2003
DOI: 10.1109/ted.2003.819053
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A new approach to model nonquasi-static (NQS) effects for mosfets-part I: large-signal analysis

Abstract: This paper presents a new nonquasi-static (NQS) model for the MOSFET. The model is derived from physics and only relies on the very basic approximation needed for a charge-based model. To derive the model, a popular variational technique named Galerkin's Method has been used. The model proves to be very accurate even for extremely fast changes in the bias voltages. Simulation results show a very good match even when the rise time of the applied signal is smaller than the transit time of the device.

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Cited by 23 publications
(5 citation statements)
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“…We want to investigate how the channel reaches its new steady state, i.e., how changes with time. In this special case, for , (16) in [1] reduces to 1There is no term, because under our assumption, for . Now, under the small-signal assumption, since the change in the voltage is small, will also be small.…”
Section: Model Formulationmentioning
confidence: 96%
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“…We want to investigate how the channel reaches its new steady state, i.e., how changes with time. In this special case, for , (16) in [1] reduces to 1There is no term, because under our assumption, for . Now, under the small-signal assumption, since the change in the voltage is small, will also be small.…”
Section: Model Formulationmentioning
confidence: 96%
“…The small-signal model presented here is essentially an extension of the large-signal model described in [1]. We begin with the assumption that the n-MOSFET channel is in steady state.…”
Section: Model Formulationmentioning
confidence: 99%
See 3 more Smart Citations