In this paper, we present the use of artificial neural networks to extract the doping profile from the one-dimensional carrier concentration distribution (and viceversa). The values of the weights and of the biases are computed for the optimum network configuration. The performances and the noise immunity characteristicsof the proposed network are assessed and compared with those of the standard techniques.

On the Use of Neural Networks to Solve the Reverse Modelling Problem for the Quantification of Dopant Profiles Extracted by Scanning Probe Microscopy Techniques

RICCI, ELISA;SCORZONI, Andrea
2004

Abstract

In this paper, we present the use of artificial neural networks to extract the doping profile from the one-dimensional carrier concentration distribution (and viceversa). The values of the weights and of the biases are computed for the optimum network configuration. The performances and the noise immunity characteristicsof the proposed network are assessed and compared with those of the standard techniques.
2004
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11391/1155306
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