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Supply chain data analytics for predicting supplier disruptions: a case study in complex asset manufacturing

机译:供应链数据分析预测供应商中断:复杂资产制造中的案例研究

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摘要

Although predictive machine learning for supply chain data analytics has recently been reported as a significant area of investigation due to the rising popularity of the AI paradigm in industry, there is a distinct lack of case studies that showcase its application from a practical point of view. In this paper, we discuss the application of data analytics in predicting first tier supply chain disruptions using historical data available to an Original Equipment Manufacturer (OEM). Our methodology includes three phases: First, an exploratory phase is conducted to select and engineer potential features that can act as useful predictors of disruptions. This is followed by the development of a performance metric in alignment with the specific goals of the case study to rate successful methods. Third, an experimental design is created to systematically analyse the success rate of different algorithms, algorithmic parameters, on the selected feature space. Our results indicate that adding engineered features in the data, namely agility, outperforms other experiments leading to the final algorithm that can predict late orders with 80% accuracy. An additional contribution is the novel application of machine learning in predicting supply disruptions. Through the discussion and the development of the case study we hope to shed light on the development and application of data analytics techniques in the analysis of supply chain data. We conclude by highlighting the importance of domain knowledge for successfully engineering features.
机译:虽然预测机器学习供应链数据分析最近被报告为由于行业AI范例的普及越来越令人兴气而被报告为一个重要的调查领域,但在实际的角度来看,展示了其应用的案例研究明显缺乏。在本文中,我们讨论了使用原始设备制造商(OEM)可用的历史数据预测第一层供应链中断的数据分析在预测第一层供应链中断。我们的方法包括三个阶段:首先,进行探索阶段,以选择和工程师的潜在功能,可以充当中断的有用预测因子。随后,与案例研究的特定目标进行对齐进行性能度量,以便对成功的方法进行对齐。第三,创建实验设计以系统地分析不同算法,算法参数,在所选特征空间上的成功率。我们的结果表明,在数据中添加工程特性,即敏捷性,优于导致最终算法的其他实验,这可以预测80%精度的后期订单。额外贡献是机器学习在预测供应中断时的新颖应用。通过讨论和发展案例研究,我们希望在供应链数据分析中阐明数据分析技术的开发和应用。我们通过强调域名知识成功工程特征的重要性来结束。

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