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Total Machine Assessment of Transport Equipment Manufacturing Systems by Principle Component Analysis

机译:主要成分分析总机械制造系统总机评估

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This paper presents a framework for assessment and ranking of transport equipment manufacturing systems based on machine productivity indicators. The integrated approach discussed in this paper is based on Principle Component Analysis (PCA). The validity of the model is verified and validated by Numerical Taxonomy (NT) approach. Furthermore, a non-parametric correlation method, namely, Spearman correlation experiment shows high level of correlation between the findings of PCA and NT. To achieve the objectives of this study, a comprehensive study was conducted to locate all economic and technical indicators (indexes) that influence machine performance. These indicators are related to machine productivity, efficiency, effectiveness and profitability. 10 indicators were identified as major indexes impacting machinery conditions in manufacturing systems. PCA ranks the transport equipment manufacturing sectors based on 10 indexes discussed in this paper. This in turn shows the weak and strong points of transport equipment manufacturing sector with respect to machine productivity. The modeling approach of this paper could be used for ranking and analysis of other sectors in particular or countries in general.
机译:本文介绍了基于机床生产率指标的运输设备制造系统的评估和排序框架。本文讨论的综合方法是基于原理成分分析(PCA)。通过数值分类(NT)方法验证和验证了模型的有效性。此外,非参数相关方法即,Spearman相关实验显示了PCA和NT的结果之间的高水平相关性。为实现本研究的目标,进行了全面的研究,以定位影响机器性能的所有经济和技术指标(指数)。这些指标与机器生产力,效率,有效性和盈利能力有关。 10个指标被确定为影响制造系统中的机械状况的主要指标。根据本文讨论的10个指标,PCA排名运输设备制造业。这反过来透露了运输设备制造业的弱点和强大的机器生产力。本文的建模方法可用于对特别或国家的其他部门进行排名和分析。

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