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An Evolutionary Constraint Satisfaction Solution for Over the Cell Channel Routing

Adnan Acan and Ahmet Unveren

Computer Engineering Dept., Eastern Mediterranean University, Gazimausa, T.R.N.C. Mersin 10, TURKEY
adnan.acan@emu.edu.tr
ahmet.unveren@emu.edu.tr

Abstract. A novel combination of genetic algorithms and constraint satisfaction modelling for the solution of two and multi-layer over-the-cell channel routing problems is presented. The two major objectives of the optimization task are to find an optimal assignment of nets to over-the-cell and within the channel tracks, and to minimize the channel widths through a simple but effective iterative routing methodology. Two genetic algorithms cooperate in a nested manner to perform the optimization task. The results obtained using the benchmark problems published in literature indicate that, without any predefined fixed upper/lower channel widths, the implemented algorithm outperforms well-known channel routers.

LNCS 3103, p. 838 ff.

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