带超车的通道末端拣货工作站流时间预测的聚合建模

R. Andriansyah, L. Etman, J. Rooda
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引用次数: 5

摘要

提出了一种用于预测零件到拣选机自动超车仓库中通道末端拣货工作站流动时间分布的聚合建模方法。所提出的聚合模型将聚合过程时间(即有效过程时间)与超车分布和决策概率相结合,作为输入,我们直接从产品到达和离开数据中测量。实验结果表明,预测的流量时间分布准确,流量时间均值和方差系数的预测误差分别小于4%和9%。作为一个案例研究,我们使用了从一个真实运行的仓库收集的数据,并表明预测的流动时间分布与从数据中测量的流动时间分布相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregate modeling for flow time prediction of an end-of-aisle order picking workstation with overtaking
An aggregate modeling methodology is proposed to predict flow time distributions of an end-of-aisle order picking workstation in parts-to-picker automated warehouses with overtaking. The proposed aggregate model uses as input an aggregated process time referred to as the effective process time in combination with overtaking distributions and decision probabilities, which we measure directly from product arrival and departure data. Experimental results show that the predicted flow time distributions are accurate, with prediction errors of the flow time mean and squared coefficient of variation less than 4% and 9%, respectively. As a case study, we use data collected from a real, operating warehouse and show that the predicted flow time distributions resemble the flow time distributions measured from the data.
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