Hybrid principal component analysis technique to machine-part grouping problem in cellular manufacturing system

Tamal Ghosh, Manojit Chattopadhyay, P. Dan
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引用次数: 1

Abstract

This article portrays a hybrid principal component analysis (PCA)-based technique to construct production cells in cellular manufacturing system (CMS). The key problem in CMS is to recognise the machine cells and corresponding part families and subsequently the formation of production cells. A novel approach is considered in this study to systematise a hybrid multivariate clustering technique based on covariance analysis to form the machine cells in CMS. The intended technique is demonstrated in three segments. Firstly, a similarity matrix is developed by exploiting the covariance analysis procedure. In the second stage, the PCA is utilised to identify the potential clusters in CMS with the assistance of eigenvalue and eigenvector computation. In the last stage, an adjustment heuristic is adopted to improve the solution quality and consequently the clustering efficiency. This article states that, the addition of the adjustment heuristic approach into a traditional multivariate PCA-based clustering technique not only enhances the solution quality significantly, but also downgrades the inconsistency of the solutions achieved. The hybrid technique is tested on 24 test datasets available in published articles and it is shown to outperform other published methodologies by enhancing the solution quality on the test problems.
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元胞制造系统机件分组问题的混合主成分分析技术
本文描述了一种基于混合主成分分析(PCA)的技术来构建细胞制造系统(CMS)中的生产单元。CMS的关键问题是识别机器单元和相应的零件族,进而形成生产单元。本文提出了一种基于协方差分析的混合多元聚类技术的系统化方法,以形成CMS中的机器细胞。预期的技术分为三个部分。首先,利用协方差分析程序建立相似矩阵;在第二阶段,利用主成分分析在特征值和特征向量计算的帮助下识别CMS中的潜在聚类。最后,采用调整启发式算法来提高解的质量,从而提高聚类效率。本文指出,在传统的基于多元pca的聚类技术中加入调整启发式方法,不仅显著提高了解的质量,而且降低了解的不一致性。混合技术在已发表文章中提供的24个测试数据集上进行了测试,结果表明,通过提高测试问题的解决方案质量,它优于其他已发表的方法。
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