TY - JOUR
T1 - Optimization of optical lens-controlled scanning electron microscopic resolution using generalized regression neural network and genetic algorithm
AU - Kim, Byungwhan
AU - Kwon, Sanghee
AU - Kim, Dong Hwan
PY - 2010/1
Y1 - 2010/1
N2 - A scanning electron microscope (SEM) is a sophisticated equipment employed for fine imaging of a variety of surfaces. In this study, prediction models of SEM were constructed by using a generalized regression neural network (GRNN) and genetic algorithm (GA). The SEM components examined include condenser lens 1 and 2 and objective lens (coarse and fine) referred to as CL1, CL2, OL-Coarse, and OL-Fine. For a systematic modeling of SEM resolution (R), a face-centered Box-Wilson experiment was conducted. Two sets of data were collected with or without the adjustment of magnification. Root-mean-squared prediction error of optimized GRNN models are GA 0.481 and 1.96 × 10- 12 for non-adjusted and adjusted data, respectively. The optimized models demonstrated a much improved prediction over statistical regression models. The optimized models were used to optimize parameters particularly under best tuned SEM environment. For the variations in CL2 and OL-Coarse, the highest R could be achieved at all conditions except a larger CL2 either at smaller or larger OL-Coarse. For the variations in CL1 and CL2, the highest R was obtained at all conditions but larger CL2 and smaller CL1.
AB - A scanning electron microscope (SEM) is a sophisticated equipment employed for fine imaging of a variety of surfaces. In this study, prediction models of SEM were constructed by using a generalized regression neural network (GRNN) and genetic algorithm (GA). The SEM components examined include condenser lens 1 and 2 and objective lens (coarse and fine) referred to as CL1, CL2, OL-Coarse, and OL-Fine. For a systematic modeling of SEM resolution (R), a face-centered Box-Wilson experiment was conducted. Two sets of data were collected with or without the adjustment of magnification. Root-mean-squared prediction error of optimized GRNN models are GA 0.481 and 1.96 × 10- 12 for non-adjusted and adjusted data, respectively. The optimized models demonstrated a much improved prediction over statistical regression models. The optimized models were used to optimize parameters particularly under best tuned SEM environment. For the variations in CL2 and OL-Coarse, the highest R could be achieved at all conditions except a larger CL2 either at smaller or larger OL-Coarse. For the variations in CL1 and CL2, the highest R was obtained at all conditions but larger CL2 and smaller CL1.
KW - Generalized regression neural network
KW - Genetic algorithm model
KW - Lens
KW - Resolution
KW - Scanning electron microscope
KW - Statistical experiment
KW - Statistical regression model
UR - http://www.scopus.com/inward/record.url?scp=70349443221&partnerID=8YFLogxK
U2 - 10.1016/j.eswa.2009.05.007
DO - 10.1016/j.eswa.2009.05.007
M3 - Article
AN - SCOPUS:70349443221
SN - 0957-4174
VL - 37
SP - 182
EP - 186
JO - Expert Systems with Applications
JF - Expert Systems with Applications
IS - 1
ER -