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基于粗糙集的焊接类型关联规则提取 被引量:5

Welding type oriented association rules acquisition based on rough sets
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摘要 为了从大量工艺数据中获得潜在的、有价值的工艺知识,提出了基于粗糙集的焊接类型关联规则提取方法。分析与焊接类型相关的属性,建立焊接类型选择的决策表,应用粗糙集属性约简删除对焊接类型选择没有影响的属性。应用Apriori算法获取频繁项集,为了减少冗余项集产生,采用不同属性的项集进行联接;应用较低的支持度和较高的置信度提取强规则。以具体的实例验证了该方法,提取的规则对焊接类型的选择有很好的参考价值。 Large quantities of data are accumulated with the wide applications of computer aided process planning software in Body In White(BIW). To acquire the potential and valuable process knowledge from these data, a methodology of welding type acquirements based on the rough set theory and association rule technique are proposed. The attributes related to the welding type of parts are analyzed, among them quantitative attributes are discretized, and a decision table for the selection of welding type is generated. Rough set theory is employed to remove redundant attributes. Apriori algorithm is used to extract frequent attribute item sets. In order to reduce generations of the redundant candidate itemset, two items which belong to the different attributes are joined. The strong rules whose consequents are welding type are generated according to the minimal confidence. Welding data of a BIW are processed. Generated association rules have great reference value to the selection of the welding type.
出处 《计算机工程与应用》 CSCD 北大核心 2015年第15期244-248,260,共6页 Computer Engineering and Applications
基金 新疆维吾尔自治区科技计划重大专项(No.201130110) 新疆科技支疆项目(No.2013911032)
关键词 关联规则 APRIORI算法 粗糙集 焊接类型 白车身 association rule Apriori algorithm rough set welding type body in white
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  • 1柯新利,边馥苓.基于C5.0决策树算法的元胞自动机土地利用变化模拟模型[J].长江流域资源与环境,2010,19(4):403-408. 被引量:30
  • 2Luo Y,Liu T,Tao D,et al.Multiview matrix completionfor multilabel image classification[J].IEEE Transactions onImage Processing,2015,24(8):2355-2368.
  • 3Xue Zhaohui,Du Peijun,Su Hongjun.Harmonic analysisfor hyperspectral image classification integrated with PSOoptimized SVM[J].IEEE Journal of Selected Topics inApplied Earth Observations and Remote Sensing,2014,7(6):2131-2146.
  • 4Sun Zhenan,Zhang Hui,Tan Tieniu,et al.Caltech-101 imageclassification based on hierarchical visual codebook[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2014,36(6):1120-1133.
  • 5Barros R C,Basgalupp M P,Freitas A A.Evolutionarydesign of decision-tree algorithms tailored to microarray gene expression data sets[J].IEEE Transactions on Evolutionary Computation,2014,18(6):873-892.
  • 6Romani L A S,Avila A M H,Chino D Y T.A new timeseries mining approach applied to multitemporal remotesensing imagery[J].IEEE Transactions on Geoscience andRemote Sensing,2013,51(1):140-150.
  • 7Binu T,Raju G.A novel unsupervised fuzzy clusteringmethod for preprocessing of quantitative attributes in associationrule mining[J].Information Technology and Management,2014,15(1):9-17.
  • 8Thilagam P S,Ananthanarayana V S.Extraction andoptimization of fuzzy association rules using multi-objectivegenetic algorithm[J].Pattern Analysis and Applications,2008,11(2):159-168.
  • 9Wu L,Hoi S C H,Yu N H.Semantics-preserving bag-ofwordsmodels and applications[J].IEEE Transactions onImage Processing,2010,19(7):1908-1920.
  • 10Fernando B,Fromont E,Muselet D,et al.Supervised learningof Gaussian mixture models for visual vocabulary generation[J].Pattern Recognition,2012,45(2):897-907.

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