汽车维修零件最终订货的安装基数预测

Q3 Engineering
Y. Chou, Yujang Scott Hsu, Hongji Lin
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引用次数: 5

摘要

维修零件库存模型可以根据其在单个零件/机器/设施上的预期应用或在维修已安装的设备基础上的应用来区分。除了部件故障的典型不确定性外,安装基础问题还与设备生命周期中部件寿命的异质性和生命周期末期数据的稀缺性相结合。本文提出了一个实证研究的产品销售停止后的最终订单问题,但有一个安装基础的服务。解决了两个基本问题:(1)直接基于销售数据或间接基于失败概率建立预测模型;(2)使用很少但最近的数据或使用很多但过时的数据。本文首先表明,对导出的失效概率的回归比对零件销售数据的回归产生更准确的预测。研究了数据年代和数据量对预测的影响。在需求预测中,历史数据的近代性比输入数据的数量更能提供信息。最后,建立了一个基于安装的预测模型,该模型的绝对预测误差比实例研究公司使用的现有方法提高了16.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Installed Base Forecast for Final Ordering of Automobile Service Parts
Service part inventory models can be distinguished by their intended application on sin-gle part/machine/facility, or on servicing an installed base of equipment. Besides typical uncertainties in part failure, the install base problem is compounded with the heterogeneity of the part age in equipment life cycle and scarcity of data toward the end of life phase. This paper presents an empirical study of the final order problem after the sale of a product is discontinued but there is an installed base to be serviced. Two fundamental issues are addressed: (1) to build forecast models on sales data directly or on failure probability indi-rectly, and (2) to use few but recent data or many but dated data. This paper first shows that regression on derived failure probabilities yields more accurate forecasts than regression on part sales data. The effect of data age and quantity on forecast is next investigated. The recency of historical data is shown to be more informative than the quantity of input data in demand forecast. Finally, an installed-base forecast model is constructed which show an improvement of 16.0% in absolute forecast errors than an existing method used in practice by a case study firm.
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来源期刊
International Journal of Information and Management Sciences
International Journal of Information and Management Sciences Engineering-Industrial and Manufacturing Engineering
CiteScore
0.90
自引率
0.00%
发文量
0
期刊介绍: - Information Management - Management Sciences - Operation Research - Decision Theory - System Theory - Statistics - Business Administration - Finance - Numerical computations - Statistical simulations - Decision support system - Expert system - Knowledge-based systems - Artificial intelligence
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