Modeling interconnect variability using efficient parametric model order reduction

Assessing IC manufacturing process fluctuations and their impacts on IC interconnect performance has become unavoidable for modern DSM designs. However, the construction of parametric interconnect models is often hampered by the rapid increase in computational cost and model complexity. In this paper we present an efficient yet accurate parametric model order reduction algorithm for addressing the variability of IC interconnect performance. The efficiency of the approach lies in a novel combination of low-rank matrix approximation and multi-parameter moment matching. The complexity of the proposed parametric model order reduction is as low as that of a standard Krylov subspace method when applied to a nominal system. Under the projection-based framework, our algorithm also preserves the passivity of the resulting parametric models.

[1]  Jacob K. White,et al.  A multiparameter moment-matching model-reduction approach for generating geometrically parameterized interconnect performance models , 2004, IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems.

[2]  Mattan Kamon,et al.  Efficient Reduced-Order Modeling of Frequency-Dependent Coupling Inductances associated with 3-D Interconnect Structures , 1995, 32nd Design Automation Conference.

[3]  Lawrence T. Pileggi,et al.  NORM: compact model order reduction of weakly nonlinear systems , 2003, DAC '03.

[4]  Jun Li,et al.  A linear fractional transform (LFT) based model for interconnect parametric uncertainty , 2004, Proceedings. 41st Design Automation Conference, 2004..

[5]  Cheng-Kok Koh,et al.  Passivity-preserving model reduction via a computationally efficient project-and-balance scheme , 2004, Proceedings. 41st Design Automation Conference, 2004..

[6]  Luís Miguel Silveira,et al.  Guaranteed passive balancing transformations for model order reduction , 2002, DAC '02.

[7]  R. Larsen Lanczos Bidiagonalization With Partial Reorthogonalization , 1998 .

[8]  Carolyn L. Beck,et al.  Model reduction of multidimensional and uncertain systems , 1994, IEEE Trans. Autom. Control..

[9]  Roland W. Freund,et al.  Efficient linear circuit analysis by Pade´ approximation via the Lanczos process , 1994, EURO-DAC '94.

[10]  Lawrence T. Pileggi,et al.  PRIMA: passive reduced-order interconnect macromodeling algorithm , 1998, 1997 Proceedings of IEEE International Conference on Computer Aided Design (ICCAD).

[11]  Ying Liu,et al.  Model order-reduction of RC(L) interconnect including variational analysis , 1999, DAC '99.

[12]  B. Moore Principal component analysis in linear systems: Controllability, observability, and model reduction , 1981 .

[13]  Lawrence T. Pileggi,et al.  Asymptotic waveform evaluation for timing analysis , 1990, IEEE Trans. Comput. Aided Des. Integr. Circuits Syst..

[14]  Lawrence T. Pileggi,et al.  PRIMA: passive reduced-order interconnect macromodeling algorithm , 1997, ICCAD 1997.

[15]  Massoud Pedram,et al.  Model reduction of variable-geometry interconnects using variational spectrally-weighted balanced truncation , 2001, IEEE/ACM International Conference on Computer Aided Design. ICCAD 2001. IEEE/ACM Digest of Technical Papers (Cat. No.01CH37281).