A Low Power-Delay Product Processor Using Multi-valued Decision Diagram Machine
نویسندگان
چکیده
A heterogeneous multi-valued decision diagram of encoded characteristic function for nonzero outputs (HMDD for ECFN) represents a multioutput logic function efficiently. As for the speed, the HMDD for ECFN machine is 3.02 times faster than the Core i5 processor, and is 12.50 times faster than the Nios II processor. As for the power-delay product, it is 32.72 times lower than the Core i5 processor, and is 57.92 times lower than the Nios II processor.
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