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Prediction of B2C e-commerce order arrival using hybrid autoregressive-adaptive neuro-fuzzy inference system (AR-ANFIS) for managing fluctuation of throughput in e-fulfilment centres

机译:使用混合自动评出 - 自适应神经模糊推理系统(AR-ANFIS)预测B2C电子商务顺序抵达,用于管理E-Fulfillment Centers中吞吐量的波动

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摘要

The complexity of today's e-commerce logistics environment compels practitioners to achieve a higher level of operating efficiency. As it is infeasible for operators to process a large number of discrete e-orders individually, warehouse postponement, that is, delaying the execution of a logistics process until the last possible moment, is essential. Yet the question remains as to how one can accurately identify the timing for consolidating e-orders, and subsequently releasing the grouped e-orders for batch order picking. This is a subject, lacking previous research, but is fundamentally crucial in today's e-commerce logistics environment. This paper introduces an integrated autoregressive-adaptive neuro-fuzzy inference system (AR-ANFIS) approach for forecasting e-commerce order arrivals. Two AR-ANFIS models are built for evaluating their prediction ability against ARIMA models. The experimental results confirm the suitability of the hybrid model for forecasting e-order arrivals. To make use of the model output, an algorithm is formulated to convert e-order arrival figures into cut-off time of order grouping. In this sense, this total solution, packaged as a decision support system, namely the E-order arrival prediction system, assists logistics practitioners in judging when to release the grouped e-orders for batch processing, and essentially improves their order handling capability. (C) 2019 Elsevier Ltd. All rights reserved.
机译:今天的电子商务物流环境的复杂性迫使从业者实现更高水平的运营效率。由于运营商无法单独处理大量离散的电子订单,因此,仓库推迟,即延迟物流过程的执行,直到最后可能的时刻是必不可少的。然而,问题仍然是如何准确识别整合电子订单的时机,随后释放分组的电子订单进行批量挑选。这是一个缺乏以前的研究,但在今天的电子商务物流环境中是至关重要的。本文介绍了一种综合的自我评式适应性神经模糊推理系统(AR-ANFIS)方法,用于预测电子商务订单抵达。建立两个AR-ANFIS模型,用于评估他们对Arima模型的预测能力。实验结果证实了混合模型的适用性预测电子订单抵达。为了利用模型输出,配制了一种算法以将电子订单到达数字转换为顺序分组的截止时间。从这个意义上讲,这种全解决方案,包装为决策支持系统,即电子订单到达预测系统,协助物流从业者判断何时释放批量处理的分组的电子订单,并基本上提高了他们的订单处理能力。 (c)2019 Elsevier Ltd.保留所有权利。

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