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Intermittent demand forecasting with integer autoregressive moving average models

机译:整数自回归移动平均模型的间断需求预测

摘要

April 2009 This PhD thesis focuses on using time series models for counts in modelling and forecasting a special type of count series called intermittent series. An intermittent series is a series of non-negative integer values with some zero values. Such series occur in many areas including inventory control of spare parts. Various methods have been developed for intermittent demand forecasting with Croston’s method being the most widely used. Some studies focus on finding a model underlying Croston’s method. With none of these studies being successful in demonstrating an underlying model for which Croston’s method is optimal, the focus should now shift towards stationary models for intermittent demand forecasting. This thesis explores the application of a class of models for count data called the Integer Autoregressive Moving Average (INARMA) models. INARMA models have had applications in different areas such as medical science and economics, but this is the first attempt to use such a model-based method to forecast intermittent demand. In this PhD research, we first fill some gaps in the INARMA literature by finding the unconditional variance and the autocorrelation function of the general INARMA(p,q) model. The conditional expected value of the aggregated process over lead time is also obtained to be used as a lead time forecast. The accuracy of h-step-ahead and lead time INARMA forecasts are then compared to those obtained by benchmark methods of Croston, Syntetos-Boylan Approximation (SBA) and Shale-Boylan-Johnston (SBJ). The results of the simulation suggest that in the presence of a high autocorrelation in data, INARMA yields much more accurate one-step ahead forecasts than benchmark methods. The degree of improvement increases for longer data histories. It has been shown that instead of identification of the autoregressive and moving average order of the INARMA model, the most general model among the possible models can be used for forecasting. This is especially useful for short history and high autocorrelation in data. The findings of the thesis have been tested on two real data sets: (i) Royal Air Force (RAF) demand history of 16,000 SKUs and (ii) 3,000 series of intermittent demand from the automotive industry. The results show that for sparse data with long history, there is a substantial improvement in using INARMA over the benchmarks in terms of Mean Square Error (MSE) and Mean Absolute Scaled Error (MASE) for the one-step ahead forecasts. However, for series with short history the improvement is narrower. The improvement is greater for h-step ahead forecasts. The results also confirm the superiority of INARMA over the benchmark methods for lead time forecasts.
机译:2009年4月,该博士论文着重于使用时间序列模型对计数进行建模和预测,这种特殊类型的计数序列称为间歇序列。间歇序列是一系列带有一些零值的非负整数值。这样的系列发生在许多领域,包括备件的库存控制。已经开发出各种方法来进行间歇性需求预测,其中最广泛使用的是Croston方法。一些研究着重于寻找Croston方法基础的模型。由于这些研究都无法成功地展示出克罗斯顿方法最适合的基本模型,因此现在的重点应该转向间歇性需求预测的平稳模型。本文探讨了一类用于计数数据的模型的应用,该模型称为整数自回归移动平均值(INARMA)模型。 INARMA模型已在医学和经济学等不同领域中应用,但这是首次尝试使用基于模型的方法来预测间歇性需求。在本博士研究中,我们首先通过找到常规INARMA(p,q)模型的无条件方差和自相关函数来填补INARMA文献中的空白。还可以得出聚合过程在提前期上的条件期望值,以用作提前期预测。然后将h提前和提前期INARMA预测的准确性与通过Croston,Syntotos-Boylan逼近(SBA)和Shale-Boylan-Johnston(SBJ)的基准方法获得的预测值进行比较。仿真结果表明,在数据中存在高度自相关的情况下,INAARMA可以比基准方法产生更准确的提前一步预测。对于更长的数据历史记录,改进程度会增加。已经表明,代替识别INARMA模型的自回归和移动平均阶数,可以使用可能模型中最通用的模型进行预测。这对于较短的历史记录和较高的数据自相关性特别有用。本文的发现已在两个真实数据集上进行了测试:(i)皇家空军(RAF)的需求历史为16,000个SKU,以及(ii)汽车行业的3,000个间歇性需求。结果表明,对于历史悠久的稀疏数据,对于提前一步的预测,使用INARMA相对于基准在均方误差(MSE)和平均绝对比例误差(MASE)方面有了显着改善。但是,对于历史短的系列,改进范围较窄。对于h步超前的预测,改进更大。结果还证实了INARMA优于提前期预测的基准方法。

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    Mohammadipour Maryam;

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  • 年度 2013
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