusion matrix were selected. The study evaluated the effectiveness of the recognition model by measuring its training time, precision, recall, F1 score, and classification accuracy confusion matrix. The results indicate that the model has a correct recognition rate of 88% for the pressure state, 91% for the pleasure state, and 74% for the normal state. The overall accuracy of the model is 0.843. Therefore, the MiniXception recognition model is suitable for recognizing the pressure of miners' operations in deep mines. This can meet practical needs and is useful for preventing major accidents in mines, managing on-site safety, and managing safety in non-hazardous areas. It has important theoretical and practical significance.

基于深度分离卷积神经网络的深层地面矿工工作压力识别研究
在煤矿深部生产作业中,严峻的作业环境加剧了煤矿工人的工作量和压力。长期暴露在高强度的作业压力下,会严重影响矿工的身心健康,导致不安全行为和事故的发生。为了识别矿工的作业压力,本文研究了各种驾驶场景,如深井掘进机凿壁开巷、铲运机铲运矿石、皮卡司机运输等。本文使用防爆 CCD 摄像机随机采集矿工在每次操作过程中的面部图像,从而获得矿工的面部表情特征数据。数据集采用 Ferface2013 面部表情数据集。使用深度可分离卷积神经网络 MiniXception 进行训练,并输出深井矿工压力程度的分类结果。建立了基于 MiniXception 的矿工工作压力识别模型。选择了训练时间、精确度、召回率、F1 分数和分类精度混淆矩阵。研究通过测量识别模型的训练时间、精确度、召回率、F1 分数和分类准确度混淆矩阵,评估了识别模型的有效性。结果表明,该模型对压力状态的正确识别率为 88%,对愉悦状态的正确识别率为 91%,对正常状态的正确识别率为 74%。模型的总体准确率为 0.843。因此,MiniXception 识别模型适用于识别深矿井中矿工的作业压力。这可以满足实际需要,对预防矿山重大事故、现场安全管理和非危险区域安全管理都有帮助。具有重要的理论和实践意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
14.30%
发文量
226
审稿时长
52 days
期刊介绍: The broad scope of the journal is process safety. Process safety is defined as the prevention and mitigation of process-related injuries and damage arising from process incidents involving fire, explosion and toxic release. Such undesired events occur in the process industries during the use, storage, manufacture, handling, and transportation of highly hazardous chemicals.
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