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Reducing data requirements when selecting key performance indicators for supply chain management: The case of a multinational automotive component manufacturer

机译:在选择供应链管理的关键性能指标时降低数据要求:跨国汽车组件制造商的情况

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摘要

The recent trend towards collecting large amounts of data potentially allows organisations to identify previously unknown data patterns that can lead to significant improvements in their performance. However, carrying on collecting this data over time and across numerous locations is expensive. Consequently, when monitoring performance, organisations can be faced with a dichotomy between continuing to collect large amounts of data or whether to use a much reduced set of data. This is a particular problem with Key Performance Indicators (KPIs). Additionally, too many indicators can lead to difficulty in data interpretation and significant overlaps between the indicators, making the understanding and managing of changes in performance more difficult. In this paper, a novel statistical approach is introduced based on the use of Principal Component Analysis (PCA) to reduce the number of KPIs, followed by TOPSIS (Technique for Order Performance by Similarity to Ideal Solution) for validating the results. It is applied to the case of a multinational automotive component manufacturer where 28 KPIs were reduced to 8. The performance of the original set of 28 KPIs was compared with that of the reduced set of 8 KPIs. The peaks of the two TOPSIS time-series coincided, and there was a high correlation between them. Therefore, having the extra 20 indicators provided little extra precision for the considered time interval. Hence, the approach is a valuable tool in helping to reduce a large number of KPIs down to a more practical and useable number.
机译:近期收集大量数据的趋势可能允许组织识别以前未知的数据模式,这可能导致其性能显着改善。但是,随着时间的推移和众多位置携带收集这些数据是昂贵的。因此,当监视性能时,组织可以面临在继续收集大量数据或是否使用大量减少的数据之间的二分法。这是关键绩效指标(KPI)的一个特殊问题。此外,太多指标可能导致数据解释难以难以在指标之间的重叠,使得能够更加困难地理解和管理性能的变化。在本文中,基于使用主成分分析(PCA)来减少KPI的数量的新颖统计方法,然后是Topsis(通过相似性与理想解决方案的订单性能的技术)来验证结果。它适用于跨国汽车成分制造商的情况,其中28公里KPI降至8.原始28kPIs的性能与减少的8kPIs的比较。两个Topsis时序串联的峰吻合,它们之间存在高的相关性。因此,具有额外的20个指示器为所考虑的时间间隔提供很少的额外精度。因此,该方法是有助于将大量KPI降低到更实用和可用的数字的宝贵工具。

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