汽车电气部件再制造需求预测模型的建立

M. Matsumoto, Y. Umeda, Shuto Tsuchiya, L. Tang
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引用次数: 3

摘要

制定可靠的预测流程是优化产品再制造总体规划流程的关键步骤。本研究采用时间序列分析(Holt-Winters模型)、产品寿命模型(威布尔分布),并结合两种方法,检验再制造需求预测的有效性。为了验证该方法的有效性,采用了某独立再制造企业的再制造交流发电机销售时间序列的实际数据。对于一年以上的预测,Holt-Winters模型的平均误差为35.3%,Weibull分布模型的平均误差为42.2%,合并模型的平均误差为29.3%。结果表明,适当结合不同的预测方法可以提高预测精度。讨论了结果、含义和未来的步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of demand forecasting model for automotive electric component remanufacturing
Developing a reliable forecasting process is a crucial step for optimization of the overall planning process of product remanufacturing. This study examined the effectiveness of demand forecasting in remanufacturing by time series analysis (Holt-Winters model), product lifetime model (Weibull distribution), and incorporation of the two methods. To verify the effectiveness, the actual data of the time series of the sales of remanufactured alternators of an independent remanufacturer was used. For the forecasting over a year, the results provided average errors of 35.3% for Holt-Winters model, 42.2% for Weibull distribution, and 29.3% for the incorporated model. The results indicate the forecasting accuracy can improve by appropriately incorporating different methods. The results, implications, and future steps are discussed.
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