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Incorporating fuzzy c-means and a back-propagation network ensemble to job completion time prediction in a semiconductor fabrication factory

机译:将模糊c均值和反向传播网络集成到半导体制造工厂的工作完成时间预测中

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摘要

Job completion time prediction is a critical task to a semiconductor fabrication factory. To further enhance the effectiveness/accuracy of job completion time prediction in a semiconductor fabrication factory, a hybrid fuzzy c-means (FCM) and back propagation network (BPN) approach is proposed in this study. In the proposed FCM-BPN approach, input examples are firstly pre-classified with FCM before they are fed into the BPN. Then, examples belonging to different categories are learned with different BPNs but with the same topology. After learning, these BPNs form a BPN ensemble that can be applied to predict the completion time of a new job. The output of the BPN ensemble is derived by aggregating the outputs from the component BPNs with another BPN and determines the completion time forecast. To validate the effectiveness of the proposed methodology and to make comparison with some existing approaches, the actual data in a semiconductor fabrication factory were collected. According to experimental results, the prediction accuracy of the proposed methodology was significantly better than those of some existing approaches. Besides, applying the fuzzy set theory was shown to be very effective in forming job categories and in deriving a representative value from the BPN ensemble. Both contributed to the superiority of the proposed methodology.
机译:作业完成时间的预测对于半导体制造工厂而言是至关重要的任务。为了进一步提高半导体制造工厂中工作完成时间预测的有效性/准确性,本研究提出了一种混合模糊c均值(FCM)和反向传播网络(BPN)方法。在提出的FCM-BPN方法中,首先将输入示例与FCM预分类,然后再输入到BPN中。然后,使用不同的BPN但具有相同的拓扑学习属于不同类别的示例。学习后,这些BPN形成一个BPN集合,可用于预测新工作的完成时间。 BPN集合的输出是通过将组件BPN的输出与另一个BPN进行聚合而得出的,并确定完成时间预测。为了验证所提出方法的有效性并与一些现有方法进行比较,收集了半导体制造工厂中的实际数据。根据实验结果,该方法的预测精度明显优于某些现有方法。此外,应用模糊集理论被证明在形成工作类别和从BPN集成中获得代表价值方面非常有效。两者都有助于提出方法的优越性。

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