数字印刷工厂订单接收策略的数据驱动优化

Q. Duan, Jun Zeng, K. Chakrabarty, G. Dispoto
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引用次数: 3

摘要

按需数字印刷服务是实时嵌入式企业系统的一个例子。它提供大规模定制,是个性化制造服务的典范。一旦客户将打印订单提交给打印工厂,打印服务提供商(PSP)需要实时决定是否接受或拒绝该订单。根据印刷工厂当前的产能和订单的属性和要求,如果接受订单对PSP无利可图,则拒绝订单。订单在最合适的到期日被接受,以便从该订单中获得最大的利润。我们已经开发了一个自动化的基于学习的订单接收框架,可以嵌入到企业环境中,为新订单提供实时的接收决策。该框架由三个分类器组成:支持向量机(SVM)、决策树(DT)和贝叶斯概率模型(BPM)。分类器通过历史订单进行训练,并用于预测新订单的完成状态。实现了一种决策集成技术来组合分类器的结果并预测到期日期。实验结果表明,决策集成策略显著提高了订单完成状态预测的准确性。所提出的多分类器模型也优于独立回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Optimization of Order Admission Policies in a Digital Print Factory
On-demand digital print service is an example of a real-time embedded enterprise system. It offers mass customization and exemplifies personalized manufacturing services. Once a print order is submitted to the print factory by a client, the print service provider (PSP) needs to make a real-time decision on whether to accept or refuse this order. Based on the print factory's current capacity and the order's properties and requirements, an order is refused if its acceptance is not profitable for the PSP. The order is accepted with the most appropriate due date in order to maximize the profit that can result from this order. We have developed an automated learning-based order admission framework that can be embedded into an enterprise environment to provide real-time admission decisions for new orders. The framework consists of three classifiers: Support Vector Machine (SVM), Decision Tree (DT), and Bayesian Probabilistic Model (BPM). The classifiers are trained by history orders and used to predict completion status for new orders. A decision integration technique is implemented to combine the results of the classifiers and predict due dates. Experimental results derived using real factory data from a leading print service provider and Weka open-source software show that the order completion status prediction accuracy is significantly improved by the decision integration strategy. The proposed multiclassifier model also outperforms a standalone regression model.
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