Direct and Indirect Classification of High-Frequency LNA Performance using Machine Learning Techniques
Peter C. Hung, Seán F. McLoone, Magdalena Sánchez, Ronan Farrell, Guoyan Zhang
2007
Abstract
The task of determining low noise amplifier (LNA) high-frequency performance in functional testing is as challenging as designing the circuit itself due to the difficulties associated with bringing high frequency signals off-chip. One possible strategy for circumventing these difficulties is to attempt to predict the high frequency performance measures using measurements taken at lower, more accessible, frequencies. This paper investigates the effectiveness of machine learning based classification techniques at predicting the gain of the amplifier, a key performance parameter, using such an approach. An indirect artificial neural network (ANN) and direct support vector machine (SVM) classification strategy are considered. Simulations show promising results with both methods, with SVMs outperforming ANNs for the more demanding classification scenarios.
References
- Ferrario, J., Wolf, R., Ding, H.: Moving from mixed signal to RF test hardware development. IEEE Int. Test Conference (2001) 948-956
- Lau, W. Y.: Measurement challenges for on-wafer RF-SOC test. 27th Annual IEEE/SEMI Int. Elect. Manufact. Tech. Symp. (2002) 353-359
- Negreiros, M., Carro, L., Susin, A.: Low cost on-line testing of RF circuits. 10th IEEE Int. On-Line Testing Symp. (2004) 73-78
- Doskocil, D. C.: Advanced RF built in test. AUTOTESTCON 7892 IEEE Sys. Readiness Tech. Conf. (1992) 213-217
- Goff, M. E., Barratt, C. A.: DC to 40 GHz MMIC power sensor. Gallium Arsenide IC Symp. (1990) 105-108.
- Allen, P. E., Holberg, D. R.: CMOS analog circuit design. 2nd edn. Oxford University Press, Oxford (2002)
- Vapnil V., Lerner A.: Pattern recognition using generalised portrait method. Automation and Remote Control 24 (1963)
- Hearst, M.A.: SVMs - a practical consequence of learning theory. IEEE Intelligent Sys. (1998) 18-21
- Burges, C. J.: A tutorial on support vector machines for pattern recognition. Data Mining and Knowledge Discovery 2 (1998) 121-167
- Cortes C., Vapnik V.: Support vector networks. Machine Learning 20 (1995) 273-297
- Haykin, S.: Neural Networks: A comprehensive foundation. 2nd edn. Prentice Hall, New Jersey (1998)
- McLoone S., Brown M., Irwin G., Lightbody G.: A hybrid linear/nonlinear training algorithm for feedforward neural networks. IEEE Trans. on Neural Networks 9 (1998) 669-684
- Sjöberg, J., Ljung, L.: Overtraining, regularization, and searching for minimum with application to neural networks. Int. J. Control 62 (1995) 1391-1407
- Vishwanathan S. V. N., Smola A. J., Murty M. N.: SimpleSVM. Proc. 20th Int. Conf. Machine Learning (2003)
Paper Citation
in Harvard Style
C. Hung P., F. McLoone S., Sánchez M., Farrell R. and Zhang G. (2007). Direct and Indirect Classification of High-Frequency LNA Performance using Machine Learning Techniques . In Proceedings of the 3rd International Workshop on Artificial Neural Networks and Intelligent Information Processing - Volume 1: ANNIIP, (ICINCO 2007) ISBN 978-972-8865-86-3, pages 66-75. DOI: 10.5220/0001634500660075
in Bibtex Style
@conference{anniip07,
author={Peter C. Hung and Seán F. McLoone and Magdalena Sánchez and Ronan Farrell and Guoyan Zhang},
title={Direct and Indirect Classification of High-Frequency LNA Performance using Machine Learning Techniques},
booktitle={Proceedings of the 3rd International Workshop on Artificial Neural Networks and Intelligent Information Processing - Volume 1: ANNIIP, (ICINCO 2007)},
year={2007},
pages={66-75},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0001634500660075},
isbn={978-972-8865-86-3},
}
in EndNote Style
TY - CONF
JO - Proceedings of the 3rd International Workshop on Artificial Neural Networks and Intelligent Information Processing - Volume 1: ANNIIP, (ICINCO 2007)
TI - Direct and Indirect Classification of High-Frequency LNA Performance using Machine Learning Techniques
SN - 978-972-8865-86-3
AU - C. Hung P.
AU - F. McLoone S.
AU - Sánchez M.
AU - Farrell R.
AU - Zhang G.
PY - 2007
SP - 66
EP - 75
DO - 10.5220/0001634500660075