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A data-driven method for pipeline scheduling optimization

机译:一种用于管道调度优化的数据驱动方法

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The detailed scheduling of distributing products through pipelines is one of the most essential tasks in the management of multiproduct pipelines. The current methods of scheduling optimization are still limited by the dilemma between optimality and efficiency, especially when dealing with real-world scheduling issues. This paper introduces a two-stage mathematical model based on the event sequence, whose model scale greatly decreases after stripping the terms of event sequence. Then, a data-driven method is presented to learn a large number of existing scheduling data and accelerate the calculation of first-stage model. The method is decomposed into three parts: (1) take cold start to generate a good deal of basic training data; (2) train the neural network for the fast solution of first-stage model; (3) take real-world cases to improve the self-learning of neural network. A multiproduct pipeline in China is taken as the example to prove the practicability and superiority of the proposed method. The experimental results show that the proposed method could decrease the computation time from about several hours to several minutes. (C) 2019 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:通过管道分配产品的详细调度是多程序管道管理中最重要的任务之一。当前调度优化方法仍然受到最优性和效率之间的困境的限制,特别是在处理现实世界调度问题时。本文介绍了一种基于事件序列的两级数学模型,其模型比例在剥离事件序列的术语后大大减少。然后,提出了一种数据驱动方法以了解大量现有调度数据并加速第一阶段模型的计算。该方法分解为三个部分:(1)采取冷启动以产生很多基本培训数据; (2)列车为第一阶段模型的快速解决方案的神经网络; (3)采取现实世界案例,提高神经网络的自我学习。中国在中国的多程序管道作为示例,以证明该方法的实用性和优越性。实验结果表明,该方法可以将计算时间从大约几小时降至几分钟。 (c)2019化学工程师机构。 elsevier b.v出版。保留所有权利。

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