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首页> 外文期刊>Journal of Intelligent Manufacturing >A neural network model and algorithm for the hybrid flow shop scheduling problem in a dynamic environment
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A neural network model and algorithm for the hybrid flow shop scheduling problem in a dynamic environment

机译:动态环境下混合流水车间调度问题的神经网络模型和算法

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摘要

A hybrid flow shop (HFS) is a generalized flow shop with multiple machines in some stages. HFS is fairly common in flexible manufacturing and in process industry. Because manufacturing systems often operate in a stochastic and dynamic environment, dynamic hybrid flow shop scheduling is frequently encountered in practice. This paper proposes a neural network model and algorithm to solve the dynamic hybrid flow shop scheduling problem. In order to obtain training examples for the neural network, we first study, through simulation, the performance of some dispatching rules that have demonstrated effectiveness in the previous related research. The results are then transformed into training examples. The training process is optimized by the delta-bar-delta (DBD) method that can speed up training convergence. The most commonly used dispatching rules are used as benchmarks. Simulation results show that the performance of the neural network approach is much better than that of the traditional dispatching rules.
机译:混合流水车间(HFS)是在某些阶段具有多台机器的广义流水车间。 HFS在柔性制造和过程工业中相当普遍。由于制造系统通常在随机且动态的环境中运行,因此在实践中经常会遇到动态混合流水车间调度。本文提出了一种神经网络模型和算法来解决动态混合流水车间调度问题。为了获得神经网络的训练实例,我们首先通过仿真研究了一些调度规则的性能,这些规则在先前的相关研究中已经证明是有效的。然后将结果转换为训练示例。通过delta-bar-delta(DBD)方法优化了训练过程,该方法可以加快训练收敛。最常用的调度规则用作基准。仿真结果表明,神经网络方法的性能要优于传统的调度规则。

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