庞巴迪售后市场需求预测与机器学习

IF 1.1 4区 管理学 Q4 MANAGEMENT Informs Journal on Applied Analytics Pub Date : 2023-05-02 DOI:10.1287/inte.2023.1164
Pierre Dodin, Jingyi Xiao, Yossiri Adulyasak, Neda Etebari Alamdari, Lea Gauthier, Philippe Grangier, Paul Lemaitre, William L. Hamilton
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引用次数: 0

摘要

间歇需求模式在公务机备件供应链中普遍存在。由于不经常到货和需求的巨大变化,飞机售后市场的需求很难预测,这往往导致备件短缺或库存过多。在本文中,我们介绍了庞巴迪航空航天公司高级分析框架的开发和实施,该框架由庞巴迪库存计划团队和IVADO实验室执行,以改进售后市场需求预测过程。这种集成的预测分析管道以系统的方式在单个框架中利用机器学习(ML)模型和传统的时间序列模型。我们还利用基于树的机器学习方法,使用大量输入特征来估计间歇性需求的两个组成部分,即需求大小和需求间隔。通过ML模型,我们结合了不同的特征,包括来自飞行数据的特征。使用集成技术将不同预测模型的输出组合在一起,该技术提高了按需求模式分类的不同售后市场备件组的预测的稳健性和准确性。验证结果表明,预测精度提高了约7%,无偏预测精度提高了5%。基于机器学习的庞巴迪售后市场预测系统已成功部署,并用于定期预测庞巴迪超过10亿加元的售后市场需求。历史:本文被审稿。
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Bombardier Aftermarket Demand Forecast with Machine Learning
Intermittent demand patterns are commonly present in business aircraft spare parts supply chains. Because of the infrequent arrivals and large variations in demand, aircraft aftermarket demand is difficult to forecast, which often leads to shortages or overstocking of spare parts. In this paper, we present the development and implementation of an advanced analytics framework at Bombardier Aerospace, which is carried out by the Bombardier inventory planning team and IVADO Labs to improve the aftermarket demand forecasting process. This integrated predictive analytics pipeline leverages machine-learning (ML) models and traditional time series models in a single framework in a systematic fashion. We also make use of a tree-based machine-learning method with a large set of input features to estimate two components of intermittent demand, namely demand sizes and interdemand intervals. Through the ML models, we incorporate different features, including those derived from flight data. Outputs of different forecasting models are combined using an ensemble technique that enhances the robustness and accuracy of the forecasts for different groups of aftermarket spare parts categorized by demand patterns. The validation results show an improvement in forecast accuracy of approximately 7% and in unbiased forecast of 5%. The ML-based Bombardier Aftermarket forecasting system has been successfully deployed and used to forecast the aftermarket demand at Bombardier of more than 1 billion Canadian dollars on a regular basis. History: This paper was refereed.
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