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Support Vector Machine for Demand Forecasting of Canadian Armed Forces Spare Parts

机译:支持向量机,用于加拿大武装部队备件需求预测

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The need to reduce inventory costs and increase system operational availability is the main motivation behind improving forecast accuracy of military spare parts demand. In this paper, we assess the potential of Support Vector Machine (SVM) approach for forecasting the demand of Canadian Armed Forces (CAF) spare parts and we introduce a forecasting evaluation method using inventory cost performance curves based on over and under forecast error. We compare, using a well-known use case presented in the literature, the results given by SVM algorithm to those given by several popular forecasting approaches. We find that SVM performs better than, or equivalently to, the other methods for this use-case. We also perform some forecasting experiments using the historical data of forty CAF spare demand series with 84 periods (months) each. The results of the experiments show that SVM may offer forecasting improvements over many other methods however the performance of SVM is not quite as good on intermittent data (time series with a high Average Demand Interval-ADI and low Coefficient of Variation-CV).
机译:降低库存成本和提高系统运行可用性的需求是提高军事备件需求预测准确性的主要动机。在本文中,我们评估了支持向量机(SVM)方法在预测加拿大武装部队(CAF)备件需求方面的潜力,并介绍了一种基于库存成本绩效曲线的基于预测误差过高和不足的预测评估方法。我们使用文献中介绍的一个著名用例,将SVM算法给出的结果与几种流行的预测方法给出的结果进行比较。我们发现,对于该用例,SVM的性能优于或等效于其他方法。我们还使用40个CAF备用需求序列(每个周期84个月)的历史数据进行了一些预测实验。实验结果表明,SVM可以提供比许多其他方法更好的预测效果,但是在间歇数据(具有高平均需求间隔ADI和低变异系数CV的时间序列)上,SVM的性能并不理想。

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