采矿业职业伤害神经模糊预测模型。

IF 1.6 4区 医学 Q3 ERGONOMICS
Jelena S Ivaz, Dejan V Petrović, Saša S Stojadinović, Pavle Z Stojković, Sanja J Petrović, Dragan M Zlatanović
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引用次数: 0

摘要

研究目的本研究探讨了利用神经网络和模糊逻辑理论开发一个独特模型来预测塞尔维亚地下煤矿工伤事故的可能性。由于地下矿产开采的特殊性,涉及人员、机械和有限的工作场所,因此事故频发。方法。预测工伤事故的通用模型考虑了组织方面、个人和集体防护设备、在职培训和领导因素等影响因素。所选网络的预测准确率大于 90%。研究结果这项研究成功地识别了导致伤害的潜在风险和关键工人群体。敏感性分析为有针对性的安全措施和改进组织实践提供了见解。结论。这种数据驱动方法为采矿业的安全做出了宝贵贡献。实施预测模型可以减少伤害和机器损坏,提高工人福利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuro-fuzzy prediction model of occupational injuries in mining.

Objectives. This study investigates the possibility of developing a unique model for predicting work-related injuries in Serbian underground coal mines using neural networks and fuzzy logic theory. Accidents are common due to the unique nature of underground mineral extraction involving people, machinery and limited workplaces. Methods. A universal model for predicting occupational accidents takes into account influential factors such as organizational aspects, personal and collective protective equipment, on-the-job training and leadership factors. The selected networks achieved a prediction accuracy of >90%. Results. The study successfully identifies potential risks and critical worker groups leading to injuries. The sensitivity analysis provides insights for targeted safety measures and improved organizational practices. Conclusion. This data-driven approach makes a valuable contribution to safety in the mining industry. Implementation of the predictive model can reduce injuries and machine damage, and improve worker well-being.

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来源期刊
CiteScore
4.80
自引率
8.30%
发文量
152
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