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Hybrid Deep Neural Network Scheduler for Job-Shop Problem Based on Convolution Two-Dimensional Transformation

机译:基于卷积二维变换的工作店问题混合深神经网络调度器

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In this paper, a hybrid deep neural network scheduler (HDNNS) is proposed to solve job-shop scheduling problems (JSSPs). In order to mine the state information of schedule processing, a job-shop scheduling problem is divided into several classification-based subproblems. And a deep learning framework is used for solving these subproblems. HDNNS applies the convolution two-dimensional transformation method (CTDT) to transform irregular scheduling information into regular features so that the convolution operation of deep learning can be introduced into dealing with JSSP. The simulation experiments designed for testing HDNNS are in the context of JSSPs with different scales of machines and jobs as well as different time distributions for processing procedures. The results show that the MAKESPAN index of HDNNS is 9% better than that of HNN and the index is also 4% better than that of ANN in ZLP dataset. With the same neural network structure, the training time of the HDNNS method is obviously shorter than that of the DEEPRM method. In addition, the scheduler has an excellent generalization performance, which can address large-scale scheduling problems with only small-scale training data.
机译:在本文中,提出了一种混合的深神经网络调度器(HDNNS)来解决作业商店调度问题(JSSPS)。为了挖掘调度处理的状态信息,作业商店调度问题分为几个基于分类的子问题。深度学习框架用于解决这些子问题。 HDNN应用卷积二维变换方法(CTDT)将不规则的调度信息转换为常规功能,以便可以引入深度学习的卷积操作,以处理JSSP。设计用于测试HDNNS的模拟实验是JSSPS的背景下,具有不同的机器和作业,以及处理程序的不同时间分布。结果表明,HDNNS的Mapspan指数比HNN的Mapspan指数优于9%,并且索引也比ZLP数据集中的ANN更好。利用相同的神经网络结构,HDNNS方法的训练时间明显短于DEEPRM方法的训练时间。此外,调度程序具有出色的泛化性能,可以解决只有小规模训练数据的大规模调度问题。

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