Title :
Extraction of Pospieszalski´s noise model parameters of microwave FETs based on ANNs
Author :
Dordevic, Vladica ; Marinkovic, Zlatica ; Markovic, Vera ; Pronic-Rancic, Olivera
Author_Institution :
Innovation Center of Adv. Technol., Niš, Serbia
Abstract :
A new neural approach for extraction of the Pospieszalski´s noise model parameters of microwave FETs is presented in this paper. This approach is based on the use of two artificial neural networks. The first network is aimed at calculating the intrinsic noise parameters from the given equivalent circuit parameters, transistor total noise parameters, frequency and ambient temperature. Since the gate noise temperature in the Pospieszalski´s noise model is approximately equal to the ambient temperature, only the value of drain noise temperature is to be determined. Therefore, the second network is trained to determine drain noise temperature from the given extracted intrinsic noise parameters, equivalent intrinsic circuit parameters, frequency and ambient temperature. The proposed extracting approach enables avoiding time-consuming optimization procedures in microwave simulators, which are conventionally used for the determination of the noise model parameters. A detailed validation of the proposed approach was done by comparison of the measured transistor noise parameters with those obtained by using the extracted drain noise temperature.
Keywords :
electronic engineering computing; equivalent circuits; microwave field effect transistors; neural nets; semiconductor device models; semiconductor device noise; ANNs; Pospieszalski noise model parameter extraction; ambient temperature; artificial neural networks; drain noise temperature; equivalent circuit parameters; gate noise temperature; intrinsic noise parameters; microwave FETs; microwave simulators; neural approach; time-consuming optimization procedures; transistor total noise parameters; Integrated circuit modeling; Microwave FETs; Microwave circuits; Noise; Temperature measurement; HEMT; MESFET; artificial neural network; noise parameters; the Pospieszalski´s noise model;
Conference_Titel :
Neural Network Applications in Electrical Engineering (NEUREL), 2014 12th Symposium on
Conference_Location :
Belgrade
Print_ISBN :
978-1-4799-5887-0
DOI :
10.1109/NEUREL.2014.7011457