Results 1 -
7 of
7
Digital Circuit Optimization via Geometric Programming
- Operations Research
, 2005
"... informs ® doi 10.1287/opre.1050.0254 © 2005 INFORMS This paper concerns a method for digital circuit optimization based on formulating the problem as a geometric program (GP) or generalized geometric program (GGP), which can be transformed to a convex optimization problem and then very efficiently s ..."
Abstract
-
Cited by 19 (6 self)
- Add to MetaCart
informs ® doi 10.1287/opre.1050.0254 © 2005 INFORMS This paper concerns a method for digital circuit optimization based on formulating the problem as a geometric program (GP) or generalized geometric program (GGP), which can be transformed to a convex optimization problem and then very efficiently solved. We start with a basic gate scaling problem, with delay modeled as a simple resistor-capacitor (RC) time constant, and then add various layers of complexity and modeling accuracy, such as accounting for differing signal fall and rise times, and the effects of signal transition times. We then consider more complex formulations such as robust design over corners, multimode design, statistical design, and problems in which threshold and power supply voltage are also variables to be chosen. Finally, we look at the detailed design of gates and interconnect wires, again using a formulation that is compatible with GP or GGP.
Optimization of Custom MOS Circuits by Transistor Sizing
- IEEE INTERNATIONAL CONFERENCE ON COMPUTER-AIDED DESIGN
, 1996
"... Optimization of a circuit by transistor sizing is often a slow, tedious and iterative manual process which relies on designer intuition. Circuit simulation is carried out in the inner loop of this tuning procedure. Automating the transistor sizing process is an important step towards being able to r ..."
Abstract
-
Cited by 9 (4 self)
- Add to MetaCart
Optimization of a circuit by transistor sizing is often a slow, tedious and iterative manual process which relies on designer intuition. Circuit simulation is carried out in the inner loop of this tuning procedure. Automating the transistor sizing process is an important step towards being able to rapidly design high-performance, custom circuits. JiffyTune is a new circuit optimization tool that automates the tuning task. Delay, rise/fall time, area and power targets are accommodated. Each (weighted) target can be either a constraint or an objective function. Minimax optimization is supported. Transistors can be ratioed and similar structures grouped to ensure regular layouts. Bounds on transistor widths are supported. JiffyTune uses
Circuit Optimization via Adjoint Lagrangians
- IEEE INTERNATIONAL CONFERENCE ON COMPUTER-AIDED DESIGN
, 1997
"... The circuit tuning problem is best approached by means of gradient-based nonlinear optimization algorithms. For large circuits, gradient computation can be the bottleneck in the optimization procedure. Traditionally, when the number of measurements is large relative to the number of tunable paramete ..."
Abstract
-
Cited by 4 (3 self)
- Add to MetaCart
The circuit tuning problem is best approached by means of gradient-based nonlinear optimization algorithms. For large circuits, gradient computation can be the bottleneck in the optimization procedure. Traditionally, when the number of measurements is large relative to the number of tunable parameters, the direct method [2] is used to repeatedly solve the associated sensitivity circuit to obtain all the necessary gradients. Likewise, when the parameters outnumber the measurements, the adjoint method [1] is employed to solve the adjoint circuit repeatedly for each measurement to compute the sensitivities. In this paper, we propose the adjoint Lagrangian method, which computes all the gradients necessary for augmented-Lagrangian-based optimization in a single adjoint analysis. After the nominal simulation of the circuit has been carried out, the gradients of the merit function are expressed as the gradients of a weighted sum of circuit measurements. The weights are dependent on the nominal solution and on optimizer quantities such as Lagrange multipliers. By suitably choosing the excitations of the adjoint circuit, the gradients of the merit function are computed via a single adjoint analysis, irrespective of the number of measurements and the number of parameters of the optimization. This procedure requires close integration between the nonlinear optimization software and the circuit simulation program. The adjoint
Architecture and Implementations for Polynomial Ring Engine Over Small Residue Rings
, 1997
"... stored or otherwise retained in a retrieval system or transmitted in any form, on any medium or by any means without the prior written ..."
Abstract
-
Cited by 1 (0 self)
- Add to MetaCart
stored or otherwise retained in a retrieval system or transmitted in any form, on any medium or by any means without the prior written
Global Optimization Approach to Transistor Sizing for High Performance CMOS VLSI Circuits
, 1993
"... A stochastic global optimization approach is presented for skew minimization in CMOS VLSI circuits. This is a direct search strategy for the best design among feasible ones, with the designer determining when the search is stopped. Through examples, we show the power of this technique in quickly ..."
Abstract
- Add to MetaCart
A stochastic global optimization approach is presented for skew minimization in CMOS VLSI circuits. This is a direct search strategy for the best design among feasible ones, with the designer determining when the search is stopped. Through examples, we show the power of this technique in quickly obtaining very good designs, even for constrained problems.

