Study on the Extraction Method of Deformation Influence Factors of Flexible Material Processing Based on Information Entropy

Through analyzing the flexible material processing (FMP) deformation factors, it is pointed out that without a choice of deformation influence quantity would increase the compensation control predict model system input. In order to reduce the count of spatial dimensions of knowledge, we proposed the method by taking the use of FMP deformation compensation control knowledge extraction, which is based on decision table (DT) attribute reduction, deriving the algorithm that is based on information entropy attribute importance, to find the dependencies between attributes through attribute significance (AS) and to extract the intrinsic attributes which is the most close to deformation compensation control decision making. Finally, through an example presented in this paper to verify the efficiency of RS control knowledge extraction method. Compared with the Pawlak method and genetic extraction algorithm, the prediction accuracy of after reduction data is 0.55% less than Pawlak method and 3.64% higher than the genetic extraction algorithm; however, the time consumption of forecast calculation is 30.3% and 11.53% less than Pawlak method and genetic extraction algorithm, respectively. Knowledge extraction entropy methods presented in this paper have the advantages of fast calculating speed and high accuracy and are suitable for FMP deformation compensation of online control.

[1]  Shuting Lei,et al.  Fuzzy adaptive networks in machining process modeling: surface roughness prediction for turning operations , 2004 .

[2]  Wing-Keung Wong,et al.  A decision support tool for apparel coordination through integrating the knowledge-based attribute evaluation expert system and the T-S fuzzy neural network , 2009, Expert Syst. Appl..

[3]  Wei Xing Zheng,et al.  Improved Results on Statistic Information Control With a Dynamic Neural Network Identifier , 2013, IEEE Transactions on Circuits and Systems II: Express Briefs.

[4]  Jia Xuan-dong Reduction Method of Multidimensional Qualitative Variables Based on Rough Set Theory , 2009 .

[5]  L. Gang Study on deformation of titanium thin-walled part in milling process , 2009 .

[6]  U. Zuperl,et al.  Fuzzy control strategy for an adaptive force control in end-milling , 2005 .

[7]  吴黎明,et al.  Deformation forecast of flexible material process by spline finite element method and application , 2013 .

[8]  Viola Priesemann,et al.  Transfer entropy as a tool for reconstructing interaction delays in neural signals , 2013, International Symposium on Signals, Circuits and Systems ISSCS2013.

[9]  Guixiong Liu,et al.  Deformation Decision Knowledge Extraction of FWP Processing Based on RS and Entropy , 2012 .

[10]  Sicheng Chen,et al.  Study and Testing of Processing Trajectory Measurement Method of Flexible Workpiece , 2013 .

[11]  Yiyu Yao,et al.  Relative reducts in consistent and inconsistent decision tables of the Pawlak rough set model , 2009, Inf. Sci..

[12]  Arvin Agah,et al.  Machine tool positioning error compensation using artificial neural networks , 2008, Eng. Appl. Artif. Intell..

[13]  Tzu Liang Tseng,et al.  Fuzzy neuron adaptive modeling to predict surface roughness under process variations in CNC turning , 2002 .

[14]  Cungen Cao,et al.  An information entropy-based approach to outlier detection in rough sets , 2010, Expert Syst. Appl..