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Application of neural networks to heuristic scheduling algorithms

机译:神经网络在启发式调度算法中的应用

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This paper considers the use of artificial neural networks (ANNs) to model six different heuristic algorithms applied to the n job, m machine real flowshop scheduling problem with the objective of minimizing makespan. The objective is to obtain six ANN models to be used for the prediction of the completion times for each job processed on each machine and to introduce the fuzziness of scheduling information into flowshop scheduling. Fuzzy membership functions are generated for completion, job waiting and machine idle times. Different methods are proposed to obtain the fuzzy parameters. To model the functional relation between the input and output variables, multilayered feedforward networks (MFNs) trained with error backpropagation learning rule are used. The trained network is able to apply the learnt relationship to new problems. In this paper, an implementation alternative to the existing heuristic algorithms is provided. Once the network is trained adequately, it can provide an outcome (solution) faster than conventional iterative methods by its generalizing property. The results obtained from the study can be extended to solve the scheduling problems in the area of manufacturing.
机译:本文考虑了使用人工神经网络(ANN)来建模六个不同的启发式算法,这些算法适用于n个工作,m个机器的实际Flowshop调度问题,目的是最小化制造时间。目的是获得六个ANN模型,以用于预测在每台机器上处理的每个作业的完成时间,并将调度信息的模糊性引入Flowshop调度中。为完成时间,作业等待时间和机器空闲时间生成模糊隶属函数。提出了不同的方法来获得模糊参数。为了对输入和输出变量之间的函数关系进行建模,使用了使用错误反向传播学习规则训练的多层前馈网络(MFN)。训练有素的网络能够将学习到的关系应用于新问题。在本文中,提供了一种替代现有启发式算法的实现。一旦对网络进行了充分的培训,通过其泛化特性,它可以比传统的迭代方法更快地提供结果(解决方案)。从研究中获得的结果可以扩展以解决制造领域中的调度问题。

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