Title :
Neural-net computing for interpretation of semiconductor film optical ellipsometry parameters
Author :
Park, Gwang-Hoon ; Pao, Yoh-Han ; Igelnik, Boris ; Eyink, Kurt G. ; LeClair, Steven R.
Author_Institution :
Dept. of Electr. Eng. & Appl. Phys., Case Western Reserve Univ., Cleveland, OH, USA
fDate :
7/1/1996 12:00:00 AM
Abstract :
Optical ellipsometry has been found to be a promising technique for monitoring process parameters, such as film composition and film thickness, of semiconductor wafers grown with molecular beam epitaxy. Whereas it is a straightforward task to calculate ellipsometry angles given the thickness of the film and the refractive indexes of the film and substrate, it is a difficult task to invert that mathematical relationship. However, the process must be inverted if the measured parameters are to be interpreted meaningfully in terms of film composition and film thickness. This paper reports on the use of neural-net computing for the inverse mapping of measured ellipsometry parameters. We used a functional-link net which is very efficient in function approximation. The advantage of using the net, however, is not only its speed, but also because some other net architecture characteristics allow us to perform the task in a holistic manner
Keywords :
Newton method; computerised monitoring; ellipsometry; function approximation; molecular beam epitaxial growth; neural nets; optical variables measurement; semiconductor epitaxial layers; semiconductor superlattices; thickness measurement; film composition; film thickness; function approximation; functional-link net; inverse mapping; molecular beam epitaxy; multilayer films; neural-net computing; process parameters; semiconductor film optical ellipsometry parameters; semiconductor wafers; Condition monitoring; Ellipsometry; Molecular beam epitaxial growth; Optical films; Optical refraction; Optical variables control; Refractive index; Semiconductor films; Substrates; Thickness measurement;
Journal_Title :
Neural Networks, IEEE Transactions on