Measuring the production performance indicators for metal-mechanic industry: an LDA modeling approach

Jorge Aníbal Restrepo, Emerson Andres Giraldo, Juan Gabriel Vanegas
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Abstract

PurposeThis study proposes a novel method to improve the accuracy of overall equipment effectiveness (OEE) estimation in the metallurgical industry. This is achieved by modeling the frequency and severity of stoppage events as random variables.Design/methodology/approachAn analysis of 80,000 datasets from a metal-mechanical firm (2020–2022) was performed using the loss distribution approach (LDA) and Monte Carlo simulation (MCS). The data were further adjusted with a product price index to account for inflation.FindingsThe variance analysis revealed supporting colleagues (59.8% of variance contribution), food breaks (29.8%) and refreshments (9.0%) as the events with the strongest influence on operating losses.Research limitations/implicationsThis study provides a more rigorous approach to operational risk management and OEE measurement in the metal-mechanical sector. The developed algorithm supports the establishment of risk management guidelines and facilitates targeted OEE improvement efforts.Originality/valueThis research introduces a novel OEE estimation method specifically for the metallurgical industry, utilizing LDA and MCS to improve accuracy compared to existing techniques.
衡量金属机械行业的生产绩效指标:一种 LDA 建模方法
目的本研究提出了一种新方法来提高冶金行业整体设备效率(OEE)估算的准确性。采用损失分布法(LDA)和蒙特卡罗模拟法(MCS)对一家金属机械公司的 80,000 个数据集(2020-2022 年)进行了分析。研究限制/意义本研究为金属机械行业的运营风险管理和 OEE 测量提供了一种更严格的方法。所开发的算法有助于建立风险管理准则,并促进有针对性的 OEE 改进工作。原创性/价值本研究专门针对冶金行业引入了一种新的 OEE 估算方法,与现有技术相比,利用 LDA 和 MCS 提高了准确性。
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