Development of short-term prediction with regard to a number of accidents at work using the scoring method

IF 2.2 4区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Acta Montanistica Slovaca Pub Date : 2023-06-12 DOI:10.46544/ams.v28i1.04
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Abstract

The mining industry is an industry branch with one of the highest rates of accidents at work in Poland and the presented analysis develops the knowledge about the safety in the mining sector. The work below presents a short-term prediction of the overall work accident number in a selected industrial facility, developed on the basis of statistical accident rate data and using 25 selected econometric models. In the summary assessment of a specific prediction, the scoring method was applied, taking the following weights into consideration: C1 and C2 criteria (C) – 10 % each, C3 and C4 criteria – 20% each, and C5 criterion – 40 %, where: C1 was the value of ex post prediction error  for the series including the empirical data covering the period between 2007 and 2016; C2 was the value of ex post prediction error  for the series including the empirical data covering the period between 2007 and 2018; C3 was the value of coefficient of random variation Ve for the ex post predictions from the period between 2007 and 2016 (for all predictions except the linear and linearized models, the RMSE* value was applied to estimate their value); C4 was the value of coefficient of random variation Ve for the ex post predictions from the period between 2007 and 2018 (for all predictions except the linear and linearized models, the RMSE* value was applied to estimate their value); C5 was the value of ex post prediction error  for the series including the empirical data covering the period between 2017 and 2018. Statistical work accident rate data covering the period between 2007 and 2018 were used in the analysis.
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利用计分法对若干工作事故进行短期预测
采矿业是波兰工伤事故发生率最高的行业分支之一,所提供的分析发展了有关采矿业安全的知识。以下工作介绍了在统计事故率数据的基础上,使用25个选定的计量经济模型对选定工业设施的总体工伤事故数量进行的短期预测。在对特定预测的总结评估中,采用了评分方法,考虑了以下权重:C1和C2标准(C)各10%,C3和C4标准各20%,C5标准各40%,其中:C1为预测误差值 该系列包括2007年至2016年期间的经验数据;C2是事后预测误差的值 该系列包括2007年至2018年期间的经验数据;C3是2007年至2016年期间的事后预测的随机变化系数Ve的值(对于除线性和线性化模型外的所有预测,均采用RMSE*值来估计其值);C4是2007年至2018年期间的事后预测的随机变化系数Ve的值(对于除线性和线性化模型外的所有预测,均采用RMSE*值来估计其值);C5为事后预测误差值 该系列包括2017年至2018年期间的经验数据。分析中使用了2007年至2018年期间的统计工伤事故率数据。
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来源期刊
Acta Montanistica Slovaca
Acta Montanistica Slovaca 地学-地球科学综合
CiteScore
3.60
自引率
12.50%
发文量
60
审稿时长
30 weeks
期刊介绍: Acta Montanistica Slovaca publishes high quality articles on basic and applied research in the following fields: geology and geological survey; mining; Earth resources; underground engineering and geotechnics; mining mechanization, mining transport, deep hole drilling; ecotechnology and mineralurgy; process control, automation and applied informatics in raw materials extraction, utilization and processing; other similar fields. Acta Montanistica Slovaca is the only scientific journal of this kind in Central, Eastern and South Eastern Europe. The submitted manuscripts should contribute significantly to the international literature, even if the focus can be regional. Manuscripts should cite the extant and relevant international literature, should clearly state what the wider contribution is (e.g. a novel discovery, application of a new technique or methodology, application of an existing methodology to a new problem), and should discuss the importance of the work in the international context.
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