Title :
Neural network-based modeling and design of on-chip spiral inductors
Author :
Ilumoka, A. ; Park, Yeonbum
Author_Institution :
Dept. of Electr. & Comput. Eng.,, Hartford Univ., CT, USA
Abstract :
A neural network approach is presented for the modeling and re-design of high-Q on-chip spiral inductors. The approach involves the creation of neural network models to map 3D multi-level spiral inductor geometric and material characteristics to SPICE equivalent circuit parameters. The neural network replaces computationally expensive FEM-based extraction and field solution. The approach is especially attractive because it is capable of accurately and efficiently predicting important inductor characteristics such as self-inductance, Q-factor, self-resonant frequency and parasitic resistance and capacitance. It also offers substantial computational savings over field solution-evaluation of neural model required on average 2% of the cpu time required for field solution. The neural approach served not only as a basis for fast spiral inductor circuit extraction but also permits fast spiral layout design refinement from post-optimization inductor circuit-level parameters.
Keywords :
Q-factor; SPICE; capacitance; circuit optimisation; circuit simulation; inductors; integrated circuit modelling; multilayer perceptrons; 3D multi-level spiral inductor geometric; FEM-based extraction; Q-factor; SPICE equivalent circuit parameters; capacitance; field solution-evaluation; neural network-based modeling; on-chip spiral inductor design; parasitic resistance; self-inductance; self-resonant frequency; Computer networks; Equivalent circuits; Frequency; Inductors; Network-on-a-chip; Neural networks; Q factor; SPICE; Solid modeling; Spirals;
Conference_Titel :
System Theory, 2004. Proceedings of the Thirty-Sixth Southeastern Symposium on
Print_ISBN :
0-7803-8281-1
DOI :
10.1109/SSST.2004.1295721