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A Systematic Design Methodology for Optimization of Sigma-Delta Modulators Based on an Evolutionary Algorithm
In the design of sigma-delta modulators ($\sum \Delta$Ms), different variables need to be optimized together in order to maximize the performance. This design task has the added difficulty of dealing with the non-linear behavior of the quantizer. Although a linearized model of the quantizer can be u...
Autores principales: | , , , , |
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Lenguaje: | eng |
Publicado: |
2019
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1109/tcsi.2019.2925292 http://cds.cern.ch/record/2801573 |
Sumario: | In the design of sigma-delta modulators ($\sum \Delta$Ms),
different variables need to be optimized together in order to
maximize the performance. This design task has the added
difficulty of dealing with the non-linear behavior of the quantizer.
Although a linearized model of the quantizer can be used, this
may result in significant discrepancies between the predicted and
actual behavior of the $\sum \Delta$M. To better predict the behavior of a
given design, we propose a design methodology for $\sum \Delta$Ms based
on a genetic algorithm (GA) that uses both linear equations
and simulations. In order to reduce the computation time,
the design solution is initially evaluated using equations and only
if the performance is deemed good enough, it is subjected to
a more refined simulation. This more precise simulation takes
into account thermal noise, finite output swing, and gain (among
other non-idealities) of the building blocks of the modulator.
Moreover, Monte Carlo (MC) analyses are performed during
the optimization in order to assess the sensitivity to component
variations of the solutions. In order to demonstrate the validity
and robustness of the proposed optimization methodology, several
Ms designs are presented, together with the corresponding
measured results. |
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