延期
计算机科学
共同价值拍卖
采购
订单(交换)
运筹学
拣选订单
自动化
区间(图论)
数学优化
工业工程
实时计算
工程类
运营管理
经济
微观经济学
业务
数学
营销
机械工程
组合数学
仓库
财务
作者
Xiang T.R. Kong,Miaohui Zhu,Yu Liu,Kaida Qin,George Q. Huang
标识
DOI:10.1080/00207543.2021.2022234
摘要
In sequential auctions, all the sub-orders from a buyer need to be sorted and consolidated within a short time window for shipping. Buyer demands and sub-order arrival times are uncertain. The current auction order fulfillment is facing several challenges. Based on a re-engineered Industrial Internet-of-Things (IIoT)-enabled automation system, this paper introduces an order batching approach with forecasting and postponement. Such an approach generates batches considering time interval and buyer completion rate to minimise the total processing time of the auction orders and system response time. The buyer completion rate refers to the ratio of current cumulative and predicted purchase quantity. We use the forecasting method proposed by Kong et al. (2021) to estimate the purchasing quantity. Through a series of computational experiments using real-life data, the proposed order batching method achieves a shorter order processing time and system response time. Results show that the number of auction buyers poses no effect on the performance of the proposed approach. Key parameters of order postponement rule influence on performance.
科研通智能强力驱动
Strongly Powered by AbleSci AI