Title of article :
Prediction of profile surface roughness in CHF3/CF4
plasma using neural network
Author/Authors :
Byungwhan Kim، نويسنده , , Kunho Kim، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
Using a neural network, a profile roughness of plasma etching is characterized. The etching was conducted in a CHF3/CF4
inductively coupled plasma. The etch process was characterized by a 23 full factorial experiment. The process parameters that
were varied in the design include radio frequency source and bias powers, and gas ratio. Relationships between the parameters
and profile roughness were captured by training neural network with eight experiments plus one center experiment. Model
appropriateness was tested with six experiments not pertaining to the training data. Model prediction capability was optimized
by means of a genetic algorithm (GA). Compared to a conventional model, GA-optimized model demonstrated a drastic
improvement of about 54% in predicting profile roughness. From the optimized model, several plots were generated to examine
parameter effects on the profile roughness. Increasing the source power (or bias power) under high bias power (or source power)
increased the profile roughness. More significant effect of the bias power was revealed. The profile roughness decreased with
increasing the gas ratio was strongly correlated to the dc bias. The little variation in the profile roughness was ascribed to
chamber plasma condition maintained at relatively low dc bias.
# 2003 Elsevier B.V. All rights reserved
Keywords :
plasma etching , Profile roughness , neural network , Genetic algorithm
Journal title :
Applied Surface Science
Journal title :
Applied Surface Science