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Design of cellular manufacturing systems using Latent Semantic Indexing and Self Organizing Maps

机译:利用潜在语义索引和自组织映射设计细胞制造系统

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摘要

A new, efficient clustering method for solving the cellular manufacturing problem is presented in this paper. The method uses the part-machine incidence matrix of the manufacturing system to form machine cells, each of which processes a family of parts. By doing so, the system is decomposed into smaller semi-independent subsystems that are managed more effectively improving overall performance. The proposed method uses Self Organizing Maps (SOMs), a class of unsupervised learning neural networks, to perform direct clustering of machines into cells, without first resorting to grouping parts into families as done by previous approaches. In addition, Latent Semantic Indexing (LSI) is employed to significantly reduce the complexity of the problem resulting in more effective training of the network, significantly improved computational efficiency, and, in many cases, improved solution quality. The robustness of the method and its computational efficiency has been investigated with respect to the dimension of the problem and the degree of dimensionality reduction. The effectiveness of grouping has been evaluated by comparing the results obtained with those of the k-means classical clustering algorithm.
机译:本文提出了一种新的有效的聚类方法来解决细胞制造问题。该方法使用制造系统的零件机器关联矩阵来形成机器单元,每个机器单元都处理一系列零件。这样,系统便分解为较小的半独立子系统,可以更有效地对其进行管理,从而改善整体性能。所提出的方法使用自组织映射(SOM)(一类无监督的学习神经网络)来将机器直接聚类到单元中,而无需像先前的方法那样首先将部件分组到族中。另外,采用了潜在语义索引(LSI)来显着降低问题的复杂性,从而更有效地训练网络,显着提高计算效率,并在许多情况下提高解决方案的质量。关于问题的维度和降维的程度,已经研究了该方法的鲁棒性及其计算效率。通过将获得的结果与k-means经典聚类算法的结果进行比较,评估了分组的有效性。

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