Prediction of the Work-Related Injuries Based on Neural Networks

Jelena Ivaz, R. Nikolić, Dejan V. Petrovic, J. Djoković, B. Hadzima
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引用次数: 3

Abstract

Abstract Artificial neural networks (ANN) are a powerful tool in the decision-making process, especially in solving the complex problems with a large number of input data. The possibility to predict the work-related injuries in the underground coal mines, based on application of the neural networks, is analyzed in this work. the input data for the network were obtained based on a survey of 1300 respondents. After analyzing the input data influence on the network output, 14 most influential inputs were selected, with help of which the network correctly predicted whether the worker would suffer the work-related injury or not, with 80% precision. The two models were developed, based on the multilayer perceptron (MLP) and radial basis function (RBF) networks. The two models’ results were compared to each other. The sensitivity analysis was used to select the most influential parameters, like mine, age of miners, as well as their work experience. The parameters were further analyzed by use of the descriptive statistics. The selected parameters are direct indicators of problems that can cause injuries. The obtained results point to the fact that the work-related injuries can be successfully predicted by application of the artificial neural networks. The proposed models’ importance is reflected in the clear indicators for enforcing the stricter occupational safety and organizational measures in order to reduce the number of work-related injuries in underground mines.
基于神经网络的工伤预测
摘要人工神经网络(ANN)在决策过程中,特别是在解决具有大量输入数据的复杂问题时,是一种强大的工具。本文分析了基于神经网络的煤矿井下工伤预测的可能性。该网络的输入数据是根据对1300名受访者的调查获得的。在分析输入数据对网络输出的影响后,选出14个影响最大的输入,网络据此正确预测工人是否会遭受工伤,准确率达到80%。基于多层感知器(MLP)和径向基函数(RBF)网络建立了这两个模型。对两种模型的结果进行了比较。采用敏感性分析选择影响最大的参数,如矿山、矿工年龄以及他们的工作经验。采用描述性统计方法对参数进行进一步分析。所选参数是可能造成伤害的问题的直接指标。研究结果表明,应用人工神经网络可以成功地进行工伤预测。所提出的模型的重要性反映在明确的指标上,以便执行更严格的职业安全和组织措施,以减少地下矿山工伤人数。
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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