DocumentCode :
1024409
Title :
Adaptive Neuro-Fuzzy Inference System Modeling of MRR and WIWNU in CMP Process With Sparse Experimental Data
Author :
Lih, Wen-Chen ; Bukkapatnam, Satish T S ; Rao, Prahalad ; Chandrasekharan, Naga ; Komanduri, Ranga
Author_Institution :
Oklahoma State Univ., Taoyuan
Volume :
5
Issue :
1
fYear :
2008
Firstpage :
71
Lastpage :
83
Abstract :
Availability of only limited or sparse experimental data impedes the ability of current models of chemical mechanical planarization (CMP) to accurately capture and predict the underlying complex chemomechanical interactions. Modeling approaches that can effectively interpret such data are therefore necessary. In this paper, a new approach to predict the material removal rate (MRR) and within wafer nonuniformity (WIWNU) in CMP of silicon wafers using sparse-data sets is presented. The approach involves utilization of an adaptive neuro-fuzzy inference system (ANFIS) based on subtractive clustering (SC) of the input parameter space. Linear statistical models were used to assess the relative significance of process input parameters and their interactions. Substantial improvements in predicting CMP behaviors under sparse-data conditions can be achieved from fine-tuning membership functions of statistically less significant input parameters. The approach was also found to perform better than alternative neural network (NN) and neuro-fuzzy modeling methods for capturing the complex relationships that connect the machine and material parameters in CMP with MRR and WIWNU, as well as for predicting MRR and WIWNU in CMP.
Keywords :
adaptive systems; chemical mechanical polishing; fuzzy neural nets; fuzzy reasoning; fuzzy set theory; fuzzy systems; pattern clustering; planarisation; semiconductor device manufacture; statistical analysis; CMP process; MRR; WIWNU; adaptive neuro-fuzzy inference system modeling; chemical mechanical planarization; complex chemomechanical interaction; linear statistical model; material removal rate; membership function; silicon wafer; sparse experimental data; subtractive clustering; Adaptive systems; Costs; Manufacturing industries; Neural networks; Planarization; Predictive models; Random access memory; Semiconductor device modeling; Silicon; Surface morphology; Adaptive neuro-fuzzy inference system (ANFIS); chemical mechanical planarization (CMP); neural network (NN);
fLanguage :
English
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1545-5955
Type :
jour
DOI :
10.1109/TASE.2007.911683
Filename :
4418328
Link To Document :
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