DocumentCode :
1310223
Title :
Using neural networks to construct models of the molecular beam epitaxy process
Author :
Lee, Kyeong K. ; Brown, Terence ; Dagnall, Georgianna ; Bicknell-Tassius, Robert ; Brown, April ; May, Gary S.
Author_Institution :
Sch. of Electr. & Comput. Eng., Georgia Inst. of Technol., Atlanta, GA, USA
Volume :
13
Issue :
1
fYear :
2000
fDate :
2/1/2000 12:00:00 AM
Firstpage :
34
Lastpage :
45
Abstract :
This paper presents the systematic characterization of the molecular beam epitaxy (MBE) process to quantitatively model the effects of process conditions on film qualities. A five-layer, undoped AlGaAs and InGaAs single quantum well structure grown on a GaAs substrate is designed and fabricated. Six input factors (time and temperature for oxide removal, substrate temperatures for AlGaAs and InGaAs layer growth, beam equivalent pressure of the As source and quantum well interrupt time) are examined by means of a fractional factorial experiment. Defect density, X-ray diffraction, and photoluminescence are characterized by a static response model developed by training back-propagation neural networks. In addition, two novel approaches for characterized reflection high-energy electron diffraction (RHEED) signals used in the real-time monitoring of MBE are developed. In the first technique, principal component analysis is used to reduce the dimensionality of the RHEED data set, and the reduced RHEED data set is used to train neural nets to model the process responses. A second technique uses neural nets to model RHEED intensity signals as time series, and matches specific RHEED patterns to ambient process conditions. In each case, the neural process models exhibit good agreement with experimental results
Keywords :
III-V semiconductors; X-ray diffraction; aluminium compounds; backpropagation; gallium arsenide; indium compounds; molecular beam epitaxial growth; neural nets; photoluminescence; principal component analysis; process monitoring; quantum well devices; reflection high energy electron diffraction; semiconductor growth; semiconductor process modelling; AlGaAs-InGaAs; RHEED signals; X-ray diffraction; ambient process conditions; back-propagation neural networks; beam equivalent pressure; defect density; dimensionality; fractional factorial experiment; molecular beam epitaxy process; neural networks; oxide removal; photoluminescence; principal component analysis; process conditions; process responses; quantum well interrupt time; real-time monitoring; static response model; substrate temperatures; systematic characterization; time series; Gallium arsenide; Indium gallium arsenide; Molecular beam epitaxial growth; Neural networks; Optical reflection; Photoluminescence; Semiconductor process modeling; Substrates; Temperature; X-ray diffraction;
fLanguage :
English
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on
Publisher :
ieee
ISSN :
0894-6507
Type :
jour
DOI :
10.1109/66.827338
Filename :
827338
Link To Document :
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