A forecasting analytics model for assessing forecast error in e-fulfilment performance

G. Ho, S. Choy, P.H. Tong, V. Tang
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引用次数: 4

Abstract

PurposeDemand forecast methodologies have been studied extensively to improve operations in e-commerce. However, every forecast inevitably contains errors, and this may result in a disproportionate impact on operations, particularly in the dynamic nature of fulfilling orders in e-commerce. This paper aims to quantify the impact that forecast error in order demand has on order picking, the most costly and complex operations in e-order fulfilment, in order to enhance the application of the demand forecast in an e-fulfilment centre.Design/methodology/approachThe paper presents a Gaussian regression based mathematical method that translates the error of forecast accuracy in order demand to the performance fluctuations in e-order fulfilment. In addition, the impact under distinct order picking methodologies, namely order batching and wave picking. As described.FindingsA structured model is developed to evaluate the impact of demand forecast error in order picking performance. The findings in terms of global results and local distribution have important implications for organizational decision-making in both long-term strategic planning and short-term daily workforce planning.Originality/valueEarlier research examined demand forecasting methodologies in warehouse operations. And order picking and examining the impact of error in demand forecasting on order picking operations has been identified as a research gap. This paper contributes to closing this research gap by presenting a mathematical model that quantifies impact of demand forecast error into fluctuations in order picking performance.
电子履约绩效预测误差评估的预测分析模型
目的需求预测方法已被广泛研究,以改善电子商务的运营。然而,每个预测都不可避免地包含错误,这可能会对运营造成不成比例的影响,特别是在电子商务中履行订单的动态特性中。本文旨在量化订单需求预测误差对订单选择的影响,订单选择是电子订单履行中最昂贵和最复杂的操作,以提高需求预测在电子订单履行中心的应用。设计/方法/途径本文提出了一种基于高斯回归的数学方法,将订单需求预测精度误差转化为电子订单履行过程中的性能波动。此外,在不同的顺序选择方法下,即顺序批处理和波浪选择的影响。所述。发现建立了一个结构化模型来评估需求预测误差对订单拣选性能的影响。在全球结果和地方分布方面的研究结果对长期战略规划和短期日常劳动力规划的组织决策具有重要意义。原创性/价值早期的研究考察了仓库操作中的需求预测方法。而订单拣选和检查需求预测误差对订单拣选操作的影响已被确定为研究空白。本文通过提出一个数学模型来量化需求预测误差对订单挑选性能波动的影响,从而有助于缩小这一研究差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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